A GENERATIVE RECOMMENDER SYSTEM WITH GMM PRIOR FOR CANCER DRUG GENERATION AND SENSITIVITY PREDICTION

被引:0
|
作者
Koras, Krzysztof [1 ]
Mozejko, Marcin [1 ]
Szymczak, Paulina [1 ]
Izdebski, Adam [1 ]
Staub, Eike [2 ]
Szczurek, Ewa [1 ]
机构
[1] Univ Warsaw, Fac Math Informat & Mech, Warsaw, Poland
[2] Merck KGaA, Dept Bioinformat, Translat Med, Darmstadt, Germany
关键词
MECHANISMS; DISCOVERY;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Recent emergence of high-throughput drug screening assays sparkled an intensive development of machine learning methods, including models for prediction of sensitivity of cancer cell lines to anticancer drugs, as well as methods for generation of potential drug candidates. However, the concept of generating compounds with specific properties and simultaneous modeling of their efficacy against cancer cell lines has not been comprehensively explored. To address this need, we present VADEERS, a Variational Autoencoder-based Drug Efficacy Estimation Recommender System. The generation of compounds is performed by a novel variational autoencoder with a semi-supervised Gaussian mixture model (GMM) prior. The prior defines a clustering in the latent space, where the clusters are associated with specific drug properties. In addition, VADEERS is equipped with a cell line autoencoder and a sensitivity prediction network. The model combines SMILES string representations of anti-cancer drugs, their inhibition profiles against a panel of protein kinases, cell lines' biological features and measurements of the sensitivity of the cell lines to the drugs. The evaluated variants of VADEERS achieve a high r = 0.87 Pearson correlation between true and predicted drug sensitivity estimates. We show that the learned latent representations and new generated data points accurately reflect the given clustering. In summary, VADEERS offers a comprehensive model of drugs' and cell lines' properties and relationships between them, as well as a guided generation of novel compounds.
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页数:13
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