Department of Radiology, Shenzhen People's Hospital, Shenzhen, 518020, Guangdong, China.
The Second Clinical Medical College, Jinan University, Shenzhen, 518020, Guangdong, China.
Eur Radiol. 2022 Mar;32(3):1528-1537. doi: 10.1007/s00330-021-08275-0. Epub 2021 Sep 15.
To investigate the value of an artificial intelligence (AI) system in assisting radiologists to improve the assessment accuracy of BI-RADS 0 cases in mammograms.
We included 34,654 consecutive digital mammography studies, collected between January 2011 and January 2019, among which, 1088 cases from 1010 unique patients with initial BI-RADS 0 assessment who were recalled during 2 years of follow-up were used in this study. Two mid-level radiologists retrospectively re-assessed these BI-RADS 0 cases with the assistance of an AI system developed by us previously. In addition, four entry-level radiologists were split into two groups to cross-read 80 cases with and without the AI. Diagnostic performance was evaluated using the follow-up diagnosis or biopsy results as the reference standard.
Of the 1088 cases, 626 were actually normal (BI-RADS 1 and no recall required). Assisted by the AI system, 351 (56%) and 362 (58%) normal cases were correctly identified by the two mid-level radiologists hence can be avoided for unnecessary follow-ups. However, they would have missed 12 (10 invasive cancers and 2 ductal carcinoma in situ cancers) and 6 (invasive cancers) malignant lesions respectively as a result. These missed lesions were not highly malignant tumors. The inter-rater reliability of entry-level radiologists increased from 0.20 to 0.30 (p < 0.005) by introducing the AI.
The AI system can effectively assist mid-level radiologists in reducing unnecessary follow-ups of mammographically indeterminate breast lesions and reducing the benign biopsy rate without missing highly malignant tumors.
• The artificial intelligence system could assist mid-level radiologists in effectively reducing unnecessary BI-RADS 0 mammogram recalls and the benign biopsy rate without missing highly malignant tumors. • The artificial intelligence system was capable of detecting low suspicion lesions from heterogeneously and extremely dense breasts that radiologists tended to miss. • The use of an artificial intelligence system may improve the inter-rater reliability and sensitivity, and reduce the reading time of entry-level radiologists in assessing potential lesions in BI-RADS 0 mammograms.
探讨人工智能(AI)系统在协助放射科医生提高乳腺 X 线摄影 BI-RADS 0 病例评估准确性方面的价值。
我们纳入了 2011 年 1 月至 2019 年 1 月期间连续的 34654 例数字乳腺摄影研究,其中 1088 例来自 1010 例初始 BI-RADS 0 评估的患者,这些患者在 2 年的随访中被召回。两名中级放射科医生使用我们之前开发的 AI 系统回顾性地重新评估这些 BI-RADS 0 病例。此外,4 名初级放射科医生分为两组,交叉阅读 80 例有和无 AI 的病例。使用随访诊断或活检结果作为参考标准评估诊断性能。
在 1088 例病例中,有 626 例实际上是正常的(BI-RADS 1,无需随访)。在 AI 系统的辅助下,两名中级放射科医生正确识别出 351 例(56%)和 362 例(58%)正常病例,因此可以避免不必要的随访。然而,他们也会漏诊 12 例(10 例浸润性癌和 2 例导管原位癌)和 6 例(浸润性癌)恶性病变。这些漏诊的病变并非高度恶性肿瘤。引入 AI 后,初级放射科医生的组内相关系数从 0.20 增加到 0.30(p<0.005)。
AI 系统可有效协助中级放射科医生减少乳腺 X 线摄影不确定病变的不必要随访次数,降低良性活检率,同时不会漏诊高度恶性肿瘤。
AI 系统可有效协助中级放射科医生减少不必要的 BI-RADS 0 乳腺 X 线摄影召回,并降低良性活检率,同时不会漏诊高度恶性肿瘤。
AI 系统能够检测出放射科医生容易漏诊的异质和极度致密乳腺中的低可疑病变。
在评估 BI-RADS 0 乳腺 X 线摄影中的潜在病变时,使用人工智能系统可能会提高初级放射科医生的组内相关系数和敏感性,减少阅读时间。