Rebecca T Levinson, Cinara Paul, Andreas D Meid, Jobst-Hendrik Schultz, Beate Wild
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Application of machine learning (ML) on data from statutory health insurance (SHI) allows the evaluation of large longitudinal data sets representative of the general population to support clinical decision-making.</p><p><strong>Objective: </strong>This study aims to evaluate the ability of ML methods to predict 1-year all-cause and HF-specific readmission after initial HF-related admission of patients with HF in outpatient SHI data and identify important predictors.</p><p><strong>Methods: </strong>We identified individuals with HF using outpatient data from 2012 to 2018 from the AOK Baden-Württemberg SHI in Germany. We then trained and applied regression and ML algorithms to predict the first all-cause and HF-specific readmission in the year after the first admission for HF. We fitted a random forest, an elastic net, a stepwise regression, and a logistic regression to predict readmission by using diagnosis codes, drug exposures, demographics (age, sex, nationality, and type of coverage within SHI), degree of rurality for residence, and participation in disease management programs for common chronic conditions (diabetes mellitus type 1 and 2, breast cancer, chronic obstructive pulmonary disease, and coronary heart disease). We then evaluated the predictors of HF readmission according to their importance and direction to predict readmission.</p><p><strong>Results: </strong>Our final data set consisted of 97,529 individuals with HF, and 78,044 (80%) were readmitted within the observation period. Of the tested modeling approaches, the random forest approach best predicted 1-year all-cause and HF-specific readmission with a C-statistic of 0.68 and 0.69, respectively. Important predictors for 1-year all-cause readmission included prescription of pantoprazole, chronic obstructive pulmonary disease, atherosclerosis, sex, rurality, and participation in disease management programs for type 2 diabetes mellitus and coronary heart disease. Relevant features for HF-specific readmission included a large number of canonical HF comorbidities.</p><p><strong>Conclusions: </strong>While many of the predictors we identified were known to be relevant comorbidities for HF, we also uncovered several novel associations. Disease management programs have widely been shown to be effective at managing chronic disease; however, our results indicate that in the short term they may be useful for targeting patients with HF with comorbidity at increased risk of readmission. Our results also show that living in a more rural location increases the risk of readmission. Overall, factors beyond comorbid disease were relevant for risk of HF readmission. 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Understanding the relevance of HF management outside the hospital setting is critical to understanding HF and factors that lead to readmission. Application of machine learning (ML) on data from statutory health insurance (SHI) allows the evaluation of large longitudinal data sets representative of the general population to support clinical decision-making.</p><p><strong>Objective: </strong>This study aims to evaluate the ability of ML methods to predict 1-year all-cause and HF-specific readmission after initial HF-related admission of patients with HF in outpatient SHI data and identify important predictors.</p><p><strong>Methods: </strong>We identified individuals with HF using outpatient data from 2012 to 2018 from the AOK Baden-Württemberg SHI in Germany. We then trained and applied regression and ML algorithms to predict the first all-cause and HF-specific readmission in the year after the first admission for HF. We fitted a random forest, an elastic net, a stepwise regression, and a logistic regression to predict readmission by using diagnosis codes, drug exposures, demographics (age, sex, nationality, and type of coverage within SHI), degree of rurality for residence, and participation in disease management programs for common chronic conditions (diabetes mellitus type 1 and 2, breast cancer, chronic obstructive pulmonary disease, and coronary heart disease). We then evaluated the predictors of HF readmission according to their importance and direction to predict readmission.</p><p><strong>Results: </strong>Our final data set consisted of 97,529 individuals with HF, and 78,044 (80%) were readmitted within the observation period. Of the tested modeling approaches, the random forest approach best predicted 1-year all-cause and HF-specific readmission with a C-statistic of 0.68 and 0.69, respectively. 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引用次数: 0
