Title :
Locally optimal search method for identifying genes from microarray data
Author :
Chen, Xue-wen ; Chen, Huaixin
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Kansas Univ., Lawrence, KS, USA
Abstract :
The gene expression data obtained from microarrays have shown to be useful in cancer classification. DNA microarray data have extremely high dimensionality compared to the small number of available samples. An important step in microarray studies is to remove genes irrelevant to the learning problem and to select a small number of genes expressed in biological samples under specific conditions. In this paper, we propose a novel feature subset selection algorithm, partitional branch and bound (PBB) algorithm. This new algorithm is very efficient for selecting sets of genes in very high dimensional feature space. Two databases are considered: the colon cancer database and the leukemia database. Our experimental results show that the proposed algorithm yields a better subset of features than both forward selection algorithms and individual ranking methods in terms of a criterion function measuring class separability.
Keywords :
DNA; cancer; feature extraction; genetics; medical computing; pattern classification; tree searching; DNA microarray data; cancer classification; class separability; colon cancer database; criterion function; feature subset selection algorithm; forward selection algorithms; gene expression data; gene identification; individual ranking methods; leukemia database; locally optimal search method; microarray data; partitional branch and bound algorithm; very high dimensional feature space; Cancer; Colon; DNA; Gene expression; Laboratories; Partitioning algorithms; Search methods; Sequences; Spatial databases; Testing;
Conference_Titel :
Control, Automation, Robotics and Vision Conference, 2004. ICARCV 2004 8th
Print_ISBN :
0-7803-8653-1
DOI :
10.1109/ICARCV.2004.1468986