Suppr超能文献

癌症患者 30 天内非计划性住院再入院情况及健康社会决定因素的影响:一种机器学习方法。

Thirty-Day Unplanned Hospital Readmissions in Patients With Cancer and the Impact of Social Determinants of Health: A Machine Learning Approach.

机构信息

Graduate Education Office, Case Western Reserve University School of Medicine, Cleveland, OH.

Department of Hematology-Oncology, University Hospitals Seidman Cancer Center, Case Western Reserve University, Cleveland, OH.

出版信息

JCO Clin Cancer Inform. 2023 Jul;7:e2200143. doi: 10.1200/CCI.22.00143.

Abstract

PURPOSE

Develop a cancer-specific machine learning (ML) model that accurately predicts 30-day unplanned readmissions in patients with solid tumors.

METHODS

The initial cohort included patients 18 years or older diagnosed with a solid tumor. Two distinct cohorts were generated: one with and one without detailed social determinants of health (SDOHs) data. For each cohort, data were temporally partitioned in 70% (training), 20% (validation), and 10% (testing). Tree-based ML models were developed and validated on each cohort. The metrics used to evaluate the model's performance were receiver operating characteristic curve (ROC), area under the ROC curve, precision, recall (R), accuracy, and area under the precision-recall curve.

RESULTS

We included 13,717 patients in this study in two cohorts (5,059 without SDOH data and 8,658 with SDOH data). Unplanned 30-day readmission occurred in 21.3% of the cases overall. The five main non-SDOH factors most highly associated with an unplanned 30-day readmission (R, 0.74; IQR, 0.58-0.76) were: number of previous unplanned readmissions; higher Charlson comorbidity score; nonelective index admission; discharge to anywhere other than home, hospice, or nursing facility; and higher anion gap during the admission. Neighborhood crime index, neighborhood median home values, annual income, neighborhood median household income, and wealth index were the main five SDOH factors important for predicting a high risk for an unplanned hospital readmission (R, 0.66; IQR, 0.56-0.72). The models were not directly comparable.

CONCLUSION

Key drivers of unplanned readmissions in patients with cancer are complex and involve both clinical factors and SDOH. We developed a cancer-specific ML model that with reasonable accuracy identified patients with cancer at high risk for an unplanned hospital readmission.

摘要

目的

开发一种针对癌症的机器学习(ML)模型,以准确预测患有实体瘤的患者在 30 天内的非计划性再入院情况。

方法

初始队列纳入了 18 岁或以上、被诊断为实体瘤的患者。生成了两个不同的队列:一个具有详细社会决定因素健康(SDOH)数据,另一个则没有。对于每个队列,数据按 70%(训练)、20%(验证)和 10%(测试)的比例进行时间分割。在每个队列上开发和验证基于树的 ML 模型。用于评估模型性能的指标包括接收者操作特征曲线(ROC)、ROC 曲线下面积、精度、召回率(R)、准确性和精度-召回曲线下面积。

结果

我们在两个队列中纳入了 13717 名患者(5059 名没有 SDOH 数据,8658 名有 SDOH 数据)。总体而言,30 天内非计划性再入院的发生率为 21.3%。与 30 天内非计划性再入院最相关的五个主要非 SDOH 因素(R,0.74;IQR,0.58-0.76)为:之前非计划性再入院次数、较高的 Charlson 合并症评分、非择期入院、出院至家庭、临终关怀或护理机构以外的任何地方、入院期间阴离子间隙较高。邻里犯罪指数、邻里中位数家庭价值、年收入、邻里中位数家庭收入和财富指数是预测非计划性住院再入院高风险的五个主要 SDOH 因素(R,0.66;IQR,0.56-0.72)。这些模型不能直接比较。

结论

癌症患者非计划性再入院的关键驱动因素复杂,涉及临床因素和 SDOH。我们开发了一种针对癌症的 ML 模型,该模型具有合理的准确性,可识别出癌症患者非计划性住院再入院的高风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/61e3/10569782/cbfd90005de8/cci-7-e2200143-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验