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2010 | 20 | 3 | 555-570

Tytuł artykułu

Quality improvement of rule-based gene group descriptions using information about GO terms importance occurring in premises of determined rules

Treść / Zawartość

Warianty tytułu

Języki publikacji

EN

Abstrakty

EN
In this paper we present a method for evaluating the importance of GO terms which compose multi-attribute rules. The rules are generated for the purpose of biological interpretation of gene groups. Each multi-attribute rule is a combination of GO terms and, based on relationships among them, one can obtain a functional description of gene groups. We present a method which allows evaluating the influence of a given GO term on the quality of a rule and the quality of a whole set of rules. For each GO term, we compute how big its influence on the quality of generated set of rules and therefore the quality of the obtained description is. Based on the computed quality of GO terms, we propose a new algorithm of rule induction in order to obtain a more synthetic and more accurate description of gene groups than the description obtained by initially determined rules. The obtained GO terms ranking and newly obtained rules provide additional information about the biological function of genes that compose the analyzed group of genes.

Rocznik

Tom

20

Numer

3

Strony

555-570

Opis fizyczny

Daty

wydano
2010
otrzymano
2010-01-10
poprawiono
2010-06-01

Twórcy

autor
  • Institute of Informatics, Silesian University of Technology, Akademicka 16, 44-100 Gliwice, Poland
  • Institute of Innovative Technologies EMAG, Leopolda 31, 40-189 Katowice, Poland

Bibliografia

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Typ dokumentu

Bibliografia

Identyfikatory

Identyfikator YADDA

bwmeta1.element.bwnjournal-article-amcv20i3p555bwm
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