2019
DOI: 10.1155/2019/9523719
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Attention-Based Multi-NMF Deep Neural Network with Multimodality Data for Breast Cancer Prognosis Model

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 mode… Show more

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Cited by 23 publications
(21 citation statements)
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“…The OS samples were clustered with 587 energy metabolism-related genes using a non-negative matrix clustering algorithm (NMF) [46]. The "NMF" package in R was applied using the standard "burnet" for 50 iterations, setting the k cluster range from 2 to 10, determining the average contour with the common member matrix, and setting the minimum number of subclass members to ten.…”
Section: Identification Of Energy Metabolism Molecular Subtypes In Osmentioning
confidence: 99%
“…The OS samples were clustered with 587 energy metabolism-related genes using a non-negative matrix clustering algorithm (NMF) [46]. The "NMF" package in R was applied using the standard "burnet" for 50 iterations, setting the k cluster range from 2 to 10, determining the average contour with the common member matrix, and setting the minimum number of subclass members to ten.…”
Section: Identification Of Energy Metabolism Molecular Subtypes In Osmentioning
confidence: 99%
“…In addition to hypothesis testing, and going beyond dealing with non-negative values, recent developments in deep learning (DL) have led to improvements in matrix and tensor factorisation methods. Chen et al used an attention mechanism to combine several implementations of NMF for breast cancer prognostication using gene expression and clinical data ( Chen et al, 2019 ). In another study, Schreiber et al proposed a multi-scale deep tensor factorisation for learning latent representations of the human epigenome that shows a promising performance in both imputation and prediction tasks ( Schreiber et al, 2019 ).…”
Section: Emerging ML Opportunitiesmentioning
confidence: 99%
“…Using recent advances in various machine learning algorithms ( 14 , 15 ), some researchers have worked to develop models that can consider a large amount of complex data, and many efforts are being made to more accurately predict the survival of individual BC patients. The attention-based multi-NMF DNN (AMND) model based on a deep neural network was proposed to predict the survival of BC with the gene expression profile and clinical data of 1,489 patients ( 16 ). The area under the curve (AUC) value of the AMND model was 87.04%.…”
Section: Introductionmentioning
confidence: 99%