1.A survey of loss function of medical image segmentation algorithms.
Ying CHEN ; Wei ZHANG ; Hongping LIN ; Cheng ZHENG ; Taohui ZHOU ; Longfeng FENG ; Zhen YI ; Lan LIU
Journal of Biomedical Engineering 2023;40(2):392-400
Medical image segmentation based on deep learning has become a powerful tool in the field of medical image processing. Due to the special nature of medical images, image segmentation algorithms based on deep learning face problems such as sample imbalance, edge blur, false positive, false negative, etc. In view of these problems, researchers mostly improve the network structure, but rarely improve from the unstructured aspect. The loss function is an important part of the segmentation method based on deep learning. The improvement of the loss function can improve the segmentation effect of the network from the root, and the loss function is independent of the network structure, which can be used in various network models and segmentation tasks in plug and play. Starting from the difficulties in medical image segmentation, this paper first introduces the loss function and improvement strategies to solve the problems of sample imbalance, edge blur, false positive and false negative. Then the difficulties encountered in the improvement of the current loss function are analyzed. Finally, the future research directions are prospected. This paper provides a reference for the reasonable selection, improvement or innovation of loss function, and guides the direction for the follow-up research of loss function.
Algorithms
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Image Processing, Computer-Assisted
2.Research progress on medical image dataset expansion methods.
Ying CHEN ; Hongping LIN ; Wei ZHANG ; Longfeng FENG ; Cheng ZHENG ; Taohui ZHOU ; Zhen YI ; Lan LIU
Journal of Biomedical Engineering 2023;40(1):185-192
Computer-aided diagnosis (CAD) systems play a very important role in modern medical diagnosis and treatment systems, but their performance is limited by training samples. However, the training samples are affected by factors such as imaging cost, labeling cost and involving patient privacy, resulting in insufficient diversity of training images and difficulty in data obtaining. Therefore, how to efficiently and cost-effectively augment existing medical image datasets has become a research hotspot. In this paper, the research progress on medical image dataset expansion methods is reviewed based on relevant literatures at home and abroad. First, the expansion methods based on geometric transformation and generative adversarial networks are compared and analyzed, and then improvement of the augmentation methods based on generative adversarial networks are emphasized. Finally, some urgent problems in the field of medical image dataset expansion are discussed and the future development trend is prospected.
Humans
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Diagnosis, Computer-Assisted
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Diagnostic Imaging
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Datasets as Topic