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Statistical evaluation of the Predictive Toxicology Challenge 2000-2001

机译:预测性毒理学挑战2000-2001的统计评估

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Motivation: The development of in silico models to predict chemical carcinogenesis from molecular structure would help greatly to prevent environmentally caused cancers. The Predictive Toxicology Challenge (PTC) competition was organized to test the state-of-the-art in applying machine learning to form such predictive models. Results: Fourteen machine learning groups generated istic (ROC) space allowed the models to be uniformly compared regardless of the error cost function. We developed a statistical method to test if a model performs significantly better than random in ROC space. Using this test as criteria five models performed better than random guessing at a significance level p of 0.05 (not corrected for multiple testing). Statistically the best predictor was the Viniti model for female mice, with p value below 0.002. The toxicologically most interesting models were Leuven2 for male mice, and Kwansei for female rats. These models performed well in the statistical analysis and they are in the middle of ROC space, i.e. distant from extreme cost assumptions. These predictive models were also independently judged by domain experts to be among the three most interesting, and are believed to include a small but significant amount of empirically learned toxicological knowledge.
机译:动机:计算机模拟模型的发展可从分子结构预测化学致癌作用,这将极大地预防环境致癌。组织了预测性毒理学挑战赛(PTC),以测试应用机器学习形成此类预测模型的最新技术。结果:14个机器学习组生成的逻辑(ROC)空间允许对模型进行统一比较,而与错误成本函数无关。我们开发了一种统计方法来测试模型在ROC空间中的性能是否明显优于随机模型。使用此测试作为标准,在显着性水平p为0.05(未针对多次测试进行校正)的情况下,五个模型的表现优于随机猜测。统计学上最好的预测因子是雌性小鼠的Viniti模型,p值低于0.002。毒理学上最有趣的模型是雄性小鼠的Leuven2和雌性大鼠的Kwansei。这些模型在统计分析中表现良好,并且处于ROC空间的中间,即远离极端成本假设。这些预测模型也由领域专家独立判断为最有趣的三种模型,并且认为其中包括少量但大量的经验性毒理学知识。

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