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SPOT-Disorder2: Improved Protein Intrinsic Disorder Prediction by Ensembled Deep Learning 被引量:5

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摘要 Intrinsically disordered or unstructured proteins(or regions in proteins) have been found to be important in a wide range of biological functions and implicated in many diseases. Due to the high cost and low efficiency of experimental determination of intrinsic disorder and the exponential increase of unannotated protein sequences, developing complementary computational prediction methods has been an active area of research for several decades. Here, we employed an ensemble of deep Squeeze-and-Excitation residual inception and long short-term memory(LSTM) networks for predicting protein intrinsic disorder with input from evolutionary information and predicted one-dimensional structural properties. The method, called SPOT-Disorder2, offers substantial and consistent improvement not only over our previous technique based on LSTM networks alone,but also over other state-of-the-art techniques in three independent tests with different ratios of disordered to ordered amino acid residues, and for sequences with either rich or limited evolutionary information. More importantly, semi-disordered regions predicted in SPOT-Disorder2 are more accurate in identifying molecular recognition features(MoRFs) than methods directly designed for MoRFs prediction. SPOT-Disorder2 is available as a web server and as a standalone program at https://sparks-lab.org/server/spot-disorder2/.
出处 《Genomics, Proteomics & Bioinformatics》 SCIE CAS CSCD 2019年第6期645-656,共12页 基因组蛋白质组与生物信息学报(英文版)
基金 supported by Australian Research Council (Grant No. DP180102060) to YZ and KP in part by the National Health and Medical Research Council (Grant No. 1121629) of Australia to YZ the High Performance Computing Cluster ‘Gowonda’ to complete this study the aid of the research cloud resources provided by the Queensland Cyber Infrastructure Foundation (QCIF), Australia.
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