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Published in: Neural Computing and Applications 10/2021

05-09-2020 | Original Article

Prediction of atherosclerosis diseases using biosensor-assisted deep learning artificial neuron model

Authors: Hongliang Yang, Zinan Li, Zhongyu Wang

Published in: Neural Computing and Applications | Issue 10/2021

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Abstract

In the present medical era, the major cause of the rise in death rate worldwide is atherosclerosis disease and this diagnosis is complicated because initial signs are unattended. To reduce the costs of treatment and prevent serious events, it is necessary to improve the prediction accuracy of cardiovascular diseases during plaque formation. This proposal is intended to create a support system for the biosensor-assisted deep learning concepts for detecting atherosclerosis disease. With the clinical data, this mathematical model can predict heart disease based on deep learning-assisted k-means geometric distribution artificial neuron model. The atherosclerotic plaque formation mathematical model explains the early atherosclerotic lesion development in a more accurate manner. Further, the creation of the atherosclerotic plate, the test performs numerical simulations with idealized two-dimensional carotid artery bifurcation geometry. The proposed system has been analyzed using a variety of similarity tests such as the coefficient Matthews’s correlation (CMC). Furthermore, the results have reached 95.66% accuracy and 0.93 CMC, which are significantly higher than published conventional research.

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Literature
1.
go back to reference Sun YV, Bielak LF, Peyser PA, Turner ST, Sheedy PF, Boerwinkle E, Kardia SL (2008) Application of machine learning algorithms to predict coronary artery calcification with a sibship-based design. Gen Epidemiol 32(4):350–360CrossRef Sun YV, Bielak LF, Peyser PA, Turner ST, Sheedy PF, Boerwinkle E, Kardia SL (2008) Application of machine learning algorithms to predict coronary artery calcification with a sibship-based design. Gen Epidemiol 32(4):350–360CrossRef
2.
go back to reference Serrano JI, Tomeckova M, Zvarova J (2006) Machine learning methods for knowledge discovery in medical data on atherosclerosis. Eur J Biomed Inform 2(1):6–33CrossRef Serrano JI, Tomeckova M, Zvarova J (2006) Machine learning methods for knowledge discovery in medical data on atherosclerosis. Eur J Biomed Inform 2(1):6–33CrossRef
3.
go back to reference Joshi S, Nair MK (2015) Prediction of heart disease using classification based data mining techniques. In: Jain L, Behera H, Mandal J, Mohapatra D (eds) Computational intelligence in data mining, vol 2. Springer, New Delhi, pp 503–511 Joshi S, Nair MK (2015) Prediction of heart disease using classification based data mining techniques. In: Jain L, Behera H, Mandal J, Mohapatra D (eds) Computational intelligence in data mining, vol 2. Springer, New Delhi, pp 503–511
4.
go back to reference Acharya RU, Faust O, Alvin APC, Sree SV, Molinari F, Saba L, Nicolaides A, Shafique S, Suri JS (2012) Symptomatic vs. asymptomatic plaque classification in carotid ultrasound. J Med Syst 36(3):1861–1871CrossRef Acharya RU, Faust O, Alvin APC, Sree SV, Molinari F, Saba L, Nicolaides A, Shafique S, Suri JS (2012) Symptomatic vs. asymptomatic plaque classification in carotid ultrasound. J Med Syst 36(3):1861–1871CrossRef
5.
go back to reference Al-Mallah MH, Elshawi R, Ahmed AM, Qureshi WT, Brawner CA, Blaha MJ, Ahmed HM, Ehrman JK, Keteyian SJ, Sakr S (2017) Using machine learning to define the association between cardiorespiratory fitness and all-cause mortality (from the Henry Ford Exercise Testing project). Am J Cardiol 120(11):2078–2084CrossRef Al-Mallah MH, Elshawi R, Ahmed AM, Qureshi WT, Brawner CA, Blaha MJ, Ahmed HM, Ehrman JK, Keteyian SJ, Sakr S (2017) Using machine learning to define the association between cardiorespiratory fitness and all-cause mortality (from the Henry Ford Exercise Testing project). Am J Cardiol 120(11):2078–2084CrossRef
6.
go back to reference Hongzong S, Tao W, Xiaojun Y, Huanxiang L, Zhide H, Mancang L, BoTao F (2007) Support vector machines classification for discriminating coronary heart disease patients from non-coronary heart disease. West Indian Med J 56(5):451–457 Hongzong S, Tao W, Xiaojun Y, Huanxiang L, Zhide H, Mancang L, BoTao F (2007) Support vector machines classification for discriminating coronary heart disease patients from non-coronary heart disease. West Indian Med J 56(5):451–457
