A Systematic Review for Heart Disease Prediction Using AIML Algorithms

Authors

  • Kummari Jayasri Research Scholar, Department of Computer Science Engineering, Chaitanya Deemed to be University, Kishanpura, Hanamkonda, Warangal, Telangana, India
  • N. Satheesh Kumar Professor, Department of Computer Science Engineering, Chaitanya Deemed to Be University, Kishanpura, Hanamkonda, Warangal, Telangana, India

Keywords:

Heart Disease, Machine Learning, SVM, KNN, DT, RF, CNN

Abstract

Cardiovascular diseases (CVDs), commonly known as heart diseases, have consistently held the position of being the primary global cause of mortality for many years. They are also the most serious illness in India and the rest of the world. So, a method that is reliable, accurate, and easy to use is needed to find these diseases early and start the right treatment. Using a variety of medical datasets, machine learning and deep learning techniques have been used to automate the analysis of large and complex data sets. In recent years, many researchers have used a wide range of methods to help doctors and other medical professionals find heart-related illnesses. This study looks at a number of models that were made using these methods and techniques, and it figures out how well they work. Researchers have a strong inclination towards models rooted in supervised learning techniques such as Support Vector Machines (SVM), K-Nearest Neighbour (KNN), Naive Bayes, Decision Trees (DT), Random Forest (RF), ensemble models, and various deep learning algorithms.

References

Gavhane A, Kokkula G, Pandya I, Devadkar K. Prediction of heart disease using machine learning. in 2018 2nd International Conference on Electronics, Communication and Aerospace Technology (ICECA). 2018; 1275–1278.

Hasija Y, Garg N, Sourav S. Automated detection of dermatological disorders through image-processing and machine learning. In 2017 International Conference on Intelligent Sustainable Systems (ICISS). 2017; 1047–1051.

Uddin S, Khan A, Hossain ME, Moni MA. Comparing different supervised machine learning algorithms for disease prediction. BMC Med Inform Decis Mak. 2019; 19(1): 1–16.

Katarya R, Srinivas P. Predicting heart disease at early stages using machine learning: A survey. in 2020 International Conference on Electronics and Sustainable Communication Systems (ICESC). 2020; 302–305.

Bharti S, Singh SN. Analytical study of heart disease prediction comparing with different algorithms. Computing, Communication & Automation (ICCCA), International Conference on IEEE. 2015; 78–82.

Raihan M, Mondal S, More A, Sagor MOF, Sikder G, Majumder MA, Ghosh K. Smartphone based ischemic heart disease (heart attack) risk prediction using 111 clinical data and data mining approaches, a prototype design. Computer and Information Technology (ICCIT), 19th International Conference on IEEE. 2016; 299–303.

Tarle Balasaheb, Sudarson Jena. An artificial neural network-based pattern classification algorithm for diagnosis of heart disease. IEEE International Conference on Computing, Communication, Control and Automation (ICCUBEA). 2017; 1–4.

Mohan Senthil Kumar, Chandrasekar Thirumalai, Gautam Srivastava. Effective heart disease prediction using hybrid machine learning techniques. IEEE Access. 2019; 7: 81542–81554. ISSN: 81542-81554.

Lei-da Chen TS, Frolick MN. Data mining methods, applications, and tools. Inf Syst Manag. 2000; 17(1): 67–8.

Thakkar H, Shah V, Yagnik H, Shah M. Comparative anatomization of data mining and fuzzy logic techniques used in diabetes prognosis. Clinical eHealth. Jan 2021; 4: 12–23.

Gandhi M, Singh SN. Predictions in heart disease using techniques of data mining. Futuristic Trends on Computational Analysis and Knowledge Management (ABLAZE), International Conference on IEEE. 2015; 520–525.

Sultana M, Haider A, Uddin MS. Analysis of data mining techniques for heart disease prediction. Electrical Engineering and Information Communication Technology (ICEEICT), 3rd International Conference on IEEE. 2016; 1–5.

Polamuri S. How the Logistic Regression model works in machine learning. 2018; 1(1): 1–13.

Anitha S, Sridevi N. Heart disease prediction using data mining techniques. J Anal Comput. 2019; 13(2): 48–55. ISSN- 0973-2861.

