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WADDAICA: A webserver for aiding protein drug design by artificial intelligence and classical algorithm

机译:Waddaica:一种通过人工智能和古典算法辅助蛋白质药物设计的Web服务器

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摘要

Artificial intelligence can train the related known drug data into deep learning models for drug design, while classical algorithms can design drugs through established and predefined procedures. Both deep learning and classical algorithms have their merits for drug design. Here, the webserver WADDAICA is built to employ the advantage of deep learning model and classical algorithms for drug design. The WADDAICA mainly contains two modules. In the first module, WADDAICA provides deep learning models for scaffold hopping of compounds to modify or design new novel drugs. The deep learning model which is used in WADDAICA shows a good scoring power based on the PDBbind database. In the second module, WADDAICA supplies functions for modifying or designing new novel drugs by classical algorithms. WADDAICA shows better Pearson and Spearman correlations of binding affinity than Autodock Vina that is considered to have the best scoring power. Besides, WADDAICA supplies a friendly and convenient web interface for users to submit drug design jobs. We believe that WADDAICA is a useful and effective tool to help researchers to modify or design novel drugs by deep learning models and classical algorithms. WADDAICA is free and accessible at https://bqflab.github.io or https://heisenberg.ucam.edu:5000.
机译:人工智能可以将相关的已知药物数据训练到深入学习模型中的药物设计,而经典算法可以通过建立和预定的程序设计药物。深度学习和古典算法都有他们的药物设计的优点。在这里,建立了Web服务器Waddaica,以采用深度学习模型和古典算法的药物设计的优势。 Waddaica主要包含两个模块。在第一个模块中,Waddaica为脚手架跳跃的化合物提供了深度学习模型,以改变或设计新的新型药物。 Waddaica中使用的深度学习模型显示了基于PDBBind数据库的良好评分功率。在第二个模块中,Waddaica通过经典算法提供用于修改或设计新的新型药物的功能。 Waddaica显示了比Autodock Vina所认为具有最佳评分能力的亲自的亲和力的Pearson和Spearman相关性。此外,Waddaica为用户提供友好而方便的Web界面,以提交药物设计工作。我们认为Waddaica是一个有用而有效的工具,帮助研究人员通过深入学习模型和古典算法来修改或设计新药。 Waddaica是免费的,在https://bqflab.github.io或https://heisenberg.uc.edu:5000。

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