
Model quality assessment (MQA), which selects near-native structures from structure models, is an important process in protein tertiary structure prediction. The three-dimensional convolution neural network (3DCNN) was applied to the task, but the performance was comparable to existing methods because it used only atom-type features as the input. Thus, we added sequence profile-based features, which are also used in other methods, to improve the performance. We developed a single-model MQA method for protein structures based on 3DCNN using sequence profile-based features, namely, P3CMQA. Performance evaluation using a CASP13 dataset showed that profile-based features improved the assessment performance, and the proposed method was better than currently available single-model MQA methods, including the previous 3DCNN-based method. We also implemented a web-interface of the method to make it more user-friendly.
Technology, QH301-705.5, T, deep learning, Article, 004, model quality assessment (MQA), protein structure prediction, machine learning, CASP, 3DCNN, Biology (General), estimation of model accuracy (EMA)
Technology, QH301-705.5, T, deep learning, Article, 004, model quality assessment (MQA), protein structure prediction, machine learning, CASP, 3DCNN, Biology (General), estimation of model accuracy (EMA)
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