Computable Phenotypes for Post-acute sequelae of SARS-CoV-2: A National COVID Cohort Collaborative Analysis.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Sarah Pungitore, Toluwanimi Olorunnisola, Jarrod Mosier, Vignesh Subbian
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Abstract

Post-acute sequelae of SARS-CoV-2 (PASC) is an increasingly recognized yet incompletely understood public health concern. Several studies have examined various ways to phenotype PASC to better characterize this heterogeneous condition. However, many gaps in PASC phenotyping research exist, including a lack of the following: 1) standardized definitions for PASC based on symptomatology; 2) generalizable and reproducible phenotyping heuristics and meta-heuristics; and 3) phenotypes based on both COVID-19 severity and symptom duration. In this study, we defined computable phenotypes (or heuristics) and meta-heuristics for PASC phenotypes based on COVID-19 severity and symptom duration. We also developed a symptom profile for PASC based on a common data standard. We identified four phenotypes based on COVID-19 severity (mild vs. moderate/severe) and duration of PASC symptoms (subacute vs. chronic). The symptoms groups with the highest frequency among phenotypes were cardiovascular and neuropsychiatric with each phenotype characterized by a different set of symptoms.

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SARS-CoV-2急性后遗症的可计算表型:全国COVID队列协作分析。
SARS-CoV-2急性后遗症(PASC)是一个日益受到关注的公共卫生问题,但人们对它的了解却不够全面。有几项研究探讨了对 PASC 进行表型的各种方法,以更好地描述这种异质性疾病。然而,在 PASC 表型研究方面还存在许多空白,包括缺乏以下方面:1)基于症状学的 PASC 标准化定义;2)可推广且可重复的表型启发式方法和元启发式方法;3)基于 COVID-19 严重程度和症状持续时间的表型。在本研究中,我们根据 COVID-19 的严重程度和症状持续时间为 PASC 表型定义了可计算的表型(或启发式)和元启发式。我们还根据通用数据标准为 PASC 建立了症状档案。我们根据 COVID-19 的严重程度(轻度 vs. 中度/严重)和 PASC 症状的持续时间(亚急性 vs. 慢性)确定了四种表型。表型中出现频率最高的症状组是心血管和神经精神症状,每种表型都有一组不同的症状。
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