| Literature DB >> 26418055 |
Alexandre Wagner Chagas Faria1, Alisson Marques da Silva2, Thiago de Souza Rodrigues3, Marcelo Azevedo Costa1, Antonio Padua Braga1.
Abstract
Acute leukemia classification into its myeloid and lymphoblastic subtypes is usually accomplished according to the morphology of the tumor. Nevertheless, the subtypes may have similar histopathological appearance, making screening procedures difficult. In addition, approximately one-third of acute myeloid leukemias are characterized by aberrant cytoplasmic localization of nucleophosmin (NPMc(+)), where the majority has a normal karyotype. This work is based on two DNA microarray datasets, available publicly, to differentiate leukemia subtypes. The datasets were split into training and test sets, and feature selection methods were applied. Artificial neural network classifiers were developed to compare the feature selection methods. For the first dataset, 50 genes selected using the best classifier was able to classify all patients in the test set. For the second dataset, five genes yielded 97.5% accuracy in the test set.Entities:
Keywords: gene expression profile; machine learning
Mesh:
Year: 2015 PMID: 26418055 DOI: 10.1089/cmb.2013.0125
Source DB: PubMed Journal: J Comput Biol ISSN: 1066-5277 Impact factor: 1.479