Biology-Informed Gaussian Processes (BIOLOGNESE ): Uncertainty-Driven Insights for Biological Dynamics

Bidragets beskrivning

Physics-Informed Machine Learning (PIML) reconciled knowledge- and data-driven modeling of dynamical systems, resulting in a number of successful applications, like improving and speeding up climate models simulations. This combination is also critical for advancing Biology, a field famous for grappling with unsettled knowledge and heterogeneous data, for instance when predicting vaccine response to a new virus in a personalized manner. These features render PIML's direct application to biological systems inherently flawed, preventing its full transformative potential. Thus, I propose a paradigm shift toward a new field, Biology-Informed Machine Learning (BIML), where the emphasis will be put on uncertainty quantification, in a broad sense. This will yield machine learning models equipped with a precise sense of ``what they don't know''. Such models will then be applied to some of the most challenging but impactful healthcare problems that are vaccine and cancer research.
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Startår

2026

Slutår

2030

Beviljade finansiering

Julien Martinelli
692 366 €

Finansiär

Finlands Akademi

Typ av finansiering

Akademiforskare

Beslutfattare

Forskningsrådet för naturvetenskap och teknik
09.06.2026

Övriga uppgifter

Finansieringsbeslutets nummer

377145

Vetenskapsområden

Matematik

Forskningsområden

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