Peeken Jan C, Neumann Jan, Asadpour Rebecca, Leonhardt Yannik, Moreira Joao R, Hippe Daniel S, Klymenko Olena, Foreman Sarah C, von Schacky Claudio E, Spraker Matthew B, Schaub Stephanie K, Dapper Hendrik, Knebel Carolin, Mayr Nina A, Woodruff Henry C, Lambin Philippe, Nyflot Matthew J, Gersing Alexandra S, Combs Stephanie E
Department of Radiation Oncology, Klinikum rechts der Isar, Technical University of Munich (TUM), Ismaninger Straße 22, 81675 Munich, Germany.
Institute of Radiation Medicine (IRM), Department of Radiation Sciences (DRS), Helmholtz Zentrum München, 85764 München, Germany.
Cancers (Basel). 2021 Apr 16;13(8):1929. doi: 10.3390/cancers13081929.
In patients with soft-tissue sarcomas of the extremities, the treatment decision is currently regularly based on tumor grading and size. The imaging-based analysis may pose an alternative way to stratify patients' risk. In this work, we compared the value of MRI-based radiomics with expert-derived semantic imaging features for the prediction of overall survival (OS).
Fat-saturated T2-weighted sequences (T2FS) and contrast-enhanced T1-weighted fat-saturated (T1FSGd) sequences were collected from two independent retrospective cohorts (training: 108 patients; testing: 71 patients). After preprocessing, 105 radiomic features were extracted. Semantic imaging features were determined by three independent radiologists. Three machine learning techniques (elastic net regression (ENR), least absolute shrinkage and selection operator, and random survival forest) were compared to predict OS.
ENR models achieved the best predictive performance. Histologies and clinical staging differed significantly between both cohorts. The semantic prognostic model achieved a predictive performance with a C-index of 0.58 within the test set. This was worse compared to a clinical staging system (C-index: 0.61) and the radiomic models (C-indices: T1FSGd: 0.64, T2FS: 0.63). Both radiomic models achieved significant patient stratification.
T2FS and T1FSGd-based radiomic models outperformed semantic imaging features for prognostic assessment.
在四肢软组织肉瘤患者中,目前的治疗决策通常基于肿瘤分级和大小。基于影像学的分析可能为患者风险分层提供另一种方法。在本研究中,我们比较了基于MRI的放射组学与专家得出的语义成像特征对总生存期(OS)的预测价值。
从两个独立的回顾性队列(训练组:108例患者;测试组:71例患者)中收集脂肪饱和T2加权序列(T2FS)和对比增强T1加权脂肪饱和序列(T1FSGd)。预处理后,提取105个放射组学特征。语义成像特征由三名独立的放射科医生确定。比较了三种机器学习技术(弹性网络回归(ENR)、最小绝对收缩和选择算子以及随机生存森林)来预测OS。
ENR模型具有最佳的预测性能。两个队列的组织学和临床分期存在显著差异。语义预后模型在测试集中的预测性能C指数为0.58。与临床分期系统(C指数:0.61)和放射组学模型(C指数:T1FSGd:0.64,T2FS:0.63)相比,这一结果更差。两个放射组学模型均实现了显著的患者分层。
基于T2FS和T1FSGd的放射组学模型在预后评估方面优于语义成像特征。