Artificial intelligence is increasingly being judged on clinical progress and tangible outcomes, not just models and algorithms. Once a speculative concept, AI-driven drug discovery is now generating real-world data, advancing molecules into human studies, reshaping target identification, and gaining attention from regulators who are becoming more comfortable with AI-supported development.
One of the most notable examples of this shift is Rentosertib, a small-molecule inhibitor discovered using generative AI. Originally identified by Insilico Medicine’s AI platform, this compound has progressed into Phase IIa clinical investigation for idiopathic pulmonary fibrosis, making it one of the most advanced AI-discovered drug candidates to date. Its rapid journey from target discovery to a named clinical candidate underscores the accelerating pace enabled by AI-augmented workflows.
Across the industry, AI is being applied at virtually every stage of the drug discovery pipeline, from early target identification and lead generation, to optimisation of clinical protocols and patient selection. According to a recent review, these technologies are overcoming longstanding challenges in traditional pipelines by linking complex biological data, streamlining compound design, and drastically shortening time-to-decision.
From Algorithms to Early Clinical Success
Although no AI-designed drug has yet received regulatory approval, several AI-discovered compounds are now in mid-stage human trials, marking a watershed moment in the field. For example, Rentosertib’s clinical progress is being widely cited as proof that AI-generated molecules can advance beyond preclinical stages into meaningful clinical evaluation.
Another noteworthy trend is the success rate of AI-assisted candidates in early clinical phases. Analyses indicate that molecules identified or optimised with generative AI models are achieving higher Phase I success rates; in some reports up to 80–90 percent, compared with historical averages of 40–65 percent for traditional discovery programmes. This suggests that AI is not only accelerating timelines but may be improving the quality of early candidates entering human studies.
AI is also being harnessed to enhance clinical trial design. Machine learning models are improving patient stratification, adaptive trial protocols, and synthetic control arm creation, enabling smaller, more efficient studies with enhanced statistical power. These approaches are increasingly enabling regulators and developers to better understand likely responders and refine clinical endpoints earlier in development.
Target Discovery and Molecular Design
Generative AI models, including large language models and advanced neural networks, are transforming the design of novel molecules. These systems can rapidly explore vast chemical spaces and propose candidates with optimized properties such as binding affinity, pharmacokinetics, and safety profiles. Advances in protein structure prediction, such as those enabled by deep learning, further inform rational drug design and increase confidence in AI-generated proposals.
Beyond de novo design, AI is being used to rediscover and repurpose existing drugs, potentially shortening development timelines and reducing costs. By mining integrated datasets that combine molecular mechanisms with clinical outcomes, AI platforms can match legacy drugs to new indications, expanding therapeutic opportunities.
Regulatory Comfort and Integration
Regulatory bodies are increasingly engaging with AI technologies in drug development. The U.S. Food and Drug Administration and European Medicines Agency have been exploring frameworks for AI integration in regulatory submissions and trial design. In some instances, regulators are advancing AI tools themselves, such as qualifying software that accelerates assessment of liver disease drug candidates, signalling a growing institutional comfort with AI-augmented workflows.
Workshops and draft guidance documents demonstrate that regulators view AI not as a peripheral novelty, but as a core analytical tool, provided models are transparent, validated, and appropriately governed. This momentum underscores a broader realisation that AI can support evidence generation throughout the lifecycle of drug development.
What Comes Next
As more AI-generated molecules enter mid-stage clinical investigation, industry stakeholders will be watching for measurable outcomes on safety and efficacy. Success in Phase III trials, regulatory filings, or even early approvals would represent a definitive shift from AI as a supporting technology to AI as a primary driver of therapeutic innovation.
Companies across biotech and pharma are making strategic investments to fully integrate AI into their discovery and development platforms. Partnerships, internal AI labs, and collaborations with technology providers are positioning organisations to harness data-driven insights across target discovery, lead optimisation, and clinical strategy.
Ultimately, the transition from hype to measurable output in AI drug discovery reflects broader trends in biomedical innovation: data integration, computational precision, and iterative learning. As clinical evidence mounts and regulatory frameworks evolve, AI’s role is likely to extend from computational support into core pharmaceutical decision-making, reshaping how new medicines are discovered, developed, and delivered.













