Literature DB >> 16615809

Amino Acid Principal Component Analysis (AAPCA) and its applications in protein structural class prediction.

Qi-Shi Du1, Zhi-Qin Jiang, Wen-Zhang He, Da-Peng Li, Kou-Chen Chou.   

Abstract

The extremely complicated nature of many biological problems makes them bear the features of fuzzy sets, such as with vague, imprecise, noisy, ambiguous, or input-missing information For instance, the current data in classifying protein structural classes are typically a fuzzy set To deal with this kind of problem, the AAPCA (Amino Acid Principal Component Analysis) approach was introduced. In the AAPCA approach the 20-dimensional amino acid composition space is reduced to an orthogonal space with fewer dimensions, and the original base functions are converted into a set of orthogonal and normalized base functions The advantage of such an approach is that it can minimize the random errors and redundant information in protein dataset through a principal component selection, remarkably improving the success rates in predicting protein structural classes It is anticipated that the AAPCA approach can be used to deal with many other classification problems in proteins as well.

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Year:  2006        PMID: 16615809     DOI: 10.1080/07391102.2006.10507088

Source DB:  PubMed          Journal:  J Biomol Struct Dyn        ISSN: 0739-1102


  13 in total

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9.  Protein Remote Homology Detection Based on an Ensemble Learning Approach.

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10.  2L-PCA: a two-level principal component analyzer for quantitative drug design and its applications.

Authors:  Qi-Shi Du; Shu-Qing Wang; Neng-Zhong Xie; Qing-Yan Wang; Ri-Bo Huang; Kuo-Chen Chou
Journal:  Oncotarget       Date:  2017-08-01
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