Wang Zuxin, Xu Chen, Zhou Jun, Wang Ying, Xu Zhongqing, Hu Fan, Cai Yong
Department of Public Health, Tongren Hospital, Shanghai Jiao Tong University School of Medicine, 1111 Xianxia Road, Shanghai, 200335, China.
School of Public Health, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Sci Rep. 2024 Dec 28;14(1):30724. doi: 10.1038/s41598-024-79773-6.
Breast ultrasound is recommended for early breast cancer detection in China, but the rapid increase in imaging data burdens sonographers. This study evaluated the agreement between artificial intelligence (AI) software and sonographers in analyzing breast nodule features. Breast ultrasound images from two hospitals in Shanghai were analyzed by both the software and the sonographers for features including echotexture, echo pattern, orientation, shape, margin, calcification, and posterior echo attenuation. Agreement between software and sonographers was compared using the proportion of agreement and Kappa, with analysis time also evaluated. A total of 493 images were analyzed. The proportion of agreement between software and sonographers in assessing features was 80.5% for echotexture, 84.4% for echo pattern, 93.7% for orientation, 85.8% for shape, 88.6% for margin, 80.5% for calcification, and 90.5% for posterior echo attenuation, highlighting software's high accuracy. Cohen's kappa for other features indicated moderate to substantial agreement (0.411-0.674), with calcification showing fair agreement (0.335). The software significantly reduced analysis time compared to sonographers (P < 0.001). The software showed high accuracy and time efficiency. AI software presents a viable solution for reducing sonographers' workload and enhance healthcare in underserved areas by automating feature analysis in breast ultrasound images.
在中国,推荐使用乳腺超声进行早期乳腺癌检测,但成像数据的快速增加给超声检查人员带来了负担。本研究评估了人工智能(AI)软件与超声检查人员在分析乳腺结节特征方面的一致性。来自上海两家医院的乳腺超声图像由软件和超声检查人员进行分析,评估的特征包括回声质地、回声模式、方位、形状、边界、钙化和后方回声衰减。使用一致性比例和Kappa比较软件与超声检查人员之间的一致性,并对分析时间进行评估。共分析了493幅图像。软件与超声检查人员在评估特征方面的一致性比例分别为:回声质地80.5%、回声模式84.4%、方位93.7%、形状85.8%、边界88.6%、钙化80.5%、后方回声衰减90.5%,突出了软件的高准确性。其他特征的Cohen's kappa表明中度到高度一致(0.411 - 0.674),钙化显示为一般一致(0.335)。与超声检查人员相比,该软件显著缩短了分析时间(P < 0.001)。该软件显示出高准确性和时间效率。人工智能软件通过对乳腺超声图像的特征分析自动化,为减轻超声检查人员的工作量以及改善服务不足地区的医疗保健提供了一个可行的解决方案。