PON-tstab: Protein Variant Stability Predictor. Importance of Training Data Quality

Several methods have been developed to predict effects of amino acid substitutions on protein stability. Benchmark datasets are essential for method training and testing and have numerous requirements including that the data is representative for the investigated phenomenon. Available machine learni...

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Main Authors: Yang Yang, Siddhaling Urolagin, Abhishek Niroula, Xuesong Ding, Bairong Shen, Mauno Vihinen
Format: Article
Language:English
Published: MDPI AG 2018-03-01
Series:International Journal of Molecular Sciences
Subjects:
Online Access:http://www.mdpi.com/1422-0067/19/4/1009
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spelling doaj-1f06991b868248f3ab258395e2d9d0752020-11-24T21:50:58ZengMDPI AGInternational Journal of Molecular Sciences1422-00672018-03-01194100910.3390/ijms19041009ijms19041009PON-tstab: Protein Variant Stability Predictor. Importance of Training Data QualityYang Yang0Siddhaling Urolagin1Abhishek Niroula2Xuesong Ding3Bairong Shen4Mauno Vihinen5School of Computer Science and Technology, Soochow University, No. 1. Shizi Street, Suzhou 215006, ChinaDepartment of Experimental Medical Science, BMC B13, Lund University, SE-22 184 Lund, SwedenDepartment of Experimental Medical Science, BMC B13, Lund University, SE-22 184 Lund, SwedenSchool of Computer Science and Technology, Soochow University, No. 1. Shizi Street, Suzhou 215006, ChinaCenter for Systems Biology, Soochow University, No. 1. Shizi Street, Suzhou 215006, ChinaDepartment of Experimental Medical Science, BMC B13, Lund University, SE-22 184 Lund, SwedenSeveral methods have been developed to predict effects of amino acid substitutions on protein stability. Benchmark datasets are essential for method training and testing and have numerous requirements including that the data is representative for the investigated phenomenon. Available machine learning algorithms for variant stability have all been trained with ProTherm data. We noticed a number of issues with the contents, quality and relevance of the database. There were errors, but also features that had not been clearly communicated. Consequently, all machine learning variant stability predictors have been trained on biased and incorrect data. We obtained a corrected dataset and trained a random forests-based tool, PON-tstab, applicable to variants in any organism. Our results highlight the importance of the benchmark quality, suitability and appropriateness. Predictions are provided for three categories: stability decreasing, increasing and those not affecting stability.http://www.mdpi.com/1422-0067/19/4/1009protein stability predictionvariation interpretationmutationbenchmark qualitymachine learning method
collection DOAJ
language English
format Article
sources DOAJ
author Yang Yang
Siddhaling Urolagin
Abhishek Niroula
Xuesong Ding
Bairong Shen
Mauno Vihinen
spellingShingle Yang Yang
Siddhaling Urolagin
Abhishek Niroula
Xuesong Ding
Bairong Shen
Mauno Vihinen
PON-tstab: Protein Variant Stability Predictor. Importance of Training Data Quality
International Journal of Molecular Sciences
protein stability prediction
variation interpretation
mutation
benchmark quality
machine learning method
author_facet Yang Yang
Siddhaling Urolagin
Abhishek Niroula
Xuesong Ding
Bairong Shen
Mauno Vihinen
author_sort Yang Yang
title PON-tstab: Protein Variant Stability Predictor. Importance of Training Data Quality
title_short PON-tstab: Protein Variant Stability Predictor. Importance of Training Data Quality
title_full PON-tstab: Protein Variant Stability Predictor. Importance of Training Data Quality
title_fullStr PON-tstab: Protein Variant Stability Predictor. Importance of Training Data Quality
title_full_unstemmed PON-tstab: Protein Variant Stability Predictor. Importance of Training Data Quality
title_sort pon-tstab: protein variant stability predictor. importance of training data quality
publisher MDPI AG
series International Journal of Molecular Sciences
issn 1422-0067
publishDate 2018-03-01
description Several methods have been developed to predict effects of amino acid substitutions on protein stability. Benchmark datasets are essential for method training and testing and have numerous requirements including that the data is representative for the investigated phenomenon. Available machine learning algorithms for variant stability have all been trained with ProTherm data. We noticed a number of issues with the contents, quality and relevance of the database. There were errors, but also features that had not been clearly communicated. Consequently, all machine learning variant stability predictors have been trained on biased and incorrect data. We obtained a corrected dataset and trained a random forests-based tool, PON-tstab, applicable to variants in any organism. Our results highlight the importance of the benchmark quality, suitability and appropriateness. Predictions are provided for three categories: stability decreasing, increasing and those not affecting stability.
topic protein stability prediction
variation interpretation
mutation
benchmark quality
machine learning method
url http://www.mdpi.com/1422-0067/19/4/1009
work_keys_str_mv AT yangyang pontstabproteinvariantstabilitypredictorimportanceoftrainingdataquality
AT siddhalingurolagin pontstabproteinvariantstabilitypredictorimportanceoftrainingdataquality
AT abhishekniroula pontstabproteinvariantstabilitypredictorimportanceoftrainingdataquality
AT xuesongding pontstabproteinvariantstabilitypredictorimportanceoftrainingdataquality
AT bairongshen pontstabproteinvariantstabilitypredictorimportanceoftrainingdataquality
AT maunovihinen pontstabproteinvariantstabilitypredictorimportanceoftrainingdataquality
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