从COVID-19感染的早期症状预测肌痛性脑脊髓炎/慢性疲劳综合征

Psych Pub Date : 2023-10-13 DOI:10.3390/psych5040073
Chelsea Hua, Jennifer Schwabe, Leonard A. Jason, Jacob Furst, Daniela Raicu
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引用次数: 0

摘要

目前还不清楚为什么某些人在病毒感染后仍然有严重的症状。我们通过分析COVID-19感染前两周的症状,研究了是否有可能预测感染COVID-19后肌痛性脑脊髓炎/慢性疲劳综合征(ME/CFS)的发展。利用参与者对54项德保罗症状问卷的回答,我们基于随机森林算法建立了预测模型,利用参与者在COVID-19感染最初几周的症状来预测参与者在大约6个月后是否会继续满足ME/CFS的标准。早期症状,特别是那些评估运动后不适的症状,确实可以预测ME/CFS的发展,准确率达到94.6%。然后,我们研究了可以准确预测ME/CFS的八种症状特征的最小集合。特征简化模型的准确率达到了93.5%。我们的研究结果表明,在COVID-19感染后最初几周发生的ME/CFS的几个IOM诊断标准预测了长COVID和6个月后ME/CFS的诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Myalgic Encephalomyelitis/Chronic Fatigue Syndrome from Early Symptoms of COVID-19 Infection
It is still unclear why certain individuals after viral infections continue to have severe symptoms. We investigated if predicting myalgic encephalomyelitis/chronic fatigue syndrome (ME/CFS) development after contracting COVID-19 is possible by analyzing symptoms from the first two weeks of COVID-19 infection. Using participant responses to the 54-item DePaul Symptom Questionnaire, we built predictive models based on a random forest algorithm using the participants’ symptoms from the initial weeks of COVID-19 infection to predict if the participants would go on to meet the criteria for ME/CFS approximately 6 months later. Early symptoms, particularly those assessing post-exertional malaise, did predict the development of ME/CFS, reaching an accuracy of 94.6%. We then investigated a minimal set of eight symptom features that could accurately predict ME/CFS. The feature reduced models reached an accuracy of 93.5%. Our findings indicated that several IOM diagnostic criteria for ME/CFS occurring during the initial weeks after COVID-19 infection predicted Long COVID and the diagnosis of ME/CFS after 6 months.
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