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用于预测药物敏感性时间过程的递归框架。

A recursive framework for predicting the time-course of drug sensitivity.

机构信息

Department of Electrical and Computer Engineering, University of Virginia, Charlottesville, VA, USA.

Department of Electrical and Computer Engineering, McGill University, Montreal, QC, Canada.

出版信息

Sci Rep. 2020 Oct 19;10(1):17682. doi: 10.1038/s41598-020-74725-2.

Abstract

The biological processes involved in a drug's mechanisms of action are oftentimes dynamic, complex and difficult to discern. Time-course gene expression data is a rich source of information that can be used to unravel these complex processes, identify biomarkers of drug sensitivity and predict the response to a drug. However, the majority of previous work has not fully utilized this temporal dimension. In these studies, the gene expression data is either considered at one time-point (before the administration of the drug) or two time-points (before and after the administration of the drug). This is clearly inadequate in modeling dynamic gene-drug interactions, especially for applications such as long-term drug therapy. In this work, we present a novel REcursive Prediction (REP) framework for drug response prediction by taking advantage of time-course gene expression data. Our goal is to predict drug response values at every stage of a long-term treatment, given the expression levels of genes collected in the previous time-points. To this end, REP employs a built-in recursive structure that exploits the intrinsic time-course nature of the data and integrates past values of drug responses for subsequent predictions. It also incorporates tensor completion that can not only alleviate the impact of noise and missing data, but also predict unseen gene expression levels (GEXs). These advantages enable REP to estimate drug response at any stage of a given treatment from some GEXs measured in the beginning of the treatment. Extensive experiments on two datasets corresponding to multiple sclerosis patients treated with interferon are included to showcase the effectiveness of REP.

摘要

药物作用机制中涉及的生物过程通常是动态的、复杂的,并且难以识别。时间进程基因表达数据是一种丰富的信息来源,可以用于揭示这些复杂的过程,识别药物敏感性的生物标志物,并预测对药物的反应。然而,以前的大多数工作并没有充分利用这个时间维度。在这些研究中,基因表达数据要么只考虑一个时间点(在药物给药之前),要么只考虑两个时间点(在药物给药之前和之后)。这对于建模动态基因-药物相互作用来说显然是不够的,特别是对于长期药物治疗等应用。在这项工作中,我们利用时间进程基因表达数据,提出了一种新颖的用于药物反应预测的递归预测(REP)框架。我们的目标是在长期治疗的每个阶段,根据在前一个时间点收集的基因表达水平,预测药物反应值。为此,REP 采用了内置的递归结构,利用数据的内在时间进程性质,并将药物反应的过去值集成到后续预测中。它还采用了张量补全,可以减轻噪声和缺失数据的影响,并且可以预测未见过的基因表达水平(GEXs)。这些优势使 REP 能够从治疗开始时测量的一些 GEX 中估计给定治疗的任何阶段的药物反应。包含了针对多发性硬化症患者用干扰素治疗的两个数据集的大量实验,以展示 REP 的有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6460/7573611/6f024a8b1a27/41598_2020_74725_Fig1_HTML.jpg

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