RECOVER: Efficient exploration of the drug combination space via model-guided in vitro experiments - Paul Bertin

RECOVER: Efficient exploration of the drug combination space via model-guided in vitro experiments - Paul Bertin

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Abstract: Combining drugs opens new possibilities for tailoring therapies to a given disease and targeting several biological pathways at the same time. However the number of possible drug combinations is huge, and only a tiny portion of this space can be explored in a reasonable amount of time. One could either narrowly focus on experimenting with a very restricted number of well-chosen drugs, based on pre-existing biological knowledge, or broaden the scope by exploring uncharted territories with the risk of very low time and cost efficiency.

Speaker: Paul Bertin - https://bertinus.github.io/

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