Department of Radiation Oncology, St. Jude Children's Research Hospital, 262 Danny Thomas Place, Memphis, TN, 38105, USA.
Department of Diagnostic Imaging, St. Jude Children's Research Hospital, 262 Danny Thomas Place, Memphis, TN, 38105, USA.
Sci Rep. 2018 Mar 2;8(1):3913. doi: 10.1038/s41598-018-22319-4.
Identification of FDGavid- neoplasms may be obscured by high-uptake normal tissues, thus limiting inferences about the natural history of disease. We introduce a FDG-PET radiomics tissue classifier for differentiating FDGavid- normal tissues from tumor. Thirty-three scans from 15 patients with Hodgkin lymphoma and 68 scans from 23 patients with Ewing sarcoma treated on two prospective clinical trials were retrospectively analyzed. Disease volumes were manually segmented on FDG-PET and CT scans. Brain, heart, kidneys and bladder and tumor volumes were automatically segmented on PET images. Standard-uptake-value (SUV) derived shape and first order radiomics features were computed to build a random forest classifier. Manually segmented volumes were compared to automatically segmented tumor volumes. Classifier accuracy for normal tissues was 90%. Classifier performance was varied across normal tissue types (brain, left kidney and bladder, hear and right kidney were 100%, 96%, 97%, 83% and 87% respectively). Automatically segmented tumor volumes showed high concordance with the manually segmented tumor volumes (R = 0.97). Inclusion of texture-based radiomics features minimally contributed to classifier performance. Accurate normal tissue segmentation and classification facilitates accurate identification of FDGavid tissues and classification of those tissues as either tumor or normal tissue.
FDG 摄取高的正常组织可能会掩盖肿瘤,从而限制对疾病自然史的推断。我们引入了一种 FDG-PET 放射组学组织分类器,用于区分 FDG 摄取高的正常组织和肿瘤。对两项前瞻性临床试验中 15 例霍奇金淋巴瘤患者和 23 例尤文肉瘤患者的 33 次扫描和 68 次扫描进行了回顾性分析。在 FDG-PET 和 CT 扫描上手动勾画疾病体积,在 PET 图像上自动勾画脑、心脏、肾脏和膀胱以及肿瘤体积。计算标准摄取值(SUV)衍生的形状和一阶放射组学特征,以构建随机森林分类器。将手动勾画的体积与自动勾画的肿瘤体积进行比较。正常组织的分类器准确性为 90%。正常组织类型的分类器性能存在差异(脑、左肾和膀胱、心脏和右肾的准确性分别为 100%、96%、97%、83%和 87%)。自动勾画的肿瘤体积与手动勾画的肿瘤体积具有高度一致性(R=0.97)。基于纹理的放射组学特征的纳入对分类器性能的贡献最小。准确的正常组织分割和分类有助于准确识别 FDG 摄取高的组织,并将这些组织分类为肿瘤或正常组织。