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- Title
Hadamard Kernel SVM with applications for breast cancer outcome predictions.
- Authors
Hao Jiang; Wai-Ki Ching; Wai-Shun Cheung; Wenpin Hou; Hong Yin
- Abstract
Background: Breast cancer is one of the leading causes of deaths for women. It is of great necessity to develop effective methods for breast cancer detection and diagnosis. Recent studies have focused on gene-based signatures for outcome predictions. Kernel SVM for its discriminative power in dealing with small sample pattern recognition problems has attracted a lot attention. But how to select or construct an appropriate kernel for a specified problem still needs further investigation. Results: Here we propose a novel kernel (Hadamard Kernel) in conjunction with Support Vector Machines (SVMs) to address the problem of breast cancer outcome prediction using gene expression data. Hadamard Kernel outperform the classical kernels and correlation kernel in terms of Area under the ROC Curve (AUC) values where a number of real-world data sets are adopted to test the performance of different methods. Conclusions: Hadamard Kernel SVM is effective for breast cancer predictions, either in terms of prognosis or diagnosis. It may benefit patients by guiding therapeutic options. Apart from that, it would be a valuable addition to the current SVM kernel families. We hope it will contribute to the wider biology and related communities.
- Subjects
BREAST cancer patients; SUPPORT vector machines; BIG data; GENE expression; HADAMARD codes
- Publication
BMC Systems Biology, 2017, Vol 11, p163
- ISSN
1752-0509
- Publication type
Article
- DOI
10.1186/s12918-017-0514-1