Learning Interpretable Disease Self-Representations for Drug Repositioning

14 Sep 2019Fabrizio FrascaDiego GaleanoGuadalupe GonzalezIvan LaponogovKirill VeselkovAlberto PaccanaroMichael M. Bronstein

Drug repositioning is an attractive cost-efficient strategy for the development of treatments for human diseases. Here, we propose an interpretable model that learns disease self-representations for drug repositioning... (read more)

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