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Name: Ivan Paskov High School: Edgemont Jr. /Sr. High School, Scarsdale, NY

Name: Ivan Paskov High School: Edgemont Jr. /Sr. High School, Scarsdale, NY Mentor: Dr. Christina Leslie Project Title: Predicting Cancer Drug Response Using Nuclear Norm Multi-Task Learning.

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Name: Ivan Paskov High School: Edgemont Jr. /Sr. High School, Scarsdale, NY

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  1. Name: Ivan Paskov High School: Edgemont Jr. /Sr. High School, Scarsdale, NY Mentor: Dr. Christina Leslie Project Title: Predicting Cancer Drug Response Using Nuclear Norm Multi-Task Learning The future of personalized cancer treatment relies on the existence of computational models that can accurately predict a cancer drug's response when given the genetic makeup of a patient's cancer. The current state of the art algorithm, Elastic Net, is limited by its inherent inability to exploit the complex relationships between drugs, which affects its accuracy. I propose a novel computational tool, inspired by the human brain, that takes advantage of the important relationships between drugs to greatly increase the accuracy of its drug response predictions. The increase in accuracy of the proposed method is on average 35% and as high as 61% over the Elastic Net. The superiority of Nuclear Norm’s predictions is further substantiated by hierarchical clustering analysis which highlights their greater biological interpretability over Elastic Net’s. In addition, drug response noise analysis helped direct our research and its results are strongly correlated with our prediction results, which stresses the importance of accurate genomic data. The combination of greater accuracy and biological interpretability allow my model to offer novel insights into cancer. Overall, Nuclear Norm represents a significant step forward for computationally driven personalized cancer treatments and should be included as a standard computational tool in cancer research.

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