DocumentCode :
1151627
Title :
Accurate Cancer Classification Using Expressions of Very Few Genes
Author :
Wang, Lipo ; Chu, Feng ; Xie, Wei
Author_Institution :
Sch. of Electr. & Electron. Eng., Nanyang Technol. Univ.
Volume :
4
Issue :
1
fYear :
2007
Firstpage :
40
Lastpage :
53
Abstract :
We aim at finding the smallest set of genes that can ensure highly accurate classification of cancers from microarray data by using supervised machine learning algorithms. The significance of finding the minimum gene subsets is three-fold: 1) it greatly reduces the computational burden and "noise" arising from irrelevant genes. In the examples studied in this paper, finding the minimum gene subsets even allows for extraction of simple diagnostic rules which lead to accurate diagnosis without the need for any classifiers, 2) it simplifies gene expression tests to include only a very small number of genes rather than thousands of genes, which can bring down the cost for cancer testing significantly, 3) it calls for further investigation into the possible biological relationship between these small numbers of genes and cancer development and treatment. Our simple yet very effective method involves two steps. In the first step, we choose some important genes using a feature importance ranking scheme. In the second step, we test the classification capability of all simple combinations of those important genes by using a good classifier. For three "small" and "simple" data sets with two, three, and four cancer (sub)types, our approach obtained very high accuracy with only two or three genes. For a "large" and "complex" data set with 14 cancer types, we divided the whole problem into a group of binary classification problems and applied the 2-step approach to each of these binary classification problems. Through this "divide-and-conquer" approach, we obtained accuracy comparable to previously reported results but with only 28 genes rather than 16,063 genes. In general, our method can significantly reduce the number of genes required for highly reliable diagnosis
Keywords :
cancer; cellular biophysics; classification; divide and conquer methods; genetics; learning (artificial intelligence); medical diagnostic computing; molecular biophysics; noise; patient diagnosis; accurate cancer classification; binary classification problems; diagnosis; divide-and-conquer approach; gene expressions; microarray data; minimum gene subsets; noise; supervised machine learning algorithms; Cancer; Gene expression; Machine learning; Machine learning algorithms; Neoplasms; Neural networks; Statistical analysis; Support vector machine classification; Support vector machines; Testing; Cancer classification; fuzzy; gene expression; neural networks; support vector machines.; Algorithms; Artificial Intelligence; Cluster Analysis; Computational Biology; Fuzzy Logic; Gene Expression Profiling; Gene Expression Regulation, Neoplastic; Humans; Liver Neoplasms; Lymphoma; Neoplasms; Neural Networks (Computer); Oligonucleotide Array Sequence Analysis;
fLanguage :
English
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
Publisher :
ieee
ISSN :
1545-5963
Type :
jour
DOI :
10.1109/TCBB.2007.1006
Filename :
4104458
Link To Document :
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