2024
DOI: 10.1093/bib/bbae379
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Trust me if you can: a survey on reliability and interpretability of machine learning approaches for drug sensitivity prediction in cancer

Kerstin Lenhof,
Lea Eckhart,
Lisa-Marie Rolli
et al.

Abstract: With the ever-increasing number of artificial intelligence (AI) systems, mitigating risks associated with their use has become one of the most urgent scientific and societal issues. To this end, the European Union passed the EU AI Act, proposing solution strategies that can be summarized under the umbrella term trustworthiness. In anti-cancer drug sensitivity prediction, machine learning (ML) methods are developed for application in medical decision support systems, which require an extraordinary level of trus… Show more

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