How AI is Predicting 1,000+ Diseases Years Ahead

Mon Sep 22 2025
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KEY POINTS

  • Delphi-2M trained on UK Biobank data
  • Uses transformer architecture like ChatGPT
  • Early but promising for preventative medicine
  • Needs more testing before clinical use

ISLAMABAD: Scientists announced that they have developed an AI model capable of predicting medical diagnoses several years in advance, using the same technology that powers consumer chatbots like ChatGPT.

Drawing on a patient’s medical history, the Delphi-2M AI “predicts the rates of more than 1,000 diseases” years ahead, according to a team from British, Danish, German, and Swiss institutions in a paper published in the journal Nature.

The researchers trained the model using data from the UK Biobank – a vast biomedical research database containing information on around half a million participants.

AI learns medical patterns like language

Neural networks based on the so-called “transformer” architecture – the “T” in “ChatGPT” – are well-known for handling language-related tasks, as seen in chatbots and their numerous imitators and competitors.

However, understanding a sequence of medical diagnoses is “a bit like learning the grammar in a text,” explained Moritz Gerstung, an AI expert from the German Cancer Research Center.

Delphi-2M “learns the patterns in healthcare data, preceding diagnoses, in which combinations they occur and in which succession”, enabling “very meaningful and health-relevant predictions,” he added.

Validated on millions, but further testing needed

Gerstung presented data suggesting the AI could identify individuals at significantly higher or lower risk of a heart attack than predicted by age and other factors alone.

The team validated Delphi-2M’s accuracy by testing it on nearly two million individuals from Denmark’s public health database.

Nonetheless, Gerstung and his colleagues emphasised that the Delphi-2M tool requires further validation and is not yet ready for clinical application.

Potential to transform preventative healthcare

“This is still a long way from improved healthcare as the authors acknowledge that both (British and Danish) datasets are biased in terms of age, ethnicity and current healthcare outcomes,” noted Peter Bannister, a health technology researcher and fellow at Britain’s Institution of Engineering and Technology.

Looking ahead, systems like Delphi-2M could “guide the monitoring and possibly earlier clinical interventions for effectively a preventative type of medicine,” said Gerstung.

On a broader scale, such tools could aid in the “optimization of resources across a stretched healthcare system,” added Tom Fitzgerald, co-author from the European Molecular Biology Laboratory.

Broader impact on healthcare resource management

Currently, doctors in many countries use computer tools like the QRISK3 programme, which British GPs employ to estimate heart attack or stroke risk.

Delphi-2M, in contrast, “can do all diseases at once and over a long time period,” said co-author Ewan Birney.

Gustavo Sudre, a professor specialising in medical AI at King’s College London, described the research as “a significant step towards scalable, interpretable and – most importantly – ethically responsible predictive modelling.”

“Interpretable” or “explainable” AI remains a key focus in the field, since the inner workings of many large AI models remain opaque even to their developers.

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