Gålne Anni, Enqvist Olof, Sundlöv Anna, Valind Kristian, Minarik David, Trägårdh Elin
Department of Medical Imaging and Physiology, Skåne University Hospital, Lund, Sweden.
Department of Translational Medicine, Faculty of Medicine, Lund University, Malmö, Sweden.
Eur J Hybrid Imaging. 2023 Aug 7;7(1):14. doi: 10.1186/s41824-023-00172-7.
Segmenting the whole-body somatostatin receptor-expressing tumour volume (SRETVwb) on positron emission tomography/computed tomography (PET/CT) images is highly time-consuming but has shown value as an independent prognostic factor for survival. An automatic method to measure SRETVwb could improve disease status assessment and provide a tool for prognostication. This study aimed to develop an artificial intelligence (AI)-based method to detect and quantify SRETVwb and total lesion somatostatin receptor expression (TLSREwb) from [Ga]Ga-DOTA-TOC/TATE PET/CT images.
A UNet3D convolutional neural network (CNN) was used to train an AI model with [Ga]Ga-DOTA-TOC/TATE PET/CT images, where all tumours were manually segmented with a semi-automatic method. The training set consisted of 148 patients, of which 108 had PET-positive tumours. The test group consisted of 30 patients, of which 25 had PET-positive tumours. Two physicians segmented tumours in the test group for comparison with the AI model.
There were good correlations between the segmented SRETVwb and TLSREwb by the AI model and the physicians, with Spearman rank correlation coefficients of r = 0.78 and r = 0.73, respectively, for SRETVwb and r = 0.83 and r = 0.81, respectively, for TLSREwb. The sensitivity on a lesion detection level was 80% and 79%, and the positive predictive value was 83% and 84% when comparing the AI model with the two physicians.
It was possible to develop an AI model to segment SRETVwb and TLSREwb with high performance. A fully automated method makes quantification of tumour burden achievable and has the potential to be more widely used when assessing PET/CT images.
在正电子发射断层扫描/计算机断层扫描(PET/CT)图像上分割全身表达生长抑素受体的肿瘤体积(SRETVwb)非常耗时,但已显示出作为生存独立预后因素的价值。一种测量SRETVwb的自动方法可以改善疾病状态评估并提供一种预后工具。本研究旨在开发一种基于人工智能(AI)的方法,用于从[镓]镓-多柔比星-TOC/TATE PET/CT图像中检测和量化SRETVwb和总病灶生长抑素受体表达(TLSREwb)。
使用UNet3D卷积神经网络(CNN)对[镓]镓-多柔比星-TOC/TATE PET/CT图像训练AI模型,其中所有肿瘤均采用半自动方法进行手动分割。训练集包括148例患者,其中108例有PET阳性肿瘤。测试组包括30例患者,其中25例有PET阳性肿瘤。两名医生对测试组中的肿瘤进行分割,以与AI模型进行比较。
AI模型分割的SRETVwb和TLSREwb与医生分割的结果之间存在良好的相关性,SRETVwb的Spearman等级相关系数分别为r = 0.78和r = 0.73,TLSREwb的Spearman等级相关系数分别为r = 0.83和r = 0.81。将AI模型与两名医生进行比较时,在病灶检测水平上的灵敏度分别为80%和79%,阳性预测值分别为83%和84%。
有可能开发出一种高性能的AI模型来分割SRETVwb和TLSREwb。一种全自动方法使肿瘤负荷的量化成为可能,并且在评估PET/CT图像时有更广泛应用的潜力。