摘要
背景在德国,心力衰竭(HF)患者是最常被再次收治的成年患者群体。大多数心力衰竭患者因非心血管原因再次入院。了解医院外心衰管理的相关性对于了解心衰和导致再入院的因素至关重要。将机器学习(ML)应用于法定医疗保险(SHI)数据,可对代表普通人群的大型纵向数据集进行评估,从而为临床决策提供支持:本研究旨在评估 ML 方法预测 SHI 门诊数据中首次入院的 HF 相关 HF 患者 1 年后全因再入院和 HF 特异性再入院的能力,并确定重要的预测因素:我们利用德国 AOK Baden-Württemberg SHI 2012 年至 2018 年的门诊数据确定了心房颤动患者。然后,我们训练并应用回归和 ML 算法来预测首次因心房颤动入院后一年内的首次全因再入院和心房颤动特异性再入院。我们采用随机森林、弹性网、逐步回归和逻辑回归等方法,通过诊断代码、药物暴露、人口统计学特征(年龄、性别、国籍、SHI 保险类型)、居住地的乡村化程度以及常见慢性病(1 型和 2 型糖尿病、乳腺癌、慢性阻塞性肺病和冠心病)的疾病管理计划参与情况来预测再入院情况。然后,我们根据预测再入院的重要性和方向评估了高血压再入院的预测因素:我们的最终数据集包括 97,529 名高血压患者,其中 78,044 人(80%)在观察期内再次入院。在测试的建模方法中,随机森林方法对1年全因再入院和心房颤动特异性再入院的预测效果最好,C统计量分别为0.68和0.69。1年全因再入院的重要预测因素包括泮托拉唑处方、慢性阻塞性肺病、动脉粥样硬化、性别、居住地以及是否参与2型糖尿病和冠心病疾病管理项目。与心房颤动特异性再入院相关的特征包括大量典型的心房颤动合并症:虽然我们发现的许多预测因素都是已知的与高血压相关的合并症,但我们也发现了一些新的关联。疾病管理计划已被广泛证明能有效管理慢性疾病;然而,我们的研究结果表明,在短期内,这些计划可能会对再入院风险较高的合并症高血压患者有所帮助。我们的研究结果还显示,居住在农村地区的患者再次入院的风险会增加。总体而言,合并症以外的因素也与高血压再入院风险有关。这一发现可能会影响门诊医生如何识别和监控有高血压再入院风险的患者。
Identifying Predictors of Heart Failure Readmission in Patients From a Statutory Health Insurance Database: Retrospective Machine Learning Study.
Background: Patients with heart failure (HF) are the most commonly readmitted group of adult patients in Germany. Most patients with HF are readmitted for noncardiovascular reasons. Understanding the relevance of HF management outside the hospital setting is critical to understanding HF and factors that lead to readmission. Application of machine learning (ML) on data from statutory health insurance (SHI) allows the evaluation of large longitudinal data sets representative of the general population to support clinical decision-making.
Objective: This study aims to evaluate the ability of ML methods to predict 1-year all-cause and HF-specific readmission after initial HF-related admission of patients with HF in outpatient SHI data and identify important predictors.
Methods: We identified individuals with HF using outpatient data from 2012 to 2018 from the AOK Baden-Württemberg SHI in Germany. We then trained and applied regression and ML algorithms to predict the first all-cause and HF-specific readmission in the year after the first admission for HF. We fitted a random forest, an elastic net, a stepwise regression, and a logistic regression to predict readmission by using diagnosis codes, drug exposures, demographics (age, sex, nationality, and type of coverage within SHI), degree of rurality for residence, and participation in disease management programs for common chronic conditions (diabetes mellitus type 1 and 2, breast cancer, chronic obstructive pulmonary disease, and coronary heart disease). We then evaluated the predictors of HF readmission according to their importance and direction to predict readmission.
Results: Our final data set consisted of 97,529 individuals with HF, and 78,044 (80%) were readmitted within the observation period. Of the tested modeling approaches, the random forest approach best predicted 1-year all-cause and HF-specific readmission with a C-statistic of 0.68 and 0.69, respectively. Important predictors for 1-year all-cause readmission included prescription of pantoprazole, chronic obstructive pulmonary disease, atherosclerosis, sex, rurality, and participation in disease management programs for type 2 diabetes mellitus and coronary heart disease. Relevant features for HF-specific readmission included a large number of canonical HF comorbidities.
Conclusions: While many of the predictors we identified were known to be relevant comorbidities for HF, we also uncovered several novel associations. Disease management programs have widely been shown to be effective at managing chronic disease; however, our results indicate that in the short term they may be useful for targeting patients with HF with comorbidity at increased risk of readmission. Our results also show that living in a more rural location increases the risk of readmission. Overall, factors beyond comorbid disease were relevant for risk of HF readmission. This finding may impact how outpatient physicians identify and monitor patients at risk of HF readmission.