Authors
SKB Sangeetha, V Muthukumaran, K Deeba, Hariharan Rajadurai, V Maheshwari, Gemmachis Teshite Dalu
Publication date
2022
Journal
Computational Intelligence and Neuroscience
Volume
2022
Issue
1
Pages
8722476
Publisher
Hindawi
Description
The difficulty or cost of obtaining data or labels in applications like medical imaging has progressed less quickly. If deep learning techniques can be implemented reliably, automated workflows and more sophisticated analysis may be possible in previously unexplored areas of medical imaging. In addition, numerous characteristics of medical images, such as their high resolution, three‐dimensional nature, and anatomical detail across multiple size scales, can increase the complexity of their analysis. This study employs multiconvolutional transfer learning (MCTL) for applying deep learning to small medical imaging datasets in an effort to address these issues. Multiconvolutional transfer learning is a model based on transfer learning that enables deep learning with small datasets. In order to learn new features on a smaller target dataset, an initial baseline is used in the transfer learning process. In this study, 3D MRI …
Total citations
2023202453
Scholar articles
SKB Sangeetha, V Muthukumaran, K Deeba… - Computational Intelligence and Neuroscience, 2022