Literature DB >> 16806277

Using stacked generalization to predict membrane protein types based on pseudo-amino acid composition.

Shuang-Quan Wang1, Jie Yang, Kuo-Chen Chou.   

Abstract

Membrane proteins are vitally important for many biological processes and have become an attractive target for both basic research and drug design. Knowledge of membrane protein types often provides useful clues in deducing the functions of uncharacterized membrane proteins. With the unprecedented increasing of newly found protein sequences in the post-genomic era, it is highly demanded to develop an automated method for fast and accurately identifying the types of membrane proteins according to their amino acid sequences. Although quite a few identifiers have been developed in this regard through various approaches, such as covariant discriminant (CD), support vector machine (SVM), artificial neural network (ANN), and K-nearest neighbor (KNN), classifier the way they operate the identification is basically individual. As is well known, wise persons usually take into account the opinions from several experts rather than rely on only one when they are making critical decisions. Likewise, a sophisticated identifier should be trained by several different modes. In view of this, based on the frame of pseudo-amino acid that can incorporate a considerable amount of sequence-order effects, a novel approach called "stacked generalization" or "stacking" has been introduced. Unlike the "bagging" and "boosting" approaches which only combine the classifiers of a same type, the stacking approach can combine several different types of classifiers through a meta-classifier to maximize the generalization accuracy. The results thus obtained were very encouraging. It is anticipated that the stacking approach may also hold a high potential to improve the identification quality for, among many other protein attributes, subcellular location, enzyme family class, protease type, and protein-protein interaction type. The stacked generalization classifier is available as a web-server named "SG-MPt_Pred" at: http://202.120.37.186/bioinf/wangsq/service.htm.

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Year:  2006        PMID: 16806277     DOI: 10.1016/j.jtbi.2006.05.006

Source DB:  PubMed          Journal:  J Theor Biol        ISSN: 0022-5193            Impact factor:   2.691


  25 in total

1.  iPro54-PseKNC: a sequence-based predictor for identifying sigma-54 promoters in prokaryote with pseudo k-tuple nucleotide composition.

Authors:  Hao Lin; En-Ze Deng; Hui Ding; Wei Chen; Kuo-Chen Chou
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2.  Prediction of the types of membrane proteins based on discrete wavelet transform and support vector machines.

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Journal:  Mol Divers       Date:  2009-03-28       Impact factor: 2.943

Review 5.  A Treatise to Computational Approaches Towards Prediction of Membrane Protein and Its Subtypes.

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Journal:  J Membr Biol       Date:  2016-11-19       Impact factor: 1.843

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8.  [Predicting prolonged length of intensive care unit stay via machine learning].

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Journal:  Beijing Da Xue Xue Bao Yi Xue Ban       Date:  2021-12-18

9.  Explaining a series of models by propagating Shapley values.

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Journal:  Nat Commun       Date:  2022-08-03       Impact factor: 17.694

10.  Molecular biocoding of insulin.

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