Rodriguez-Ruiz Alejandro, Teuwen Jonas, Vreemann Suzan, Bouwman Ramona W, van Engen Ruben E, Karssemeijer Nico, Mann Ritse M, Gubern-Merida Albert, Sechopoulos Ioannis
1 Department of Radiology and Nuclear Medicine, Radboud University Medical Center, Nijmegen, the Netherlands.
2 Dutch Expert Centre for Screening (LRCB), Nijmegen, the Netherlands.
Acta Radiol. 2018 Sep;59(9):1051-1059. doi: 10.1177/0284185117748487. Epub 2017 Dec 18.
Background The image quality of digital breast tomosynthesis (DBT) volumes depends greatly on the reconstruction algorithm. Purpose To compare two DBT reconstruction algorithms used by the Siemens Mammomat Inspiration system, filtered back projection (FBP), and FBP with iterative optimizations (EMPIRE), using qualitative analysis by human readers and detection performance of machine learning algorithms. Material and Methods Visual grading analysis was performed by four readers specialized in breast imaging who scored 100 cases reconstructed with both algorithms (70 lesions). Scoring (5-point scale: 1 = poor to 5 = excellent quality) was performed on presence of noise and artifacts, visualization of skin-line and Cooper's ligaments, contrast, and image quality, and, when present, lesion visibility. In parallel, a three-dimensional deep-learning convolutional neural network (3D-CNN) was trained (n = 259 patients, 51 positives with BI-RADS 3, 4, or 5 calcifications) and tested (n = 46 patients, nine positives), separately with FBP and EMPIRE volumes, to discriminate between samples with and without calcifications. The partial area under the receiver operating characteristic curve (pAUC) of each 3D-CNN was used for comparison. Results EMPIRE reconstructions showed better contrast (3.23 vs. 3.10, P = 0.010), image quality (3.22 vs. 3.03, P < 0.001), visibility of calcifications (3.53 vs. 3.37, P = 0.053, significant for one reader), and fewer artifacts (3.26 vs. 2.97, P < 0.001). The 3D-CNN-EMPIRE had better performance than 3D-CNN-FBP (pAUC-EMPIRE = 0.880 vs. pAUC-FBP = 0.857; P < 0.001). Conclusion The new algorithm provides DBT volumes with better contrast and image quality, fewer artifacts, and improved visibility of calcifications for human observers, as well as improved detection performance with deep-learning algorithms.
数字乳腺断层合成(DBT)容积的图像质量在很大程度上取决于重建算法。目的:使用人类读者的定性分析和机器学习算法的检测性能,比较西门子Mammomat Inspiration系统使用的两种DBT重建算法,即滤波反投影(FBP)和带迭代优化的FBP(EMPIRE)。材料与方法:由四位专门从事乳腺成像的读者进行视觉分级分析,他们对用两种算法重建的100例病例(70个病变)进行评分。在存在噪声和伪影、皮肤线和库珀韧带的可视化、对比度和图像质量以及(如有)病变可见性方面进行评分(5分制:1 = 差至5 = 优秀质量)。同时,训练一个三维深度学习卷积神经网络(3D-CNN)(n = 259例患者,51例为BI-RADS 3、4或5级钙化阳性),并分别用FBP和EMPIRE容积进行测试(n = 46例患者,9例阳性),以区分有和没有钙化的样本。每个3D-CNN的受试者操作特征曲线下的部分面积(pAUC)用于比较。结果:EMPIRE重建显示出更好的对比度(3.23对3.10,P = 0.010)、图像质量(3.22对3.03,P < 0.001)、钙化可见性(3.53对3.37,P = 0.053,对一位读者有显著意义)和更少的伪影(3.26对2.97,P < 0.001)。3D-CNN-EMPIRE的性能优于3D-CNN-FBP(pAUC-EMPIRE = 0.880对pAUC-FBP = 0.857;P < 0.001)。结论:新算法为人类观察者提供了具有更好对比度和图像质量、更少伪影以及钙化可见性更高的DBT容积,同时提高了深度学习算法的检测性能。