Перейти к основному содержанию
AkademIndex

Продукты

Для разработчиков

AkademBaseОткрытый API экосистемы
Статья

Towards a Better Understanding of Transfer Learning for Medical Imaging: A Case Study

Laith AlzubaidiAl-Nidhal Campus, University of Information Technology & Communications, Baghdad 00964, IraqMohammed A. FadhelAl-Nidhal Campus, University of Information Technology & Communications, Baghdad 00964, IraqOmran Al-ShammaAl-Nidhal Campus, University of Information Technology & Communications, Baghdad 00964, IraqJinglan ZhangFaculty of Science & Engineering, Queensland University of Technology, Brisbane, QLD 4000, AustraliaJosé SantamaríaDepartment of Computer Science, University of Jaén, 23071 Jaén, SpainYe DuanFaculty of Electrical Engineering and Computer Science, University of Missouri, Columbia, MO 65211, USASameer Razzaq OleiwiNursing College, Muthanna University, Muthanna 76218, Iraq
2020en
ABI

Аннотация

One of the main challenges of employing deep learning models in the field of medicine is a lack of training data due to difficulty in collecting and labeling data, which needs to be performed by experts. To overcome this drawback, transfer learning (TL) has been utilized to solve several medical imaging tasks using pre-trained state-of-the-art models from the ImageNet dataset. However, there are primary divergences in data features, sizes, and task characteristics between the natural image classification and the targeted medical imaging tasks. Therefore, TL can slightly improve performance if the source domain is completely different from the target domain. In this paper, we explore the benefit of TL from the same and different domains of the target tasks. To do so, we designed a deep convolutional neural network (DCNN) model that integrates three ideas including traditional and parallel convolutional layers and residual connections along with global average pooling. We trained the proposed model against several scenarios. We utilized the same and different domain TL with the diabetic foot ulcer (DFU) classification task and with the animal classification task. We have empirically shown that the source of TL from the same domain can significantly improve the performance considering a reduced number of images in the same domain of the target dataset. The proposed model with the DFU dataset achieved F1-score value of 86.6% when trained from scratch, 89.4% with TL from a different domain of the targeted dataset, and 97.6% with TL from the same domain of the targeted dataset.

Перевод пока недоступен

Идентификаторы

Цитирования и источники

Цитирований: 2Использованных источников: 0