Department of Radiation Oncology, Dana-Farber Cancer Institute, Brigham and Women's Hospital, and Harvard Medical School, Boston, MA, 02115, USA.
Department of Radiology, Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Center for Cancer, Key Laboratory of Cancer Prevention and Therapy, Tianjin; Tianjin's Clinical Research Center for Cancer, Tianjin, PR China.
Sci Rep. 2017 Jun 14;7(1):3519. doi: 10.1038/s41598-017-02425-5.
Tumor phenotypes captured in computed tomography (CT) images can be described qualitatively and quantitatively using radiologist-defined "semantic" and computer-derived "radiomic" features, respectively. While both types of features have shown to be promising predictors of prognosis, the association between these groups of features remains unclear. We investigated the associations between semantic and radiomic features in CT images of 258 non-small cell lung adenocarcinomas. The tumor imaging phenotypes were described using 9 qualitative semantic features that were scored by radiologists, and 57 quantitative radiomic features that were automatically calculated using mathematical algorithms. Of the 9 semantic features, 3 were rated on a binary scale (cavitation, air bronchogram, and calcification) and 6 were rated on a categorical scale (texture, border definition, contour, lobulation, spiculation, and concavity). 32-41 radiomic features were associated with the binary semantic features (AUC = 0.56-0.76). The relationship between all radiomic features and the categorical semantic features ranged from weak to moderate (|Spearmen's correlation| = 0.002-0.65). There are associations between semantic and radiomic features, however the associations were not strong despite being significant. Our results indicate that radiomic features may capture distinct tumor phenotypes that fail to be perceived by naked eye that semantic features do not describe and vice versa.
在计算机断层扫描(CT)图像中捕获的肿瘤表型可以分别使用放射科医生定义的“语义”和计算机衍生的“放射组学”特征进行定性和定量描述。虽然这两种类型的特征都已被证明是预后的有前途的预测指标,但这些特征组之间的关联尚不清楚。我们研究了 258 例非小细胞肺腺癌 CT 图像中语义特征和放射组学特征之间的相关性。使用 9 种由放射科医生评分的定性语义特征和 57 种使用数学算法自动计算的定量放射组学特征来描述肿瘤成像表型。在 9 种语义特征中,有 3 种是二进制评分(空洞、空气支气管征和钙化),6 种是分类评分(纹理、边界定义、轮廓、分叶、棘突和凹陷)。32-41 种放射组学特征与二进制语义特征相关(AUC=0.56-0.76)。所有放射组学特征与分类语义特征之间的关系从弱到中等(|Spearmen 相关系数|=0.002-0.65)。语义特征和放射组学特征之间存在关联,但尽管存在关联,关联并不强。我们的结果表明,放射组学特征可能会捕获到语义特征无法描述的独特肿瘤表型,反之亦然。