Philips Research of North America, Briarcliff Manor, NY, USA,
Int J Comput Assist Radiol Surg. 2010 Jul;5(4):343-50. doi: 10.1007/s11548-010-0421-z. Epub 2010 May 5.
The goal of this study is to develop a computerized method that identifies a specific axillary lymph node (ALN) seen on ultrasound (US) with its most likely corresponding node on breast MRI (BMRI). This goal is an important step in developing a preoperative non-invasive method for staging breast cancer on the basis of multi-modality imaging.
Twenty patients with newly diagnosed breast cancer were scanned on US and MRI. Two expert breast imaging radiologists independently correlated ALNs seen on US with BMRI, and this correlation was used as the gold standard. To correlate ALNs on US and BMRI, the cortex and hilum of each ALN was segmented using an ellipse fitting algorithm, then the ALN long and short axes and maximum cortical thickness (MCT) were computed. Three ALNs were chosen as candidates from the BMRI datasets for each lymph node seen on US. Finally, the Euclidean distances across all measurements between the US ALN and each of the three BMRI candidates were computed, and the smallest distance was reported as the correlation result.
Using the expert radiologists identified correlated BMRI slice as the ground truth, the shortest Euclidean distance successfully identified the same lymph node as the radiologists in 13 out of 16 ALNs (81.25%). In negative ALNs, the standard deviation for long and short axes was relatively large but that of maximum cortical thickness was small. Average maximum cortical thickness and its standard deviation measured in US were very close to those measured in MRI. There were no significant differences among the long axis, short axis, and MCT measurements between US and MRI-T2 weighted sequence (P > 0.05 paired t-test).
We performed a feasibility study which showed that computerized measurements of ALNs might be used to identify the same ALN on different modalities such as US and BMRI. This type of correlation would be valuable as it would allow the use of combined imaging parameters to be applied to the evaluation of ALNs in patients with breast cancer. It is hoped that the combined multi-modality information would provide a more robust non-invasive method of staging the axilla than is currently available.
本研究旨在开发一种计算机方法,以识别在超声(US)上可见的特定腋窝淋巴结(ALN)及其在乳房 MRI(BMRI)上最可能对应的淋巴结。这一目标是在多模态成像的基础上开发术前非侵入性乳腺癌分期方法的重要步骤。
对 20 例新诊断为乳腺癌的患者进行 US 和 MRI 扫描。两名专家乳腺成像放射科医生独立地将 US 上可见的 ALN 与 BMRI 相关联,该相关性作为金标准。为了将 US 上的 ALN 与 BMRI 相关联,使用椭圆拟合算法对每个 ALN 的皮质和门部进行分割,然后计算 ALN 的长轴和短轴以及最大皮质厚度(MCT)。从 BMRI 数据集中为 US 上可见的每个淋巴结选择三个候选 ALN。最后,计算 US ALN 与三个 BMRI 候选物之间所有测量值的欧几里得距离,并报告最小距离作为相关结果。
使用专家放射科医生识别的相关 BMRI 切片作为地面实况,在 16 个 ALN 中的 13 个(81.25%)中,最短欧几里得距离成功地识别了与放射科医生相同的淋巴结。在阴性 ALN 中,长轴和短轴的标准差相对较大,但最大皮质厚度的标准差较小。US 测量的平均最大皮质厚度及其标准差非常接近 MRI 测量值。US 和 MRI-T2 加权序列之间的长轴、短轴和 MCT 测量值无显著差异(配对 t 检验,P > 0.05)。
我们进行了一项可行性研究,结果表明,ALN 的计算机测量值可用于识别 US 和 BMRI 等不同模态上的相同 ALN。这种相关性将非常有价值,因为它将允许应用组合成像参数来评估乳腺癌患者的 ALN。希望联合多模态信息将提供比目前更强大的非侵入性腋窝分期方法。