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Title

Attention-Based Multi-NMF Deep Neural Network with Multimodality Data for Breast Cancer Prognosis Model.

Authors

Chen, Hongling; Gao, Mingyan; Zhang, Ying; Liang, Wenbin; Zou, Xianchun

Abstract

Today, it has become a hot issue in cancer research to make precise prognostic prediction for breast cancer patients, which can not only effectively avoid overtreatment and medical resources waste, but also provide scientific basis to help medical staff and patients family members to make right medical decisions. As well known, cancer is a partly inherited disease with various important biological markers, especially the gene expression profile data and clinical data. Therefore, the accuracy of prediction model can be improved by integrating gene expression profile data and clinical data. In this paper, we proposed an end-to-end model, Attention-based Multi-NMF DNN (AMND), which combines clinical data and gene expression data extracted by Multiple Nonnegative Matrix Factorization algorithms (Multi-NMF) for the prognostic prediction of breast cancer. The innovation of this method is highlighted through using clinical data and combining multiple feature selection methods with the help of Attention mechanism. The results of comprehensive performance evaluation show that the proposed model reports better predictive performances than either models only using data of single modality, e.g., gene or clinical, or models based on any single NMF improved methods which only use one of the NMF algorithms to extract features. The performance of our model is competitive or even better than other previously reported models. Meanwhile, AMND can be extended to the survival prediction of other cancer diseases, providing a new strategy for breast cancer prognostic prediction.

Subjects

BREAST cancer prognosis; ALGORITHMS; ATTENTION; BIOMARKERS; GENE expression; INFORMATION storage & retrieval systems; MEDICAL databases; RESEARCH evaluation; UNNECESSARY surgery; DECISION making in clinical medicine; ACCESS to information; EARLY diagnosis; ELECTRONIC health records; GENE expression profiling

Publication

BioMed Research International, 2019, p1

ISSN

2314-6133

Publication type

Academic Journal

DOI

10.1155/2019/9523719

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