Moreau Noemie, Rousseau Caroline, Fourcade Constance, Santini Gianmarco, Ferrer Ludovic, Lacombe Marie, Guillerminet Camille, Campone Mario, Colombie Mathilde, Rubeaux Mathieu, Normand And Nicolas
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:1532-1535. doi: 10.1109/EMBC44109.2020.9175904.
FDG PET/CT imaging is commonly used in diagnosis and follow-up of metastatic breast cancer, but its quantitative analysis is complicated by the number and location heterogeneity of metastatic lesions. Considering that bones are the most common location among metastatic sites, this work aims to compare different approaches to segment the bones and bone metastatic lesions in breast cancer.Two deep learning methods based on U-Net were developed and trained to segment either both bones and bone lesions or bone lesions alone on PET/CT images. These methods were cross-validated on 24 patients from the prospective EPICURE metastatic breast cancer study and were evaluated using recall and precision to measure lesion detection, as well as the Dice score to assess bones and bone lesions segmentation accuracy.Results show that taking into account bone information in the training process allows to improve the precision of the lesions detection as well as the Dice score of the segmented lesions. Moreover, using the obtained bone and bone lesion masks, we were able to compute a PET bone index (PBI) inspired by the recognized Bone Scan Index (BSI). This automatically computed PBI globally agrees with the one calculated from ground truth delineations.Clinical relevance- We propose a completely automatic deep learning based method to detect and segment bones and bone lesions on FDG PET/CT in the context of metastatic breast cancer. We also introduce an automatic PET bone index which could be incorporated in the monitoring and decision process.
氟代脱氧葡萄糖正电子发射断层扫描/计算机断层扫描(FDG PET/CT)成像常用于转移性乳腺癌的诊断和随访,但转移性病变数量和位置的异质性使其定量分析变得复杂。鉴于骨骼是转移部位中最常见的位置,本研究旨在比较不同的方法来分割乳腺癌患者PET/CT图像中的骨骼和骨转移病变。我们开发并训练了两种基于U-Net的深度学习方法,用于在PET/CT图像上分割骨骼和骨病变或仅分割骨病变。这些方法在前瞻性EPICURE转移性乳腺癌研究中的24例患者身上进行了交叉验证,并使用召回率和精确率来衡量病变检测情况,以及使用Dice分数来评估骨骼和骨病变的分割准确性。结果表明,在训练过程中考虑骨骼信息可以提高病变检测的精确率以及分割病变的Dice分数。此外,使用获得的骨骼和骨病变掩码,我们能够计算出受公认的骨扫描指数(BSI)启发的PET骨指数(PBI)。这种自动计算的PBI与根据真实轮廓计算出的结果总体一致。临床意义——我们提出了一种基于深度学习的完全自动化方法,用于在转移性乳腺癌背景下检测和分割FDG PET/CT上的骨骼和骨病变。我们还引入了一种自动PET骨指数,可将其纳入监测和决策过程。