计算机科学
药品
自然语言处理
人工智能
药理学
医学
作者
Yurun Chen,Changyuan Yu,Zheng-Qi Song,Chenyu Wang,Jiangtao Luo,Yong Xiao,Heng Qiu,Qingqing Wang,Haiming Jin
标识
DOI:10.1021/acs.jcim.5c00275
摘要
Drug-induced osteotoxicity refers to the harmful effects certain drugs have on the skeletal system, posing significant safety risks. These toxic effects are a key concern in clinical practice, drug development, and environmental management. However, existing toxicity assessment models lack specialized data sets and algorithms for predicting osteotoxicity. In our study, we collected osteotoxic molecules and employed various large language models, including DeepSeek and ChatGPT, alongside traditional machine learning methods to predict their properties. Among these, the DeepSeek R1 and ChatGPT o3 models achieved ACC values of 0.87 and 0.88, respectively. Our results indicate that machine learning methods can assist in evaluating the impact of harmful substances on bone health during drug development, improving safety protocols, mitigating skeletal side effects, and enhancing treatment outcomes and public safety. Furthermore, it highlights the potential of large language models in predicting molecular toxicity and their significance in the fields of health and chemical sciences.
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