Classification Model for Meticulous Presaging of Heart Disease Detection through SDA and NCA using Machine learning :CMSDANCA

Main Article Content

Ritu Aggarwal
Suneet Kumar

Abstract

For the design and implementation of CDSS, computation time and prognostic accuracy are very important. To analyze the large collection of a dataset for detecting and diagnosis disease ML techniques are used. According to the reports of World Health Organizations, HD is a major cause of death and killer in urban and rural areas or worldwide. The main reason for this is a shortage of doctors and delay in the diagnosis. In this research work, heart disease is a diagnosis by the data mining techniques and used the clinical parameters of patients for early stages diagnosis. The intend of this learning to develop a representation that relies on the prediction method for coronary heart disease. This proposed work used the approach of self-diagnosis Algorithm, Fuzzy Artificial neural network, and NCA & PCA and imputation methods. By the use of this technique computation time for prediction of Coronary HD can be reduced. For the implementation of this the two datasets are using such as Cleveland and Statlog datasets that is collected from the UCI kaggle the ML repository. The datasets for the disease prediction measure are used to accurately calculate the difference between variables and to determine whether they are correlated or not. For this classification model, the performance measure is calculated in requisites of their accuracy, precision, recall, and specificity. This approach is evaluated on the heart disease datasets for improving the accuracy performance results obtained. The outcome for KNN+SDA+NCA+FuzzyANN for Cleveland dataset accuracy achieved 98.56 %.and for Statlog dataset 98.66 %..

Article Details

How to Cite
Aggarwal, R. ., & Kumar, S. . (2022). Classification Model for Meticulous Presaging of Heart Disease Detection through SDA and NCA using Machine learning :CMSDANCA. International Journal on Recent and Innovation Trends in Computing and Communication, 10(1s), 217–224. https://doi.org/10.17762/ijritcc.v10i1s.5827
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References

Nilashi, M., Ahmadi, H., Manaf, A.A., Rashid, T. A., Samad, S., Shahmoradi, L., Aljojo, N., &Akbari, E.(2020).Coronary heart diseasediagnosis through self-organizingmap and fuzzysupportvectormachine with incrementalupdates. International Journal of Fuzzy Systems, 22(4), 1376–1388. https://doi.org/10.1007/s40815-020-00828-7

Karthikeyan, T., &Kanimozhi, V. A.,” Deep Learning Approach for Prediction of Heart Disease Using Data mining Classification Algorithm Deep Belief Network”, International Journal of Advanced Research in Science. (2017).EngineeringTechnology,4(1, January).

Gujare, R. (2020). Heart disease prediction using ensemble learning methods. International Journal of Advanced Science and Technology, 29(6), 76–85.

Guru, S. M., Hsu, A., &Halgamuge, Saman. (2005).‘An Extended Growing Self-Organizing Map for Selection of Clusters in Sensor Networks’, al of Distributed Sensor Networks.International Journal of Distributed Sensor Networks, 1(02, June), 0–0

Sridevi, R., Dinadayalan, P., & Bastin Britto, S.(2019). An appropriate feature classification model using Kohonen network. International Journal of Computer Engineering & Technology , 10(2, March–April), 148–159. https://doi.org/10.34218/IJCET.10.2.2019.016

Baccouche, A., Garcia-Zapirain, B., Castillo Olea, C., &Elmaghraby, A.(2020).‘A Ensemble Deep Learning Models for Heart Disease Classification’, A case study from Mexico. Information,11(4), 207. https://doi.org/10.3390/info11040207

Jain, D., &Singh, V.(2018).Feature selection and classification systems for chronic disease prediction: A review. Egyptian Informatics Journal, 19(3), 179–189. https://doi.org/10.1016/j.eij.2018.03.002 ISSN, 8665, 1110.

Mienye, I.D., Sun, Y., &Wang, Z.(2020).An improved ensemble learning approach for the prediction of heart disease risk. Informatics in Medicine Unlocked, 20. https://doi.org/10.1016/j.imu.2020.100402

Nikookar, E., &Naderi, E.(2018).‘Hybrid Ensemble Framework for Heart Disease Detection and Prediction’,IJACSA. International Journal of Advanced Computer Science and Applications, 9(5). https://doi.org/10.14569/IJACSA.2018.090533

Widiyaningtyas, T., &Zaeni, I. A. E.,” Self-Organizing Map (SOM) For Diagnosis Coronary Heart Disease”, ICITSEE ,2019.

Mohan, S., Thirumalai, C., & Srivastava, G.(2019).Effective heart disease prediction using hybrid machine learning techniques. IEEE Access, 7(July 3), 81542–81554. https://doi.org/10.1109/ACCESS.2019.2923707

Gavhane, A., Kokkula, G., Pandya, I., &Prof.Devadkar, K. Prediction of heart disease using machine learning, IEEE Conference Record # 42487; IEEE XploreISBN:978-1-5386-0965-1 (ICECA 2018)

Karay?lan, T., & K?l?ç, Ö.(published 2017). Prediction of heart disease using neural network. IEEE Publications.

