Skripsi
PENINGKATAN KINERJA DELINEASI SINYAL ELEKTROKARDIOGRAM MULTI-LEAD BERBASIS DEEP LEARNING
This research explores the processing of Electrocardiogram (EKG) signals, a field in signal processing that focuses on the analysis, manipulation, and interpretation of recorded electrical activity in the heart. EKG serves as a crucial diagnostic tool in the recognition and monitoring of heart disorders. Analyzing the patterns of changes in heart rate or rhythm, consisting of the P wave, QRS complex, and T wave, can identify heart conditions in the medical world. The study utilizes data from the Lobachevsky University Database (LUDB). The research methodology adopts an approach that combines Convolutional Neural Network (CNN) as a feature extractor and the Long Short-Term Memory (LSTM) architecture as a wave classifier. In the experiments, a bidirectional LSTM (BiLSTM) is employed. Model parameters, including epoch, batch size, and learning rate, result in a total of 48 models. The research findings indicate that CNN and Bi-LSTM models perform well in signal delineation in scenarios with 5 wave classes. For this scenario, the models achieve Recall of 95.45%, Precision of 95.46%, specificity of 99.11%, Accuracy of 98.68%, and an F1 score of 95.45%. The implications of these findings suggest significant potential in supporting the diagnosis and monitoring of heart disorders through EKG signal processing using the combination of CNN and Bi-LSTM.
Inventory Code | Barcode | Call Number | Location | Status |
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2407000961 | T139370 | T1393702024 | Central Library (Referens) | Available but not for loan - Not for Loan |
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