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儿童新冠长期后遗症亚表型:一项基于电子健康记录的RECOVER项目研究。

Pediatric Long COVID Subphenotypes: An EHR-based study from the RECOVER program.

作者信息

Lorman Vitaly, Bailey L Charles, Song Xing, Rao Suchitra, Hornig Mady, Utidjian Levon, Razzaghi Hanieh, Mejias Asuncion, Leikauf John Erik, Brill Seuli Bose, Allen Andrea, Bunnell H Timothy, Reedy Cara, Mosa Abu Saleh Mohammad, Horne Benjamin D, Geary Carol Reynolds, Chuang Cynthia H, Williams David A, Christakis Dimitri A, Chrischilles Elizabeth A, Mendonca Eneida A, Cowell Lindsay G, McCorkell Lisa, Liu Mei, Cummins Mollie R, Jhaveri Ravi, Blecker Saul, Forrest Christopher B

机构信息

Applied Clinical Research Center, Children's Hospital of Philadelphia, Philadelphia, PA, USA.

Department of Biomedical Informatics, Biostatistics and Medical Epidemiology (BBME), University of Missouri School of Medicine, Columbia, MO, USA.

出版信息

medRxiv. 2024 Sep 18:2024.09.17.24313742. doi: 10.1101/2024.09.17.24313742.

Abstract

Pediatric Long COVID has been associated with a wide variety of symptoms, conditions, and organ systems, but distinct clinical presentations, or subphenotypes, are still being elucidated. In this exploratory analysis, we identified a cohort of pediatric (age <21) patients with evidence of Long COVID and no pre-existing complex chronic conditions using electronic health record data from 38 institutions and used an unsupervised machine learning-based approach to identify subphenotypes. Our method, an extension of the Phe2Vec algorithm, uses tens of thousands of clinical concepts from multiple domains to represent patients' clinical histories to then identify groups of patients with similar presentations. The results indicate that cardiorespiratory presentations are most common (present in 54% of patients) followed by subphenotypes marked (in decreasing order of frequency) by musculoskeletal pain, neuropsychiatric conditions, gastrointestinal symptoms, headache, and fatigue.

摘要

儿童长期新冠后遗症与多种症状、病症和器官系统相关,但不同的临床表现或亚表型仍在被阐明。在这项探索性分析中,我们使用来自38家机构的电子健康记录数据,确定了一组患有长期新冠后遗症证据且无既往复杂慢性病的儿科(年龄<21岁)患者,并使用基于无监督机器学习的方法来识别亚表型。我们的方法是Phe2Vec算法的扩展,它使用来自多个领域的数万个临床概念来表示患者的临床病史,进而识别出具有相似表现的患者群体。结果表明,心肺表现最为常见(54%的患者出现),其次是肌肉骨骼疼痛、神经精神病症、胃肠道症状、头痛和疲劳(按频率递减顺序排列)的亚表型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3585/11451761/03e77047f417/nihpp-2024.09.17.24313742v1-f0001.jpg

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