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Application of Data Mining and Visualization Techniques for the Prediction of Drug-Induced Nausea in Man

机译:数据挖掘和可视化技术在预测人类药物性恶心中的应用

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摘要

The therapeutic value of many drugs can be limited by gastrointestinal (GI) adverse effects such as nausea and vomiting. Nausea is a subjective human sensation, hence little is known about preclinical biomarkers that may accurately and effectively predict its presence in man. The aim of this analysis was to use informatics and data-mining tools to identify plausible preclinical GI effects that may be associated with nausea and that could be of potential use in its prediction. A total of 86 marketed drugs were used in this analysis, and the main outcome was a confirmation that nausogenic and non-nausogenic drugs can be clearly separated based on their preclinical GI observations. Specifically, combinations of common preclinical GI effects (vomiting, diarrhea, and salivary hypersecretion) proved to be strong predictors. The model was subsequently validated with a subset of 20 blinded proprietary small molecules and successfully predicted clinical outcome in 90% of cases. This investigation demonstrated the feasibility of data-mining approaches to facilitate discovery of novel, plausible associations that can be used to understand drug-induced adverse effects.
机译:许多药物的治疗价值可能受到胃肠道(GI)不良反应(例如恶心和呕吐)的限制。恶心是一种主观的人类感觉,因此对临床前生物标志物知之甚少,这些标志物可以准确有效地预测其在人体内的存在。这项分析的目的是使用信息学和数据挖掘工具来确定可能与恶心相关的,可能在其预测中可能有用的临床前胃肠道作用。该分析中总共使用了86种市售药物,主要结果是证实可以根据临床前GI观察清楚地分离出致敏和非致敏药物。具体来说,常见的临床前胃肠道反应(呕吐,腹泻和唾液分泌过多)的组合被证明是强有力的预测指标。随后,使用20个盲目专有小分子的子集验证了该模型,并成功预测了90%的病例的临床结局。这项研究证明了数据挖掘方法的可行性,以促进发现新颖,合理的关联,这些关联可用于了解药物引起的不良反应。

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