Massachusetts General Hospital, 55 Fruit Street, WAC-240, Boston, MA 02114.
Massachusetts Institute of Technology, Cambridge, Massachusetts.
Acad Radiol. 2021 Apr;28(4):475-480. doi: 10.1016/j.acra.2019.12.012. Epub 2020 Feb 20.
Federal legislation requires patient notification of dense mammographic breast tissue because increased density is a marker of breast cancer risk and can limit the sensitivity of mammography. As previously described, we clinically implemented our deep learning model at the academic breast imaging practice where the model was developed with high clinical acceptance. Our objective was to externally validate our deep learning model on radiologist breast density assessments in a community breast imaging practice.
Our deep learning model was implemented at a dedicated breast imaging practice staffed by both academic and community breast imaging radiologists in October 2018. Deep learning model assessment of mammographic breast density was presented to the radiologist during routine clinical practice at the time of mammogram interpretation. We identified 2174 consecutive screening mammograms after implementation of the deep learning model. Radiologist agreement with the model's assessment was measured and compared across radiologist groups.
Both academic and community radiologists had high clinical acceptance of the deep learning model's density prediction, with 94.9% (academic) and 90.7% (community) acceptance for dense versus nondense categories (p < 0.001). The proportion of mammograms assessed as dense by all radiologists decreased from 47.0% before deep learning model implementation to 41.0% after deep learning model implementation (p < 0.001).
Our deep learning model had a high clinical acceptance rate among both academic and community radiologists and reduced the proportion of mammograms assessed as dense. This is an important step to validating our deep learning model prior to potential widespread implementation.
联邦立法要求通知患者致密型乳腺组织,因为乳腺密度增加是乳腺癌风险的一个标志物,并可能降低乳房 X 线摄影的敏感性。如前所述,我们在学术乳腺影像实践中临床实施了深度学习模型,该模型具有很高的临床接受度。我们的目标是在社区乳腺影像实践中,通过放射科医生对乳腺密度的评估来外部验证我们的深度学习模型。
我们的深度学习模型于 2018 年 10 月在一家专门的乳腺影像实践中实施,该实践由学术和社区乳腺影像放射科医生共同组成。在进行乳房 X 线摄影解释时,在常规临床实践中向放射科医生提供深度学习模型对乳房 X 线摄影乳腺密度的评估。在实施深度学习模型后,我们确定了 2174 例连续的筛查性乳房 X 线摄影。测量并比较了放射科医生组之间对模型评估的放射科医生一致性。
学术和社区放射科医生对深度学习模型的密度预测均具有很高的临床接受度,致密型与非致密型的接受率分别为 94.9%(学术)和 90.7%(社区)(p < 0.001)。所有放射科医生评估的致密性乳房 X 线摄影的比例从深度学习模型实施前的 47.0%下降到实施后的 41.0%(p < 0.001)。
我们的深度学习模型在学术和社区放射科医生中均具有很高的临床接受率,并降低了评估为致密型的乳房 X 线摄影的比例。这是在广泛实施之前验证我们的深度学习模型的重要步骤。