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Drug-induced liver injury classification model based on in vitro human transcriptomics and in vivo rat clinical chemistry data

机译:基于体外人类转录组学和体内大鼠临床化学数据的药物性肝损伤分类模型

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In this study, we developed a transcriptomics based human in vitro model for predicting DILI in humans. The transcriptomics data (Affymetrix GeneChip Human Genome U133 Plus 2.0) from primary human hepatocytes were provided by the Japanese Toxicogenomics Project (TGP). The selected compounds were divided into two groups, i.e., most-DILI and no-DILI, based on FDA-approved drug labels. The compounds were further grouped in a training and validation set. The training set, containing the most extreme most-DILI and no-DILI compounds based on the in vivo rat clinical chemistry measurements from TGP, was used to develop the prediction model. The validation set showed high accuracy (> 90%) and performed better than splitting the compounds into training and validation set randomly.
机译:在这项研究中,我们开发了基于转录组学的人类体外模型来预测人类的DILI。来自人类原代肝细胞的转录组学数据(Affymetrix GeneChip人类基因组U133 Plus 2.0)由日本毒物基因组计划(TGP)提供。根据FDA批准的药物标签,将选定的化合物分为两组,即大多数DILI和非DILI。将这些化合物进一步分为训练和验证集。基于TGP体内大鼠临床化学测量结果,包含最极端的DILI和非DILI化合物的训练集用于建立预测模型。验证集显示出较高的准确性(> 90%),并且比将化合物随机分为训练集和验证集更好。

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