Department of Radiology, Guangdong Provincial People's Hospital, Guangdong Academy of Medical Sciences, Guangzhou, China.
Department of Diagnostic Radiology, Li Ka Shing Faculty of Medicine, University of Hong Kong, Pok Fu Lam, Hong Kong SAR, China.
Ann Surg Oncol. 2022 Dec;29(13):8117-8126. doi: 10.1245/s10434-022-12207-7. Epub 2022 Aug 26.
Lymph node status is vital for prognosis and treatment decisions for esophageal squamous cell carcinoma (ESCC). This study aimed to construct and evaluate an optimal radiomics-based method for a more accurate evaluation of individual regional lymph node status in ESCC and to compare it with traditional size-based measurements.
The study consecutively collected 3225 regional lymph nodes from 530 ESCC patients receiving upfront surgery from January 2011 to October 2015. Computed tomography (CT) scans for individual lymph nodes were analyzed. The study evaluated the predictive performance of machine-learning models trained on features extracted from two-dimensional (2D) and three-dimensional (3D) radiomics by different contouring methods. Robust and important radiomics features were selected, and classification models were further established and validated.
The lymph node metastasis rate was 13.2% (427/3225). The average short-axis diameter was 6.4 mm for benign lymph nodes and 7.9 mm for metastatic lymph nodes. The division of lymph node stations into five regions according to anatomic lymph node drainage (cervical, upper mediastinal, middle mediastinal, lower mediastinal, and abdominal regions) improved the predictive performance. The 2D radiomics method showed optimal diagnostic results, with more efficient segmentation of nodal lesions. In the test set, this optimal model achieved an area under the receiver operating characteristic curve of 0.841-0.891, an accuracy of 84.2-94.7%, a sensitivity of 65.7-83.3%, and a specificity of 84.4-96.7%.
The 2D radiomics-based models noninvasively predicted the metastatic status of an individual lymph node in ESCC and outperformed the conventional size-based measurement. The 2D radiomics-based model could be incorporated into the current clinical workflow to enable better decision-making for treatment strategies.
淋巴结状态对于食管鳞癌(ESCC)的预后和治疗决策至关重要。本研究旨在构建和评估一种基于放射组学的最佳方法,以更准确地评估 ESCC 中个体区域淋巴结的状态,并将其与传统的基于大小的测量方法进行比较。
本研究连续收集了 530 例接受术前手术的 ESCC 患者的 3225 个区域淋巴结,时间为 2011 年 1 月至 2015 年 10 月。对每个淋巴结的 CT 扫描进行分析。本研究评估了基于二维(2D)和三维(3D)放射组学特征的机器学习模型的预测性能,这些特征是通过不同的轮廓方法提取的。选择稳健且重要的放射组学特征,并进一步建立和验证分类模型。
淋巴结转移率为 13.2%(427/3225)。良性淋巴结的平均短轴直径为 6.4mm,转移性淋巴结的平均短轴直径为 7.9mm。根据解剖淋巴结引流将淋巴结站分为五个区域(颈区、上纵隔区、中纵隔区、下纵隔区和腹部区)可提高预测性能。2D 放射组学方法显示出最佳的诊断结果,更有效地分割了淋巴结病变。在测试集中,该最佳模型的受试者工作特征曲线下面积为 0.841-0.891,准确率为 84.2%-94.7%,灵敏度为 65.7%-83.3%,特异性为 84.4%-96.7%。
基于 2D 放射组学的模型可以无创预测 ESCC 中单个淋巴结的转移状态,优于传统的基于大小的测量方法。基于 2D 放射组学的模型可以纳入当前的临床工作流程,以帮助制定更好的治疗策略决策。