{"id":20939,"date":"2020-12-10T09:37:51","date_gmt":"2020-12-10T09:37:51","guid":{"rendered":"http:\/\/onlineclassesguru.com\/?p=20939"},"modified":"2020-12-10T09:37:51","modified_gmt":"2020-12-10T09:37:51","slug":"describe-the-impact-that-this-response-rate-could-have-on-the-reliability-of-the-findings-variability-in-response-rates-in-remeasurement-periods-should-also-be-addressed-e-g-a-20-percent-or-less-re","status":"publish","type":"post","link":"https:\/\/onlineclassesguru.com\/index.php\/2020\/12\/10\/describe-the-impact-that-this-response-rate-could-have-on-the-reliability-of-the-findings-variability-in-response-rates-in-remeasurement-periods-should-also-be-addressed-e-g-a-20-percent-or-less-re\/","title":{"rendered":"Describe the impact that this response rate could have on the reliability of the findings. Variability in response rates in remeasurement periods should also be addressed (e.g. a 20 percent or less response rate is generally considered too low to draw reliable population-based conclusions)."},"content":{"rendered":"<style type=\"text\/css\"><\/style><p><strong>Describe the impact that this response rate could have on the reliability of the findings. Variability in response rates in remeasurement periods should also be addressed (e.g. a 20 percent or less response rate is generally considered too low to draw reliable population-based conclusions).<\/strong><\/p>\n<p>Change proposal<br \/>\nOrder Description<br \/>\nAs an Advanced nursing student you are developing new competencies in leadership and in order to achieve mastery you must apply those competencies to live-practice experiences and situations. You are to identify a recently completed organizational change or innovation or one currently in process and use your leadership problem-solving skills to investigate document and evaluate the implementation process. For this paper think about how you as a nurse leader function as a detective scientist and manager of a healing environment.<br \/>\nIn this hypothetical or actual assessment scenario you will work with a Change leader in a healthcare organization in order to select an organizational change (Pain Management) that has occurred within the last six months. If you choose a change currently in progress it must be far enough into the implementation process in order for you to gather sufficient data for the assessment. The organizational change should have been implemented in order to initiate or support a patient advocacy project system change or educational program to increase quality care outcomes. The Change leader you choose to work with for the identified change (Pain Management) needs to have been directly involved with the change process in the organization.<br \/>\nAfter identifying change proposal (Pain Management) complete the attached Change Investigation Proposal Form you should identify how you will investigate the implemented organizational change in the form.<br \/>\nInvestigate the selected organizational change (Pain Management) using the attached NCQA QIA Form. You may utilize the attached QIA Form Instructions to help guide you in how to fill out the QIA Form. Your investigation will be used to document how the change was implemented in the organization.<br \/>\nRequirements:<br \/>\nA. Submit Change Investigation Proposal Form that includes the following information:<br \/>\nA brief description of the organizational change you plan to investigate (Pain Management)<br \/>\nA process for conducting the investigation (e.g. data collection key stakeholders to talk to) including how you will obtain the information on the QIA Form<br \/>\nB. Summarize (suggested length to 1 page) the identified organizational change and the patient population that it affects.<br \/>\nNote: Use the attached QIA Form and gather data from the organization that is necessary to populate sections IV of the form. The form should serve as a guide to complete the assessment and conduct your investigation. Refer to the attached QIA Instructions Form for information on how to complete the QIA Form.<br \/>\nC. Submit a completed copy of the attached QIA Form in which you record data from your investigation in sections IIV.<br \/>\n1. Summarize what data you collected for each section (IIV) of the QIA Form.<br \/>\na. Discuss what data collection measure(s) were used by the organization.<br \/>\nb. Analyze the appropriateness of the data collection measures including whether the data supported the need for change.<br \/>\n2. Discuss how the data collection measure(s) could have been improved using Advanced-level nursing and interprofessional standards.<br \/>\nD. Analyze the effectiveness of the change project in the organizational setting by doing the following:<br \/>\n1. Discuss how the change was evaluated for success after implementation.<br \/>\na. Discuss the effects the implementation has had on the organization and quality care outcomes.<br \/>\n2. Evaluate whether stakeholders involved with implementation were successful in their roles.<br \/>\n3. Discuss how the change project could have been improved to increase quality care outcomes.<br \/>\nE. Summarize your involvement with the organization and\/or stakeholders as you conducted your investigation.<br \/>\nThe Following Files Attached:<br \/>\n1. QIA Form<br \/>\n2. QIA Form Instructions<br \/>\nThe Following Criteria must be meet for this paper<br \/>\nA. n\/a<br \/>\nB. Summary: Provide a logical summary with sufficient detail of the identified organizational change and the patient population that it affects.<br \/>\nC. QIA Form: Provide a completed copy of the attached QIA Form in which you record data from the investigation in sections IIV.<br \/>\nC1. QIA Form Summary: Provide a logical summary with sufficient detail of what data you collected for each section (IIV) of the QIA Form.<br \/>\nC1a. Collection Measures Used: Provide a logical discussion with substantial detail of what data collection measure(s) was used by the organization.<br \/>\nC1b. Appropriateness: Provide a plausible analysis with substantial support of the appropriateness of the data collection measure(s) including whether the data supported the need for change.<br \/>\nC2. Collection Measures Improvement: Provide a logical discussion with substantial support of how the data collection measure(s) could have been improved using advance-level nursing and interprofessional standards<br \/>\nD1. Evaluation: Provide a logical discussion with substantial detail of how the change was evaluated for success after implementation.<br \/>\nD1a. Implementation Effects: Provide a logical discussion with substantial detail of the effects the implementation has had on the organization and quality care outcomes.<br \/>\nD2. Stakeholder Roles: Provide a logical evaluation with substantial detail of whether stakeholders involved with implementation were successful in their roles.<br \/>\nD3. Improvement: Provides a logical discussion with substantial detail of how the change project could have been improved to increase quality care outcomes.