Squires Steven, Mackenzie Alistair, Evans Dafydd Gareth, Howell Sacha J, Astley Susan M
University of Manchester, School of Health Sciences, Division of Imaging, Informatics and Data Sciences, Faculty of Biology, Medicine and Health, Manchester, United Kingdom.
NCCPM, Royal Surrey NHS Foundation Trust, Guildford, United Kingdom.
J Med Imaging (Bellingham). 2024 Jul;11(4):044506. doi: 10.1117/1.JMI.11.4.044506. Epub 2024 Aug 6.
Breast density is associated with the risk of developing cancer and can be automatically estimated using deep learning models from digital mammograms. Our aim is to evaluate the capacity and reliability of such models to predict density from low-dose mammograms taken to enable risk estimates for younger women.
We trained deep learning models on standard-dose and simulated low-dose mammograms. The models were then tested on a mammography dataset with paired standard- and low-dose images. The effect of different factors (including age, density, and dose ratio) on the differences between predictions on standard and low doses is analyzed. Methods to improve performance are assessed, and factors that reduce the model quality are demonstrated.
We showed that, although many factors have no significant effect on the quality of low-dose density prediction, both density and breast area have an impact. The correlation between density predictions on low- and standard-dose images of breasts with the largest breast area is 0.985 (0.949 to 0.995), whereas that with the smallest is 0.882 (0.697 to 0.961). We also demonstrated that averaging across craniocaudal-mediolateral oblique (CC-MLO) images and across repeatedly trained models can improve predictive performance.
Low-dose mammography can be used to produce density and risk estimates that are comparable to standard-dose images. Averaging across CC-MLO and model predictions should improve this performance. The model quality is reduced when making predictions on denser and smaller breasts.
乳腺密度与患癌风险相关,可通过深度学习模型从数字化乳腺钼靶片中自动估算。我们的目的是评估此类模型从用于年轻女性风险评估的低剂量乳腺钼靶片中预测密度的能力和可靠性。
我们在标准剂量和模拟低剂量乳腺钼靶片上训练深度学习模型。然后在一个包含标准剂量和低剂量配对图像的乳腺钼靶数据集上对模型进行测试。分析了不同因素(包括年龄、密度和剂量比)对标准剂量和低剂量预测差异的影响。评估了提高性能的方法,并展示了降低模型质量的因素。
我们表明,尽管许多因素对低剂量密度预测质量没有显著影响,但密度和乳腺面积都有影响。乳腺面积最大的乳房,其低剂量和标准剂量图像上密度预测的相关性为0.985(0.949至0.995),而乳腺面积最小的乳房,其相关性为0.882(0.697至0.961)。我们还证明,对头尾位-内外侧斜位(CC-MLO)图像以及反复训练的模型进行平均可以提高预测性能。
低剂量乳腺钼靶可用于生成与标准剂量图像相当的密度和风险估计。对CC-MLO和模型预测进行平均应能提高此性能。对密度较高和体积较小的乳房进行预测时,模型质量会降低。