4.7 Article

Medical image augmentation for lesion detection using a texture-constrained multichannel progressive GAN

期刊

COMPUTERS IN BIOLOGY AND MEDICINE
卷 145, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compbiomed.2022.105444

关键词

Medical image augmentation; Lesion detection; Texture feature; Generative adversarial network

资金

  1. National Natural Science Foundation of China [U20A20171, U1809209, 61802347, 61972347, 61773348, 62076185, 61602413]
  2. Natural Science Foun-dation of Zhejiang Province [LY21F020027, LGF20H180002, LSD19H180003, LZ22F020005]

向作者/读者索取更多资源

In this paper, a new medical image augmentation method called TMP-GAN is proposed, which utilizes joint training of multiple channels, adversarial learning-based texture discrimination loss, and progressive generation mechanism to improve the quality of synthesized images for lesion detection. Experimental results show that the detector trained on the TMP-GAN augmented dataset outperforms other data augmentation methods in terms of precision, recall, and F1-score.
Lesion detectors based on deep learning can assist doctors in diagnosing diseases. However, the performance of current detectors is likely to be unsatisfactory due to the scarcity of training samples. Therefore, it is beneficial to use image generation to augment the training set of a detector. However, when the imaging texture of the medical image is relatively delicate, the synthesized image generated by an existing method may be too poor in quality to meet the training requirements of the detectors. In this regard, a medical image augmentation method, namely, a texture-constrained multichannel progressive generative adversarial network (TMP-GAN), is proposed in this work. TMP-GAN uses joint training of multiple channels to effectively avoid the typical shortcomings of the current generation methods. It also uses an adversarial learning-based texture discrimination loss to further improve the fidelity of the synthesized images. In addition, TMP-GAN employs a progressive generation mechanism to steadily improve the accuracy of the medical image synthesizer. Experiments on the publicly available dataset CBIS-DDMS and our pancreatic tumor dataset show that the precision/recall/F1-score of the detector trained on the TMP-GAN augmented dataset improves by 2.59%/2.70%/2.77% and 2.44%/2.06%/ 2.36%, respectively, compared to the optimal results of other data augmentation methods. The FROC curve of the detector is also better than the curve from the contrast-augmented trained dataset. Therefore, we believe the proposed TMP-GAN is a practical technique to efficiently implement lesion detection case studies.

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