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一种应用于医院再入院的患者亚组建模与解释框架:可视化分析方法。

A Framework for Modeling and Interpreting Patient Subgroups Applied to Hospital Readmission: Visual Analytical Approach.

作者信息

Bhavnani Suresh K, Zhang Weibin, Visweswaran Shyam, Raji Mukaila, Kuo Yong-Fang

机构信息

School of Public and Population Health, University of Texas Medical Branch, Galveston, TX, United States.

Department of Biomedical Informatics, University of Pittsburgh, Pittsburgh, PA, United States.

出版信息

JMIR Med Inform. 2022 Dec 7;10(12):e37239. doi: 10.2196/37239.

Abstract

BACKGROUND

A primary goal of precision medicine is to identify patient subgroups and infer their underlying disease processes with the aim of designing targeted interventions. Although several studies have identified patient subgroups, there is a considerable gap between the identification of patient subgroups and their modeling and interpretation for clinical applications.

OBJECTIVE

This study aimed to develop and evaluate a novel analytical framework for modeling and interpreting patient subgroups (MIPS) using a 3-step modeling approach: visual analytical modeling to automatically identify patient subgroups and their co-occurring comorbidities and determine their statistical significance and clinical interpretability; classification modeling to classify patients into subgroups and measure its accuracy; and prediction modeling to predict a patient's risk of an adverse outcome and compare its accuracy with and without patient subgroup information.

METHODS

The MIPS framework was developed using bipartite networks to identify patient subgroups based on frequently co-occurring high-risk comorbidities, multinomial logistic regression to classify patients into subgroups, and hierarchical logistic regression to predict the risk of an adverse outcome using subgroup membership compared with standard logistic regression without subgroup membership. The MIPS framework was evaluated for 3 hospital readmission conditions: chronic obstructive pulmonary disease (COPD), congestive heart failure (CHF), and total hip arthroplasty/total knee arthroplasty (THA/TKA) (COPD: n=29,016; CHF: n=51,550; THA/TKA: n=16,498). For each condition, we extracted cases defined as patients readmitted within 30 days of hospital discharge. Controls were defined as patients not readmitted within 90 days of discharge, matched by age, sex, race, and Medicaid eligibility.

RESULTS

In each condition, the visual analytical model identified patient subgroups that were statistically significant (Q=0.17, 0.17, 0.31; P<.001, <.001, <.05), significantly replicated (Rand Index=0.92, 0.94, 0.89; P<.001, <.001, <.01), and clinically meaningful to clinicians. In each condition, the classification model had high accuracy in classifying patients into subgroups (mean accuracy=99.6%, 99.34%, 99.86%). In 2 conditions (COPD and THA/TKA), the hierarchical prediction model had a small but statistically significant improvement in discriminating between readmitted and not readmitted patients as measured by net reclassification improvement (0.059, 0.11) but not as measured by the C-statistic or integrated discrimination improvement.

CONCLUSIONS

Although the visual analytical models identified statistically and clinically significant patient subgroups, the results pinpoint the need to analyze subgroups at different levels of granularity for improving the interpretability of intra- and intercluster associations. The high accuracy of the classification models reflects the strong separation of patient subgroups, despite the size and density of the data sets. Finally, the small improvement in predictive accuracy suggests that comorbidities alone were not strong predictors of hospital readmission, and the need for more sophisticated subgroup modeling methods. Such advances could improve the interpretability and predictive accuracy of patient subgroup models for reducing the risk of hospital readmission, and beyond.

摘要

背景

精准医学的一个主要目标是识别患者亚组,并推断其潜在的疾病过程,以便设计针对性的干预措施。尽管有几项研究已经识别出了患者亚组,但在患者亚组的识别与其在临床应用中的建模和解释之间仍存在相当大的差距。

目的

本研究旨在开发并评估一种用于对患者亚组进行建模和解释的新型分析框架(MIPS),该框架采用三步建模方法:可视化分析建模,以自动识别患者亚组及其共患的合并症,并确定其统计学意义和临床可解释性;分类建模,将患者分类到亚组中并测量其准确性;预测建模,预测患者出现不良结局的风险,并将其准确性与有无患者亚组信息时的情况进行比较。

方法

MIPS框架的开发使用二分网络基于频繁共患的高风险合并症来识别患者亚组,使用多项逻辑回归将患者分类到亚组中,并使用分层逻辑回归通过亚组成员身份预测不良结局的风险,同时与不使用亚组成员身份的标准逻辑回归进行比较。MIPS框架针对3种医院再入院情况进行了评估:慢性阻塞性肺疾病(COPD)、充血性心力衰竭(CHF)以及全髋关节置换术/全膝关节置换术(THA/TKA)(COPD:n = 29,016;CHF:n = 51,550;THA/TKA:n = 16,498)。对于每种情况,我们提取了定义为出院后30天内再次入院的患者病例。对照组定义为出院后90天内未再次入院的患者,按年龄、性别、种族和医疗补助资格进行匹配。

结果

在每种情况下,可视化分析模型识别出的患者亚组具有统计学意义(Q = 0.17、0.17、0.31;P <.001、<.001、<.05),能得到显著重复(兰德指数 = 0.92、0.94、0.89;P <.001、<.001、<.01),且对临床医生具有临床意义。在每种情况下,分类模型在将患者分类到亚组方面具有较高的准确性(平均准确率 = 99.6%、99.34%、99.86%)。在2种情况(COPD和THA/TKA)下,分层预测模型在区分再次入院和未再次入院患者方面有小幅但具有统计学意义的改善,通过净重新分类改善来衡量(0.059、0.11),但通过C统计量或综合判别改善来衡量则没有。

结论

尽管可视化分析模型识别出了具有统计学和临床意义的患者亚组,但结果表明需要在不同粒度水平上分析亚组,以提高簇内和簇间关联的可解释性。分类模型的高准确性反映了患者亚组的强分离性,尽管数据集的规模和密度较大。最后,预测准确性的小幅提高表明仅合并症并非医院再入院的强预测因素,需要更复杂的亚组建模方法。这些进展可以提高患者亚组模型的可解释性和预测准确性,以降低医院再入院风险乃至其他风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d10d/9773032/fd14ee92fcdb/medinform_v10i12e37239_fig1.jpg

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