<br \/>\nE. Involvement Summary: Provide a logical summary with sufficient detail of your involvement with the organization and\/or stakeholders as you conducted the investigation.<br \/>\nHelpful references: https:\/\/www.ihi.org\/resources\/pages\/Howtoimprove\/default.aspx<br \/>\nQUALITY IMPROVEMENT FORM<br \/>\nNCQA Quality Improvement Activity Form (an electronic version is available on NCQAs Web site)<br \/>\nActivity Name:<br \/>\nSection I: Activity Selection and Methodology<br \/>\nA. Rationale. Use objective information (data) to explain your rationale for why this activity is important to members or practitioners and why there is an opportunity for improvement.<br \/>\nB. Quantifiable Measures. List and define all quantifiable measures used in this activity. Include a goal or benchmark for each measure. If a goal was established<br \/>\nlist it. If you list a benchmark state the source. Add sections for additional quantifiable measures as needed.<br \/>\nQuantifiable Measure #1:<br \/>\nNumerator:<br \/>\nDenominator:<br \/>\nFirst measurement period dates:<br \/>\nBaseline Benchmark:<br \/>\nSource of benchmark:<br \/>\nBaseline goal:<br \/>\nQuantifiable Measure #2:<br \/>\nNumerator:<br \/>\nDenominator:<br \/>\nFirst measurement period dates:<br \/>\nBenchmark:<br \/>\nSource of benchmark:<br \/>\nBaseline goal:<br \/>\nQuantifiable Measure #3:<br \/>\nNumerator:<br \/>\nDenominator:<br \/>\nFirst measurement period dates:<br \/>\nBenchmark:<br \/>\nSource of benchmark:<br \/>\nBaseline goal:<br \/>\nC. Baseline Methodology.<br \/>\nC.1 Data Sources.<br \/>\n[ ] Medical\/treatment records<br \/>\n[ ] Administrative data:<br \/>\n[ ] Claims\/encounter data [ ] Complaints [ ] Appeals [ ] Telephone service data [ ] Appointment\/access data<br \/>\n[ ] Hybrid (medical\/treatment records and administrative)<br \/>\n[ ] Pharmacy data<br \/>\n[ ] Survey data (attach the survey tool and the complete survey protocol)<br \/>\n[ ] Other (list and describe):<br \/>\n_________________________________________________________________________________________________________________________________<br \/>\n_________________________________________________________________________________________________________________________________<br \/>\nC.2 Data Collection Methodology. Check all that apply and enter the measure number from Section B next to the appropriate methodology.<br \/>\nIf medical\/treatment records check below:<br \/>\n[ ] Medical\/treatment record abstraction<br \/>\nIf survey check all that apply:<br \/>\n[ ] Personal interview<br \/>\n[ ] Mail<br \/>\n[ ] Phone with CATI script<br \/>\n[ ] Phone with IVR<br \/>\n[ ] Internet<br \/>\n[ ] Incentive provided<br \/>\n[ ] Other (list and describe):<br \/>\n_______________________________________________<br \/>\n_______________________________________________ If administrative check all that apply:<br \/>\n[ ] Programmed pull from claims\/encounter files of all eligible members<br \/>\n[ ] Programmed pull from claims\/encounter files of a sample of members<br \/>\n[ ] Complaint\/appeal data by reason codes<br \/>\n[ ] Pharmacy data<br \/>\n[ ] Delegated entity data<br \/>\n[ ] Vendor file<br \/>\n[ ] Automated response time file from call center<br \/>\n[ ] Appointment\/access data<br \/>\n[ ] Other (list and describe):<br \/>\n_________________________________________________________________<br \/>\n_________________________________________________________________<br \/>\nC.3 Sampling. If sampling was used provide the following information.<br \/>\nMeasure Sample Size Population Method for Determining Size (describe) Sampling Method (describe)<br \/>\nC.4 Data Collection Cycle.<br \/>\nData Analysis Cycle.<br \/>\n[ ] Once a year<br \/>\n[ ] Twice a year<br \/>\n[ ] Once a season<br \/>\n[ ] Once a quarter<br \/>\n[ ] Once a month<br \/>\n[ ] Once a week<br \/>\n[ ] Once a day<br \/>\n[ ] Continuous<br \/>\n[ ] Other (list and describe):<br \/>\n_________________________________________________________<br \/>\n_________________________________________________________ [ ] Once a year<br \/>\n[ ] Once a season<br \/>\n[ ] Once a quarter<br \/>\n[ ] Once a month<br \/>\n[ ] Continuous<br \/>\n[ ] Other (list and describe):<br \/>\n_________________________________________________________<br \/>\n_________________________________________________________<br \/>\nC.5 Other Pertinent Methodological Features. Complete only if needed.<br \/>\nD. Changes to Baseline Methodology. Describe any changes in methodology from measurement to measurement.<br \/>\nInclude as appropriate:<br \/>\nMeasure and time period covered<br \/>\nType of change<br \/>\nRationale for change<br \/>\nChanges in sampling methodology including changes in sample size method for determining size and sampling method<br \/>\nAny introduction of bias that could affect the results<br \/>\n___________________________________________________________________________________________________________________________________<br \/>\n___________________________________________________________________________________________________________________________________<br \/>\n___________________________________________________________________________________________________________________________________<br \/>\n___________________________________________________________________________________________________________________________________<br \/>\nSection II: Data \/ Results Table<br \/>\nComplete for each quantifiable measure; add additional sections as needed.<br \/>\n#1 Quantifiable Measure:<br \/>\nTime Period<br \/>\nMeasurement Covers<br \/>\nMeasurement<br \/>\nNumerator<br \/>\nDenominator Rate or Results Comparison Benchmark Comparison<br \/>\nGoal Statistical Test and Significance*<br \/>\nBaseline:<br \/>\nRemeasurement 1:<br \/>\nRemeasurement 2:<br \/>\nRemeasurement 3:<br \/>\nRemeasurement 4:<br \/>\nRemeasurement 5:<br \/>\n#2 Quantifiable Measure:<br \/>\nTime Period<br \/>\nMeasurement Covers<br \/>\nMeasurement<br \/>\nNumerator<br \/>\nDenominator Rate or Results Comparison Benchmark Comparison<br \/>\nGoal Statistical Test and Significance*<br \/>\nBaseline:<br \/>\nRemeasurement 1:<br \/>\nRemeasurement 2:<br \/>\nRemeasurement 3:<br \/>\nRemeasurement 4:<br \/>\nRemeasurement 5:<br \/>\n#3 Quantifiable Measure:<br \/>\nTime Period<br \/>\nMeasurement Covers<br \/>\nMeasurement<br \/>\nNumerator<br \/>\nDenominator Rate or Results Comparison Benchmark Comparison<br \/>\nGoal Statistical Test and Significance*<br \/>\nBaseline:<br \/>\nRemeasurement 1:<br \/>\nRemeasurement 2:<br \/>\nRemeasurement 3:<br \/>\nRemeasurement 4:<br \/>\nRemeasurement 5:<br \/>\n* If used specify the test p value and specific measurements (e.g. baseline to remeasurement #1 remeasurement #1 to remeasurement #2 etc. or baseline to final remeasurement) included in the calculations. NCQA does not require statistical testing.<br \/>\nSection III: Analysis Cycle<br \/>\nComplete this section for EACH analysis cycle presented.<br \/>\nA. Time Period and Measures That Analysis Covers.