| Literature DB >> 31421276 |
Ozal Yildirim1, Muhammed Talo2, Betul Ay3, Ulas Baran Baloglu4, Galip Aydin3, U Rajendra Acharya5.
Abstract
In this study, a deep-transfer learning approach is proposed for the automated diagnosis of diabetes mellitus (DM), using heart rate (HR) signals obtained from electrocardiogram (ECG) data. Recent progress in deep learning has contributed significantly to improvement in the quality of healthcare. In order for deep learning models to perform well, large datasets are required for training. However, a difficulty in the biomedical field is the lack of clinical data with expert annotation. A recent, commonly implemented technique to train deep learning models using small datasets is to transfer the weighting, developed from a large dataset, to the current model. This deep learning transfer strategy is generally employed for two-dimensional signals. Herein, the weighting of models pre-trained using two-dimensional large image data was applied to one-dimensional HR signals. The one-dimensional HR signals were then converted into frequency spectrum images, which were utilized for application to well-known pre-trained models, specifically: AlexNet, VggNet, ResNet, and DenseNet. The DenseNet pre-trained model yielded the highest classification average accuracy of 97.62%, and sensitivity of 100%, to detect DM subjects via HR signal recordings. In the future, we intend to further test this developed model by utilizing additional data along with cloud-based storage to diagnose DM via heart signal analysis.Entities:
Keywords: Deep learning; Diabetes mellitus; Heart rate signals; Transfer learning
Mesh:
Year: 2019 PMID: 31421276 DOI: 10.1016/j.compbiomed.2019.103387
Source DB: PubMed Journal: Comput Biol Med ISSN: 0010-4825 Impact factor: 4.589