Clinical Center, National Institutes of Health, Bethesda, MD, USA.
Clinical Center, National Institutes of Health, Bethesda, MD, USA.
Comput Med Imaging Graph. 2024 Sep;116:102419. doi: 10.1016/j.compmedimag.2024.102419. Epub 2024 Jul 20.
Pheochromocytomas and Paragangliomas (PPGLs) are rare adrenal and extra-adrenal tumors that have metastatic potential. Management of patients with PPGLs mainly depends on the makeup of their genetic cluster: SDHx, VHL/EPAS1, kinase, and sporadic. CT is the preferred modality for precise localization of PPGLs, such that their metastatic progression can be assessed. However, the variable size, morphology, and appearance of these tumors in different anatomical regions can pose challenges for radiologists. Since radiologists must routinely track changes across patient visits, manual annotation of PPGLs is quite time-consuming and cumbersome to do across all axial slices in a CT volume. As such, PPGLs are only weakly annotated on axial slices by radiologists in the form of RECIST measurements. To ameliorate the manual effort spent by radiologists, we propose a method for the automated detection of PPGLs in CT via a proxy segmentation task. Weak 3D annotations (derived from 2D bounding boxes) were used to train both 2D and 3D nnUNet models to detect PPGLs via segmentation. We evaluated our approaches on an in-house dataset comprised of chest-abdomen-pelvis CTs of 255 patients with confirmed PPGLs. On a test set of 53 CT volumes, our 3D nnUNet model achieved a detection precision of 70% and sensitivity of 64.1%, and outperformed the 2D model that obtained a precision of 52.7% and sensitivity of 27.5% (p< 0.05). SDHx and sporadic genetic clusters achieved the highest precisions of 73.1% and 72.7% respectively. Our state-of-the art findings highlight the promising nature of the challenging task of automated PPGL detection.
嗜铬细胞瘤和副神经节瘤 (PPGLs) 是罕见的肾上腺和肾上腺外肿瘤,具有转移潜能。PPGLs 患者的管理主要取决于其基因簇的组成:SDHx、VHL/EPAS1、激酶和散发性。CT 是精确定位 PPGLs 的首选方式,以便评估其转移进展。然而,这些肿瘤在不同解剖区域的大小、形态和外观存在差异,这给放射科医生带来了挑战。由于放射科医生必须定期跟踪患者就诊时的变化,因此手动标注 PPGLs 在 CT 容积的所有轴位切片上都非常耗时且繁琐。因此,放射科医生仅以 RECIST 测量的形式在轴位切片上对 PPGLs 进行弱标注。为了减轻放射科医生的手动工作量,我们提出了一种通过代理分割任务自动检测 CT 中 PPGLs 的方法。使用弱 3D 标注(源自 2D 边界框)来训练 2D 和 3D nnUNet 模型,通过分割来检测 PPGLs。我们在一个由 255 名确诊为 PPGLs 的患者的胸部-腹部-骨盆 CT 组成的内部数据集上评估了我们的方法。在 53 个 CT 容积的测试集上,我们的 3D nnUNet 模型的检测精度为 70%,灵敏度为 64.1%,优于获得精度为 52.7%和灵敏度为 27.5%的 2D 模型(p<0.05)。SDHx 和散发性遗传簇的精度分别达到了 73.1%和 72.7%。我们的最新研究结果突出了自动 PPGL 检测这一具有挑战性任务的有前途的性质。