<br \/>\nB. Analysis and Identification of Opportunities for Improvement. Describe the analysis and include the points listed below.<br \/>\nB.1 For the quantitative analysis include the analysis of the following:<br \/>\nComparison with the goal\/benchmark<br \/>\nReasons for changes to goals<br \/>\nIf benchmarks changed since baseline list source and date of changes<br \/>\nComparison with previous measurements<br \/>\nTrends increases or decreases in performance or changes in statistical significance (if used)<br \/>\nImpact of any methodological changes that could impact the results<br \/>\nFor a survey include the overall response rate and the implications of the survey response rate<br \/>\nB.2 For the qualitative analysis describe any analysis that identifies causes for less than desired performance (barrier\/causal analysis) and include the following:<br \/>\nTechniques and data (if used) in the analysis<br \/>\nExpertise (e.g. titles; knowledge of subject matter) of the work group or committees conducting the analysis<br \/>\nCitations from literature identifying barriers (if any)<br \/>\nBarriers\/opportunities identified through the analysis<br \/>\nImpact of interventions<br \/>\nSection IV: Interventions Table<br \/>\nInterventions Taken for Improvement as a Result of Analysis. List chronologically the interventions that have had the most impact on improving the measure. Describe only the interventions and provide quantitative details whenever possible (e.g. hired 4 UM nurses as opposed to hired UM nurses). Do not include intervention planning activities.<br \/>\nDate Implemented (MM \/ YY) Check if<br \/>\nOngoing<br \/>\nInterventions<br \/>\nBarriers That Interventions Address<br \/>\nSection V: Chart or Graph (Optional)<br \/>\nAttach a chart or graph for any activity having more than two measurement periods that shows the relationship between the timing of the intervention (cause) and the result of the remeasurements (effect). Present one graph for each measure unless the measures are closely correlated such as average speed of answer and call abandonment rate. Control charts are not required but are helpful in demonstrating the stability of the measure over time or after the implementation.<br \/>\nQuality Improvement Activity (QIA) Form Instructions<br \/>\nOverview<br \/>\nWhen to Use the QIA Form<br \/>\nThis document is a guide for completing NCQAs Quality Improvement Activity (QIA) form. This form can be used for the QIA required NCQA accreditation and certification programs as applicable. It must be used to meet the Quality Improvement Projects required for Medicare Advantage Deeming.<br \/>\nFor NCQA purposes you are not required to use the QIA form; however you must provide the data it requests in order for NCQA to review your QIAs completely and accurately. Submit a QIA for each activity you present by attaching it to the applicable element in the Survey Tool using the Attach Document feature in the Survey Tool.<br \/>\nDetailed instructions on attaching documents to the Survey Tool are found in the Survey Tool Instructions under Help on the Main Menu bar.<br \/>\nThe purpose of the QIA form is to summarize the clinical and service quality activities that you are using to demonstrate meaningful improvement in the applicable element.<br \/>\nYou should not complete the QIA forms for service or clinical activities that you use to demonstrate compliance with other standards that require data collection and analysis such as member\/enrollee satisfaction availability and access and satisfaction with UM. Document compliance with these standards as you would document any other standard.<br \/>\nAll data points must be final when your organization submits the Survey Tool.<br \/>\nNCQA does not recommend using this form to report on activities that have only one data point (e.g. baseline only).<br \/>\nConsult the appropriate Explanation for the meaningful improvement standard for the accreditation or certification program for which you apply.<br \/>\nRemember that you cannot achieve a score of 100% with only one data point.<br \/>\nThe activity will not be considered.<br \/>\nAchieving Meaningful Improvement<br \/>\nSubmit enough data To receive credit for meaningful improvement you must submit enough data to allow an evaluation of any seasonal variations that could affect the results. On the service side open-enrollment seasons can affect such activities as ensuring access to primary care and reduction in referral time frames. In most cases you must present:<br \/>\nannual measurement occurring during the same season (e.g. comparing the first quarter of one year to the first quarter of the following years) for areas that show seasonal differences such as provision of enrollment cards<br \/>\nfive quarters of data<br \/>\nfifteen months of data.<br \/>\nNote: If you do not have adequate data to satisfy the above conditions or if you believe that the results are not biased by seasonal issues provide an explanation as it relates to QI 12 and QI 13 under Other Pertinent Methodology Features in Section I.<br \/>\nThe improvement must meet the time period covered in the survey To receive credit for meaningful improvement the improvement must have occurred in the three-year period covered in the survey. For example if you have annual data on member satisfaction since 1996 but the date of the survey for which this QIA is being prepared is January 2008 only data beginning in 2005 should be shown.<br \/>\nIn other words the improvement must have started at some point during the three years immediately prior to the survey and have been subsequently sustained.<br \/>\nFor Renewal Surveys you may need to present measurements for the year prior to the current survey period if these data were not available for your previous survey.<br \/>\nThe QIA Form<br \/>\nThe forms five sections The QIA form is divided into five sections:<br \/>\nSection I Activity Selection and Methodology<br \/>\nSection II Data\/Results Table<br \/>\nSection III Analysis Cycle<br \/>\nSection IV Interventions Table<br \/>\nSection V Chart or Graph<br \/>\nActivity name and activity examples The form first asks you to supply an activity name. The activity name should succinctly encompass the purpose of the activity and begin with an action word that accurately states what the activity is designed to do (e.g. improving increasing decreasing monitoring). Examples are listed below.<br \/>\ndecreasing the risk of congestive heart failure<br \/>\nimproving claims turn-around time to practitioners<br \/>\nincreasing the rate of diabetic foot exams<br \/>\nimproving access to behavioral health services<br \/>\ndecreasing practitioner complaints with the referral process.<br \/>\nSection I:<br \/>\nActivity Selection and Methodology<br \/>\nThis section asks you to provide the rationale for choosing this QI activity for your organization. Explain why the clinical or service activity affects your members or practitioners.<br \/>\nNCQA requires you to choose service improvements based on their impact on members. NCQA also accepts improvements in practitioner satisfaction that relate to utilization management (UM) processes or effects (e.g. issues identified in UM 11) for one service QIA.