Using classification and K-means methods to predict breast cancer recurrence in gene expression data

(2022) Using classification and K-means methods to predict breast cancer recurrence in gene expression data. Journal of Medical Signals and Sensors. pp. 122-126. ISSN 22287477 (ISSN)

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Abstract

Background: Breast cancer is a type of cancer that starts in the breast tissue and affects about 10 of women at different stages of their lives. In this study, we applied a new method to predict recurrence in biological networks made from gene expression data. Method: The method includes the steps such as data collection, clustering, determining differentiating genes, and classification. The eight techniques consist of random forest, support vector machine and neural network, randomforest + k-means, hidden markov model, joint mutual information, neural network + k-means and suportvector machine + k-menas were implemented on 12172 genes and 200 samples. Results: Thirty genes were considered as differentiating genes which used for the classification. The results showed that random forest + k-means get better performance than other techniques. The two techniques including neural network + k-means and random forest + k-means performed better than other techniques in identifying high risk cases. Conclusion: Thirty of 12,172 genes are considered for classification that the use of clustering has improved the classification techniques performance. © 2022 Isfahan University of Medical Sciences(IUMS). All rights reserved.

Item Type: Article
Keywords: Classification gene K-means Article breast cancer recurrence cancer classification controlled study gene expression hidden Markov model human k means clustering random forest support vector machine tumor gene
Page Range: pp. 122-126
Journal or Publication Title: Journal of Medical Signals and Sensors
Journal Index: Scopus
Volume: 12
Number: 2
Identification Number: https://doi.org/10.4103/jmss.jmss₁₁₇₂₁
ISSN: 22287477 (ISSN)
Depositing User: خانم ناهید ضیائی
URI: http://eprints.mui.ac.ir/id/eprint/25617

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