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SYNPRED: prediction of drug combination effects in cancer using different synergy metrics and ensemble learning.

António J PretoPedro Matos-FilipeJoana MourãoIrina S Moreira
Published in: GigaScience (2022)
The performance of SYNPRED rivals that of the existing methods that tackle the same problem, yielding unbiased results trained with one of the most comprehensive datasets available (NCI ALMANAC). The leveraging of different reference models allowed deeper insights into which of them can be more appropriately used for synergy prediction. The Combination Sensitivity Score clearly stood out with improved performance among the full scope of surveyed approaches and synergy reference models. Furthermore, SYNPRED takes a particular focus on data interpretability, which has been in the spotlight lately when using the most advanced AI techniques.
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