IJBTCS Conference Publications Section

Targeting Prostate Cancer through Multi-Protein Modeling: A Computational Drug Discovery Approach

Authors
  • Rehab Elkardawy

    Bsc in Biomedical Sciences, Collage of Health Sciences, Qatar University
    Author
  • Abdelghani HADDOU

    Author
  • Hilana Mounir

    Author
  • Aliaa A. Al Kassem

    Author
  • Menna Khalaf

    Author
  • Mahmoud A. Elbas

    Author
  • Abdul Aziz K. Abdul Latif

    Author
  • Israa M. Shamkh

    Author
  • Omran MM

    Author
  • Laith B. Alhusseini

    Author
Keywords:
Prostate cancer, biomarkers, computer-aided drug design, cancer, drug, Translational bioinformatics, Structural bioinformatics, Chemoinformatic
Abstract

Prostate cancer continues to represent a major clinical challenge, particularly in its advanced and castration-resistant stages, where therapeutic resistance and pathway redundancies hinder the effectiveness of single-target therapies. This study presents a comprehensive in silico drug discovery framework employing computational multi-target design strategies to identify novel inhibitors that can disrupt key oncogenic and regulatory proteins involved in prostate cancer progression. A total of 20 proteins were selected across multiple signaling pathways, including PI3K/AKT/mTOR, MAPK/ERK, Androgen Receptor (AR), p53, and RB/E2F, based on their established roles in tumor proliferation, survival, metastasis, and therapy resistance. The computational pipeline integrated protein structure modeling, virtual screening, molecular docking, and binding affinity evaluation. A large, diverse compound library comprising natural phytochemicals, marine-derived agents, and synthetic molecules was screened for potential multi-protein modulators. Each protein-ligand interaction was assessed for specificity, selectivity, and stability, with several promising candidates identified for targets such as AR, AKT1, PTEN, p53, and mTOR. This entirely in silico study demonstrates the power of computational drug design in accelerating the identification of multi-target inhibitors with high therapeutic potential. While no laboratory or clinical experiments were conducted at this stage, the results lay a strong foundation for future in vitro and in vivo investigations. Ultimately, this strategy opens new avenues toward the development of more effective, multi-targeted therapeutics for advanced prostate cancer. 

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Published
2025-07-21
Section
Conference Abstract
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Copyright (c) 2025 Rehab Elkardawy, Omran MM, Israa M. Shamkh, Abdul Aziz K. Abdul Latif, Mahmoud A. Elbas, Menna Khalaf , Aliaa A. Al Kassem, Hilana Mounir, Abdelghani HADDOU, Laith B. Alhusseini (Author)

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

This work is licensed under a Creative Commons Attribution 4.0 International License.

How to Cite

Targeting Prostate Cancer through Multi-Protein Modeling: A Computational Drug Discovery Approach. (2025). IJBTCS- Conference Publications Section, 1(1). https://doi.org/10.63850/ijbtcs-cps.v1.i1.a9

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