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Developing a general research framework for long COVID using causal modelling

Gladymar Pérez Chacón et al · Nature Portfolio · 2026

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Abstract Background Long COVID is an infection-associated chronic condition with uncertain evolution, leading to ambiguity in case definitions and various hypotheses about its pathophysiology. Despite this diversity, causal models may offer a unified understanding of post-acute COVID-19 mechanisms. This study aimed to examine whether dynamic Bayesian networks could facilitate inferences on long COVID. Methods Using a causal engineering approach, we developed directed acyclic graphs and qualitatively parametrised them as Bayesian networks to depict the hypothesised mechanisms of long COVID in a theory-agnostic manner. Based on the literature and expert knowledge, we created a general modelling framework summarising biological pathways from mild or severe COVID-19 to the development of respiratory symptoms and fatigue over four key periods (t 1 to t 4). We used qualitative parametrisation for design and validation, and tested the framework against four scenarios: A) mild COVID-19 at t 1 (start of acute infection); B) severe acute COVID-19 at t 1; C) symptoms reported at t 1 (acute COVID-19 disease); and D) symptoms reported at t 1 and t 3 (e.g., 3-to-6 months post-acute infection), indicating long COVID. Results Here we show that, in scenario A, the probability of progressing to severe disease and developing persistent organ dysfunction 1-to-2 years post-acute COVID-19 was lower than in scenario C. Those reporting symptoms at t 1 and t 3 have the highest probability of developing persistent organ dysfunction beyond the acute infection period. Conclusions Our findings lay the foundations for a better understanding of the progression of long COVID syndromes. Illustrative simulations support the use of causal models to help address both diagnostic and prognostic questions in long COVID research.

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APA 7

al, G. P. C. E. (2026). Developing a general research framework for long COVID using causal modelling. https://doi.org/10.1038/s43856-026-01488-8

MLA

al, Gladymar Pérez Chacón et. "Developing a general research framework for long COVID using causal modelling." 2026. https://doi.org/10.1038/s43856-026-01488-8.

Chicago

al, Gladymar Pérez Chacón et. 2026. "Developing a general research framework for long COVID using causal modelling.". https://doi.org/10.1038/s43856-026-01488-8.

Harvard

al, G. P. C. E. 2026, Developing a general research framework for long COVID using causal modelling, Nature Portfolio, available at: https://doi.org/10.1038/s43856-026-01488-8 [Accessed 29 Jun. 2026].

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Título
Developing a general research framework for long COVID using causal modelling
Autor / colaboradores
Gladymar Pérez Chacón et al
Editorial
Nature Portfolio
Año de publicación
2026
ISSN
2730-664X
ISSN
2730-664X
Idioma
eng
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