Karlsson Jennie, Arvidsson Ida, Sahlin Freja, Åström Kalle, Overgaard Niels Christian, Lång Kristina, Heyden Anders
Lund University, Centre for Mathematical Sciences, Division of Computer Vision and Machine Learning, Lund, Sweden.
Lund University, Division of Diagnostic Radiology, Department of Translational Medicine, Lund, Sweden.
J Med Imaging (Bellingham). 2025 Jan;12(1):014502. doi: 10.1117/1.JMI.12.1.014502. Epub 2025 Jan 17.
The survival rate of breast cancer for women in low- and middle-income countries is poor compared with that in high-income countries. Point-of-care ultrasound (POCUS) combined with deep learning could potentially be a suitable solution enabling early detection of breast cancer. We aim to improve a classification network dedicated to classifying POCUS images by comparing different techniques for increasing the amount of training data.
Two data sets consisting of breast tissue images were collected, one captured with POCUS and another with standard ultrasound (US). The data sets were expanded by using different techniques, including augmentation, histogram matching, histogram equalization, and cycle-consistent adversarial networks (CycleGANs). A classification network was trained on different combinations of the original and expanded data sets. Different types of augmentation were investigated and two different CycleGAN approaches were implemented.
Almost all methods for expanding the data sets significantly improved the classification results compared with solely using POCUS images during the training of the classification network. When training the classification network on POCUS and CycleGAN-generated POCUS images, it was possible to achieve an area under the receiver operating characteristic curve of 95.3% (95% confidence interval 93.4% to 97.0%).
Applying augmentation during training showed to be important and increased the performance of the classification network. Adding more data also increased the performance, but using standard US images or CycleGAN-generated POCUS images gave similar results.
与高收入国家相比,低收入和中等收入国家女性乳腺癌的生存率较低。即时超声(POCUS)结合深度学习可能是实现乳腺癌早期检测的合适解决方案。我们旨在通过比较增加训练数据量的不同技术来改进用于对POCUS图像进行分类的分类网络。
收集了两个由乳腺组织图像组成的数据集,一个是用POCUS采集的,另一个是用标准超声(US)采集的。通过使用不同技术对数据集进行扩充,包括增强、直方图匹配、直方图均衡化和循环一致对抗网络(CycleGAN)。在原始数据集和扩充数据集的不同组合上训练分类网络。研究了不同类型的增强方法,并实现了两种不同的CycleGAN方法。
与在分类网络训练期间仅使用POCUS图像相比,几乎所有扩充数据集的方法都显著改善了分类结果。在用POCUS和CycleGAN生成的POCUS图像训练分类网络时,受试者操作特征曲线下面积可达95.3%(95%置信区间93.4%至97.0%)。
训练期间应用增强方法很重要,可提高分类网络的性能。增加更多数据也能提高性能,但使用标准US图像或CycleGAN生成的POCUS图像得到的结果相似。