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预测因感染性休克前往急诊科就诊的4期实体癌患者预后的机器学习模型开发与验证:一项多中心前瞻性队列研究

Machine Learning Model Development and Validation for Predicting Outcome in Stage 4 Solid Cancer Patients with Septic Shock Visiting the Emergency Department: A Multi-Center, Prospective Cohort Study.

作者信息

Ko Byuk Sung, Jeon Sanghoon, Son Donghee, Choi Sung-Hyuk, Shin Tae Gun, Jo You Hwan, Ryoo Seung Mok, Kim Youn-Jung, Park Yoo Seok, Kwon Woon Yong, Suh Gil Joon, Lim Tae Ho, Kim Won Young

机构信息

Department of Emergency Medicine, College of Medicine, Hanyang University, Seoul 04763, Republic of Korea.

Research Coordinating Center, Konkok University Medical Center, Seoul 05030, Republic of Korea.

出版信息

J Clin Med. 2022 Dec 5;11(23):7231. doi: 10.3390/jcm11237231.

Abstract

A reliable prognostic score for minimizing futile treatments in advanced cancer patients with septic shock is rare. A machine learning (ML) model to classify the risk of advanced cancer patients with septic shock is proposed and compared with the existing scoring systems. A multi-center, retrospective, observational study of the septic shock registry in patients with stage 4 cancer was divided into a training set and a test set in a 7:3 ratio. The primary outcome was 28-day mortality. The best ML model was determined using a stratified 10-fold cross-validation in the training set. A total of 897 patients were included, and the 28-day mortality was 26.4%. The best ML model in the training set was balanced random forest (BRF), with an area under the curve (AUC) of 0.821 to predict 28-day mortality. The AUC of the BRF to predict the 28-day mortality in the test set was 0.859. The AUC of the BRF was significantly higher than those of the Sequential Organ Failure Assessment score and the Acute Physiology and Chronic Health Evaluation II score (both p < 0.001). The ML model outperformed the existing scores for predicting 28-day mortality in stage 4 cancer patients with septic shock. However, further studies are needed to improve the prediction algorithm and to validate it in various countries. This model might support clinicians in real-time to adopt appropriate levels of care.

摘要

用于减少晚期癌症合并感染性休克患者无效治疗的可靠预后评分很少见。本文提出了一种用于对晚期癌症合并感染性休克患者的风险进行分类的机器学习(ML)模型,并将其与现有的评分系统进行比较。一项针对4期癌症患者感染性休克登记处的多中心、回顾性观察研究,按照7:3的比例分为训练集和测试集。主要结局为28天死亡率。在训练集中使用分层10折交叉验证确定最佳ML模型。共纳入897例患者,28天死亡率为26.4%。训练集中最佳的ML模型是平衡随机森林(BRF),其预测28天死亡率的曲线下面积(AUC)为0.821。BRF在测试集中预测28天死亡率的AUC为0.859。BRF的AUC显著高于序贯器官衰竭评估评分和急性生理学与慢性健康状况评估II评分(均p<0.001)。该ML模型在预测晚期癌症合并感染性休克患者的28天死亡率方面优于现有评分。然而,需要进一步研究来改进预测算法并在不同国家进行验证。该模型可能会支持临床医生实时采取适当的护理水平。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fe60/9737041/f96a4abc284a/jcm-11-07231-g001.jpg

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