蛋白酵素
蛋白质组学
蛋白水解酶
胰蛋白酶
鸟枪蛋白质组学
糜蛋白酶
蛋白质水解
计算生物学
卷积神经网络
化学
人工智能
生物化学
计算机科学
生物
酶
基因
作者
Jinghan Yang,Zhiqiang Gao,Xiuhan Ren,Jie Sheng,Ping Xu,Cheng Chang,Yan Fu
标识
DOI:10.1101/2020.03.13.990200
摘要
ABSTRACT In shotgun proteomics, it is essential to accurately determine the proteolytic products of each protein in the sample for subsequent identification and quantification, because these proteolytic products are usually taken as the surrogates of their parent proteins in the further data analysis. However, systematical studies about the commonly used proteases in proteomics research are insufficient, and there is a lack of easy-to-use tools to predict the digestibilities of these proteolytic products. Here, we propose a novel sequence-based deep learning model – DeepDigest, which integrates convolutional neural networks and long-short term memory networks for digestibility prediction of peptides. DeepDigest can predict the proteolytic cleavage sites for eight popular proteases including trypsin, ArgC, chymotrypsin, GluC, LysC, AspN, LysN and LysargiNase. Compared with traditional machine learning algorithms, DeepDigest showed superior performance for all the eight proteases on a variety of datasets. Besides, some interesting characteristics of different proteases were revealed and discussed.
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