Rovera Guido, Grimaldi Serena, Oderda Marco, Finessi Monica, Giannini Valentina, Passera Roberto, Gontero Paolo, Deandreis Désirée
Nuclear Medicine, Department of Medical Sciences, AOU Città della Salute e della Scienza di Torino, University of Turin, 10126 Turin, Italy.
Urology Unit, Department of Surgical Sciences, AOU Città della Salute e della Scienza di Torino, Molinette Hospital, University of Turin, 10126 Turin, Italy.
Diagnostics (Basel). 2023 Sep 21;13(18):3013. doi: 10.3390/diagnostics13183013.
High-resolution intraoperative PET/CT specimen imaging, coupled with prostate-specific membrane antigen (PSMA) molecular targeting, holds great potential for the rapid ex vivo identification of disease localizations in high-risk prostate cancer patients undergoing surgery. However, the accurate analysis of radiotracer uptake would require time-consuming manual volumetric segmentation of 3D images. The aim of this study was to test the feasibility of using machine learning to perform automatic nodal segmentation of intraoperative Ga-PSMA-11 PET/CT specimen images. Six ( = 6) lymph-nodal specimens were imaged in the operating room after an e.v. injection of 2.1 MBq/kg of Ga-PSMA-11. A machine learning-based approach for automatic lymph-nodal segmentation was developed using only open-source Python libraries (Scikit-learn, SciPy, Scikit-image). The implementation of a k-means clustering algorithm ( = 3 clusters) allowed to identify lymph-nodal structures by leveraging differences in tissue density. Refinement of the segmentation masks was performed using morphological operations and 2D/3D-features filtering. Compared to manual segmentation (ITK-SNAP v4.0.1), the automatic segmentation model showed promising results in terms of weighted average precision (97-99%), recall (68-81%), Dice coefficient (80-88%) and Jaccard index (67-79%). Finally, the ML-based segmentation masks allowed to automatically compute semi-quantitative PET metrics (i.e., SUVmax), thus holding promise for facilitating the semi-quantitative analysis of PET/CT images in the operating room.
高分辨率术中PET/CT标本成像,结合前列腺特异性膜抗原(PSMA)分子靶向技术,在接受手术的高危前列腺癌患者的疾病定位快速离体识别方面具有巨大潜力。然而,对放射性示踪剂摄取的准确分析需要对三维图像进行耗时的手动体积分割。本研究的目的是测试使用机器学习对术中Ga-PSMA-11 PET/CT标本图像进行自动淋巴结分割的可行性。在静脉注射2.1 MBq/kg的Ga-PSMA-11后,对六个(n = 6)淋巴结标本在手术室进行成像。仅使用开源Python库(Scikit-learn、SciPy、Scikit-image)开发了一种基于机器学习的自动淋巴结分割方法。通过实施k均值聚类算法(k = 3个聚类),利用组织密度差异来识别淋巴结结构。使用形态学操作和二维/三维特征过滤对分割掩码进行细化。与手动分割(ITK-SNAP v4.0.1)相比,自动分割模型在加权平均精度(97-99%)、召回率(68-81%)、Dice系数(80-88%)和Jaccard指数(67-79%)方面显示出有前景的结果。最后,基于机器学习的分割掩码能够自动计算半定量PET指标(即SUVmax),因此有望促进手术室中PET/CT图像的半定量分析。