Hofmann Amun G, Weber Benedikt, Ibbotson Sally, Agibetov Asan
FIFOS - Forum for Integrative Research & Systems Biology, Vienna, Austria.
Department of Dermatology, Medical University of Vienna, Vienna, Austria.
J Drug Target. 2025 Apr;33(4):556-561. doi: 10.1080/1061186X.2024.2434911. Epub 2024 Dec 2.
Drug-induced photosensitivity is a potential adverse event of many drugs and chemicals used across a wide range of specialties in clinical medicine. In the present study, we investigated the feasibility of predicting the photosensitising effects of drugs and chemical compounds via state-of-the-art artificial intelligence-based workflows. A dataset of 2200 drugs was used to train three distinct models (logistic regression, XGBoost and a deep learning model (Chemprop)) to predict photosensitising attributes. Labels were obtained from a list of previously published photosensitisers by string matching and manual validation. External evaluation of the different models was performed using the tox21 dataset. ROC-AUC ranged between 0.8939 (Chemprop) and 0.9525 (XGBoost) during training, while in the test partition it ranged between 0.7785 (Chemprop) and 0.7927 (XGBoost). Analysis of the top 200 compounds of each model resulted in 55 overlapping molecules in the external validation set. Prediction scores in fluoroquinolones within this subset corresponded well with culprit substructures such as fluorinated aryl halides suspected of mediating photosensitising effects. All three models appeared capable of predicting photosensitising effects of chemical compounds. However, compared to the simpler model, the complex models appeared to be more confident in their predictions as exhibited by their distribution of prediction scores.
药物性光敏反应是临床医学众多专业广泛使用的许多药物和化学物质可能引发的不良事件。在本研究中,我们调查了通过基于最先进人工智能的工作流程预测药物和化合物光敏作用的可行性。使用一个包含2200种药物的数据集来训练三种不同的模型(逻辑回归、XGBoost和深度学习模型(Chemprop)),以预测光敏属性。通过字符串匹配和人工验证,从先前发表的光敏剂列表中获取标签。使用tox21数据集对不同模型进行外部评估。训练期间,ROC-AUC在0.8939(Chemprop)至0.9525(XGBoost)之间,而在测试分区中,其范围在0.7785(Chemprop)至0.7927(XGBoost)之间。对每个模型的前200种化合物进行分析,结果在外部验证集中有55个重叠分子。该子集中氟喹诺酮类药物的预测分数与疑似介导光敏作用的含氟芳基卤化物等罪魁祸首亚结构高度吻合。所有三种模型似乎都能够预测化合物的光敏作用。然而,与较简单的模型相比,复杂模型在其预测分数分布中表现出对其预测更有信心。