7.
go back to reference Al’Aref SJ, Anchouche K, Singh G, Slomka PJ, Kolli KK, Kumar A, Pandey M, Maliakal G, van Rosendael AR, Beecy AN, Berman DS, Leipsic J, Nieman K, Andreini D, Pontone G, Schoepf UJ, Shaw LJ, Chang H-J, Narula J, Bax JJ, Guan Y, Min JK (2018) Clinical applications of machine learning in cardiovascular disease and its relevance to cardiac imaging. Eur Heart J 40(24):1975–1986CrossRef Al’Aref SJ, Anchouche K, Singh G, Slomka PJ, Kolli KK, Kumar A, Pandey M, Maliakal G, van Rosendael AR, Beecy AN, Berman DS, Leipsic J, Nieman K, Andreini D, Pontone G, Schoepf UJ, Shaw LJ, Chang H-J, Narula J, Bax JJ, Guan Y, Min JK (2018) Clinical applications of machine learning in cardiovascular disease and its relevance to cardiac imaging. Eur Heart J 40(24):1975–1986CrossRef
8.
go back to reference van Rosendael AR, Maliakal G, Kolli KK, Beecy A, Al’Aref SJ, Dwivedi A et al (2018) Maximization of the usage of coronary CTA derived plaque information using a machine learning based algorithm to improve risk stratification; insights from the CONFIRM registry. J Cardiovasc Comput Tomogr 12(3):204–209CrossRef van Rosendael AR, Maliakal G, Kolli KK, Beecy A, Al’Aref SJ, Dwivedi A et al (2018) Maximization of the usage of coronary CTA derived plaque information using a machine learning based algorithm to improve risk stratification; insights from the CONFIRM registry. J Cardiovasc Comput Tomogr 12(3):204–209CrossRef
9.
go back to reference Pandey AK, Pandey P, Jaiswal K, Sen AK (2013) Datamining clustering techniques in the prediction of heart disease using attribute selection method. Heart Dis 14:16–17 Pandey AK, Pandey P, Jaiswal K, Sen AK (2013) Datamining clustering techniques in the prediction of heart disease using attribute selection method. Heart Dis 14:16–17
11.
go back to reference Goldstein BA, Navar AM, Carter RE (2016) Moving beyond regression techniques in cardiovascular risk prediction: applying machine learning to address analytic challenges. Eur Heart J 38(23):1805–1814 Goldstein BA, Navar AM, Carter RE (2016) Moving beyond regression techniques in cardiovascular risk prediction: applying machine learning to address analytic challenges. Eur Heart J 38(23):1805–1814
12.
go back to reference Lee EK, Wu TL (2009) Classification and disease prediction via mathematical programming. In Handbook of optimization in medicine. Springer, Boston, MA, pp 1–50 Lee EK, Wu TL (2009) Classification and disease prediction via mathematical programming. In Handbook of optimization in medicine. Springer, Boston, MA, pp 1–50
13.
go back to reference Jabbar MA, Deekshatulu BL, Chandra P (2013) Heart disease prediction system using associative classification and genetic algorithm. arXiv preprint arXiv:1303.5919 Jabbar MA, Deekshatulu BL, Chandra P (2013) Heart disease prediction system using associative classification and genetic algorithm. arXiv preprint arXiv:​1303.​5919
14.
go back to reference Singh G, Al’Aref SJ, Van Assen M, Kim TS, van Rosendael A, Kolli KK et al (2018) Machine learning in cardiac CT: basic concepts and contemporary data. J Cardiovasc Comput Tomogr 12(3):192–201CrossRef Singh G, Al’Aref SJ, Van Assen M, Kim TS, van Rosendael A, Kolli KK et al (2018) Machine learning in cardiac CT: basic concepts and contemporary data. J Cardiovasc Comput Tomogr 12(3):192–201CrossRef
15.
go back to reference Yang J, Yao D, Zhan X, Zhan X (2014) Predicting disease risks using feature selection based on random forest and support vector machine. In International symposium on bioinformatics research and applications. Springer, Cham, 2014, June, pp 1–11 Yang J, Yao D, Zhan X, Zhan X (2014) Predicting disease risks using feature selection based on random forest and support vector machine. In International symposium on bioinformatics research and applications. Springer, Cham, 2014, June, pp 1–11
16.