Almustafa Khaled Mohamad. Prediction of heart disease and classifiers’ sensitivity analysis. BMC Bioinform. 2020; 21(1): 1–18.

Murthy HN, Meenakshi M. ANN model to predict coronary heart disease based on risk factors. Bonfring International Journal of Man Machine Interface. 2013; 3(2): 13–18.

Gao Y, Lin Z, Zhang TT, Liu N, Liu T, Ser W, Ong MEH. Effects of two new features of approximate entropy and sample entropy on cardiac arrest prediction. Circuits and Systems (ISCAS), IEEE International Symposium on IEEE. 2015; 65–68.

Kavitha R, Kannan E. An efficient framework for heart disease classification using feature extraction and feature selection technique in data mining. Emerging Trends in Engineering, Technology and Science (ICETETS), International Conference on IEEE. 2016; 1–5.

Tong L, Hoffman R, Deshpande SR, Wang MD. Predicting heart rejection using histopathological whole-slide imaging and deep neural network with dropout. 113 Biomedical & Health Informatics (BHI), IEEE EMBS International Conference on IEEE. 2017; 1–4.

Gan H, Fan Y, Luo Z, Zhang Q. Local homogeneous consistent safe semi supervised clustering. Expert Syst Appl. 2018; 97(1): 384–393.

Spencer Robinson, Fadi Thabtah, Neda Abdelhamid, Michael Thompson. Exploring feature selection and classification methods for predicting heart disease. Digit Health. 2020; 6: 2055207620914777(10). DOI: 10.1177/ 2055207620914777.

Javeed Ashir, Sanam Shahla Rizvi, Shijie Zhou, Rabia Riaz, Shafqat Ullah Khan, Se Jin Kwon. Heart risk failure prediction using a novel feature selection method for feature refinement and neural network for classification. Mob Inf Syst. 2020; 2020: Article ID-8843115. DOI-10.1155/2020/8843115

Deepthi S, Ravikumar A. Computation Methods for the Diagnosis and Prognosis of Heart Disease. Int J Comput Appl. 2014; 95(19): 5–9.

Wang Y, Ng K, Byrd RJ, Hu J, Ebadollahi S, Daar Z, Stewart WF. Early detection of heart failure with varying prediction windows by structured and unstructured 114 data in electronic health records. Engineering in Medicine and Biology Society (EMBC), 37th Annual International Conference of the IEEE. 2015; 2530–2533.

Kelwade JP, Salankar SS. An optimal structure of multilayer perception using particle swarm optimization for the prediction of cardiac arrhythmias. Reliability, In focus Technologies and Optimization (Trends and Future Directions) (ICRITO), 5th International Conference on IEEE. 2016; 426–430.

Bhargava N, Dayma S, Kumar A, Singh P. An approach for classification using simple CART algorithm in WEKA. Intelligent Systems and Control (ISCO), 11th International Conference on IEEE. 2017; 212–216.

Mari Muthu M, Deivarani S, Gayathri R. Analysis of heart disease prediction using various machine learning techniques. In: Advances in Computerized Analysis in Clinical and Medical Imaging. Chapman and Hall/CRC; 2019. DOI: 9780429446030-13.

Latha CB, Jeeva SC. Improving the accuracy of prediction of heart disease risk based on ensemble classification techniques. Inform Med Unlocked. 2019 Jan 1; 16: 100203.

Gárate-Escamila AK, El Hassani AH, Andrès E. Classification models for heart disease prediction using feature selection and PCA. Inform Med Unlocked. 2020 Jan 1; 19: 100330.

Kanchanamala P, Alphonse AS, Reddy PB. Heart disease prediction using hybrid optimization enabled deep learning network with spark architecture. Biomed Signal Process Control. 2023 Jul 1; 84: 104707.

Bhatt CM, Patel P, Ghetia T, Mazzeo PL. Effective heart disease prediction using machine learning techniques. Algorithms. 2023 Feb 6; 16(2): 88.

Hassan D, Hussein HI, Hassan MM. Heart disease prediction based on pre-trained deep neural networks combined with principal component analysis. Biomed Signal Process Control. 2023 Jan 1; 79(Pt 1): 104019.

Ogundepo EA, Yahya WB. Performance analysis of supervised classification models on heart disease prediction. Innov Syst Softw Eng. 2023 Mar; 19(1): 129–44.

