RETRACTION:Hybrid neural networks with virtual flows in in medical risk classifiers


Khatatneh K. Filist S. Al-Kasasbeh R.T. Aikeyeva A.A. Namazov M. Shatalova O. Shaqadan A. Miroshnikov A.
2022IOS Press BV

Journal of Intelligent and Fuzzy Systems
2022#43Issue 11621 - 1632 pp.

Modern medical risk classification systems focus on traditional risk factors and modeling methods. The available modeling tools do not allow reliable prediction of the of disease severity. In this study we develop prediction model of recurrent myocardial infarction in the rehabilitation period using several health variables generated in virtual flows. Hybrid decision modules with health data flows were used to build prognostic model for the prediction of disease. The vector of input information features consists of two subvectors: the first reflects real flows, the second reflects virtual flows. Complex interrelations among input data are modelled using Neural Network structure. The model classification quality of the intellectual cardiovascular catastrophe prediction system was tested on a sample composed of 230 patients who had acute myocardial infarction. For prediction, three categories of risk factors were identified: traditional factors, factors associated with stressful overloads, and risk factors derived from bio-impedance studies. During the rehabilitation period, the level of molecular products of lipid peroxidation and the antioxidant potential of blood serum were also studied. Experimental studies of various modifications of the proposed classifier model were conducted, consisting of sequential disconnection from the aggregator of solutions of weak classifiers at various hierarchical levels. The mathematical model show predictions accuracy of correct prognosis for the risk of myocardial infarction exceeding 0.86. Prediction quality indicators are higher than the known ASCORE cardiovascular catastrophe prediction system, on average, by 14%.

aggregators of fuzzy decision rules , GMDH model , Hybrid decision module , latent variable , neural network , recurrent myocardial infarction

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Department of Computer, Balqa Applied University, Prince Abdullah Bin Ghazi Faculty for Communication and Information Technology, Jordan
Department of Biomedical Engineering, Southwest State University, Kursk, Russian Federation
Electrical Energy Department, Balqa Applied University, Jordan
L.N. Gumilyov Eurasian National University (ENU), Kazakhstan
Baku Engineering University, Khirdalan, Azerbaijan
Civil Engineering Department, Zarqa University, Jordan
South-West State University, Kursk, Russian Federation

Department of Computer
Department of Biomedical Engineering
Electrical Energy Department
L.N. Gumilyov Eurasian National University (ENU)
Baku Engineering University
Civil Engineering Department
South-West State University

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