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Dr. Ibrahim Zaghloul Abdelbaky :: Publications:

Title:
Machine learning based identification potential feature genes for prediction of drug efficacy in nonalcoholic steatohepatitis animal model
Authors: Marwa Matboli, Ibrahim Abdelbaky, Abdelrahman Khaled, Radwa Khaled, Shaimaa Hamady, Laila M Farid, Mariam B Abouelkhair, Noha E El-Attar, Mohamed Farag Fathallah, Manal S Abd EL Hamid, Gena M Elmakromy, Marwa Ali
Year: 2024
Keywords: Not Available
Journal: Lipids in Health and Disease
Volume: 23
Issue: 1
Pages: 266
Publisher: BioMed Central
Local/International: International
Paper Link:
Full paper Not Available
Supplementary materials Not Available
Abstract:

Background Nonalcoholic Steatohepatitis (NASH) results from complex liver conditions involving metabolic, inflammatory, and fibrogenic processes. Despite its burden, there has been a lack of any approved food-and-drug administration therapy up till now. Purpose Utilizing machine learning (ML) algorithms, the study aims to identify reliable potential genes to accurately predict the treatment response in the NASH animal model using biochemical and molecular markers retrieved using bioinformatics techniques. Methods The NASH-induced rat models were administered various microbiome-targeted therapies and herbal drugs for 12 weeks, these drugs resulted in reducing hepatic lipid accumulation, liver inflammation, and histopathological changes. The ML model was trained and tested based on the Histopathological NASH score (HPS); while (0–4) HPS considered Improved NASH and (5–8) considered non …

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