<br \/>\nExamples are listed below:<br \/>\nimprovements in turnaround time for prior-authorization requests decrease the time that members wait to receive care requiring authorization and\/or increase productivity for practitioners<br \/>\nimprovements in UM decision making turn-around-time ensure more satisfied members and\/or practitioners<br \/>\nimprovements in referral to specialist turnaround time reduce the number of complaints and appeals regarding referrals.<br \/>\nRationale<br \/>\nDefine the rationale for selecting the activity This section asks you to define your rationale for selecting this activity for improvement.<br \/>\nWhy was it chosen over others?<br \/>\nWhy is it important to your members or practitioners?<br \/>\nWhy is it worth the resources your organization is spending on it?<br \/>\nUsing objective information provide as much information that is specific to your organization as possible.<br \/>\nYou do not have to provide generic defenses for most clinical or service issues. For example do not include explanatory phrases such as member services departments serve many important functions or neuropathy of the foot is a serious condition that affects thousands of diabetics nationwide.<br \/>\nNor is it necessary to provide literature source cites on the importance of a clinical or service issue to members unless it is an unusual topic. Focus on the importance of the activity to your organization.<br \/>\nImportance of activity Include pertinent organization data or community demographic data that reflect the importance of the activity to your organizations membership. Describe the magnitude of the issue related to the activity in quantifiable terms.<br \/>\nActivity examples Examples are listed below.<br \/>\nBetween 2004 and 2005 hospitalization due to diabetic foot neuropathy rose 9 percent. This was the largest increase in any diabetes related hospitalization. Research has shown that periodic foot screening of diabetics and self screening by diabetics can decrease rates of foot neuropathy.<br \/>\nPractitioner dissatisfaction turnaround time with UM decisions increased from 5 to 15 percent between 2004 and 2005. This was the largest increase in practitioner dissatisfaction the organization has received for four years. In addition this 15 percent dissatisfaction rate was the highest dissatisfaction rate on the practitioner survey.<br \/>\nQuantifiable Measures<br \/>\nQuantifiable measures clearly and accurately measure the activity This section asks you to list all quantifiable measures you use in this activity including those added over time. Quantifiable measures should clearly and accurately measure the activity being evaluated. List your baseline benchmarks and goals and if you modify them over time list the updated benchmark or goal in the table in Section II.<br \/>\nMultiple measures You may use one or more measures for each activity. For some activities multiple measures are useful. For example practitioner complaints and actual turn-around-time for UM decisions would be two measures that are closely linked to the timeliness of UM decisions.<br \/>\nIn other cases multiple measures may not be useful. For example you may display multiple measures associated with a CHF disease management (DM) program only one of which shows improvement. Unless the intervention is clearly focused to address that measure NCQA may not consider the improvement meaningful.<br \/>\nDenominator Describe here the event being assessed or the members who are eligible for the service or care. Indicate whether all events or eligible members are included or whether the denominator is a sample. Examples of responses are listed below:<br \/>\nall physician complaints<br \/>\nmembers 35 years of age and older during the measurement year who were hospitalized and discharged alive from January 1December 24 of the measurement year with a diagnosis of congestive heart failure<br \/>\nall survey respondents<br \/>\nNumerator Describe here the criteria being assessed for the service or care:<br \/>\nall physician complaints concerning UM decision turn-around-time<br \/>\nmembers meeting the criteria for inclusion in the denominator who received an ambulatory prescription for ace inhibitors within 90 days of discharge<br \/>\nsurvey respondents who do or do not like the event in the denominator<br \/>\nFirst measurement period State here the time period covered by the initial assessment.<br \/>\nFor clinical issues this is typically an entire calendar year (e.g. January 1 2008December 31 2008).<br \/>\nFor service issues the measurement period is often monthly or quarterly (e.g. January 2008 or 1Q 2008). Measurement periods may vary by measure. For example the first measurement period for UM decision timeliness may be the first quarter of 2008 but the measure addressing timeliness may not have started until the third quarter of 2008.<br \/>\nBaseline benchmark Include here information on how the benchmark was derived as well as the benchmark rate. NCQA defines benchmark as the industry measure of best performance against which the organizations performance is compared. It should be directly comparable to your QI measure.<br \/>\nYou may describe the benchmark in numerical terms (e.g. the 90th percentile) or in terms of the comparison group (e.g. the best published rate in our state 85 percent).<br \/>\nThe benchmark may be a best practice in an industry based on published data or the best performance within a corporation with multiple organizations. NCQA requires a benchmark or a goal but not both. Many service activities do not have benchmarks. If you are not using a benchmark insert NA in response to this query.<br \/>\nRemember: Benchmarks are not averages; they are the best in class.<br \/>\nThe average for a national organization or corporation with multiple organizations is not a benchmark.<br \/>\nThe organizations best rate would be considered a benchmark.<br \/>\nBenchmark source If you give a benchmark list the organization or publication from which it was obtained and the time period to which it pertains.<br \/>\nBaseline goal The performance goal is the desired level of achievement for the measure within a reasonable time. It does not have to be based on actual best practices but it should reflect the level of achievement your organization has targeted.<br \/>\nThe goal should be quantitative and stated in numerical terms (e.g. 90 percent 0.3 appeals per thousand 3 days).<br \/>\nMost organizations do not set performance goals until after they have collected baseline results. If that is the case enter NA here.<br \/>\nWords such as improve decrease or increase are not acceptable in stating goals unless they are accompanied by a numerical quantifier (e.g. improve one standard deviation from baseline or decrease by 5 percentage points from the last remeasure).<br \/>\nRemember to use the words percent and percentage precisely.