Abstract

BackgroundCancer is one of the main causes of death worldwide. Combination drug therapy has been a mainstay of cancer treatment for decades and has been shown to reduce host toxicity and prevent the development of acquired drug resistance. However, the immense number of possible drug combinations and large synergistic space makes it infeasible to screen all effective drug pairs experimentally. Therefore, it is crucial to develop computational approaches to predict drug synergy and guide experimental design for the discovery of rational combinations for therapy.ResultsWe present a new deep learning approach to predict synergistic drug combinations by integrating gene expression profiles from cell lines and chemical structure data. Specifically, we use principal component analysis (PCA) to reduce the dimensionality of the chemical descriptor data and gene expression data. We then propagate the low-dimensional data through a neural network to predict drug synergy values. We apply our method to O’Neil’s high-throughput drug combination screening data as well as a dataset from the AstraZeneca-Sanger Drug Combination Prediction DREAM Challenge. We compare the neural network approach with and without dimension reduction. Additionally, we demonstrate the effectiveness of our deep learning approach and compare its performance with three state-of-the-art machine learning methods: Random Forests, XGBoost, and elastic net, with and without PCA-based dimensionality reduction.ConclusionsOur developed approach outperforms other machine learning methods, and the use of dimension reduction dramatically decreases the computation time without sacrificing accuracy.

Highlights

  • Cancer is one of the main causes of death worldwide

  • We developed a new deep learning approach with dimensionality reduction to predict synergistic drug combinations by integrating gene expression profiles of cell lines and chemical structure data

  • Comparison of the feedforward neural network with other machine learning methods We compared the performance of the feedforward neural network with the elastic net [42], Random Forests [43], and eXtreme Gradient Boosting package (XGBoost) [44] methods used in previous studies for drug synergy prediction

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Summary

Results

Synergy score We used O’Neil’s high-throughput drug combination screening data to train our models [15]. Architecture of the feedforward neural network The architecture of the deep learning model was determined by the hyperparameter selection procedure. This procedure identified that tanh normalization, comprising standardization and a hyperbolic tangent followed by a second standardization, performed the best. The model has a conic architecture comprising two hidden layers, with 107 neurons in the first layer and 54 in the second It uses tanh input normalization and has a learning rate of 10− 5, an input dropout rate of 0.2, and a hidden layer dropout rate of 0.5.

Conclusions
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