We found a match
Your institution may have rights to this item. Sign in to continue.
- Title
Fetal Heart Abnormality Detection in Prior Stage Using LeNet 20 Deep Learning Architecture.
- Authors
Patel, Sabitha Reddy; Madireddy, Vijay Reddy; Rajiv, Kode
- Abstract
Heart abnormalities are significant in medical diagnosis, traditionally detected through CT, X-ray, CTA, and MRI scans. However, these methods often yield inconclusive or erroneous results, leading to ineffective clinical recommendations. This study focuses on using ultrasound heart data for fetal anomaly prediction and classification, aiming to overcome the limitations of existing diagnostic methods. The purpose of this investigation is to develop a more reliable method for detecting fetal heart anomalies using deep learning techniques, specifically leveraging the LeNet 20 architecture. The goal is to improve the accuracy and reliability of fetal anomaly detection compared to conventional methods. Real-time fetal ultrasound heart samples were collected from NIMS super specialty hospital, Hyderabad, and pre-processed using tools such as Otsu threshold separation. The LeNet 20 convolutional neural network, consisting of 165 layers with max pooling, dense, hidden, and ReLU layers, was implemented using Python with TensorFlow, Keras, and scikit-learn libraries. The dataset was loaded as test samples via CSV files, and the LeNet 20 CNN model was employed for classification. The proposed LeNet 20 CNN model achieved significant improvements over existing fetal heart diagnosis models. Key findings include a detection score of 98.32%, F1 score of 98.23%, recall of 97.89%, accuracy of 98.32%, and sensitivity of 97.29%. These results indicate superior detection accuracy and reliability compared to previous methods. results of this study demonstrate notable enhancements over prior fetal heart diagnosis technologies. Specifically, the LeNet 20 CNN model outperformed existing methods in terms of detection accuracy and reliability. This investigation successfully addresses the limitations of conventional fetal heart diagnosis methods by employing CNN deep learning technology. The LeNet 20 architecture serves as an effective classifier and feature extractor, enabling accurate detection of fetal heart anomalies in prior stage.
- Subjects
CONVOLUTIONAL neural networks; FETAL heart; FETAL abnormalities; HEART abnormalities; SPECIALTY hospitals; FETAL ultrasonic imaging
- Publication
Traitement du Signal, 2024, Vol 41, Issue 4, p2103
- ISSN
0765-0019
- Publication type
Article
- DOI
10.18280/ts.410438