Early-stage predictors of deterioration among 3145 nonsevere SARS-CoV-2-infected people community-isolated in Wuhan, China: A combination of machine learning algorithms and competing risk survival analyses

IF 3.6 2区 医学 Q1 MEDICINE, GENERAL & INTERNAL Journal of Evidence‐Based Medicine Pub Date : 2023-04-26 DOI:10.1111/jebm.12529
Kaiyuan Min, Zhenshun Cheng, Jiangfeng Liu, Yanhong Fang, Weichen Wang, Yehong Yang, Pascal Geldsetzer, Till Bärnighausen, Juntao Yang, Depei Liu, Simiao Chen, Chen Wang
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引用次数: 1

Abstract

Objective

To determine which early-stage variables best predicted the deterioration of coronavirus disease 2019 (COVID-19) among community-isolated people infected with severe acute respiratory syndrome coronavirus 2 and to test the performance of prediction using only inexpensive-to-measure variables.

Methods

Medical records of 3145 people isolated in two Fangcang shelter hospitals (large-scale community isolation centers) from February to March 2020 were accessed. Two complementary methods—machine learning algorithms and competing risk survival analyses—were used to test potential predictors, including age, gender, severity upon admission, symptoms (general symptoms, respiratory symptoms, and gastrointestinal symptoms), computed tomography (CT) signs, and comorbid chronic diseases. All variables were measured upon (or shortly after) admission. The outcome was deterioration versus recovery of COVID-19.

Results

More than a quarter of the 3145 people did not present any symptoms, while one-third ended isolation due to deterioration. Machine learning models identified moderate severity upon admission, old age, and CT ground-glass opacity as the most important predictors of deterioration. Removing CT signs did not degrade the performance of models. Competing risk models identified age ≥ 35 years, male gender, moderate severity upon admission, cough, expectoration, CT patchy opacity, CT consolidation, comorbid diabetes, and comorbid cardiovascular or cerebrovascular diseases as significant predictors of deterioration, while a stuffy or runny nose as a predictor of recovery.

Conclusions

Early-stage prediction of COVID-19 deterioration can be made with inexpensive-to-measure variables, such as demographic characteristics, severity upon admission, observable symptoms, and self-reported comorbid diseases, among asymptomatic people and mildly to moderately symptomatic patients.

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中国武汉社区隔离的3145名非严重sars - cov -2感染者病情恶化的早期预测指标:机器学习算法和竞争风险生存分析的结合
目的确定哪些早期变量最能预测2019冠状病毒病(COVID-19)在社区隔离人群中的恶化情况,并检验仅使用可测量的廉价变量的预测效果。方法查阅2020年2 - 3月在潍坊市两家方舱医院(大型社区隔离中心)隔离的3145人的病历。两种互补的方法——机器学习算法和竞争风险生存分析——用于测试潜在的预测因素,包括年龄、性别、入院时的严重程度、症状(一般症状、呼吸道症状和胃肠道症状)、计算机断层扫描(CT)体征和共病慢性疾病。在入院时(或入院后不久)测量所有变量。结果是COVID-19的恶化与恢复。结果3145人中超过四分之一的人没有出现任何症状,而三分之一的人因病情恶化而结束隔离。机器学习模型确定了入院时中度严重程度、老年和CT磨玻璃不透明是最重要的恶化预测因素。去除CT征象不会降低模型的性能。相互竞争的风险模型认为,年龄≥35岁、男性、入院时的中度严重程度、咳嗽、咳痰、CT斑片状混浊、CT实变、合并症糖尿病、合并症心脑血管疾病是病情恶化的重要预测因素,而鼻塞或流鼻涕是病情恢复的预测因素。结论在无症状人群和轻度至中度症状患者中,可通过人口统计学特征、入院时严重程度、可观察到的症状、自我报告的合并症等变量进行COVID-19恶化的早期预测。
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来源期刊
Journal of Evidence‐Based Medicine
Journal of Evidence‐Based Medicine MEDICINE, GENERAL & INTERNAL-
CiteScore
11.20
自引率
1.40%
发文量
42
期刊介绍: The Journal of Evidence-Based Medicine (EMB) is an esteemed international healthcare and medical decision-making journal, dedicated to publishing groundbreaking research outcomes in evidence-based decision-making, research, practice, and education. Serving as the official English-language journal of the Cochrane China Centre and West China Hospital of Sichuan University, we eagerly welcome editorials, commentaries, and systematic reviews encompassing various topics such as clinical trials, policy, drug and patient safety, education, and knowledge translation.
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