Sydney School of Public Health, Sydney Medical School, University of Sydney, Australia.
Department of Radiology, University of Washington School of Medicine, Seattle, WA, USA.
Breast. 2017 Dec;36:31-33. doi: 10.1016/j.breast.2017.09.003. Epub 2017 Sep 20.
Interpretation of mammography for breast cancer (BC) screening can confer a mortality benefit through early BC detection, can miss a cancer that is present or fast growing, or can result in false-positives. Efforts to improve screening outcomes have mostly focused on intensifying imaging practices (double instead of single-reading, more frequent screens, or supplemental imaging) that may add substantial resource expenditures and harms associated with population screening. Less attention has been given to making mammography screening practice 'smarter' or more efficient. Artificial intelligence (AI) is capable of advanced learning using large complex datasets and has the potential to perform tasks such as image interpretation. With both highly-specific capabilities, and also possible un-intended (and poorly understood) consequences, this viewpoint considers the promise and current reality of AI in BC detection.
乳腺癌(BC)筛查的乳房 X 线摄影解读可以通过早期 BC 检测带来生存获益,也可能会漏诊存在或快速生长的癌症,或导致假阳性。为改善筛查结果所做的努力主要集中在强化影像学检查实践(双读而不是单读、更频繁的筛查或补充影像学检查)上,这可能会增加与人群筛查相关的大量资源支出和危害。对于使乳房 X 线摄影筛查实践更加“智能”或更高效,关注较少。人工智能(AI)能够使用大型复杂数据集进行高级学习,并且有可能执行图像解释等任务。考虑到人工智能在 BC 检测中的前景和当前现实,其具有高度特异性的能力,也可能具有非预期(和理解不佳)的后果。