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Anticancer Drug Response Prediction in Cell Lines Using Weighted Graph Regularized Matrix Factorization

机译:使用加权图正则化矩阵分解的细胞系抗癌药物反应预测

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摘要

Precision medicine has become a novel and rising concept, which depends much on the identification of individual genomic signatures for different patients. The cancer cell lines could reflect the “omic” diversity of primary tumors, based on which many works have been carried out to study the cancer biology and drug discovery both in experimental and computational aspects. In this work, we presented a novel method to utilize weighted graph regularized matrix factorization (WGRMF) for inferring anticancer drug response in cell lines. We constructed a p-nearest neighbor graph to sparsify drug similarity matrix and cell line similarity matrix, respectively. Using the sparsified matrices in the graph regularization terms, we performed matrix factorization to generate the latent matrices for drug and cell line. The graph regularization terms including neighbor information could help to exclude the noisy ingredient and improve the prediction accuracy. The 10-fold cross-validation was implemented, and the Pearson correlation coefficient (PCC), root-mean-square error (RMSE), PCCsr, and RMSEsr averaged over all drugs were calculated to evaluate the performance of WGRMF. The results on the Genomics of Drug Sensitivity in Cancer (GDSC) dataset are 0.64 ± 0.16, 1.37 ± 0.35, 0.73 ± 0.14, and 1.71 ± 0.44 for PCC, RMSE, PCCsr, and RMSEsr in turn. And for the Cancer Cell Line Encyclopedia (CCLE) dataset, WGRMF got results of 0.72 ± 0.09, 0.56 ± 0.19, 0.79 ± 0.07, and 0.69 ± 0.19, respectively. The results showed the superiority of WGRMF compared with previous methods. Besides, based on the prediction results using the GDSC dataset, three types of case studies were carried out. The results from both cross-validation and case studies have shown the effectiveness of WGRMF on the prediction of drug response in cell lines.
机译:精密医学已成为一种新颖且兴起的概念,它在很大程度上取决于对不同患者的个体基因组特征的识别。癌细胞系可以反映原发性肿瘤的“组学”多样性,以此为基础,已经在实验和计算方面进行了许多研究癌症生物学和药物发现的工作。在这项工作中,我们提出了一种利用加权图正则化矩阵分解(WGRMF)来推断细胞系中抗癌药物反应的新方法。我们构建了一个p最近邻图来稀疏药物相似性矩阵和细胞系相似性矩阵。使用图正则化条件中的稀疏矩阵,我们执行矩阵分解以生成药物和细胞系的潜在矩阵。包含邻居信息的图形正则项可以帮助排除噪声成分并提高预测准确性。进行了10倍交叉验证,并计算了所有药物的平均Pearson相关系数(PCC),均方根误差(RMSE),PCCsr和RMSEsr,以评估WGRMF的性能。 PCC,RMSE,PCCsr和RMSEsr的癌症药物敏感性基因组学(GDSC)数据集的结果依次为0.64±0.16、1.37±0.35、0.73±0.14和1.71±0.44。对于癌细胞系百科全书(CCLE)数据集,WGRMF的结果分别为0.72±0.09、0.56±0.19、0.79±0.07和0.69±0.19。结果表明,WGRMF与以前的方法相比具有优越性。此外,基于使用GDSC数据集的预测结果,进行了三种类型的案例研究。交叉验证和案例研究的结果均显示了WGRMF在预测细胞系药物反应方面的有效性。

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