Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.
Center of Informatics, Federal University of Paraiba, Joao Pessoa 58051-900, PB, Brazil.
Tomography. 2023 Jun 10;9(3):1120-1132. doi: 10.3390/tomography9030092.
In breast tomosynthesis, multiple low-dose projections are acquired in a single scanning direction over a limited angular range to produce cross-sectional planes through the breast for three-dimensional imaging interpretation. We built a next-generation tomosynthesis system capable of multidirectional source motion with the intent to customize scanning motions around "suspicious findings". Customized acquisitions can improve the image quality in areas that require increased scrutiny, such as breast cancers, architectural distortions, and dense clusters. In this paper, virtual clinical trial techniques were used to analyze whether a finding or area at high risk of masking cancers can be detected in a single low-dose projection and thus be used for motion planning. This represents a step towards customizing the subsequent low-dose projection acquisitions autonomously, guided by the first low-dose projection; we call this technique "self-steering tomosynthesis." A U-Net was used to classify the low-dose projections into "risk classes" in simulated breasts with soft-tissue lesions; class probabilities were modified using post hoc Dirichlet calibration (DC). DC improved the multiclass segmentation (Dice = 0.43 vs. 0.28 before DC) and significantly reduced false positives (FPs) from the class of the highest risk of masking (sensitivity = 81.3% at 2 FPs per image vs. 76.0%). This simulation-based study demonstrated the feasibility of identifying suspicious areas using a single low-dose projection for self-steering tomosynthesis.
在乳腺断层合成中,在有限的角度范围内,在单个扫描方向上采集多个低剂量投影,以生成穿过乳房的横截面平面,用于三维成像解释。我们构建了一个能够进行多方向源运动的下一代断层合成系统,旨在围绕“可疑发现”定制扫描运动。定制采集可以改善需要更仔细检查的区域的图像质量,例如乳腺癌、结构扭曲和密集簇。在本文中,使用虚拟临床试验技术来分析是否可以在单次低剂量投影中检测到高风险掩蔽癌症的发现或区域,从而用于运动规划。这代表了朝着自主定制后续低剂量投影采集迈出的一步,由第一低剂量投影指导;我们将这种技术称为“自导向断层合成”。使用 U-Net 将低剂量投影分类为具有软组织病变的模拟乳房中的“风险类别”;使用事后 Dirichlet 校准 (DC) 修改类别概率。DC 提高了多类分割(Dice = 0.43 比 DC 之前的 0.28),并显著减少了最高掩蔽风险类别的假阳性(FP)(每幅图像 2 个 FP 时的敏感性为 81.3%,比 76.0%)。这项基于模拟的研究证明了使用单次低剂量投影进行自导向断层合成来识别可疑区域的可行性。