Wu Pei-Yu, Chou Wei-Chun, Wu Xue, Kamineni Venkata N, Kuchimanchi Yashas, Tell Lisa A, Maunsell Fiona P, Lin Zhoumeng
Department of Environmental and Global Health, College of Public Health and Health Professions, University of Florida, Gainesville, FL 32610, United States.
Center for Environmental and Human Toxicology, University of Florida, Gainesville, FL 32611, United States.
Toxicol Sci. 2025 Jan 1;203(1):52-66. doi: 10.1093/toxsci/kfae125.
Plasma half-life is a crucial pharmacokinetic parameter for estimating extralabel withdrawal intervals of drugs to ensure the safety of food products derived from animals. This study focuses on developing a quantitative structure-activity relationship (QSAR) model incorporating multiple machine learning and artificial intelligence algorithms, and aims to predict the plasma half-lives of drugs in 6 food animals, including cattle, chickens, goats, sheep, swine, and turkeys. By integrating 4 machine learning algorithms with 5 molecular descriptor types, 20 QSAR models were developed using data from the Food Animal Residue Avoidance Databank (FARAD) Comparative Pharmacokinetic Database. The deep neural network (DNN) algorithm demonstrated the best prediction ability of plasma half-lives. The DNN model with all descriptors achieved superior performance with a high coefficient of determination (R2) of 0.82 ± 0.19 in 5-fold cross-validation on the training sets and an R2 of 0.67 on the independent test set, indicating accurate predictions and good generalizability. The final model was converted to a user-friendly web dashboard to facilitate its wide application by the scientific community. This machine learning-based QSAR model serves as a valuable tool for predicting drug plasma half-lives and extralabel withdrawal intervals in 6 common food animals based on physicochemical properties. It also provides a foundation to develop more advanced models to predict the tissue half-life of drugs in food animals.
血浆半衰期是估计药物标签外停药间隔以确保动物源性食品安全性的关键药代动力学参数。本研究重点在于开发一种结合多种机器学习和人工智能算法的定量构效关系(QSAR)模型,旨在预测牛、鸡、山羊、绵羊、猪和火鸡这6种食用动物体内药物的血浆半衰期。通过将4种机器学习算法与5种分子描述符类型相结合,利用食用动物残留避免数据库(FARAD)比较药代动力学数据库的数据开发了20个QSAR模型。深度神经网络(DNN)算法在预测血浆半衰期方面表现出最佳能力。包含所有描述符的DNN模型在训练集的5折交叉验证中具有0.82±0.19的高决定系数(R2),在独立测试集上的R2为0.67,表现出色,表明预测准确且具有良好的通用性。最终模型被转换为用户友好的网络仪表盘,以方便科学界广泛应用。这种基于机器学习的QSAR模型是一种有价值的工具,可根据理化性质预测6种常见食用动物体内药物的血浆半衰期和标签外停药间隔。它还为开发更先进的模型以预测食用动物体内药物的组织半衰期提供了基础。