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How AI can recode the difficult process of drug discovery

Research organisations are banking on technology to help improve the odds of approval

Discovering new drugs is an expensive proposition. From 2012 to 2022, adjusting for inflation, spending on pharmaceutical research and development increased by almost half to roughly $250bn, according to Bernstein Research. Yet the number of novel drug approvals remained broadly flat. Artificial intelligence could help. 

Birthing a new treatment is fraught with challenges. Looking into hospital-acquired bacterial pneumonia in a 1,000 patient Phase 3 trial cost just shy of $90,000 per patient, according to research by Tufts and Duke universities. Insufficient guinea pigs are another problem; in one study, more than two-thirds of UK trials failed to enrol sufficient candidates.

Jack Scannell and fellow researchers, writing over a decade ago, dubbed this Eroom’s Law. This is the backwards version of Moore’s Law, which predicts that the number of transistors that can be squeezed on to a microchip doubles every two years. The number of new drugs per $1bn spent on R&D has halved about every nine years since 1950. Trials from Phase 1 to launch still take a decade on average, calculates McKinsey, and even then only one in 10 succeeds.

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