<br \/>\nAn increase in practitioner satisfaction with the UM referral system from 35 percent to<br \/>\n40 percent is a 5 percentage point increase not a 5 percent increase.<br \/>\nState the first goal you set (which generally is set after baseline results have been analyzed). NCQA expects that as you achieve your goals you set new ones. Section II has a space to list updated goals. Examples are listed below.<br \/>\nGoal example Measure: Pre-service UM decisions.<br \/>\nNumerator: Number of preservice decisions less than 4 days.<br \/>\nDenominator: Number of preservice decisions.<br \/>\nBenchmark: NA<br \/>\nBaseline Goal: 80 percent of preservice decisions are made within 3 days of the request.<br \/>\nNote: NCQA does not consider achievement of a prespecified goal or benchmark alone as a demonstration of meaningful improvement.<br \/>\nBaseline Methodology<br \/>\nThis section uses tables check boxes and narrative to enable you to describe your methodology. The more precisely you describe the data you used and how they were obtained; the sampling procedures if any that were applied; and any special factors that could have influenced the results the more easily NCQA can assess the validity and reliability of the findings.<br \/>\nC.1 Data sources<br \/>\nCheck all the data sources used. If you used other sources that are not listed check Other and describe the sources completely. Indicate the number of the measure from Section B next to the data source used.<br \/>\nC.2 Data collection methodology This section is divided into:<br \/>\nmedical\/treatment record<br \/>\nsurvey<br \/>\nadministrative.<br \/>\nBecause you may use different data collection methodologies for different measures check all that apply. Indicate the number of the measure from Section B next to the data source used. If you collected survey data using more than one of these techniques check all that apply. If you used different techniques or if you used other methods to collect administrative data mark Other and describe your data sources completely. You are not limited to the options provided.<br \/>\nMost of these methodologies are self-explanatory. The definitions for the survey data collection methodology are listed below.<br \/>\nDefinitions<br \/>\nPersonal interview A face-to-face interview.<br \/>\nMail A survey mailed to and returned from the respondent and involving no personal contact.<br \/>\nPhone with CATI script A telephone interview using a computer-assisted script containing prompts beyond the actual questions that can be used according to a set protocol.<br \/>\nPhone with IVR A telephone interview involving an interactive voice recognition system rather than a live person.<br \/>\nInternet A survey conducted using the Internet and involving no personal interaction.<br \/>\nIncentive provided A survey in which the respondent was given an incentive (e.g. gift certificate cash) for participating.<br \/>\nNote: Regardless of the survey methodology mark this box if the respondent is given any incentive to complete the survey.<br \/>\nOther Any other survey methodology different from those listed above.<br \/>\nC.3 Sampling For each measure that involved sampling state the sample size the method used to determine the size and the sampling methodology. If the size is the same for all measures state All Measures and give the information only once. Also provide the size of the full population from which you drew the sample.<br \/>\nRemember that the sampling methodology here relates to your baseline measurement only.<br \/>\nAny change to this sampling methodology is reported in Section I.D of this form.<br \/>\nTable elements Measure. You may use the measure number from the measures listed in Section I.B and abbreviate the name.<br \/>\nSample size. State the number of the full sample selected including any oversampling. The denominator listed in Section II provides the number included in the measure.<br \/>\nDetermining the sample size. To determine the size explain the parameters used to determine the sample size which typically include:<br \/>\nthe assumptions or requirements of the statistical test to be used to verify the significance of observed differences<br \/>\nthe desired degree of confidence in the statistical test (alpha level)<br \/>\nstatistical power (the sensitivity of the statistical test to detect differences; bigger samples yield greater power)<br \/>\nthe margin of error to be allowed when assessing the hypothesis<br \/>\nthe oversample rate<br \/>\nthe oversample is the extra cases included in the sample to replace cases rejected because of contraindications ineligibility etc. (In survey measurement the oversample should be large enough to replace expected nonresponses.) Examples of oversampling are shown below.<br \/>\nOversampling example You plan to improve the time required for members to obtain a referral. You conduct telephone surveys of different groups of members who obtained referrals at two points in time asking them how many days it took for them to get the referral. You have these expectations about the survey:<br \/>\nthe distribution of responses about the number of days to referral is normally distributed for both the pre- and post-survey groups<br \/>\nthe t-test is used to test the significance of the pre- and post-differences at alpha = 0.05 and 80 percent power<br \/>\na pilot survey showed that the standard deviation of number of days to referral responses is 5.25<br \/>\nthe program reduces the average number of days from 8.5 days to 7 days<br \/>\nthe response rate is 85 percent.<br \/>\nSample size calculations based on the above parameters indicate that you require a sample of 193 completed surveys. You expect that 15 percent of the sampled members will not respond so you sample 227 members to account for the nonresponse (X *0.85 = 193; X = 193\/85; X = 227). This calculation includes 193 members in the original sample plus an oversample of 34 patients to replace those who do not respond.<br \/>\nSampling method State the sampling methodology (simple random sample stratified random sample convenience sample). State the reasons for exclusions from the sample if there were any (e.g. Simple random sampling was used. During the claims pull three claims were excluded because they were miscoded.).<br \/>\nRemember that if your sampling methodology involves a survey it is not necessary to complete<br \/>\nthis table because you have included the Survey Tool and the survey protocol<br \/>\n(requested in Section I.C.2).<br \/>\nC.4 Data collection cycle and data analysis cycle Check the box that applies or describe the frequency of data collection and analysis. Indicate the number of the measure from Section B next to the data source used. For many service activities the data collection cycle is more frequent than the analysis cycle.<br \/>\nFor example hospitalization data may be collected weekly but analyzed monthly or quarterly. Survey data may be collected quarterly and analyzed at six-month intervals.