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Prediction of Heart Disease Based on Robust Artificial Intelligence Techniques

Hamzeh GhorbaniUniversity of Traditional Medicine of Armenia (UTMA),Faculty of General Medicine,Yerevan,Armenia,0040Alla KrasnikovaYerevan State medical university,Faculty of Medicine,Department of Cardiology,Yerevan,Armenia,0031Parvin GhorbaniAhvaz Jundishapur University of Medical Sciences,Faculty of Medicine,Department of Cardiology,Ahvaz,IranSimin GhorbaniAhvaz Jundishapur University of Medical Sciences,Faculty of Nursing,Department of Nursing and Midwifery,Ahvaz,IranHarutyun S. HovhannisyanYerevan State Medical University,Department of Internal Disease Propaedeutics,Yerevan,ArmeniaArsen MinasyanUniversity of Traditional Medicine of Armenia (UTMA),Faculty of General Medicine,Yerevan,Armenia,0040Natali MinasianYaroslavl State Medical University,Faculty of General Medicine,Yaroslavl,RussiaMehdi Ahmadi AlvarShahid Chamran University,Faculty of Engineering,Department of Computer Engineering,Ahwaz,IranHarutyun StepanyanUniversity of Traditional Medicine of Armenia (UTMA),Faculty of General Medicine,Yerevan,Armenia,0040Mohammazreza AzodiniaDoctoral School of Applied Informatics and Applied Mathematics, Obuda University,Budapest,Hungary
2023en
ABI

Аннотация

Heart disease (HD) is a concerning health condition that demands immediate attention. This article employs three artificial intelligence classification algorithms: DT, NB, and SGD to address this issue. The primary goal is to determine the most effective algorithm for early-stage prediction of heart disease, using easily accessible patient information. A dataset of 290 simple input variables, including sex, age, ??? blood sugar, fasting blood sugar levels, and maximal heart rate, was collected from a hospital in Armenia. The results reveal that the DT algorithm outperforms NB and SGD in accuracy, with CAtrain of 0.96 and CAtest of 0.93. Accurate early prediction enables timely interventions and support for patients, improving healthcare management. Leveraging artificial intelligence, particularly DT, enables swift identification of potential heart disease cases, aiding healthcare professionals in providing essential care and preventive measures. Furthermore, the pragmatic approach of employing easily accessible patient data for prediction underscores the feasibility and applicability of the proposed methodology. By relying on readily available and cost-effective information, medical practitioners can efficiently screen and diagnose individuals at risk of heart disease, leading to improved healthcare management and better patient outcomes.

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Цитирований: 3Использованных источников: 0