Validity of different algorithmic methods to identify hospital readmissions from routinely coded medical data.

Michael M Havranek, Yuliya Dahlem, Selina Bilger, Florian Rüter, Daniela Ehbrecht, Leonel Oliveira, Rudolf M Moos, Christian Westerhoff, Armin Gemperli, Thomas Beck
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Abstract

Background: Hospital readmission rates are used for quality and pay-for-performance initiatives. To identify readmissions from administrative data, two commonly employed methods are focusing either on unplanned readmissions (used by the Centers for Medicare & Medicaid Services, CMS) or potentially avoidable readmissions (used by commercial vendors such as SQLape or 3 M). However, it is not known which of these methods has higher criterion validity and can more accurately identify actually avoidable readmissions.

Objectives: A manual record review based on data from seven hospitals was used to compare the validity of the methods by CMS and SQLape.

Methods: Seven independent reviewers reviewed 738 single inpatient stays. The sensitivity, specificity, positive predictive value (PPV), and F1 score were examined to characterize the ability of an original CMS method, an adapted version of the CMS method, and the SQLape method to identify unplanned, potentially avoidable, and actually avoidable readmissions.

Results: Both versions of the CMS method had greater sensitivity (92/86% vs. 62%) and a higher PPV (84/91% vs. 71%) than the SQLape method, in terms of identifying their outcomes of interest (unplanned vs. potentially avoidable readmissions, respectively). To distinguish actually avoidable readmissions, the two versions of the CMS method again displayed higher sensitivity (90/85% vs. 66%), although the PPV did not differ significantly between the different methods.

Conclusions: Thus, the CMS method has both higher criterion validity and greater sensitivity for identifying actually avoidable readmissions, compared with the SQLape method. Consequently, the CMS method should primarily be used for quality initiatives.

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从常规编码医疗数据中识别再入院情况的不同算法方法的有效性。
背景:再入院率被用于质量和绩效付费计划。要从管理数据中识别再入院率,有两种常用方法,一种是关注非计划再入院率(医疗保险与医疗补助服务中心使用),另一种是关注潜在可避免再入院率(商业供应商使用,如 SQLape 或 3 M)。然而,目前还不清楚这两种方法中哪种方法的标准有效性更高,能更准确地识别出实际可避免的再入院情况:根据七家医院的数据进行人工记录审查,比较 CMS 和 SQLape 方法的有效性:方法:七名独立审查员审查了 738 份单次住院病历。对灵敏度、特异性、阳性预测值(PPV)和 F1 评分进行了检查,以确定 CMS 原始方法、CMS 方法的改编版和 SQLape 方法识别计划外、潜在可避免和实际可避免再入院的能力:与 SQLape 方法相比,两个版本的 CMS 方法在识别相关结果(分别为计划外再入院和潜在可避免再入院)方面的灵敏度(92/86% vs. 62%)和 PPV(84/91% vs. 71%)都更高。在区分实际可避免的再入院方面,两种版本的 CMS 方法再次显示出更高的灵敏度(90/85% vs. 66%),尽管 PPV 在不同方法之间没有显著差异:因此,与 SQLape 方法相比,CMS 方法在识别实际可避免再入院方面具有更高的标准有效性和灵敏度。因此,CMS 方法应主要用于质量计划。
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