Dynamic strategies and optimal control analysis for hepatitis C management: non-invasive liver fibrosis diagnosis

Journal article


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Publication Details

Author listZarin R., Shukla, N., Khan, A., Shukla, J. & Humphries, U. W.

PublisherTaylor and Francis Group

Publication year2024

Start page1

End page24

Number of pages24

ISSN1025-5842

eISSN1476-8259

URLhttps://www.tandfonline.com/doi/full/10.1080/10255842.2024.2410976#abstract

LanguagesEnglish-Great Britain (EN-GB)


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Abstract

This study proposes a novel model employing nonlinear ordinary differential equations to dissect HCV dynamics. Six distinct population groups are delineated: Susceptible, Treatment, Responder, Non-Responder, Cured, and Fibrosis. A detailed numerical analysis of this model was conducted, tracking the predicted trends over a span of 20 years. The primary objective of this analysis is to assess and confirm the model’s predictive accuracy and its potential to supplant invasive diagnostic methods in monitoring the progression of liver fibrosis. By incorporating various control parameters, namely u1ðtÞ, u2ðtÞ, and u3ðtÞ, the model offers a nuanced perspective on disease progression and treatment outcomes. Parameter u1ðtÞ modulates treatment-induced fibrosis progression, providing a crucial lever for mitigating treatment-related side effects. u2ðtÞ reflects treatment effectiveness, capturing the proportion of responders within the treatment cohort. Meanwhile, u3ðtÞ governs fibrosis progression in non-responders, shedding light on the disease’s natural trajectory without effective treatment.


Keywords

Hepatitis C virusliver fibrosisoptimal controlsensitivity analysisstability


Last updated on 2025-21-08 at 12:00