Understanding the Impact of Variations in Measurement Period Reporting for Electronic Clinical Quality Measures.

Nicholas V Colin, Raja A Cholan, Bhavaya Sachdeva, Benjamin E Nealy, Michael L Parchman, David A Dorr
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引用次数: 4

Abstract

Objective: To understand the impact of varying measurement period on the calculation of electronic Clinical Quality Measures (eCQMs).

Background: eCQMs have increased in importance in value-based programs, but accurate and timely measurement has been slow. This has required flexibility in key measure characteristics, including measurement period, the timeframe the measurement covers. The effects of variable measurement periods on accuracy and variability are not clear.

Methods: 209 practices were asked to extract and submit four eCQMs from their Electronic Health Records on a quarterly basis using a 12-month measurement period. Quarterly submissions were collected via REDCap. The measurement periods of the survey data were categorized into non-standard (3, 6, 9 months and other) and standard periods (12 months). For comparison, patient-level data from three clinics were collected and calculated in an eCQM registry to measure the impact of varying measurement periods. We assessed the central tendency, shape of the distributions, and variability across the four measures. Analysis of variance (ANOVA) was conducted to analyze the differences among standard and non-standard measurement period means, and variation among these groups.

Results: Of 209 practices, 191 (91 percent) submitted data over three quarters. Of the 546 total submissions, 173 had non-standard measurement periods. Differences between measures with standard versus non-standard periods ranged from -3.3 percent to 14.2 percent between clinics (p < .05 for 3 of 4), using the patient-level data yielded deltas of -1.6 percent to 0.6 percent when comparing non-standard and standard periods.

Conclusion: Variations in measurement periods were associated with variation in performance between clinics for 3 of the 4 eCQMs, but did not have significant differences when calculated within clinics. Variations from standard measurement periods may reflect poor data quality and accuracy.

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了解电子临床质量测量测量期报告变化的影响。
目的:了解不同测量周期对电子临床质量测量(eCQMs)计算的影响。背景:eCQMs在基于价值的项目中越来越重要,但准确和及时的测量一直很缓慢。这需要关键度量特征的灵活性,包括度量周期,度量涵盖的时间框架。不同的测量周期对准确性和可变性的影响尚不清楚。方法:采用12个月的测量期,要求209家诊所每季度从其电子健康记录中提取并提交4份ecqm。通过REDCap收集季度意见书。调查数据的测量期分为非标准期(3、6、9个月等)和标准期(12个月)。为了进行比较,收集了三个诊所的患者水平数据,并在eCQM注册表中进行了计算,以测量不同测量期的影响。我们评估了四种测量方法的集中趋势、分布形状和可变性。采用方差分析(ANOVA)分析标准计量期均值与非标准计量期均值之间的差异,以及各组间的变异。结果:在209个实践中,191个(91%)在三个季度内提交了数据。在总共546份意见书中,173份有非标准的测量期。标准周期与非标准周期之间的差异在诊所之间为- 3.3%至14.2%(4个中的3个p < 0.05),使用患者水平数据在比较非标准周期和标准周期时产生- 1.6%至0.6%的差异。结论:测量周期的变化与4个eCQMs中的3个在诊所之间的表现变化有关,但在诊所内计算时没有显着差异。标准测量期间的差异可能反映数据质量和准确性较差。
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