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Multitask learning improves prediction of cancer drug sensitivity

机译:多任务学习提高了对癌症药物敏感性的预测

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摘要

Precision oncology seeks to predict the best therapeutic option for individual patients based on the molecular characteristics of their tumors. To assess the preclinical feasibility of drug sensitivity prediction, several studies have measured drug responses for cytotoxic and targeted therapies across large collections of genomically and transcriptomically characterized cancer cell lines and trained predictive models using standard methods like elastic net regression. Here we use existing drug response data sets to demonstrate that multitask learning across drugs strongly improves the accuracy and interpretability of drug prediction models. Our method uses trace norm regularization with a highly efficient ADMM (alternating direction method of multipliers) optimization algorithm that readily scales to large data sets. We anticipate that our approach will enhance efforts to exploit growing drug response compendia in order to advance personalized therapy.
机译:精密肿瘤学试图根据患者肿瘤的分子特征预测最佳治疗方案。为了评估药物敏感性预测的临床前可行性,一些研究已经测量了基因组和转录组特征性癌细胞系的大量集合对细胞毒性和靶向疗法的药物反应,并使用诸如弹性网回归的标准方法训练了预测模型。在这里,我们使用现有的药物反应数据集来证明跨药物的多任务学习极大地提高了药物预测模型的准确性和可解释性。我们的方法使用跟踪范数正则化和高效的ADMM(乘法器的交替方向方法)优化算法,该算法可以轻松扩展到大型数据集。我们预计,我们的方法将加大努力开发不断增长的药物反应纲领,以推进个性化治疗。

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