Ischemic Heart Disease Prognosis: A Hybrid Residual Attention-Enhanced LSTM Model

Well-timed prediction and an accurate diagnosis of Ischemic Heart disease (IHD) can reduce the risk of death, whereas an inaccurate diagnosis can prove fatal. So, there is a need to develop an optimal heart disease prediction model to avoid inaccurate ischemic heart disease diagnosis and further tre...

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Main Authors: D. Cenitta, R. Vijaya Arjunan, Ganesh Paramasivam, N. Arul, Anisha Palkar, Krishnaraj Chadaga
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/10819394/
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author D. Cenitta
R. Vijaya Arjunan
Ganesh Paramasivam
N. Arul
Anisha Palkar
Krishnaraj Chadaga
author_facet D. Cenitta
R. Vijaya Arjunan
Ganesh Paramasivam
N. Arul
Anisha Palkar
Krishnaraj Chadaga
author_sort D. Cenitta
collection DOAJ
description Well-timed prediction and an accurate diagnosis of Ischemic Heart disease (IHD) can reduce the risk of death, whereas an inaccurate diagnosis can prove fatal. So, there is a need to develop an optimal heart disease prediction model to avoid inaccurate ischemic heart disease diagnosis and further treatment. Recently, researchers have developed several deep learning techniques that take input from medical practitioners, automatically find hidden patterns in enormous volumes of data, and predict heart diseases without human intervention. Further, the deep learning model can help doctors to classify the severity of heart disease and choose appropriate treatment accordingly. These deep learning models can be improved to achieve greater accuracy and stability. Creating a hybrid model that combines attention residual learning with a Long Short-Term Memory (LSTM) is one method to prove it. Our suggested Hybrid Residual Attention-Enhanced LSTM (HRAE-LSTM) approach improves accuracy and stability by combining attention residual learning with an LSTM. For evaluating the effectiveness of the proposed HRAE-LSTM model, realistic datasets of 303 instances from the heart disease dataset (UCI), were used. The proposed HRAE-LSTM outperforms existing cardiac disease prediction systems by 97.7 % with the UCI dataset, respectively.
format Article
id doaj-art-e5ee3564b0c84e83b06b9d28b4f26929
institution Kabale University
issn 2169-3536
language English
publishDate 2025-01-01
publisher IEEE
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series IEEE Access
spelling doaj-art-e5ee3564b0c84e83b06b9d28b4f269292025-01-10T00:01:26ZengIEEEIEEE Access2169-35362025-01-01134281428910.1109/ACCESS.2024.352460410819394Ischemic Heart Disease Prognosis: A Hybrid Residual Attention-Enhanced LSTM ModelD. Cenitta0https://orcid.org/0000-0003-3715-6941R. Vijaya Arjunan1https://orcid.org/0000-0002-1402-6573Ganesh Paramasivam2https://orcid.org/0000-0002-4332-3665N. Arul3https://orcid.org/0009-0006-6358-6370Anisha Palkar4Krishnaraj Chadaga5Department of Computer Science and Engineering, Manipal Academy of Higher Education (MAHE), Manipal Institute of Technology, Manipal, Karnataka, IndiaDepartment of Computer Science and Engineering, Manipal Academy of Higher Education (MAHE), Manipal Institute of Technology, Manipal, Karnataka, IndiaDepartment of Cardiology, Manipal Academy of Higher Education (MAHE), Kasturba Medical College, Manipal, Manipal, Karnataka, IndiaDepartment of Computer Science and Engineering, AJ Institute of Engineering and Technology, Mangaluru, Karnataka, IndiaDepartment of Biomedical Engineering, Manipal Academy of Higher Education (MAHE), Manipal Institute of Technology, Manipal, Karnataka, IndiaDepartment of Computer Science and Engineering, Manipal Academy of Higher Education (MAHE), Manipal Institute of Technology, Manipal, Karnataka, IndiaWell-timed prediction and an accurate diagnosis of Ischemic Heart disease (IHD) can reduce the risk of death, whereas an inaccurate diagnosis can prove fatal. So, there is a need to develop an optimal heart disease prediction model to avoid inaccurate ischemic heart disease diagnosis and further treatment. Recently, researchers have developed several deep learning techniques that take input from medical practitioners, automatically find hidden patterns in enormous volumes of data, and predict heart diseases without human intervention. Further, the deep learning model can help doctors to classify the severity of heart disease and choose appropriate treatment accordingly. These deep learning models can be improved to achieve greater accuracy and stability. Creating a hybrid model that combines attention residual learning with a Long Short-Term Memory (LSTM) is one method to prove it. Our suggested Hybrid Residual Attention-Enhanced LSTM (HRAE-LSTM) approach improves accuracy and stability by combining attention residual learning with an LSTM. For evaluating the effectiveness of the proposed HRAE-LSTM model, realistic datasets of 303 instances from the heart disease dataset (UCI), were used. The proposed HRAE-LSTM outperforms existing cardiac disease prediction systems by 97.7 % with the UCI dataset, respectively.https://ieeexplore.ieee.org/document/10819394/UCIKaggleheart diseaseimputationdeep learningLSTM
spellingShingle D. Cenitta
R. Vijaya Arjunan
Ganesh Paramasivam
N. Arul
Anisha Palkar
Krishnaraj Chadaga
Ischemic Heart Disease Prognosis: A Hybrid Residual Attention-Enhanced LSTM Model
IEEE Access
UCI
Kaggle
heart disease
imputation
deep learning
LSTM
title Ischemic Heart Disease Prognosis: A Hybrid Residual Attention-Enhanced LSTM Model
title_full Ischemic Heart Disease Prognosis: A Hybrid Residual Attention-Enhanced LSTM Model
title_fullStr Ischemic Heart Disease Prognosis: A Hybrid Residual Attention-Enhanced LSTM Model
title_full_unstemmed Ischemic Heart Disease Prognosis: A Hybrid Residual Attention-Enhanced LSTM Model
title_short Ischemic Heart Disease Prognosis: A Hybrid Residual Attention-Enhanced LSTM Model
title_sort ischemic heart disease prognosis a hybrid residual attention enhanced lstm model
topic UCI
Kaggle
heart disease
imputation
deep learning
LSTM
url https://ieeexplore.ieee.org/document/10819394/
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