2024
DOI: 10.21203/rs.3.rs-4354480/v1
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Are we there yet? AI on traditional blood tests efficiently detects common and rare diseases

Ákos Németh,
Gábor Tóth,
Péter Fülöp
et al.

Abstract: Chronic workforce shortages, unequal distribution, and rising labor costs are crucial challenges for most healthcare systems. The past years have seen a rapid technological transition to counter these pressures. We developed an AI-assisted software with ensemble learning on a retrospective data set of over one million patients that only uses routine and broadly available blood tests to predict the possible presence of major chronic and acute diseases as well as rare disorders. We evaluated the software perform… Show more

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