<br \/>\nC.5 Other pertinent methodology features Describe any other methodological decisions or issues that could affect the analysis of the data or influence the results such as:<br \/>\ncoding definitions<br \/>\nclaims-processing specifications unique to your organization<br \/>\nclaims-processing delays<br \/>\nunique survey response coding or benefit design (e.g. pharmacy benefits).<br \/>\nIf your QIA does not include sufficient data as specified by NCQA policy or if you believe the results are not biased by seasonal issues because of the definition of the measure provide your rationale for considering this for<br \/>\nQI 12 and QI 13.<br \/>\nMark this section NA if there are no other methodological features that need to be brought to NCQAs attention. You are not required to complete this section past this point.<br \/>\nChanges to Baseline Methodology<br \/>\nThis section asks you to describe any methodology changes that were made after the baseline measurement was taken. To compare results accurately it is best to use the same methodology over time. However you may need to change methodology in order to strengthen the validity and reliability of the outcome correct inadequacies in the initial process or accommodate for lack of resources. Specifying changes that were made is important because those changes influence analysis of the results.<br \/>\nFor each affected measure you must describe:<br \/>\nthe dates during which the changed methodology was used<br \/>\nhow the methodology was changed<br \/>\nthe rationale for the change<br \/>\nthe anticipated impact of the change on the analysis.<br \/>\nIf you changed the sampling methodology in the same way for several measures you need to provide the information only once. If the sampling methodology is the same but the sample size has changed show only those changes.<br \/>\nSection II:<br \/>\nData\/Results Table<br \/>\nThis section consists of a table of the results of the baseline measurement and all of the remeasurements that you are presenting for consideration for the QIA. You may substitute a table of your choice as long as it includes all of the required elements. If there are more than five remeasurement periods add a row for each additional measure. If you measured a service issue more frequently than quarterly combine the data by recalculating the numerator and denominator and enter the quarterly result in the table.<br \/>\nTable Description<br \/>\nQuantifiable measure You may use the measure number from the list of measures completed in Section I and abbreviate the name.<br \/>\nTime period covered State the time period the measurement covers. It could be quarterly (e.g. 1Q 2008) twice a year (e.g. JanuaryJune and JulyDecember 2008) yearly (e.g. 2008) or every other year (e.g. JanuaryDecember 2006 and JanuaryDecember 2008).<br \/>\nNumerator\/<br \/>\ndenominator List the numerator and denominator for each remeasurement period.<br \/>\nIf the measure uses survey methodology state the number of people who met the numerator criteria (numerator) and the number of people who responded to the question (denominator).<br \/>\nRate or results Convert the fraction (numerator\/denominator) to a percentage.<br \/>\nComparison benchmark\/ comparison goal List the goal and\/or benchmark period in effect during the remeasurement cycle. The comparison goal is blank for the baseline measurement unless you have established a goal prior to pulling the baseline data. A goal based on baseline data that is in effect for the first remeasurement cycle should appear in the comparison box on remeasurement line 1. If you met your goal but there is still opportunity for improvement NCQA suggests you increase your goal.<br \/>\nIf you changed your goal for any other reason explain the basis for doing so in Section III: Analysis Cycle. You may also add benchmarks that you did not have at the baseline period.<br \/>\nStatistical test and significance NCQA does not require you to test for statistical significance. Consult the appropriate Standards and Guidelines for the accreditation or certification program for which you are applying for additional information on the requirements for achieving meaningful improvement.<br \/>\nIf you have performed such tests and choose to report them however state the time periods that you compared and the type of statistical test used for each measure. The table has been left open-ended to allow you to compare any time period you choose. Most organizations compare the latest remeasurement to the previous one and the latest remeasurement to the baseline measurement.<br \/>\nStatistical testing is generally not necessary when measures are based on the entire eligible population and may not be appropriate if the denominator is not based on a random or probability sample or if the measure specifications substantially changed since the last remeasurement period.<br \/>\nFor the most common test (comparing two independent rates) the chi-square test of proportions or the z-test of proportions can be used (e.g. a z-test to compare the baseline to remeasure #1 p value = 0.2992; and baseline to remeasure #5 p value = 0.001).<br \/>\nThese tests are not appropriate when the same members are being measured at different time periods in which case the McNemar test for correlated proportions might be appropriate.<br \/>\nIf you measure nonrate data such as average wait times the t-test or z-test for comparing means would be appropriate depending on the size of the sample. If you have several independent remeasurements based on samples you may want to do an ANOVA test of linear trend to show that the rate is increasing over time.<br \/>\nSection III:<br \/>\nAnalysis Cycle<br \/>\nIn this section you are asked to present the results of the quantitative and qualitative analyses you used to interpret the meaning of the results and to identify the opportunities for improvement that you wish to pursue. These analyses involve interpreting the data which may include collecting additional data; identifying barriers or causes for less-than-desired performance; and designing strategies to overcome the barriers. Implementation of interventions is covered in Section IV.<br \/>\nTime Period and Measures Covered by the Analysis<br \/>\nFocus of the analysis The analysis may occur after every remeasurement or after grouping several remeasurement periods. Your analysis may focus on one measure on all measures or on a combination of measures.<br \/>\nFor example an activity designed to improve Preserivce UM decision turn-around time may include three measures:<br \/>\ntime from request to decision<br \/>\ntime from request is notification<br \/>\nperceived turn-around-time by member<br \/>\nYou may collect these data quarterly but analyze the data only twice a year. The first analysis period might include only the first and second measure and the second might include all three measures.<br \/>\nOn the clinical side an example for improving asthma management could include:<br \/>\nmeasures of ER visits<br \/>\ninpatient admissions per thousand<br \/>\nquality-of-life measures from a member survey.<br \/>\nFor example if you measured ER visits and inpatient admissions monthly and conducted the quality-of-life survey annually you could analyze the first two measures quarterly and the quality-of-life measure annually.