An Efficient SMOTE-Based Deep Learning Model for Heart Attack Prediction
Cardiac disease treatments are often being subjected to the acquisition and analysis of vast quantity of digital cardiac data. These data can be utilized for various beneficial purposes. These data’s utilization becomes more important when we are dealing with critical diseases like a heart attack wh...
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Hindawi Limited
2021-01-01
|
Series: | Scientific Programming |
Online Access: | http://dx.doi.org/10.1155/2021/6621622 |
id |
doaj-6e2027fc61a74963969a55e05c527691 |
---|---|
record_format |
Article |
spelling |
doaj-6e2027fc61a74963969a55e05c5276912021-07-02T20:33:53ZengHindawi LimitedScientific Programming1875-919X2021-01-01202110.1155/2021/6621622An Efficient SMOTE-Based Deep Learning Model for Heart Attack PredictionMuhammad Waqar0Hassan Dawood1Hussain Dawood2Nadeem Majeed3Ameen Banjar4Riad Alharbey5Department of Electrical EngineeringDepartment of Software EngineeringDepartment of Computer and Network EngineeringPunjab University College of Information Technology (PUCIT)Department of Information System and TechnologyDepartment of Information System and TechnologyCardiac disease treatments are often being subjected to the acquisition and analysis of vast quantity of digital cardiac data. These data can be utilized for various beneficial purposes. These data’s utilization becomes more important when we are dealing with critical diseases like a heart attack where patient life is often at stake. Machine learning and deep learning are two famous techniques that are helping in making the raw data useful. Some of the biggest problems that arise from the usage of the aforementioned techniques are massive resource utilization, extensive data preprocessing, need for features engineering, and ensuring reliability in classification results. The proposed research work presents a cost-effective solution to predict heart attack with high accuracy and reliability. It uses a UCI dataset to predict the heart attack via various machine learning algorithms without the involvement of any feature engineering. Moreover, the given dataset has an unequal distribution of positive and negative classes which can reduce performance. The proposed work uses a synthetic minority oversampling technique (SMOTE) to handle given imbalance data. The proposed system discarded the need of feature engineering for the classification of the given dataset. This led to an efficient solution as feature engineering often proves to be a costly process. The results show that among all machine learning algorithms, SMOTE-based artificial neural network when tuned properly outperformed all other models and many existing systems. The high reliability of the proposed system ensures that it can be effectively used in the prediction of the heart attack.http://dx.doi.org/10.1155/2021/6621622 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Muhammad Waqar Hassan Dawood Hussain Dawood Nadeem Majeed Ameen Banjar Riad Alharbey |
spellingShingle |
Muhammad Waqar Hassan Dawood Hussain Dawood Nadeem Majeed Ameen Banjar Riad Alharbey An Efficient SMOTE-Based Deep Learning Model for Heart Attack Prediction Scientific Programming |
author_facet |
Muhammad Waqar Hassan Dawood Hussain Dawood Nadeem Majeed Ameen Banjar Riad Alharbey |
author_sort |
Muhammad Waqar |
title |
An Efficient SMOTE-Based Deep Learning Model for Heart Attack Prediction |
title_short |
An Efficient SMOTE-Based Deep Learning Model for Heart Attack Prediction |
title_full |
An Efficient SMOTE-Based Deep Learning Model for Heart Attack Prediction |
title_fullStr |
An Efficient SMOTE-Based Deep Learning Model for Heart Attack Prediction |
title_full_unstemmed |
An Efficient SMOTE-Based Deep Learning Model for Heart Attack Prediction |
title_sort |
efficient smote-based deep learning model for heart attack prediction |
publisher |
Hindawi Limited |
series |
Scientific Programming |
issn |
1875-919X |
publishDate |
2021-01-01 |
description |
Cardiac disease treatments are often being subjected to the acquisition and analysis of vast quantity of digital cardiac data. These data can be utilized for various beneficial purposes. These data’s utilization becomes more important when we are dealing with critical diseases like a heart attack where patient life is often at stake. Machine learning and deep learning are two famous techniques that are helping in making the raw data useful. Some of the biggest problems that arise from the usage of the aforementioned techniques are massive resource utilization, extensive data preprocessing, need for features engineering, and ensuring reliability in classification results. The proposed research work presents a cost-effective solution to predict heart attack with high accuracy and reliability. It uses a UCI dataset to predict the heart attack via various machine learning algorithms without the involvement of any feature engineering. Moreover, the given dataset has an unequal distribution of positive and negative classes which can reduce performance. The proposed work uses a synthetic minority oversampling technique (SMOTE) to handle given imbalance data. The proposed system discarded the need of feature engineering for the classification of the given dataset. This led to an efficient solution as feature engineering often proves to be a costly process. The results show that among all machine learning algorithms, SMOTE-based artificial neural network when tuned properly outperformed all other models and many existing systems. The high reliability of the proposed system ensures that it can be effectively used in the prediction of the heart attack. |
url |
http://dx.doi.org/10.1155/2021/6621622 |
work_keys_str_mv |
AT muhammadwaqar anefficientsmotebaseddeeplearningmodelforheartattackprediction AT hassandawood anefficientsmotebaseddeeplearningmodelforheartattackprediction AT hussaindawood anefficientsmotebaseddeeplearningmodelforheartattackprediction AT nadeemmajeed anefficientsmotebaseddeeplearningmodelforheartattackprediction AT ameenbanjar anefficientsmotebaseddeeplearningmodelforheartattackprediction AT riadalharbey anefficientsmotebaseddeeplearningmodelforheartattackprediction AT muhammadwaqar efficientsmotebaseddeeplearningmodelforheartattackprediction AT hassandawood efficientsmotebaseddeeplearningmodelforheartattackprediction AT hussaindawood efficientsmotebaseddeeplearningmodelforheartattackprediction AT nadeemmajeed efficientsmotebaseddeeplearningmodelforheartattackprediction AT ameenbanjar efficientsmotebaseddeeplearningmodelforheartattackprediction AT riadalharbey efficientsmotebaseddeeplearningmodelforheartattackprediction |
_version_ |
1721322822159040512 |