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Protein structure prediction and understanding using machine learning methods

机译:使用机器学习方法预测和了解蛋白质结构

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Summary form only given. The understanding of protein structures is vital to determine the function of a protein and its interaction with DNA, RNA and enzyme. The information about its conformation can provide essential information for drug design and protein engineering. While there are over a million known protein sequences, only a limited number of protein structures are experimentally determined. Hence, prediction of protein structures from protein sequences using computer programs is an important step to unveil proteins' three dimensional conformation and functions. As a result, prediction of protein structures has profound theoretical and practical influence over biological study. In this talk, we would show how to use machine learning methods with various advanced encoding schemes and classifiers improve the accuracy of protein structure prediction. The explanation of how a decision is made is also important for improving protein structure prediction. The reasonable interpretation is not only useful to guide the "wet experiments", but also the extracted rules are helpful to integrate computational intelligence with symbolic AI systems for advanced deduction. Some preliminary results using SVM and decision tree for rule extraction and prediction interpretation would also be presented.
机译:仅提供摘要表格。对蛋白质结构的了解对于确定蛋白质的功能及其与DNA,RNA和酶的相互作用至关重要。有关其构象的信息可以为药物设计和蛋白质工程提供必要的信息。尽管已知的蛋白质序列超过一百万,但实验确定的蛋白质结构数量有限。因此,使用计算机程序从蛋白质序列预测蛋白质结构是揭示蛋白质的三维构象和功能的重要步骤。结果,蛋白质结构的预测对生物学研究具有深远的理论和实践影响。在本演讲中,我们将展示如何使用具有各种高级编码方案的机器学习方法和分类器来提高蛋白质结构预测的准确性。对于如何做出决定的解释对于改善蛋白质结构预测也很重要。合理的解释不仅对指导“湿实验”有用,而且提取的规则也有助于将计算智能与符号AI系统集成在一起,以进行高级演绎。还将提供一些使用SVM和决策树进行规则提取和预测解释的初步结果。

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