Mathematical modelling, selection and hierarchical inference to determine the minimal dose in IFNα therapy against myeloproliferative neoplasms

Gurvan Hermange, William Vainchenker, Isabelle Plo, Paul Henry Cournède

    Résultats de recherche: Contribution à un journalArticleRevue par des pairs

    Résumé

    Myeloproliferative neoplasms (MPN) are blood cancers that appear after acquiring a driver mutation in a hematopoietic stem cell. These hematological malignancies result in the overproduction of mature blood cells and, if not treated, induce a risk of cardiovascular events and thrombosis. Pegylated IFNα is commonly used to treat MPN, but no clear guidelines exist concerning the dose prescribed to patients. We applied a model selection procedure and ran a hierarchical Bayesian inference method to decipher how dose variations impact the response to the therapy. We inferred that IFNα acts on mutated stem cells by inducing their differentiation into progenitor cells; the higher the dose, the higher the effect. We found that the treatment can induce long-term remission when a sufficient (patient-dependent) dose is reached. We determined this minimal dose for individuals in a cohort of patients and estimated the most suitable starting dose to give to a new patient to increase the chances of being cured.

    langue originaleAnglais
    Pages (de - à)110-134
    Nombre de pages25
    journalMathematical Medicine and Biology
    Volume41
    Numéro de publication2
    Les DOIs
    étatPublié - 1 juin 2024

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