<br \/>\nIf you have multiple analysis periods it is helpful to label them clearly. For example:<br \/>\nAnalysis I: Calendar year<br \/>\nAnalysis II: Calendar year<br \/>\nAnalysis III: JanuaryDecember 2005.<br \/>\nIdentifying and Analyzing Opportunities for Improvement<br \/>\nIn this section you are asked to address the points specified as appropriate for the activity for each analysis cycle.<br \/>\nB.1 Quantitative analysis Compare to the goal\/benchmark. Have you met your goals and or achieved the benchmark?<br \/>\nWhy did the goals change? If you changed your goal explain why. If you met your goal but there is still opportunity for improvement NCQA expects you to increase your goal. If you change your goal for any other reason explain the basis for doing so. Avoid adjusting goals without a sound rationale for doing so.<br \/>\nHas the benchmark changed? If you changed your benchmark indicate the source of the new benchmark and the date it was adopted.<br \/>\nCompare to previous measurements. Have the results increased or decreased since the previous remeasurement? If so does this change represent an improvement or deterioration?<br \/>\nTrends and statistical significance. Describe any trends you identified and their significance. What weight do you place on the presence or absence of statistical significance?<br \/>\nImpact of any methodological changes. Discuss the impact of the methodological changes on the actual results. Could the results be biased positively or negatively by the changes in methodology? Explain why or<br \/>\nwhy not.<br \/>\nOverall survey response rate and implications. If any measures in the analysis are based on survey data give the survey response rate for the entire survey.<br \/>\nDescribe the impact that this response rate could have on the reliability of the findings. Variability in response rates in remeasurement periods should also be addressed (e.g. a 20 percent or less response rate is generally considered too low to draw reliable population-based conclusions).<br \/>\nB.2 Qualitative analysis Techniques and data used. Many techniques exist for determining the barriers or root causes for the results. You may have to collect additional data stratify the data or analyze subgroup data in order to drill down sufficiently to understand the reasons for the results. Include both how you performed the barrier analysis and any additional data collected used for barrier analysis.<br \/>\nBrainstorming multivoting pareto analysis and fishbone diagramming are common continuous quality improvement techniques used to identify barriers to improvement. In addition to stratifying the data you already have collected to calculate the measure you may have to analyze the results of other data such as targeted survey results complementary data (e.g. complaints in relation to satisfaction survey rates) and results of focus groups.<br \/>\nExpertise of group performing analysis. List the group or committee that was involved in the analysis and state why it was qualified to perform this analysis by describing the composition of the group and its expertise in evaluating this activity. If statistical or survey research analysis is required describe the qualifications of those involved.<br \/>\nFor service issues such as UM turn-around on decision the analysis may be performed by departmental managers and staff. Clinical issues may require expertise in the clinical subject matter as well as an understanding of the delivery system benefit structure and other distinctive aspects of the organization.<br \/>\nNCQA recognizes that many service issues are addressed during the normal course of business and that there may not be a formal a committee structure to address these issues as there is with clinical issues.<br \/>\nCitations from literature. For many clinical and service quality improvement activities there are sources that contain information about barriers to performance that have already been identified and are generally accepted. You may use these sources to supplement or substitute for your own barrier analysis. Give the complete citation (i.e. name of article and journal and date of publication) for each source you have used.<br \/>\nBarriers\/opportunities identified. List the barriers to or causes for the less than acceptable performance that you identified if any. Although NCQA recognizes that inadequate data collection may contribute to low performance it does not accept improvements in data collection alone as an opportunity to improve.<br \/>\nBarriers and opportunities for improvement must focus on variables (e.g. improving processes changing benefits and educating members practitioners or both) that can result in improved performance.<br \/>\nThe following are examples of categories that may create barriers:<br \/>\nmember knowledge<br \/>\npractitioner knowledge<br \/>\nbenefit coverage<br \/>\nco-pay restrictions<br \/>\norganization staffing<br \/>\nproblems with PCP or specialist access<br \/>\nreferral access<br \/>\nsystems issues in the organization.<br \/>\nList opportunities for improvement that you identified from the barriers. For example you may identify the lack of family involvement in therapy as a barrier to improving depression management for children and adolescents. Next you may identify as opportunities for improvement the lack of knowledge by the practitioner of the importance of family involvement the familys unwillingness to participate in therapy and the childs resistance to parental involvement. You must then choose which of these opportunities to focus on and develop one or more interventions.<br \/>\nAlthough you list the interventions in relation to the barriers you identified in Section IV you should justify here the causal link between your interventions and the results you observed. Explain how your interventions influenced the outcome; identify the interventions that were most influential and explain why; and describe any intervening or confounding factors that may have contributed to the changes.<br \/>\nSome barriers do not lead to opportunities because of benefit restrictions state law or other problems outside the control of the organization.<br \/>\nRemember that opportunities are not the same as barriers or interventions.<br \/>\nBarrier example 1 Barrier: Inadequate coverage of phones during lunch and breaks<br \/>\nOpportunity: Improve lunchtime and break coverage<br \/>\nIntervention: Revised staff scheduling to provide better coverage using existing staff<br \/>\nBarrier example 2 Barrier: Insufficient psychiatrist availability in a region<br \/>\nOpportunity: Increase psychiatrist access by contracting with more psychiatrists<br \/>\nIntervention: Recruited six new psychiatrists to meet availability needs<br \/>\nSection IV:<br \/>\nInterventions Table<br \/>\nIn this section you are asked to list the interventions taken to overcome barriers you identified in the previous section.<br \/>\nNote: You are not required to pursue interventions for all identified barriers.