Automated Reasoning in Systems Biology: a Necessity for Precision Medicine
Pedro Zuidberg Dos Martires, Vincent Derkinderen, Luc De Raedt, and Marcus Krantz

TL;DR
This paper advocates for integrating formal knowledge representation and automated reasoning into systems biology to enhance precision medicine, emphasizing the importance of expert knowledge formalization over purely data-driven AI approaches.
Contribution
It highlights the potential of combining KR and SysBio to advance scientific understanding and develop reasoning tools tailored to biological complexities, fostering progress toward precision medicine.
Findings
Interdisciplinary approach can improve systems biology research.
Formal knowledge representation can address biological data challenges.
Automated reasoning tools can enable novel scientific questions.
Abstract
Recent developments in AI have reinvigorated pursuits to advance the (life) sciences using AI techniques, thereby creating a renewed opportunity to bridge different fields and find synergies. Headlines for AI and the life sciences have been dominated by data-driven techniques, for instance, to solve protein folding with next to no expert knowledge. In contrast to this, we argue for the necessity of a formal representation of expert knowledge - either to develop explicit scientific theories or to compensate for the lack of data. Specifically, we argue that the fields of knowledge representation (KR) and systems biology (SysBio) exhibit important overlaps that have been largely ignored so far. This, in turn, means that relevant scientific questions are ready to be answered using the right domain knowledge (SysBio), encoded in the right way (SysBio/KR), and by combining it with modern…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies
