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Transfer learning for predicting human skin sensitizers

机译:转移学习预测人类皮肤敏感剂

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摘要

Computational prioritization of chemicals for potential skin sensitization risks plays essential roles in the risk assessment of environmental chemicals and drug development. Given the huge number of chemicals for testing, computational methods enable the fast identification of high-risk chemicals for experimental validation and design of safer alternatives. However, the development of robust prediction model requires a large dataset of tested chemicals that is usually not available for most toxicological endpoints, especially for human data. A small training dataset makes the development of effective models difficult with insufficient coverage and accuracy. In this study, an ensemble tree-based multitask learning method was developed incorporating three relevant tasks in the well-defined adverse outcome pathway (AOP) of skin sensitization to transfer shared knowledge to the major task of human sensitizers. The results show both largely improved coverage and accuracy compared with three state-of-the-art methods. A user-friendly prediction server was available at https://cwtung.kmu.edu.tw/skinsensdb/predict. As AOPs for various toxicity endpoints are being actively developed, the proposed method can be applied to develop prediction models for other endpoints.
机译:用于潜在皮肤致敏风险的化学品的计算优先级在环境化学品和药物开发的风险评估中起着重要作用。鉴于测试的大量化学品进行测试,计算方法能够快速识别高风险化学品,用于实验验证和更安全的替代品设计。然而,鲁棒预测模型的发展需要大量测试化学品,通常不适用于大多数毒理学终点,特别是对于人类数据。小型训练数据集使得开发有效模型的覆盖率和准确性不足。在这项研究中,在皮肤致敏的明确定义的不利结果途径(AOP)中,开发了一种基于树的多任务学习方法,以将共享知识转移到人类敏感剂的主要任务。结果表明,与三种最先进的方法相比,大大提高了覆盖率和准确性。 https://cwtung.kmu.edu.tw/skinsdb/predict,可以使用用户友好的预测服务器。随着正在积极开发各种毒性终点的AAOP,可以应用所提出的方法来开发用于其他端点的预测模型。

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