期刊论文详细信息
BMC Bioinformatics
Variable selection from a feature representing protein sequences: a case of classification on bacterial type IV secreted effectors
Lixin Lv1  Donglei Lu1  Jian Zhang1  Xudong Zhao2  Denan Kong2  Mohammed Abdoh Ali Al-Alashaari2 
[1] College of Artificial Intelligence, Wuxi Vocational College of Science and Technology, No. 8 Xinxi Road, 214028, Wuxi, China;College of Information and Computer Engineering, Northeast Forestry University, No. 26 Hexing Road, 150040, Harbin, China;
关键词: Feature selection;    Variable importance;    Accumulated scoring;    Classification;    Bacterial type IV secreted effectors;   
DOI  :  10.1186/s12859-020-03826-6
来源: Springer
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【 摘 要 】

BackgroundClassification of certain proteins with specific functions is momentous for biological research. Encoding approaches of protein sequences for feature extraction play an important role in protein classification. Many computational methods (namely classifiers) are used for classification on protein sequences according to various encoding approaches. Commonly, protein sequences keep certain labels corresponding to different categories of biological functions (e.g., bacterial type IV secreted effectors or not), which makes protein prediction a fantasy. As to protein prediction, a kernel set of protein sequences keeping certain labels certified by biological experiments should be existent in advance. However, it has been hardly ever seen in prevailing researches. Therefore, unsupervised learning rather than supervised learning (e.g. classification) should be considered. As to protein classification, various classifiers may help to evaluate the effectiveness of different encoding approaches. Besides, variable selection from an encoded feature representing protein sequences is an important issue that also needs to be considered.ResultsFocusing on the latter problem, we propose a new method for variable selection from an encoded feature representing protein sequences. Taking a benchmark dataset containing 1947 protein sequences as a case, experiments are made to identify bacterial type IV secreted effectors (T4SE) from protein sequences, which are composed of 399 T4SE and 1548 non-T4SE. Comparable and quantified results are obtained only using certain components of the encoded feature, i.e., position-specific scoring matix, and that indicates the effectiveness of our method.ConclusionsCertain variables other than an encoded feature they belong to do work for discrimination between different types of proteins. In addition, ensemble classifiers with an automatic assignment of different base classifiers do achieve a better classification result.

【 授权许可】

CC BY   

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