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A systematic analysis of genomics-based modeling approaches for prediction of drug response to cytotoxic chemotherapies

机译:基于基因组学的建模方法的系统分析,用于预测药物对细胞毒性化疗的反应

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The availability and generation of large amounts of genomic data has led to the development of a new paradigm in cancer treatment emphasizing a precision approach at the molecular and genomic level. Statistical modeling techniques aimed at leveraging broad scale in vitro, in vivo, and clinical data for precision drug treatment has become an active area of research. As a rapidly developing discipline at the crossroads of medicine, computer science, and mathematics, techniques ranging from accepted to those on the cutting edge of artificial intelligence have been utilized. Given the diversity and complexity of these techniques a systematic understanding of fundamental modeling principles is essential to contextualize influential factors to better understand results and develop new approaches. Using data available from the Genomics of Drug Sensitivity in Cancer (GDSC) and the NCI60 we explore principle components regression, linear and non-linear support vector regression, and artificial neural networks in combination with different implementations of correlation?based feature selection (CBF) on the prediction of drug response for several cytotoxic chemotherapeutic agents. Our results indicate that the regression method and features used have marginal effects on Spearman correlation between the predicted and measured values as well as prediction error. Detailed analysis of these results reveal that the bulk relationship between tissue of origin and drug response is a major driving factor in model performance. These results display one of the challenges in building predictive models for drug response in pan-cancer models. Mainly, that bulk genotypic traits where the signal to noise ratio is high is the dominant behavior captured in these models. This suggests that improved techniques of feature selection that can discriminate individual cell response from histotype response will yield more successful pan-cancer models.
机译:大量基因组数据的可获得性和生成导致癌症治疗新范式的发展,强调在分子和基因组水平上的精密方法。旨在利用大规模体外,体内和临床数据进行精确药物治疗的统计建模技术已成为研究的活跃领域。作为医学,计算机科学和数学十字路口的一门快速发展的学科,已经采用了从公认的技术到人工智能最前沿的技术。鉴于这些技术的多样性和复杂性,对基本建模原理的系统性理解对于将影响因素进行情境化以更好地理解结果并开发新方法至关重要。利用可从癌症药物敏感性基因组学(GDSC)和NCI60获得的数据,我们探索了主成分回归,线性和非线性支持向量回归以及人工神经网络,以及基于相关性特征选择(CBF)的不同实现方式预测几种细胞毒性化学治疗药物的药物反应。我们的结果表明,所使用的回归方法和特征对预测值和测量值之间的Spearman相关性以及预测误差具有边际影响。对这些结果的详细分析表明,起源组织与药物反应之间的主体关系是模型性能的主要驱动因素。这些结果显示了在泛癌模型中建立药物反应预测模型的挑战之一。主要地,信噪比高的大量基因型特征是这些模型中捕获的主要行为。这表明改进的特征选择技术可以将个体细胞应答与组织型应答区别开来,将产生更成功的全癌模型。

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