go back to reference Motwani M, Dey D, Berman DS, Germano G, Achenbach S, Al-Mallah MH, Andreini D, Budoff MJ, Cademartiri F, Callister TQ, Chang H-J, Chinnaiyan K, Chow BJW, Cury RC, Delago A, Gomez M, Gransar H, Hadamitzky M, Hausleiter J, Hindoyan N, Feuchtner G, Kaufmann PA, Kim Y-J, Leipsic J, Lin FY, Maffei E, Marques H, Pontone G, Raff G, Rubinshtein R, Shaw LJ, Stehli J, Villines TC, Dunning A, Min JK, Slomka PJ (2016) Machine learning for prediction of all-cause mortality in patients with suspected coronary artery disease: a 5-year multicentre prospective registry analysis. Eur Heart J 38(7):500–507 Motwani M, Dey D, Berman DS, Germano G, Achenbach S, Al-Mallah MH, Andreini D, Budoff MJ, Cademartiri F, Callister TQ, Chang H-J, Chinnaiyan K, Chow BJW, Cury RC, Delago A, Gomez M, Gransar H, Hadamitzky M, Hausleiter J, Hindoyan N, Feuchtner G, Kaufmann PA, Kim Y-J, Leipsic J, Lin FY, Maffei E, Marques H, Pontone G, Raff G, Rubinshtein R, Shaw LJ, Stehli J, Villines TC, Dunning A, Min JK, Slomka PJ (2016) Machine learning for prediction of all-cause mortality in patients with suspected coronary artery disease: a 5-year multicentre prospective registry analysis. Eur Heart J 38(7):500–507
17.
go back to reference Ziasabounchi N, Askerzade I (2014) ANFIS based classification model for heart disease prediction. Int J Electr Comput Sci IJECS-IJENS 14(02):7–12 Ziasabounchi N, Askerzade I (2014) ANFIS based classification model for heart disease prediction. Int J Electr Comput Sci IJECS-IJENS 14(02):7–12
18.
go back to reference Rao VSH, Kumar MN (2012) Novel approaches for predicting risk factors of atherosclerosis. IEEE J Biomed Health Inform 17(1):183–189MathSciNetCrossRef Rao VSH, Kumar MN (2012) Novel approaches for predicting risk factors of atherosclerosis. IEEE J Biomed Health Inform 17(1):183–189MathSciNetCrossRef
19.
go back to reference Kruppa J, Ziegler A, König IR (2012) Risk estimation and risk prediction using machine–learning methods. Hum Genet 131(10):1639–1654CrossRef Kruppa J, Ziegler A, König IR (2012) Risk estimation and risk prediction using machine–learning methods. Hum Genet 131(10):1639–1654CrossRef
20.
go back to reference Okser S, Pahikkala T, Airola A, Salakoski T, Ripatti S, Aittokallio T (2014) Regularized machine learning in the genetic prediction of complex traits. PLoS Genet 10(11):e1004754CrossRef Okser S, Pahikkala T, Airola A, Salakoski T, Ripatti S, Aittokallio T (2014) Regularized machine learning in the genetic prediction of complex traits. PLoS Genet 10(11):e1004754CrossRef
21.
go back to reference Krittanawong C, Zhang H, Wang Z, Aydar M, Kitai T (2017) Artificial intelligence in precision cardiovascular medicine. J Am Coll Cardiol 69(21):2657–2664CrossRef Krittanawong C, Zhang H, Wang Z, Aydar M, Kitai T (2017) Artificial intelligence in precision cardiovascular medicine. J Am Coll Cardiol 69(21):2657–2664CrossRef
22.
go back to reference Poplin R, Varadarajan AV, Blumer K, Liu Y, McConnell MV, Corrado GS, Peng L, Webster DR (2018) Prediction of cardiovascular risk factors from retinal fundus photographs via deep learning. Nat Biomed Eng 2(3):158CrossRef Poplin R, Varadarajan AV, Blumer K, Liu Y, McConnell MV, Corrado GS, Peng L, Webster DR (2018) Prediction of cardiovascular risk factors from retinal fundus photographs via deep learning. Nat Biomed Eng 2(3):158CrossRef
23.
go back to reference Khalilia M, Chakraborty S, Popescu M (2011) Predicting disease risks from highly imbalanced data using random forest. BMC Med Inform Decis Mak 11(1):51CrossRef Khalilia M, Chakraborty S, Popescu M (2011) Predicting disease risks from highly imbalanced data using random forest. BMC Med Inform Decis Mak 11(1):51CrossRef
24.
go back to reference Verma L, Srivastava S, Negi PC (2016) A hybrid data mining model to predict coronary artery disease cases using non-invasive clinical data. J Med Syst 40(7):178CrossRef Verma L, Srivastava S, Negi PC (2016) A hybrid data mining model to predict coronary artery disease cases using non-invasive clinical data. J Med Syst 40(7):178CrossRef
25.
go back to reference Juarez-Orozco LE, Martinez-Manzanera O, Nesterov SV, Kajander S, Knuuti J (2018) The machine learning horizon in cardiac hybrid imaging. Eur J Hybrid Imaging 2(1):15CrossRef Juarez-Orozco LE, Martinez-Manzanera O, Nesterov SV, Kajander S, Knuuti J (2018) The machine learning horizon in cardiac hybrid imaging. Eur J Hybrid Imaging 2(1):15CrossRef
26.
go back to reference Ross R (1999) Atherosclerosis—an inflammatory disease. Mass Med Soc 340(2):115–126 Ross R (1999) Atherosclerosis—an inflammatory disease. Mass Med Soc 340(2):115–126
Metadata
Title
Prediction of atherosclerosis diseases using biosensor-assisted deep learning artificial neuron model
Authors
Hongliang Yang
Zinan Li
Zhongyu Wang
Publication date
05-09-2020
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 10/2021
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-020-05317-4

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