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Infer the in vivo point of departure with ToxCast in vitro assay data using a robust learning approach

机译:使用强大的学习方法推断使用Toxcast的体外测定数据的体内偏离点

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The development and application of high throughput in vitro assays is an important development for risk assessment in the twenty-first century. However, there are still significant challenges to incorporate in vitro assays into routine toxicity testing practices. In this paper, a robust learning approach was developed to infer the in vivo point of departure (POD) with in vitro assay data from ToxCast and Tox21 projects. Assay data from ToxCast and Tox21 projects were utilized to derive the in vitro PODs for several hundred chemicals. These were combined with in vivo PODs from ToxRefDB regarding the rat and mouse liver to build a high-dimensional robust regression model. This approach separates the chemicals into a majority, well-predicted set; and a minority, outlier set. Salient relationships can then be learned from the data. For both mouse and rat liver PODs, over 93% of chemicals have inferred values from in vitro PODs that are within ±?1 of the in vivo PODs on the log~(10)scale (the target learning region, or TLR) and R _(2)of 0.80 (rats) and 0.78 (mice) for these chemicals. This is comparable with extrapolation between related species (mouse and rat), which has 93% chemicals within the TLR and the R _(2)being 0.78. Chemicals in the outlier set tend to also have more biologically variable characteristics. With the continued accumulation of high throughput data for a wide range of chemicals, predictive modeling can provide a valuable complement for adverse outcome pathway?based approach in risk assessment.
机译:高通量在体外测定的开发和应用是二十一世纪风险评估的重要发展。然而,将体外测定纳入常规毒性测试实践仍存在重大挑战。在本文中,开发了一种强大的学习方法,以推断出来自FOXCAST和TOX21项目的体外测定数据的体内脱离点(POD)。来自Toxcast和TOX21项目的测定数据用于衍生数百种化学物质的体外豆荚。这些与来自毒物的体内荚与毒物和小鼠肝脏的体内荚相结合,以构建高维鲁棒回归模型。这种方法将化学物质分成多数,预测的套装;和少数民族,比较集。然后可以从数据中学习突出关系。对于两种小鼠和大鼠肝荚,超过93%的化学物质已经从体外豆荚中推断出在数体内窗口中的±1内的体外豆荚(目标学习区域,或TLR)和R这些化学品的0.80(大鼠)和0.78(小鼠)的_(2)。这与相关物种(小鼠和大鼠)之间的外推相当,其在TLR内具有93%的化学物质,R _(2)为0.78。异常值集中的化学物质往往具有更具生物可变特性。随着广泛的化学品的高通量数据的持续积累,预测建模可以为不利结果途径提供有价值的补充?基于风险评估的基础方法。

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