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首页> 外文期刊>Computational Biology and Bioinformatics, IEEE/ACM Transactions on >Machine Learning Techniques for the Automated Classification of Adhesin-Like Proteins in the Human Protozoan Parasite Trypanosoma cruzi
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Machine Learning Techniques for the Automated Classification of Adhesin-Like Proteins in the Human Protozoan Parasite Trypanosoma cruzi

机译:机器学习技术用于人类原生动物寄生虫克氏锥虫中粘附素样蛋白的自动分类

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摘要

This paper reports on the evaluation of different machine learning techniques for the automated classification of coding gene sequences obtained from several organisms in terms of their functional role as adhesins. Diverse, biologically-meaningful, sequence-based features were extracted from the sequences and used as inputs to the in silico prediction models. Another contribution of this work is the generation of potentially novel and testable predictions about the surface protein DGF-1 family in Trypanosoma cruzi. Finally, these techniques are potentially useful for the automated annotation of known adhesin-like proteins from the trans-sialidase surface protein family in T. cruzi, the etiological agent of Chagas disease.
机译:本文报告了对不同机器学习技术的评估,这些技术对从几种生物体获得的编码基因序列作为粘附素的功能进行了自动分类。从序列中提取了多种具有生物学意义的基于序列的特征,并将其用作计算机模拟模型的输入。这项工作的另一个贡献是产生了关于克氏锥虫表面蛋白DGF-1家族的潜在新颖且可测试的预测。最后,这些技术对于自动标记来自南美锥虫病的病原体克鲁维斯氏菌中反式唾液酸酶表面蛋白家族的已知粘附素样蛋白可能有用。

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