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Locally weighted learning methods for predicting dose-dependent toxicity with application to the human maximum recommended daily dose

机译:局部加权学习方法可预测剂量依赖性毒性,并应用于人的最大推荐日剂量

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Toxicological experiments in animals are carried out to determine the type and severity of any potential toxic effect associated with a new lead compound. The collected data are then used to extrapolate the effects on humans and determine initial dose regimens for clinical trials. The underlying assumption is that the severity of the toxic effects in animals is correlated with that in humans. However, there is a general lack of toxic correlations across species. Thus, it is more advantageous to predict the toxicological effects of a compound on humans directly from the human toxicological data of related compounds. However, many popular quantitative structure-activity relationship (QSAR) methods that build a single global model by fitting all training data appear inappropriate for predicting toxicological effects of structurally diverse compounds because the observed toxicological effects may originate from very different and mostly unknown molecular mechanisms. In this article, we demonstrate, via application to the human maximum recommended daily dose data that locally weighted learning methods, such as k-nearest neighbors, are well suited for predicting toxicological effects of structurally diverse compounds. We also show that a significant flaw of the k-nearest neighbor method is that it always uses a constant number of nearest neighbors in making prediction for a target compound, irrespective of whether the nearest neighbors are structurally similar enough to the target compound to ensure that they share the same mechanism of action. To remedy this flaw, we proposed and implemented a variable number nearest neighbor method. The advantages of the variable number nearest neighbor method over other QSAR methods include (1) allowing more reliable predictions to be achieved by applying a tighter molecular distance threshold and (2) automatic detection for when a prediction should not be made because the compound is outside the applicable domain.
机译:进行了动物毒理学实验,以确定与新铅化合物相关的任何潜在毒性作用的类型和严重性。然后,将收集到的数据用于推断对人类的影响,并确定用于临床试验的初始剂量方案。基本假设是动物毒性作用的严重性与人类的毒性相关。但是,普遍缺乏物种间的毒性相关性。因此,直接从相关化合物的人毒理学数据预测化合物对人的毒理作用是更有利的。但是,许多流行的定量结构-活性关系(QSAR)方法通过拟合所有训练数据来构建单个全局模型,似乎不适用于预测结构多样的化合物的毒理作用,因为观察到的毒理作用可能源自非常不同且几乎未知的分子机制。在本文中,我们通过对人类最大推荐日剂量数据的应用证明,局部加权学习方法(例如k近邻)非常适合预测结构多样的化合物的毒理作用。我们还表明,k最近邻方法的一个重大缺陷是,在预测目标化合物时,总是使用恒定数量的最近邻,无论最近邻在结构上是否与目标化合物足够相似,以确保它们具有相同的作用机制。为了弥补这一缺陷,我们提出并实现了一种变数最近邻方法。可变数最近邻方法相对于其他QSAR方法的优势包括(1)通过应用更严格的分子距离阈值可以实现更可靠的预测,以及(2)自动检测何时由于化合物在外部而不应该进行预测适用的域。

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