Breast Cancer Prediction Using Stacked GRU-LSTM-BRNN

Breast Cancer diagnosis is one of the most studied problems in the medical domain. Cancer diagnosis has been studied extensively, which instantiates the need for early prediction of cancer disease. To obtain advance prediction, health records are exploited and given as input to an automated system....

Full description

Bibliographic Details
Main Authors: Dutta Shawni, Mandal Jyotsna Kumar, Kim Tai Hoon, Bandyopadhyay Samir Kumar
Format: Article
Language:English
Published: Sciendo 2020-12-01
Series:Applied Computer Systems
Subjects:
gru
rnn
Online Access:https://doi.org/10.2478/acss-2020-0018
id doaj-222f6863bcf448ef9be1c7e8e7ccd642
record_format Article
spelling doaj-222f6863bcf448ef9be1c7e8e7ccd6422021-09-06T19:41:01ZengSciendoApplied Computer Systems2255-86912020-12-0125216317110.2478/acss-2020-0018acss-2020-0018Breast Cancer Prediction Using Stacked GRU-LSTM-BRNNDutta Shawni0Mandal Jyotsna Kumar1Kim Tai Hoon2Bandyopadhyay Samir Kumar3Department of Computer Science, The Bhawanipur Education Society College, Kolkata, IndiaDepartment of Computer Science & Engineering, University of Kalyani, Kalyani, West Bengal, IndiaSchool of Economics and Management, Beijing Jiaotong University, ChinaDepartment of Computer Science, The Bhawanipur Education Society College, Kolkata, IndiaBreast Cancer diagnosis is one of the most studied problems in the medical domain. Cancer diagnosis has been studied extensively, which instantiates the need for early prediction of cancer disease. To obtain advance prediction, health records are exploited and given as input to an automated system. The paper focuses on constructing an automated system by employing deep learning based recurrent neural network models. A stacked GRU-LSTM-BRNN is proposed in this paper that accepts health records of a patient for determining the possibility of being affected by breast cancer. The proposed model is compared against other baseline classifiers such as stacked simple-RNN model, stacked LSTM-RNN model, stacked GRU-RNN model. Comparative results obtained in this study indicate that the stacked GRU-LSTM-BRNN model yields better classification performance for predictions related to breast cancer disease.https://doi.org/10.2478/acss-2020-0018breast cancergrulstmpredictive modelrnnstacked gru-lstm-brnn
collection DOAJ
language English
format Article
sources DOAJ
author Dutta Shawni
Mandal Jyotsna Kumar
Kim Tai Hoon
Bandyopadhyay Samir Kumar
spellingShingle Dutta Shawni
Mandal Jyotsna Kumar
Kim Tai Hoon
Bandyopadhyay Samir Kumar
Breast Cancer Prediction Using Stacked GRU-LSTM-BRNN
Applied Computer Systems
breast cancer
gru
lstm
predictive model
rnn
stacked gru-lstm-brnn
author_facet Dutta Shawni
Mandal Jyotsna Kumar
Kim Tai Hoon
Bandyopadhyay Samir Kumar
author_sort Dutta Shawni
title Breast Cancer Prediction Using Stacked GRU-LSTM-BRNN
title_short Breast Cancer Prediction Using Stacked GRU-LSTM-BRNN
title_full Breast Cancer Prediction Using Stacked GRU-LSTM-BRNN
title_fullStr Breast Cancer Prediction Using Stacked GRU-LSTM-BRNN
title_full_unstemmed Breast Cancer Prediction Using Stacked GRU-LSTM-BRNN
title_sort breast cancer prediction using stacked gru-lstm-brnn
publisher Sciendo
series Applied Computer Systems
issn 2255-8691
publishDate 2020-12-01
description Breast Cancer diagnosis is one of the most studied problems in the medical domain. Cancer diagnosis has been studied extensively, which instantiates the need for early prediction of cancer disease. To obtain advance prediction, health records are exploited and given as input to an automated system. The paper focuses on constructing an automated system by employing deep learning based recurrent neural network models. A stacked GRU-LSTM-BRNN is proposed in this paper that accepts health records of a patient for determining the possibility of being affected by breast cancer. The proposed model is compared against other baseline classifiers such as stacked simple-RNN model, stacked LSTM-RNN model, stacked GRU-RNN model. Comparative results obtained in this study indicate that the stacked GRU-LSTM-BRNN model yields better classification performance for predictions related to breast cancer disease.
topic breast cancer
gru
lstm
predictive model
rnn
stacked gru-lstm-brnn
url https://doi.org/10.2478/acss-2020-0018
work_keys_str_mv AT duttashawni breastcancerpredictionusingstackedgrulstmbrnn
AT mandaljyotsnakumar breastcancerpredictionusingstackedgrulstmbrnn
AT kimtaihoon breastcancerpredictionusingstackedgrulstmbrnn
AT bandyopadhyaysamirkumar breastcancerpredictionusingstackedgrulstmbrnn
_version_ 1717767182702608384