Predicting Trajectories of Long COVID in Adult Women: The Critical Role of Causal Disentanglement
arXiv cs.LG / 3/19/2026
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Key Points
- The authors analyzed 1,155 women (mean age 61) from the NIH RECOVER dataset, integrating static clinical profiles with four weeks of wearable data to forecast long COVID severity trajectories.
- They built a causal network based on a Large Language Model to predict future PASC scores and reported a precision of 86.7% in clinical severity predictions.
- Their causal attribution analysis shows direct symptoms like breathlessness and malaise carried saliency scores of 1.00, while confounders such as menopause and diabetes were down-weighted (saliency < 0.27).
- The research addresses the challenge of diagnostic overlap between PASC and menopause-related changes, highlighting the importance of causal disentanglement for accurate trajectory forecasting.
- The work demonstrates potential for AI-assisted, sex-specific prognosis in post-viral syndromes and could inform future clinical monitoring strategies.
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