Heider, Dominik; Hoffmann, Daniel:
Interpol : An R package for preprocessing of protein sequences
In: BioData Mining, Vol. 4 (2011), p. 16
2011article/chapter in journalOA Gold
MedicineBiologyScientific institutes » Center of Medical Biotechnology (ZMB) Faculty of Biology » Bioinformatics and Computational Biophysics
Related: 1 publication(s)
Title in English:
Interpol : An R package for preprocessing of protein sequences
Author:
Heider, DominikUDE
LSF ID
50610
Other
connected with university
;
Hoffmann, DanielUDE
GND
1214304125
LSF ID
16263
ORCID
0000-0003-2973-7869ORCID iD
Other
connected with university
Year of publication:
2011
Open Access?:
OA Gold
DuEPublico 1 ID
Note:
OA Förderung 2011
Language of text:
English

Abstract in English:

Background: Most machine learning techniques currently applied in the literature need a fixed dimensionality of input data. However, this requirement is frequently violated by real input data, such as DNA and protein sequences, that often differ in length due to insertions and deletions. It is also notable that performance in classification and regression is often improved by numerical encoding of amino acids, compared to the commonly used sparse encoding. Results: The software "Interpol" encodes amino acid sequences as numerical descriptor vectors using a database of currently 532 descriptors (mainly from AAindex), and normalizes sequences to uniform length with one of five linear or non-linear interpolation algorithms. Interpol is distributed with open source as platform independent R-package. It is typically used for preprocessing of amino acid sequences for classification or regression. Conclusions: The functionality of Interpol widens the spectrum of machine learning methods that can be applied to biological sequences, and it will in many cases improve their performance in classification and regression.