Advancing Artificial Intelligence Framework for Accurate and Early Heart Attack Detection and Evaluation
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Université of Eloued جامعة الوادي
Abstract
"Abstract
Cardiovascular diseases (CVDs) represent prevalent chronic conditions that constitute significant
threats to global public health. The electrocardiogram (ECG) is a widely utilized
noninvasive diagnostic technique that records the dynamic bioelectrical activity of the heart.
By employing electrodes affixed to the skin39;s surface, the ECG enables continuous monitoring
of the heart’s cyclical phases of contraction and relaxation. Atrial fibrillation (AF), characterized
by irregular cardiac rhythms and the frequent absence of a discernible P-wave, markedly
increases the risk of adverse clinical outcomes if left untreated. These complications include
heart failure, ischemic stroke, cardiovascular mortality, thromboembolic events, blood coagulation
disorders, and cognitive decline. The asymptomatic and often clinically silent nature
of AF presents substantial challenges for early detection, potentially leading to fatal consequences.
The manual diagnosis of atrial fibrillation (AF) using electrocardiograms (ECGs)
presents notable limitations, as it requires substantial clinical expertise and entails a laborintensive,
time- consuming process. Hence, recent advancements in Artificial Intelligence have
had a transformative impact on the domain of cardiovascular diagnostics. This study proposes
an automated framework capable of capturing both temporal and frequency features of cardiac
signals to facilitate accurate AF classification. The initiative aligns with the broader vision of
integrating the Internet of Things (IoT) and AI technologies, thereby establishing a forwardlooking
model for proactive cardiovascular health monitoring. The classification efficacy of the
system was rigorously evaluated using a Support Vector Machine (SVM) algorithm, achieving
a classification accuracy of 94% across two categories: Atrial Fibrillation (AF) and Normal
Sinus Rhythm (NSR). This novel approach holds substantial promise for deployment in clinical
environments, enabling real-time detection of AF during routine ECG assessments, ultimately
enhancing patient care while alleviating the diagnostic burden on medical professionals.
Description
مذكرة تخرج سنة ثالثة ليسانس إعلام آلي
Keywords
Keywords Machine learning, Deep learning, ECG, Atrial fibrillation, IOT, CNN, LSTM, frequency features, SVM., الكلمات المفتاحية الشبكات العصبية (CNN)، تعلم الآلة، التعلم العميق، تخطيط القلب الكهربائي، الرجفان الأذيني، إنترنت الأشياء، الشبكات العصبية الالتفافية (SVM). الخصائصالترددية، آلة الدعم الناقل (LSTM)، المتكررة ۱
Citation
Aounallah ,Hibatallah. Abbad ,Taha. Advancing Artificial Intelligence Framework for Accurate and Early Heart Attack Detection and Evaluation.University of El Oued, Faculty of Exact Sciences, Department of Computer Science, 2025