Department of Ultrasound, Peking University Third Hospital, Beijing 10091, China; Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education/ Beijing), Breast Center, Peking University Cancer Hospital & Institute, Beijing 100142, China.
Department of Ultrasound, Peking University Third Hospital, Beijing 10091, China.
Eur J Radiol. 2021 May;138:109624. doi: 10.1016/j.ejrad.2021.109624. Epub 2021 Mar 4.
To determine whether adding an artificial intelligence (AI) system to breast ultrasound (US) can reduce unnecessary biopsies.
Conventional US and AI analyses were prospectively performed on 173 suspicious breast lesions before US-guided core needle biopsy or vacuum-assisted excision. Conventional US images were retrospectively reviewed according to the BI-RADS 2013 lexicon and categories. Two downgrading stratifications based on AI assessments were manually used to downgrade the BI-RADS category 4A lesions to category 3. Stratification A was used to downgrade if the assessments of both orthogonal sections of a lesion from AI were possibly benign. Stratification B was used to downgrade if the assessment of any of the orthogonal sections was possibly benign. The effects of AI-based diagnosis on lesions to reduce unnecessary biopsy were analyzed using histopathological results as reference standards.
Forty-three lesions diagnosed as BI-RADS category 4A by conventional US received AI-based hypothetical downgrading. While downgrading with stratification A, 14 biopsies were correctly avoided. The biopsy rate for BI-RADS category 4A lesions decreased from 100 % to 67.4 % (P < 0.001). While downgrading with stratification B, 27 biopsies could be avoided with two malignancies missed, and the biopsy rate would decrease to 37.2 % (P < 0.05, compared with conventional US and stratification A).
Adding an AI system to breast US could reduce unnecessary lesion biopsies. Downgrading stratification A was recommended for its lower misdiagnosis rate.
确定在超声引导下进行核心针活检或真空辅助切除之前,添加人工智能(AI)系统是否可以减少不必要的活检。
前瞻性地对 173 个可疑乳腺病变进行常规超声和 AI 分析,这些病变均在超声引导下进行核心针活检或真空辅助切除之前进行。根据 BI-RADS 2013 词典和分类,对常规超声图像进行回顾性分析。根据 AI 评估手动使用两种降级分层方法将 BI-RADS 4A 病变降级为 3 级。分层 A 用于降级,如果 AI 对病变的两个正交截面的评估均为可能良性。分层 B 用于降级,如果 AI 评估的任何一个正交截面为可能良性。使用组织病理学结果作为参考标准,分析基于 AI 的诊断对减少不必要活检的病变的影响。
43 个经常规 US 诊断为 BI-RADS 4A 的病变接受了基于 AI 的假设降级。在使用分层 A 进行降级时,正确避免了 14 次活检。BI-RADS 4A 病变的活检率从 100%降至 67.4%(P<0.001)。使用分层 B 进行降级时,可以避免 27 次活检,同时漏诊了 2 例恶性肿瘤,活检率将降至 37.2%(P<0.05,与常规 US 和分层 A 相比)。
在乳腺超声中添加 AI 系统可以减少不必要的病变活检。由于误诊率较低,推荐使用分层 A 进行降级。