Mining phenotypes for gene function prediction

被引:39
作者
Groth, Philip [1 ,2 ]
Weiss, Bertram [1 ]
Pohlenz, Hans-Dieter [1 ]
Leser, Ulf [2 ]
机构
[1] Bayer Schering Pharma AG, Res Labs, Berlin, Germany
[2] Humboldt Univ, Berlin, Germany
关键词
D O I
10.1186/1471-2105-9-136
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background: Health and disease of organisms are reflected in their phenotypes. Often, a genetic component to a disease is discovered only after clearly defining its phenotype. In the past years, many technologies to systematically generate phenotypes in a high-throughput manner, such as RNA interference or gene knock-out, have been developed and used to decipher functions for genes. However, there have been relatively few efforts to make use of phenotype data beyond the single genotype-phenotype relationships. Results: We present results on a study where we use a large set of phenotype data - in textual form - to predict gene annotation. To this end, we use text clustering to group genes based on their phenotype descriptions. We show that these clusters correlate well with several indicators for biological coherence in gene groups, such as functional annotations from the Gene Ontology (GO) and protein-protein interactions. We exploit these clusters for predicting gene function by carrying over annotations from well-annotated genes to other, less-characterized genes in the same cluster. For a subset of groups selected by applying objective criteria, we can predict GO-term annotations from the biological process sub-ontology with up to 72.6% precision and 16.7% recall, as evaluated by cross-validation. We manually verified some of these clusters and found them to exhibit high biological coherence, e. g. a group containing all available antennal Drosophila odorant receptors despite inconsistent GO-annotations. Conclusion: The intrinsic nature of phenotypes to visibly reflect genetic activity underlines their usefulness in inferring new gene functions. Thus, systematically analyzing these data on a large scale offers many possibilities for inferring functional annotation of genes. We show that text clustering can play an important role in this process.
引用
收藏
页数:15
相关论文
共 50 条
[1]  
Bate, 1993, DEV DROSOPHILA MELAN
[2]   Behavioral responses to odorants in Drosophila require nervous system expression of the β integrin gene Myospheroid [J].
Bhandari, Poonam ;
Gargano, Julia Warner ;
Goddeeris, Matthew M. ;
Grotewiel, Michael S. .
CHEMICAL SENSES, 2006, 31 (07) :627-639
[3]   EMPReSS: standardized phenotype screens for functional annotation of the mouse genome [J].
Brown, SDM ;
Chambon, P ;
de Angelis, MH .
NATURE GENETICS, 2005, 37 (11) :1155-1155
[4]   Creation and implications of a phenome-genome network [J].
Butte, AJ ;
Kohane, IS .
NATURE BIOTECHNOLOGY, 2006, 24 (01) :55-62
[5]  
COUTO FM, 2007, DATA KNOWLEDGE ENG, V61
[6]  
CRIPPS RM, 1994, GENETICS, V137, P151
[7]   Automatic extraction of gene ontology annotation and its correlation with clusters in protein networks [J].
Daraselia, Nikolai ;
Yuryev, Anton ;
Egorov, Sergei ;
Mazo, Ilya ;
Ispolatov, Iaroslav .
BMC BIOINFORMATICS, 2007, 8
[8]   Integrating the molecular and cellular basis of odor coding in the Drosophila antenna [J].
Dobritsa, AA ;
van der Goes van Naters, W ;
Warr, CG ;
Steinbrecht, RA ;
Carlson, JR .
NEURON, 2003, 37 (05) :827-841
[9]   Parallel chemical genetic and genome-wide RNAi screens identify cytokinesis inhibitors and targets [J].
Eggert, US ;
Kiger, AA ;
Richter, C ;
Perlman, ZE ;
Perrimon, N ;
Mitchison, TJ ;
Field, CM .
PLOS BIOLOGY, 2004, 2 (12) :2135-2143
[10]   The Human Phenome Project [J].
Freimer, N ;
Sabatti, C .
NATURE GENETICS, 2003, 34 (01) :15-21