Gupta J. The accuracy of supervised machine learning algorithms in predicting cardiovascular disease. In 2021 IEEE International Conference on Artificial Intelligence and Computer Science Technology (ICAICST). 2021 Jun 29; 234–239.

Shah D, Patel S, Bharti SK. Heart disease prediction using machine learning techniques. SN Comput Sci. 2020 Nov; 1(6): 345(6p).

Mohan S, Thirumalai C, Srivastava G. Effective heart disease prediction using hybrid machine learning techniques. IEEE Access. 2019 Jun 19; 7: 81542–54.

Haq AU, Li JP, Memon MH, Nazir S, Sun R. A hybrid intelligent system framework for the prediction of heart disease using machine learning algorithms. Mobile information systems. 2018 Dec 2; 2018: Article ID 3860146(21p).

Tahira Mahboob, Rida Irfan, Bazelah Ghaffar et al. Evaluating Ensemble Prediction of Coronary Heart Disease using Receiver Operating Characteristics. 2017 Internet Technologies and Applications (ITA), Wrexham, UK. 2017; 110–115. 978-1-5090-4815-1/17/$31.00 ©2017 IEEE.

Khan M, He C, Liu T, Ullah F. A new hybrid approach of clustering based probabilistic decision tree to forecast wind power on large scales. J Electr Eng Technol. 2021 Mar; 16(4): 697–710.

Panahiazar M, Taslimitehrani V, Pereira N, Pathak J. Using EHRs and machine learning for heart failure survival analysis. Stud Health Technol Inform. 2015; 216: 40–4.

Gers FA, Schraudolph NN, Schmidhuber J. Learning precise timing with LSTM recurrent networks. J Mach Learn Res. 2003; 3: 115–43.

Sharmila A, Aman Raj S, Shashank P, Mahalakshmi P. Epileptic seizure detection using DWT-based approximate entropy, Shannon entropy and support vector machine: a case study. J Med Eng Technol. 2018 Jan 2; 42(1): 1–8.

Alnajjar MK, Abu-Naser SS. Heart sounds analysis and classification for cardiovascular diseases diagnosis using deep learning. Int J Acad Eng Res. 2022; 6(1): 7–23.

Sharan Monica L, Sathees Kumar B. Analysis of Cardiovascular Disease Prediction using Data Mining Techniques. Int J Mod Comput Sci. 2016 Feb 1; 4: 55–58.

Noura Ajam. Heart Disease Diagnoses using Artificial Neural Network. The International Institute of Science, Technology and Education (IISTE). 2015; 5(4): 7–11.

Vrana NE, Lavalle P, Dokmeci MR, Dehghani F, Ghaemmaghami AM, Khademhosseini A. Engineering functional epithelium for regenerative medicine and in vitro organ models: a review. Tissue Eng Part B: Rev. 2013 Dec 1; 19(6): 529–43.

Oh SL, Ng EY, San Tan R, Acharya UR. Automated diagnosis of arrhythmia using combination of CNN and LSTM techniques with variable length heart beats. Comput Biol Med. 2018 Nov 1; 102: 278–87.

Chala Beyene, Pooja Kamat. Survey on Prediction and Analysis the Occurrence of Heart Disease Using Data Mining Techniques. Int J Pure Appl Math. 2018; 118(8): 165–173.

Miao KH, Miao JH. Coronary heart disease diagnosis using deep neural networks. Int J Adv Comput Sci Appl. 2018; 9(10): 1–8.

Khalil M, Adib A. An end-to-end multi-level wavelet convolutional neural networks for heart diseases diagnosis. Neurocomputing. 2020 Dec 5; 417: 187–201.

Rehman A, Khan MA, Saba T, Mehmood Z, Tariq U, Ayesha N. Microscopic brain tumor detection and classification using 3D CNN and feature selection architecture. Microsc Res Tech. 2021 Jan; 84(1): 133–49.

Hadi HJ, Musthaq N, Khan IU. SSD forensic: Evidence generation and forensic research on solid state drives using trim analysis. In 2021 IEEE International Conference on Cyber Warfare and Security (ICCWS). 2021 Nov 23; 51–56.

Published

2023-11-03

Issue

Section

Review Article