Hsu Shih-Yen, Wang Chi-Yuan, Kao Yi-Kai, Liu Kuo-Ying, Lin Ming-Chia, Yeh Li-Ren, Wang Yi-Ming, Chen Chih-I, Kao Feng-Chen
Department of Information Engineering, I-Shou University, Kaohsiung City 84001, Taiwan.
Department of Medical Imaging and Radiological Science, I-Shou University, Kaohsiung City 82445, Taiwan.
Healthcare (Basel). 2022 Nov 27;10(12):2382. doi: 10.3390/healthcare10122382.
According to the Health Promotion Administration in the Ministry of Health and Welfare statistics in Taiwan, over ten thousand women have breast cancer every year. Mammography is widely used to detect breast cancer. However, it is limited by the operator's technique, the cooperation of the subjects, and the subjective interpretation by the physician. It results in inconsistent identification. Therefore, this study explores the use of a deep neural network algorithm for the classification of mammography images. In the experimental design, a retrospective study was used to collect imaging data from actual clinical cases. The mammography images were collected and classified according to the breast image reporting and data-analyzing system (BI-RADS). In terms of model building, a fully convolutional dense connection network (FC-DCN) is used for the network backbone. All the images were obtained through image preprocessing, a data augmentation method, and transfer learning technology to build a mammography image classification model. The research results show the model's accuracy, sensitivity, and specificity were 86.37%, 100%, and 72.73%, respectively. Based on the FC-DCN model framework, it can effectively reduce the number of training parameters and successfully obtain a reasonable image classification model for mammography.
根据台湾地区卫生福利部健康促进署的统计,每年有超过一万名女性罹患乳腺癌。乳房X光摄影术被广泛用于检测乳腺癌。然而,它受到操作者技术、受检者配合度以及医生主观解读的限制。这导致识别结果不一致。因此,本研究探索使用深度神经网络算法对乳房X光摄影图像进行分类。在实验设计中,采用回顾性研究从实际临床病例中收集影像数据。乳房X光摄影图像根据乳房影像报告和数据系统(BI-RADS)进行收集和分类。在模型构建方面,使用全卷积密集连接网络(FC-DCN)作为网络主干。所有图像通过图像预处理、数据增强方法和迁移学习技术来构建乳房X光摄影图像分类模型。研究结果表明,该模型的准确率、灵敏度和特异性分别为86.37%、100%和72.73%。基于FC-DCN模型框架,它可以有效减少训练参数的数量,并成功获得一个合理的乳房X光摄影图像分类模型。