Neural network analysis of mortality risk predictors in patients after acute coronary syndrome

Aim. To study the possibilities of neural network analysis of clinical and instrumental data to predict the mortality risk in patients after acute coronary syndrome (ACS).Material and methods. The study involved 400 patients after ACS which who observed for 62 months. The criterion for the complicat...

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Main Authors: D. A. Shvets, A. Yu. Karasev, M. V. Smolyakov, S. V. Povetkin, V. I. Vishnevsky
Format: Article
Language:Russian
Published: «FIRMA «SILICEA» LLC 2020-04-01
Series:Российский кардиологический журнал
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Online Access:https://russjcardiol.elpub.ru/jour/article/view/3645
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author D. A. Shvets
A. Yu. Karasev
M. V. Smolyakov
S. V. Povetkin
V. I. Vishnevsky
author_facet D. A. Shvets
A. Yu. Karasev
M. V. Smolyakov
S. V. Povetkin
V. I. Vishnevsky
author_sort D. A. Shvets
collection DOAJ
description Aim. To study the possibilities of neural network analysis of clinical and instrumental data to predict the mortality risk in patients after acute coronary syndrome (ACS).Material and methods. The study involved 400 patients after ACS which who observed for 62 months. The criterion for the complicated course of coronary artery disease (CAD) is the cardiovascular death. Group 1 consisted of 310 patients with uncomplicated course of CAD; group 2 — 90 patients with complicated course of CAD. To predict mortality risk, the machine learning method and neural network analysis was used. Machine learning was carried out with the inclusion of clinical, laboratory and instrumental (electrocardiography, echocardiography) parameters (49 in total). To solve the classification problems, two types of neural network architectures were used: Multilayer Perceptron (MLP) and Convolutional Neural Networks (CNN). The ratio in the examples for learning and validation was 340/60. The method of learning with a teacher was used on the available data in which the outcomes were known, and the neural network parameters were adjusted so as to minimize the error.Results. The following factors made the highest contribution to the mortality risk after ACS: age; history of MI and acute cerebrovascular accident; atrial fibrillation, class 2-3 heart failure; no history of percutaneous coronary intervention; stage 3 chronic kidney disease; reduced left ventricle ejection fraction. Most of the deaths occurred in the 2nd and 4th years of follow-up, which may be due to the low effectiveness of secondary prevention of CAD. CNN architecture had higher accuracy (sensitivity — 68%; specificity — 84%; area under curve=0,74). An advantage of CNN is its ability to analyze patterns over time using recurrent neural networks.Conclusion. Neural network analysis of clinical, laboratory and instrumental data allows configuring network parameters for mortality risk prediction. CNN predicts 5-year mortality risk after ACS with a sensitivity of 68% and a specificity of 84%.
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spelling doaj-art-9645bb5ba5fe4a79a673cae68fd1c7a72025-08-20T02:59:06Zrus«FIRMA «SILICEA» LLCРоссийский кардиологический журнал1560-40712618-76202020-04-0125310.15829/1560-4071-2020-3-36452824Neural network analysis of mortality risk predictors in patients after acute coronary syndromeD. A. Shvets0A. Yu. Karasev1M. V. Smolyakov2S. V. Povetkin3V. I. Vishnevsky4Orel Regional Clinical HospitalOrel Regional Clinical HospitalOOO ActivBusinesConsultKursk State Medical UniversityI.S. Turgenev Orel State UniversityAim. To study the possibilities of neural network analysis of clinical and instrumental data to predict the mortality risk in patients after acute coronary syndrome (ACS).Material and methods. The study involved 400 patients after ACS which who observed for 62 months. The criterion for the complicated course of coronary artery disease (CAD) is the cardiovascular death. Group 1 consisted of 310 patients with uncomplicated course of CAD; group 2 — 90 patients with complicated course of CAD. To predict mortality risk, the machine learning method and neural network analysis was used. Machine learning was carried out with the inclusion of clinical, laboratory and instrumental (electrocardiography, echocardiography) parameters (49 in total). To solve the classification problems, two types of neural network architectures were used: Multilayer Perceptron (MLP) and Convolutional Neural Networks (CNN). The ratio in the examples for learning and validation was 340/60. The method of learning with a teacher was used on the available data in which the outcomes were known, and the neural network parameters were adjusted so as to minimize the error.Results. The following factors made the highest contribution to the mortality risk after ACS: age; history of MI and acute cerebrovascular accident; atrial fibrillation, class 2-3 heart failure; no history of percutaneous coronary intervention; stage 3 chronic kidney disease; reduced left ventricle ejection fraction. Most of the deaths occurred in the 2nd and 4th years of follow-up, which may be due to the low effectiveness of secondary prevention of CAD. CNN architecture had higher accuracy (sensitivity — 68%; specificity — 84%; area under curve=0,74). An advantage of CNN is its ability to analyze patterns over time using recurrent neural networks.Conclusion. Neural network analysis of clinical, laboratory and instrumental data allows configuring network parameters for mortality risk prediction. CNN predicts 5-year mortality risk after ACS with a sensitivity of 68% and a specificity of 84%.https://russjcardiol.elpub.ru/jour/article/view/3645neural networkmachine learningacute coronary syndromemortality
spellingShingle D. A. Shvets
A. Yu. Karasev
M. V. Smolyakov
S. V. Povetkin
V. I. Vishnevsky
Neural network analysis of mortality risk predictors in patients after acute coronary syndrome
Российский кардиологический журнал
neural network
machine learning
acute coronary syndrome
mortality
title Neural network analysis of mortality risk predictors in patients after acute coronary syndrome
title_full Neural network analysis of mortality risk predictors in patients after acute coronary syndrome
title_fullStr Neural network analysis of mortality risk predictors in patients after acute coronary syndrome
title_full_unstemmed Neural network analysis of mortality risk predictors in patients after acute coronary syndrome
title_short Neural network analysis of mortality risk predictors in patients after acute coronary syndrome
title_sort neural network analysis of mortality risk predictors in patients after acute coronary syndrome
topic neural network
machine learning
acute coronary syndrome
mortality
url https://russjcardiol.elpub.ru/jour/article/view/3645
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AT mvsmolyakov neuralnetworkanalysisofmortalityriskpredictorsinpatientsafteracutecoronarysyndrome
AT svpovetkin neuralnetworkanalysisofmortalityriskpredictorsinpatientsafteracutecoronarysyndrome
AT vivishnevsky neuralnetworkanalysisofmortalityriskpredictorsinpatientsafteracutecoronarysyndrome