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首页> 外文期刊>Biology Direct >Diverse approaches to predicting drug-induced liver injury using gene-expression profiles
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Diverse approaches to predicting drug-induced liver injury using gene-expression profiles

机译:使用基因表达型材预测药物诱导的药物诱导的肝损伤的不同方法

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Drug-induced liver injury (DILI) is a serious concern during drug development and the treatment of human disease. The ability to accurately predict DILI risk could yield significant improvements in drug attrition rates during drug development, in drug withdrawal rates, and in treatment outcomes. In this paper, we outline our approach to predicting DILI risk using gene-expression data from Build 02 of the Connectivity Map (CMap) as part of the 2018 Critical Assessment of Massive Data Analysis CMap Drug Safety Challenge. First, we used seven classification algorithms independently to predict DILI based on gene-expression values for two cell lines. Similar to what other challenge participants observed, none of these algorithms predicted liver injury on a consistent basis with high accuracy. In an attempt to improve accuracy, we aggregated predictions for six of the algorithms (excluding one that had performed exceptionally poorly) using a soft-voting method. This approach also failed to generalize well to the test set. We investigated alternative approaches—including a multi-sample normalization method, dimensionality-reduction techniques, a class-weighting scheme, and expanding the number of hyperparameter combinations used as inputs to the soft-voting method. We met limited success with each of these solutions. We conclude that alternative methods and/or datasets will be necessary to effectively predict DILI in patients based on RNA expression levels in cell lines. This article was reviewed by Pawe? P Labaj and Aleksandra Gruca (both nominated by David P Kreil).
机译:药物诱导的肝损伤(DILI)是在药物开发和人类疾病的治疗过程中严重关注。准确预测帝力风险的能力可以在药物开发期间药物磨损率的显着改善,药物戒断率和治疗结果。在本文中,我们概述了我们的方法来预测使用连接图(CMAP)的构建02的基因表达数据来预测DiRI风险,作为2018年大规模数据分析CMAP药物安全挑战的关键评估。首先,我们使用七种分类算法独立地基于两种细胞系的基因表达值来预测DILI。类似于其他挑战参与者观察到的,这些算法均未以高精度持续地预测肝损伤。为了提高准确性,我们使用软投票方法将六种算法的预测汇总了六种算法(不包括差劲差劲)的预测。这种方法也未能概括到测试集。我们调查了替代方法 - 包括多样化归一化方法,维度减少技术,类加权方案,并扩展用作软投票方法的超参数组合的数量。我们遇到了每个解决方案的成功有限。我们得出结论,基于细胞系中的RNA表达水平,有必要在患者中有效地预测替代方法和/或数据集。这篇文章由Pawe审核? P Labaj和Aleksandra Gruca(包括David P Kreil所提名)。

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