Sci Rep. 2018 Jan 24;8(1):1524. doi: 10.1038/s41598-017-14687-0.
Radiomics is one such "big data" approach that applies advanced image refining/data characterization algorithms to generate imaging features that can quantitatively classify tumor phenotypes in a non-invasive manner. We hypothesize that certain textural features of oropharyngeal cancer (OPC) primary tumors will have statistically significant correlations to patient outcomes such as local control. Patients from an IRB-approved database dispositioned to (chemo)radiotherapy for locally advanced OPC were included in this retrospective series. Pretreatment contrast CT scans were extracted and radiomics-based analysis of gross tumor volume of the primary disease (GTVp) were performed using imaging biomarker explorer (IBEX) software that runs in Matlab platform. Data set was randomly divided into a training dataset and test and tuning holdback dataset. Machine learning methods were applied to yield a radiomic signature consisting of features with minimal overlap and maximum prognostic significance. The radiomic signature was adapted to discriminate patients, in concordance with other key clinical prognosticators. 465 patients were available for analysis. A signature composed of 2 radiomic features from pre-therapy imaging was derived, based on the Intensity Direct and Neighbor Intensity Difference methods. Analysis of resultant groupings showed robust discrimination of recurrence probability and Kaplan-Meier-estimated local control rate (LCR) differences between "favorable" and "unfavorable" clusters were noted.
放射组学是一种“大数据”方法,它应用先进的图像细化/数据特征算法来生成成像特征,可以无创地定量分类肿瘤表型。我们假设口咽癌(OPC)原发肿瘤的某些纹理特征与患者结局(如局部控制)具有统计学显著相关性。本回顾性研究纳入了经 IRB 批准的数据库中接受(放)化疗的局部晚期 OPC 患者。提取预处理对比 CT 扫描,并使用在 Matlab 平台上运行的成像生物标志物探索者(IBEX)软件对原发疾病的大体肿瘤体积(GTVp)进行基于放射组学的分析。数据集随机分为训练数据集、测试数据集和调整保留数据集。应用机器学习方法生成包含最小重叠和最大预后意义的特征的放射组学特征。该放射组学特征适用于与其他关键临床预后因素一致地对患者进行区分。465 名患者可用于分析。根据强度直接法和邻域强度差法,从治疗前成像中提取出 2 个放射组学特征,得出一个特征签名。对所得分组的分析显示,复发概率的区分能力较强,并且注意到“有利”和“不利”聚类之间的Kaplan-Meier 估计局部控制率(LCR)差异。