Gadaleta Domenico, d'Alessandro Luca, Marzo Marco, Benfenati Emilio, Roncaglioni Alessandra
Laboratory of Environmental Chemistry and Toxicology, Department of Environmental Health Sciences, Istituto di Ricerche Farmacologiche Mario Negri IRCCS, Milan, Italy.
Front Pharmacol. 2021 Aug 12;12:713037. doi: 10.3389/fphar.2021.713037. eCollection 2021.
The thyroid system plays a major role in the regulation of several physiological processes. The dysregulation of the thyroid system caused by the interference of xenobiotics and contaminants may bring to pathologies like hyper- and hypothyroidism and it has been recently correlated with adverse outcomes leading to cancer, obesity, diabetes and neurodevelopmental disorders. Thyroid disruption can occur at several levels. For example, the inhibition of thyroperoxidase (TPO) enzyme, which catalyses the synthesis of thyroid hormones, may cause dysfunctions related to hypothyroidism. The inhibition of the TPO enzyme can occur as a consequence of prolonged exposure to chemical compounds, for this reason it is of utmost importance to identify alternative methods to evaluate the large amount of pollutants and other chemicals that may pose a potential hazard to the human health. In this work, quantitative structure-activity relationship (QSAR) models to predict the TPO inhibitory potential of chemicals are presented. Models are developed by means of several machine learning and data selection approaches, and are based on data obtained with the Amplex UltraRed-thyroperoxidase (AUR-TPO) assay. Balancing methods and feature selection are applied during model development. Models are rigorously evaluated through internal and external validation. Based on validation results, two models based on Balanced Random Forest (BRF) and K-Nearest Neighbours (KNN) algorithms were selected for a further validation phase, that leads predictive performance (BA = 0.76-0.78 on external data) that is comparable with the reported experimental variability of the AUR-TPO assay (BA ∼0.70). Finally, a consensus between the two models was proposed (BA = 0.82). Based on the predictive performance, these models can be considered suitable for toxicity screening of environmental chemicals.
甲状腺系统在调节多种生理过程中发挥着重要作用。由外源性物质和污染物干扰导致的甲状腺系统失调可能引发甲状腺功能亢进和减退等病理状况,并且最近已发现其与导致癌症、肥胖、糖尿病和神经发育障碍的不良后果相关。甲状腺功能紊乱可在多个层面发生。例如,催化甲状腺激素合成的甲状腺过氧化物酶(TPO)酶受到抑制,可能会导致与甲状腺功能减退相关的功能障碍。TPO酶的抑制可能是长期接触化学化合物的结果,因此,识别替代方法以评估大量可能对人类健康构成潜在危害的污染物和其他化学物质至关重要。在这项工作中,提出了用于预测化学物质TPO抑制潜力的定量构效关系(QSAR)模型。这些模型通过多种机器学习和数据选择方法开发,并基于使用Amplex UltraRed - 甲状腺过氧化物酶(AUR - TPO)测定法获得的数据。在模型开发过程中应用了平衡方法和特征选择。通过内部和外部验证对模型进行严格评估。基于验证结果,选择了基于平衡随机森林(BRF)和K近邻(KNN)算法的两个模型进入进一步验证阶段,该阶段得出的预测性能(外部数据的BA = 0.76 - 0.78)与报道的AUR - TPO测定法的实验变异性(BA ∼0.70)相当。最后,提出了两个模型之间的共识(BA = 0.82)。基于预测性能,这些模型可被认为适用于环境化学物质的毒性筛选。