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预测精神或物质使用障碍患者的住院再入院:一种机器学习方法。

Predicting hospital readmission in patients with mental or substance use disorders: A machine learning approach.

机构信息

Medical Affairs, Becton, Dickinson and Co. Franklin Lakes, NJ, USA.

Medical Affairs, Becton, Dickinson and Co. Franklin Lakes, NJ, USA.

出版信息

Int J Med Inform. 2020 Jul;139:104136. doi: 10.1016/j.ijmedinf.2020.104136. Epub 2020 Apr 18.

Abstract

OBJECTIVE

Mental or substance use disorders (M/SUD) are major contributors of disease burden with high risk for hospital readmissions. We sought to develop and evaluate a readmission model using a machine learning (ML) approach.

METHODS

We analyzed patients with continuous enrollment for three years and at least one episode of M/SUD as the primary reason for hospital admission. The outcome was readmission within 30-days from discharge. Model performance was evaluated using the Area under the Receiver Operating Characteristic (AUROC). We compared the AUROCs of an extreme gradient boosted tree (XGBoost) model to generalized linear model with elastic net regularization (GLMNet).

RESULTS

We analyzed 65,426 unique patients and 97,688 admissions. Patients with mental disorders accounted for 66 % (13.2 % readmission rate) and substance use disorders, 34 % (22.3 % readmission rate). Among all those who had readmissions, 70.7 %, 17.0 %, and 12.4 % had 1, 2, or 3+ readmissions, respectively. Previous hospitalizations, hospital utilization, discharge disposition, diagnosis category, and comorbidity were among the highest important features in the XGBoost model. The XGBoost model AUROC was 0.737 (95 % CI: 0.732 to 0.742) versus the GLMNet 0.697 (95 % CI: 0.690 to 0.703). The AUROC of the final XGBoost model on the testing set was 0.738 (95 % CI: 0.730 to 0.748), higher than published readmission models for mental health patients.

CONCLUSIONS

The XGBoost model has a better performance than GLMNet and previously published models in predicting readmissions in mental health patients. Our model may be further tested to aid targeted demographic initiatives to reduce M/SUDs readmissions and benchmarking.

摘要

目的

精神或物质使用障碍(M/SUD)是疾病负担的主要原因之一,具有很高的住院再入院风险。我们试图使用机器学习(ML)方法开发和评估一种再入院模型。

方法

我们分析了连续三年至少有一次因 M/SUD 作为主要入院原因的患者。结果是出院后 30 天内再入院。使用接收者操作特征曲线(AUROC)下面积评估模型性能。我们比较了极端梯度提升树(XGBoost)模型和具有弹性网正则化(GLMNet)的广义线性模型的 AUROC。

结果

我们分析了 65426 名独特患者和 97688 次入院。精神障碍患者占 66%(再入院率为 13.2%),物质使用障碍患者占 34%(再入院率为 22.3%)。在所有再入院患者中,70.7%、17.0%和 12.4%分别有 1、2 或 3 次以上再入院。先前的住院治疗、医院利用、出院处置、诊断类别和合并症是 XGBoost 模型中最重要的特征之一。XGBoost 模型的 AUROC 为 0.737(95%CI:0.732 至 0.742),而 GLMNet 为 0.697(95%CI:0.690 至 0.703)。XGBoost 模型在测试集上的最终 AUROC 为 0.738(95%CI:0.730 至 0.748),高于已发表的精神健康患者再入院模型。

结论

XGBoost 模型在预测精神健康患者再入院方面的表现优于 GLMNet 和先前发表的模型。我们的模型可以进一步测试,以帮助针对目标人群的举措来减少 M/SUD 再入院和基准测试。

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