Hinzpeter Ricarda, Mirshahvalad Seyed Ali, Kulanthaivelu Roshini, Kohan Andres, Ortega Claudia, Metser Ur, Liu Amy, Farag Adam, Elimova Elena, Wong Rebecca K S, Yeung Jonathan, Jang Raymond Woo-Jun, Veit-Haibach Patrick
University Medical Imaging Toronto, Toronto Joint Department Medical Imaging, University Health Network, Sinai Health System, Women's College Hospital, University of Toronto, Toronto, ON M5G 2N2, Canada.
Institute for Diagnostic and Interventional Radiology, University Hospital Zurich, 8091 Zurich, Switzerland.
Diagnostics (Basel). 2024 Jun 6;14(11):1205. doi: 10.3390/diagnostics14111205.
We aimed to determine if clinical parameters and radiomics combined with sarcopenia status derived from baseline F-FDG-PET/CT could predict developing metastatic disease and overall survival (OS) in gastroesophageal cancer (GEC). Patients referred for primary staging who underwent F-FDG-PET/CT from 2008 to 2019 were evaluated retrospectively. Overall, 243 GEC patients (mean age = 64) were enrolled. Clinical, histopathology, and sarcopenia data were obtained, and primary tumor radiomics features were extracted. For classification (early-stage vs. advanced disease), the association of the studied parameters was evaluated. Various clinical and radiomics models were developed and assessed. Accuracy and area under the curve (AUC) were calculated. For OS prediction, univariable and multivariable Cox analyses were performed. The best model included PET/CT radiomics features, clinical data, and sarcopenia score (accuracy = 80%; AUC = 88%). For OS prediction, various clinical, CT, and PET features entered the multivariable analysis. Three clinical factors (advanced disease, age ≥ 70 and ECOG ≥ 2), along with one CT-derived and one PET-derived radiomics feature, retained their significance. Overall, F-FDG PET/CT radiomics seems to have a potential added value in identifying GEC patients with advanced disease and may enhance the performance of baseline clinical parameters. These features may also have a prognostic value for OS, improving the decision-making for GEC patients.
我们旨在确定临床参数、影像组学与基于基线F-FDG-PET/CT得出的肌肉减少症状态相结合,是否能够预测食管癌(GEC)患者发生转移性疾病及总生存期(OS)。对2008年至2019年期间接受F-FDG-PET/CT进行原发分期的患者进行回顾性评估。总共纳入了243例GEC患者(平均年龄 = 64岁)。获取临床、组织病理学和肌肉减少症数据,并提取原发肿瘤的影像组学特征。对于分类(早期疾病与晚期疾病),评估所研究参数之间的关联。开发并评估了各种临床和影像组学模型。计算准确性和曲线下面积(AUC)。对于OS预测,进行单变量和多变量Cox分析。最佳模型包括PET/CT影像组学特征、临床数据和肌肉减少症评分(准确性 = 80%;AUC = 88%)。对于OS预测,各种临床、CT和PET特征纳入多变量分析。三个临床因素(晚期疾病、年龄≥70岁和东部肿瘤协作组体能状态评分≥2),以及一个源自CT和一个源自PET的影像组学特征,仍具有显著意义。总体而言,F-FDG PET/CT影像组学在识别晚期GEC患者方面似乎具有潜在附加值,并且可能提高基线临床参数的性能。这些特征对OS可能也具有预后价值,有助于改善GEC患者的决策制定。