首页> 外文期刊>Chemical research in toxicology >Development of Adverse Outcome Pathway for PPARy Antagonism Leading to Pulmonary Fibrosis and Chemical Selection for Its Validation: ToxCast Database and a Deep Learning Artificial Neural Network Model-Based Approach
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Development of Adverse Outcome Pathway for PPARy Antagonism Leading to Pulmonary Fibrosis and Chemical Selection for Its Validation: ToxCast Database and a Deep Learning Artificial Neural Network Model-Based Approach

机译:肺纤维化肺纤维化和化学选择的肺抗体的不良结果的发展:染色数据库与基于深度学习人工神经网络模型的方法

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Exposure to certain chemicals such as disinfectants through inhalation is suspected to be involved in the development of pulmonary fibrosis, a lung disease in which lung tissue becomes damaged and scarred. Pulmonary fibrosis is known to be regulated by transforming growth factor β (TGF-β) and peroxisome proliferator-activated receptor gamma (PPAR/). Here, we developed an adverse outcome pathway (AOP) to better define the linkage of PPARy antagonism to the adverse outcome of pulmonary fibrosis. We then conducted a systematic analysis to identify potential chemicals involved in this AOP, using the ToxCast database and deep learning artificial neural network models. We identified chemicals bearing a potential inhalation hazard and exposure hazards from the database that could be related to this AOP. For chemicals that were not present in the ToxCast database, multilayer perceptron models were developed based on the ToxCast assays related to the AOP. The reactivity of ToxCast untested chemicals was then predicted using these deep learning models. Both approaches identified a set of chemicals that could be used to validate the AOP. This study suggests that chemicals categorized using an existing database such as ToxCast can be used to validate an AOP and that deep learning approaches can be used to characterize a range of potential active chemicals for an AOP of interest.
机译:怀疑通过吸入引起某些化学品如消毒剂,以参与肺纤维化的发展,肺组织受损和疤痕的肺部疾病。已知通过转化生长因子β(TGF-β)和过氧化物体增殖物激活的受体γ(PPAR /)来调节肺纤维化。在这里,我们开发了一种不良结果途径(AOP),以更好地定义PPARγ拮抗作用对肺纤维化不利结果的联系。然后,我们进行了系统分析,以识别此AOP中涉及的潜在化学品,使用Toxcast数据库和深度学习人工神经网络模型。我们确定了具有与该AOP相关的数据库潜在吸入危害和暴露危险的化学品。对于ToxCast数据库中不存在的化学品,基于与AOP相关的Toxcast测定来开发多层的Perceptron模型。然后使用这些深度学习模型预测Toxcast未经测试的化学品的反应性。两种方法都确定了一组可用于验证AOP的化学品。本研究表明,使用诸如Toxcast等现有数据库分类的化学品可以用于验证AOP,并且可以使用深度学习方法来表征感兴趣的AOP的潜在活性化学品。

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