<br \/>\nTable Description<br \/>\nDate implemented List the month and year during which the intervention was implemented.<br \/>\nCheck if ongoing Some interventions occur on a regular ongoing basis. Often the effectiveness of the intervention rests on its repetitive nature.<br \/>\nCheck the column if the intervention occurs at some periodic interval then state its frequency (e.g. monthly quarterly annually). Examples are:<br \/>\nquarterly training for UM staff<br \/>\nannual mailings on the importance of colon cancer screening and<br \/>\nmonthly review of quality reports of timeliness of approving referrals are examples of ongoing interventions.<br \/>\nIntervention List the interventions chronologically. Generally you implement interventions after the data are analyzed. If you began interventions prior to analyzing the baseline measure or prior to this survey period and you believe they have an impact on the performance measures during this survey period list them first. Interventions may be listed under categories such as member practitioner collaborative and systems if doing so is useful to you.<br \/>\nProvide a detailed quantitative definition of the intervention whenever possible. For example hired four UM nurses is more specific than increased UM staffing. Mailed lists of 455 noncompliant members to 54 pediatricians and 31 family practitioners better describes the magnitude of the intervention than mailed lists of noncompliant members to practitioners. You may abbreviate the full name of the intervention after using it for the first time.<br \/>\nDo not include activities that have been planned but not yet implemented (e.g. developing policies conducting committee meetings or organizing activities).<br \/>\nRemember that you may include interventions taken after the last remeasurement period shown on this form but they are not used by NCQA to determine meaningful improvement.<br \/>\nThis list also summarizes your interventions. NCQA surveyors review additional back-up material<br \/>\nto document the extent of the intervention and its implementation.<br \/>\nBarriers that interventions address List all the barriers that each intervention is designed to address which you should have previously described in Section III. You may abbreviate the name of the barrier. It may be helpful to number the barriers and use the numbers in subsequent references to them.<br \/>\nDo not include barriers related to data collection. An example of a completed Section IV interventions table appears below:<br \/>\nActivity Name: Improving Preserivce UM decision turn-around time<br \/>\nSection IV: Interventions Table<br \/>\nInterventions Taken for Improvement as a Result of Analysis. List chronologically the interventions that have had the most impact on improving the measure. Describe only the interventions and provide quantitative details whenever possible (e.g. hired 4 customer service reps as opposed to hired customer service reps). Do not include the intervention planning activities.<br \/>\nDate Implemented<br \/>\n(MM \/ YY)<br \/>\nCheck if Ongoing<br \/>\nInterventions Barriers That Interventions Address<br \/>\n03\/05 Hired 3 UM nurses Inadequate UM staffing<br \/>\n09\/05 X Instituted weekly lunchtime training sessions conducted by staff of claims marketing etc. departments to update UM staff about policies and discuss more efficient decision making processes UM staff not following timeliness protocols consistently<br \/>\n12\/06 Distributed to all practitioners an updated practitioner handbook that included a description of how the UM decision making process and the time frames Inadequate practitioner knowledge about role of customer service department<br \/>\n4\/06 X Revised session on UM procedures and processes and delivered as part of all new practitioner orientations Inadequate practitioner knowledge of UM process<br \/>\nSection V:<br \/>\nChart or Graph (Optional)<br \/>\nThis section supplements the information you have provided up to now by more fully clarifying the relationship between the results of the remeasurements and the timing of the interventions.<br \/>\nA chart or a graph that plots both the results and the dates you implemented changes designed to improve your results often provides a visual presentation that is helpful in addition to the narrative or tables.<br \/>\nNCQA recommends attaching this picture if the activity has more than two measurement periods in order to show the relationship between the timing of the interventions (the cause) and the result of the remeasurements (the effect). Present one chart or graph for each measure unless the measures are closely correlated which may be displayed in one graphic.<br \/>\nUse whatever type of chart (line bar mixed) that clearly presents both your interventions and your performance measures. A simple line graph might be appropriate for service activities with multiple data points while a bar chart might be more appropriate to show changes in measures with annual measurement points. Interventions are placed on the graph or bar and show the dates of implementation. You may number the interventions and provide a key to the numbering or you may number the interventions in Section III and use those numbers on the graph or bar. NCQA encourages you to limit the interventions you use to those you have identified as being the strongest.<br \/>\nNCQA does not require control charts that display upper and lower confidence limits but you may include them if you believe they are helpful in demonstrating the stability of the measure over time.<br \/>\nBack-Up Information<br \/>\nNCQA wants to review documentation that supports the information you have summarized on your QIA. In addition to the completed QIA form NCQA may need additional documentation. Your designated ASC will let you know if this applies.<br \/>\nSuch information often encompasses:<br \/>\nall material related to methodology including data collection tools (e.g. medical record abstraction sheets codes for administrative data inter-rater reliability testing computer algorithms)<br \/>\ncopies of literature cited as appropriate<br \/>\nexcerpts of minutes or other documentation that show how and when analysis was performed<br \/>\ntools and supplemental data used in barrier analysis<br \/>\nevidence and dates of actions taken:<br \/>\nCopies of mailings<br \/>\nNewsletters<br \/>\nResponses from practitioners or members<br \/>\nRevised policies and procedures<br \/>\nExcerpts from updated member or practitioner handbooks<br \/>\nRevised contracts<\/p>\n<hr \/>\n<p>&nbsp;<\/p>\n<p><center><a href=\"http:\/\/onlineclassesguru.com\/orders\/ordernow\"><img decoding=\"async\" src=\"https:\/\/encrypted-tbn0.gstatic.com\/images?q=tbn:ANd9GcTyj99p60XCLyLk1htB7-1neRt8-2QdnenNlQ&usqp=CAU\"target=\"_http:\/\/onlineclassesguru.com\/orders\/ordernow\"\/><\/center><p>","protected":false},"excerpt":{"rendered":"<p>Describe the impact that this response rate could have on the reliability of the findings. 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