Conant Emily F, Toledano Alicia Y, Periaswamy Senthil, Fotin Sergei V, Go Jonathan, Boatsman Justin E, Hoffmeister Jeffrey W
Department of Radiology, Perelman School of Medicine at the University of Pennsylvania, 3400 Spruce St, Philadelphia, PA 19104 (E.F.C.); Biostatistics Consulting, Kensington, Md (A.Y.T.); iCAD, Nashua, NH (S.P., S.V.F., J.G., J.W.H.); and Intrinsic Imaging, Bolton, Mass (J.E.B.).
Radiol Artif Intell. 2019 Jul 31;1(4):e180096. doi: 10.1148/ryai.2019180096.
To evaluate the use of artificial intelligence (AI) to shorten digital breast tomosynthesis (DBT) reading time while maintaining or improving accuracy.
A deep learning AI system was developed to identify suspicious soft-tissue and calcified lesions in DBT images. A reader study compared the performance of 24 radiologists (13 of whom were breast subspecialists) reading 260 DBT examinations (including 65 cancer cases) both with and without AI. Readings occurred in two sessions separated by at least 4 weeks. Area under the receiver operating characteristic curve (AUC), reading time, sensitivity, specificity, and recall rate were evaluated with statistical methods for multireader, multicase studies.
Radiologist performance for the detection of malignant lesions, measured by mean AUC, increased 0.057 with the use of AI (95% confidence interval [CI]: 0.028, 0.087; < .01), from 0.795 without AI to 0.852 with AI. Reading time decreased 52.7% (95% CI: 41.8%, 61.5%; < .01), from 64.1 seconds without to 30.4 seconds with AI. Sensitivity increased from 77.0% without AI to 85.0% with AI (8.0%; 95% CI: 2.6%, 13.4%; < .01), specificity increased from 62.7% without to 69.6% with AI (6.9%; 95% CI: 3.0%, 10.8%; noninferiority < .01), and recall rate for noncancers decreased from 38.0% without to 30.9% with AI (7.2%; 95% CI: 3.1%, 11.2%; noninferiority < .01).
The concurrent use of an accurate DBT AI system was found to improve cancer detection efficacy in a reader study that demonstrated increases in AUC, sensitivity, and specificity and a reduction in recall rate and reading time.© RSNA, 2019See also the commentary by Hsu and Hoyt in this issue.
评估使用人工智能(AI)缩短数字乳腺断层合成(DBT)阅片时间同时保持或提高准确性的效果。
开发了一种深度学习AI系统,用于识别DBT图像中的可疑软组织和钙化病变。一项阅片者研究比较了24名放射科医生(其中13名是乳腺专科医生)在有和没有AI辅助的情况下阅读260例DBT检查(包括65例癌症病例)的表现。阅片分两个阶段进行,间隔至少4周。采用多阅片者、多病例研究的统计方法评估受试者工作特征曲线下面积(AUC)、阅片时间、敏感性、特异性和召回率。
使用AI后,以平均AUC衡量的放射科医生对恶性病变的检测性能提高了0.057(95%置信区间[CI]:0.028,0.087;P <.01),从无AI时的0.795提高到有AI时的0.852。阅片时间减少了52.7%(95% CI:41.8%,61.5%;P <.01),从无AI时的64.1秒降至有AI时的30.4秒。敏感性从无AI时的77.0%提高到有AI时的85.0%(提高了8.0%;95% CI:2.6%,13.4%;P <.01),特异性从无AI时的62.7%提高到有AI时的69.6%(提高了6.9%;95% CI:3.0%,10.8%;非劣效性P <.01),非癌症病例的召回率从无AI时的38.0%降至有AI时的30.9%(降低了7.2%;95% CI:3.1%,11.2%;非劣效性P <.01)。
在一项阅片者研究中发现,同时使用准确的DBT AI系统可提高癌症检测效能,该研究表明AUC、敏感性和特异性增加,召回率和阅片时间减少。© RSNA,2019另见本期许和霍伊特的评论。