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Main Authors: Wang, Jing, Shen, Jie, Luo, Yiming, Sra, Amar, Xie, Qiaomin, Weiss, Jeremy C.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.17722
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author Wang, Jing
Shen, Jie
Luo, Yiming
Sra, Amar
Xie, Qiaomin
Weiss, Jeremy C.
author_facet Wang, Jing
Shen, Jie
Luo, Yiming
Sra, Amar
Xie, Qiaomin
Weiss, Jeremy C.
contents Early prediction of Post-Acute Sequelae of SARS-CoV-2 severity is a critical challenge for women's health, particularly given the diagnostic overlap between PASC and common hormonal transitions such as menopause. Identifying and accounting for these confounding factors is essential for accurate long-term trajectory prediction. We conducted a retrospective study of 1,155 women (mean age 61) from the NIH RECOVER dataset. By integrating static clinical profiles with four weeks of longitudinal wearable data (monitoring cardiac activity and sleep), we developed a causal network based on a Large Language Model to predict future PASC scores. Our framework achieved a precision of 86.7\% in clinical severity prediction. Our causal attribution analysis demonstrate the model's ability to differentiate between active pathology and baseline noise: direct indicators such as breathlessness and malaise reached maximum saliency (1.00), while confounding factors like menopause and diabetes were successfully suppressed with saliency scores below 0.27.
format Preprint
id arxiv_https___arxiv_org_abs_2603_17722
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Predicting Trajectories of Long COVID in Adult Women: The Critical Role of Causal Disentanglement
Wang, Jing
Shen, Jie
Luo, Yiming
Sra, Amar
Xie, Qiaomin
Weiss, Jeremy C.
Machine Learning
Computers and Society
Early prediction of Post-Acute Sequelae of SARS-CoV-2 severity is a critical challenge for women's health, particularly given the diagnostic overlap between PASC and common hormonal transitions such as menopause. Identifying and accounting for these confounding factors is essential for accurate long-term trajectory prediction. We conducted a retrospective study of 1,155 women (mean age 61) from the NIH RECOVER dataset. By integrating static clinical profiles with four weeks of longitudinal wearable data (monitoring cardiac activity and sleep), we developed a causal network based on a Large Language Model to predict future PASC scores. Our framework achieved a precision of 86.7\% in clinical severity prediction. Our causal attribution analysis demonstrate the model's ability to differentiate between active pathology and baseline noise: direct indicators such as breathlessness and malaise reached maximum saliency (1.00), while confounding factors like menopause and diabetes were successfully suppressed with saliency scores below 0.27.
title Predicting Trajectories of Long COVID in Adult Women: The Critical Role of Causal Disentanglement
topic Machine Learning
Computers and Society
url https://arxiv.org/abs/2603.17722