AI approach identifies 124 New Anti-HIV drug candidates from a 37 Billion-Compound Database – Accelerating and Cost-Effective Drug Discovery

This research highlights a major advancement in computational drug discovery. By applying an AI-driven screening method to a virtual database of over 37 billion chemical compounds, our team identified 124 novel drug candidates with high potential to inhibit HIV replication. This breakthrough dramatically reduces the time and cost typically required for early-stage drug discovery.

The project combines molecular docking, pharmacokinetics modeling, and machine learning to filter vast datasets with precision. The identified compounds are now being prioritized for preclinical validation in collaboration with academic and clinical partners across Africa and Europe.

This AI pipeline demonstrates how large-scale, data-driven approaches can bring hope for faster and more affordable treatment options for HIV – a disease still highly prevalent in sub-Saharan Africa. It also reinforces the role of artificial intelligence in democratizing pharmaceutical innovation and tackling global health challenges.

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Dr. Alexandre de Fátima Cobre, a Mozambican scientist affiliated with The University of Manchester (UK), specialist in AI applied to drug discovery, collaborator of the WHO, and founder of MozBioMed.AI.

  • Ranked among the Top 3 Pharmaceutical Scientists in Brazil (2025)
  • Author of over 50 international publications
  • Recognized for pioneering AI-based discoveries in COVID-19

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