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      KCI등재 SCOPUS

      A comparative study of classification and prediction of Cardio-Vascular Diseases (CVD) using Machine Learning and Deep Learning techniques

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      https://www.riss.kr/link?id=A108570549

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      다국어 초록 (Multilingual Abstract)

      Cardio-Vascular Diseases (CVD) is found to be rampant in the populace leading to fatal death. The statistics of a recent survey reports that the mortality rate is expanding due to obesity, cholesterol, high blood pressure and usage of tobacco among th...

      Cardio-Vascular Diseases (CVD) is found to be rampant in the populace leading to fatal death. The statistics of a recent survey reports that the mortality rate is expanding due to obesity, cholesterol, high blood pressure and usage of tobacco among the people. The severity of the disease is piling up due to the above factors. Studying about the variations of these factors and their impact on CVD is the demand of the hour. This necessitates the usage of modern techniques to identify the disease at its outset and to aid a markdown in the mortality rate. Artificial Intelligence and Data Mining domains have a research scope with their enormous techniques that would aassist in the prediction of the CVD priory and identify their behavioural patterns in the large volume of data. The results of these predictions will help the clinicians in decision making and early diagnosis, which would reduce the risk of patients becoming fatal. This paper compares and reports the various Classification, Data Mining, Machine Learning, Deep Learning models that are used for prediction of the Cardio-Vascular diseases. The survey is organized as threefold: Classification and Data Mining Techniques for CVD, Machine Learning Models for CVD and Deep Learning Models for CVD prediction. The performance metrics used for reporting the accuracy, the dataset used for prediction and classification, and the tools used for each category of these techniques are also compiled and reported in this survey.

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      참고문헌 (Reference) 논문관계도

      1 "www.nhs.uk/conditions/cardiovascular-disease/"

      2 "towardsdatascience.com/heart-disease-prediction-73468d630cfc"

      3 Jyoti Soni, "Predictive data mining for medical diagnosis: An overview of heart disease prediction" 17 (17): 2011

      4 Shadab Adam Pattekari, "Prediction system for heart disease using naive Bayes" 3 (3): 290-294, 2012

      5 Era Singh Kajal, "Prediction of Heart Disease using Data Mining Techniques" 2 (2):

      6 Abhale Babasaheb Annasaheb Vijay Kumar Verma, "Prediction for heart disease problem based on most suitable recommendation" 3 (3): 2016

      7 Sonali S. Jagtap, "Prediction and analysis of heart disease" 5 (5): 2017

      8 Gadoya Komal, "Novel approach for heart disease prediction using decision tree algorithm" 3 (3): 2007-, 2015

      9 K. Subhadra, "Neural network based intelligent system for predicting heart disease" 8 (8): 2019

      10 Mudasir M. Kirmani, "Mudasir m kirmani cardiovascular disease prediction using data mining techniques: A review" 10 (10): 520-528, 2017

      1 "www.nhs.uk/conditions/cardiovascular-disease/"

      2 "towardsdatascience.com/heart-disease-prediction-73468d630cfc"

      3 Jyoti Soni, "Predictive data mining for medical diagnosis: An overview of heart disease prediction" 17 (17): 2011

      4 Shadab Adam Pattekari, "Prediction system for heart disease using naive Bayes" 3 (3): 290-294, 2012

      5 Era Singh Kajal, "Prediction of Heart Disease using Data Mining Techniques" 2 (2):

      6 Abhale Babasaheb Annasaheb Vijay Kumar Verma, "Prediction for heart disease problem based on most suitable recommendation" 3 (3): 2016

      7 Sonali S. Jagtap, "Prediction and analysis of heart disease" 5 (5): 2017

      8 Gadoya Komal, "Novel approach for heart disease prediction using decision tree algorithm" 3 (3): 2007-, 2015

      9 K. Subhadra, "Neural network based intelligent system for predicting heart disease" 8 (8): 2019

      10 Mudasir M. Kirmani, "Mudasir m kirmani cardiovascular disease prediction using data mining techniques: A review" 10 (10): 520-528, 2017

      11 Soumonos Mukherjee, "Intelligent heart disease prediction using neural network" 7 (7): 2019

      12 S.H.Ms. Ishtake, "Intelligent heart disease prediction system using data mining techniques" 1 (1): 94-101, 2013

      13 Chaitrali S. Dangare, "Improved study of heart disease prediction system using data mining classification techniques" 47 (47): 2012

      14 Ying An, "High-Risk Prediction of Cardiovascular Diseases via Attention-Based Deep Neural Networks" Institute of Electrical and Electronics Engineers (IEEE) 18 (18): 1093-1105, 2021

      15 Rachana Deshmukh, "Heart disease prediction using artificial neural network" 8 (8): 2019

      16 Garima Singh, "Heart disease prediction using Naïve Bayes" 2017

      17 T.K. Keerthana, "Heart disease prediction system using data mining method" 47 (47): 2017

      18 Bhavana Baad, "Heart disease prediction and detection" 7 (7): 2019

      19 S. Vinothini, "Heart disease prediction" 7 (7): 750-753, 2018

      20 Animesh Hazra, "Heart disease diagnosis and prediction using machine learning and data mining techniques: A review" 10 (10): 2137-2159, 2017

      21 Shweta Gupta, "Heart Disease Prediction using PCA-KNN in Data Mining" 2017

      22 A. Sudha, "Effective analysis and predictive model of stroke disease using classification methods" 43 (43): 2012

      23 Aditya Methaila, "Early heart disease prediction using data mining techniques" 53-59, 2014

      24 Sayali Ambekar, "Disease risk prediction by using convolutional neural network" 16 : 2018

      25 T. Chandrasekhar, "Detection of heart diseases using data mining techniques" 8 (8): 2019

      26 T. Chandrasekhar, "Detection Of Heart Diseases Using Data Mining Techniques"

      27 G. Subbalakshmi, "Decision support in heart disease prediction system using naive Bayes" 2 (2): 2011

      28 Fatemeh Taheri Dezaki, "Cardiac phase detection in echocardiograms with densely gated recurrent neural networks and global extrema loss" 38 (38): 2019

      29 Mohammad A.M. Abushariah, "Automatic heart disease diagnosis system based on artificial neural network (ANN) and adaptive neuro-fuzzy inference systems (ANFIS) approaches" 2014 (2014): 1055-1064, 2014

      30 Sameh Ghwanmeh, "Applying advanced NN-based decision support scheme for heart diseases diagnosis" 44 (44): 2012

      31 Rucha Shinde, "An intelligent heart disease prediction system using K-means clustering and Naïve Bayes algorithm" 6 (6): 637-639, 2015

      32 T. Mythili, "A heart disease prediction model using SVM-decision trees-logistic regression (SDL)" 68 (68): 2013

      33 T. Mythili, "A heart disease prediction model using SVM-decision trees-logistic regression (SDL)" 68 (68): 2013

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