Dinesh Kumar, G., Arumugaraj, K., Santhosh Kumar, D., &Mareeswari, V.Prediction of cardiovasculardiseaseusingmachinelearningalgorithms. Publisher: IEEE, proceeding of 2018 IEEE international conference.

MrKrishnan, S.(April 26, 2019). J, Dr Geetha. S.Prediction of Heart Disease Using Machine Learning Algorithms.

Wang, C. W. (2006).New ensemble machine learning method for classification and prediction on geneexpressiondata, Proceeding of 2016 IEEE International Conference. Conference Proceedings, 2006, 3478–3481. https://doi.org/10.1109/IEMBS.2006.259893

Anooj, P. K.(January 2012).Clinical decision support system: Risk level prediction of heart disease using weighted fuzzy rules. Journal of King Saud University – Computer and Information Sciences, 24(1), 27–40. https://doi.org/10.1016/j.jksuci.2011.09.002

Abdullah, S., &Rajalaxmi, R. R.(2012).A data mining model for predicting the coronary heart disease using random forest classifier. InProceedings of the International Conference Recent Trends Computability Methods, Commun.Controls,April(pp.22–25).

Rairikar, A., Kulkarni, V., Sabale, V., Kale, H., &Lamgunde, A.(2017, June). Heart disease prediction using data mining techniques. InInternational Conference on Intelligent Computing and Control (I2C2), 2017 (pp. 1–8). IEEE Publications.

Vijayashree,J.,&SrimanNarayanaIyengar,N.Ch.(2016).Heart disease prediction system using datamining and hybrid intelligettechniques: A review. Informatics in Medicine Unlocked 16 (2019), 8(4), 139–148 11.

C. Beulah Christalin Latha, S. Carolin Jeeva ,” Improving the accuracy of prediction of heart disease risk based on ensemble classification techniques “,

Kolukisa, B., Hacilar, H., Goy, Gokhan, Kus, M., Bakir-Gungor, B., Aral, A., &Gungor, V. C.,” Evaluation of Classification Algorithms. (2018).Linear discriminantanalysis and a newhybridfeatureselectionmethodology for the diagnosis of coronaryarterydiseaseIEEE International Conference on Big Data (Big Data).

Chen, M., Hao, Y., Hwang, K., Wang, L., &Wang, L.(2017).Disease prediction by machine learning over big data from healthcare communities. IEEE Access, 5,8869–8879. https://doi.org/10.1109/ACCESS.2017.2694446

Methaila, A., Kansal, P., Arya, H., &Kumar, P.(2014).Earlyheart disease prediction Using datamining techniques.

Pouriyeh, S., Vahid, S., Arabnia, H. R., & Sannino, G. (July 2017).A comprehensive einvestigation on comparison of machine learning techniques on heart diseasedomain.

Dinh, A., Miertschin, S., Young, A., & Mohanty, S. D.(2019).A data-driven approach to predicting diabetes and cardiovascular disease with machine learning. BMC Medical Informatics and Decision Making, 19(1), 211. https://doi.org/10.1186/s12911-019-0918-5

Kohli, P. S., &Arora, S.Application of machine learning in disease prediction. Proceeding of 2018 IEEE international onference.

Ghumbre, S. U., &Ghatol, A. A.(January 2012).‘Heart Disease Diagnosis Using Machine Learning Algorithm,’advances in intelligent and softcomputing.Proceedings of the International Conference on Information Systems Design and Intelligent Applications.

Dahiwade, D., Prof.Patle, G., &Prof. Meshram, E.(2019).Designing disease prediction mode lusing machine learning approach.IEEE, ICCMC.

Chen, M., Hao, Y., Hwang, K., Wang, L., &Wang, L. (2017 b).Disease prediction by machine learning over big data from healthcare communities.IEEE Access, 5, 8869–8879. https://doi.org/10.1109/ACCESS.2017.2694446

Aggarwal, R., &Thakral, P.(2022). Meticulous presaging arrhythmia fibrillation for heart disease classification using oversampling method for multiple classifiers based on machine learning. InP.Verma, C.Charan, X. Fernando&S.Ganesan(Eds.), Advances in data computing, communication and security. Lecture notes on datae ngineering and communicationst echnologies, 106. https://doi.org/10.1007/978-981-16-8403-6_9. Springer.

Aggarwal, R., &Kumar, S.(2022, March). An automated perception and prediction of heart disease based on machine learning. In AIP Conference Proceedings 2424 (1), p. 020001). AIP Publishing LLC.

Aggarwal .,R , Kumar, S.(2022)HRV based feature selection for congestive heart failure and normal sinus rhythm for meticulous presaging of heart disease using machine learning, Measurement: Sensors,2022100573,ISSN 2665-9174,https://doi.org/10.1016/j.measen.2022.100573(https://www.sciencedirect.com/science/article/pii/S2665917422002070)