The Russell H. Morgan Department of Radiology and Radiological Science, Johns Hopkins Hospital, Baltimore, MD, USA.
Department of Surgery, Johns Hopkins University School of Medicine, Baltimore, MD, USA.
Ann Surg Oncol. 2024 Nov;31(12):8136-8145. doi: 10.1245/s10434-024-16064-4. Epub 2024 Aug 23.
PanNETs are a rare group of pancreatic tumors that display heterogeneous histopathological and clinical behavior. Nodal disease has been established as one of the strongest predictors of patient outcomes in PanNETs. Lack of accurate preoperative assessment of nodal disease is a major limitation in the management of these patients, in particular those with small (< 2 cm) low-grade tumors. The aim of the study was to evaluate the ability of radiomic features (RF) to preoperatively predict the presence of nodal disease in pancreatic neuroendocrine tumors (PanNETs).
An institutional database was used to identify patients with nonfunctional PanNETs undergoing resection. Pancreas protocol computed tomography was obtained, manually segmented, and RF were extracted. These were analyzed using the minimum redundancy maximum relevance analysis for hierarchical feature selection. Youden index was used to identify the optimal cutoff for predicting nodal disease. A random forest prediction model was trained using RF and clinicopathological characteristics and validated internally.
Of the 320 patients included in the study, 92 (28.8%) had nodal disease based on histopathological assessment of the surgical specimen. A radiomic signature based on ten selected RF was developed. Clinicopathological characteristics predictive of nodal disease included tumor grade and size. Upon internal validation the combined radiomics and clinical feature model demonstrated adequate performance (AUC 0.80) in identifying nodal disease. The model accurately identified nodal disease in 85% of patients with small tumors (< 2 cm).
Non-invasive preoperative assessment of nodal disease using RF and clinicopathological characteristics is feasible.
胰腺神经内分泌肿瘤(PanNETs)是一组罕见的胰腺肿瘤,其具有异质性的组织病理学和临床行为。淋巴结疾病已被确定为预测 PanNETs 患者预后的最强指标之一。缺乏对淋巴结疾病的准确术前评估是这些患者管理中的一个主要限制,特别是对于那些肿瘤直径小(<2cm)、分级低的患者。本研究旨在评估放射组学特征(RF)在术前预测胰腺神经内分泌肿瘤(PanNETs)淋巴结疾病存在的能力。
利用机构数据库确定接受切除术的无功能性 PanNETs 患者。获取胰腺协议 CT,并进行手动分割和 RF 提取。采用最小冗余最大相关性分析进行层次特征选择分析。使用约登指数确定预测淋巴结疾病的最佳截断值。使用 RF 和临床病理特征训练随机森林预测模型,并进行内部验证。
在 320 名纳入研究的患者中,92 名(28.8%)根据手术标本的组织病理学评估存在淋巴结疾病。基于十个选定 RF 的放射组学特征得到开发。预测淋巴结疾病的临床病理特征包括肿瘤分级和大小。内部验证显示,联合放射组学和临床特征模型在识别淋巴结疾病方面具有良好的性能(AUC 为 0.80)。该模型可准确识别 85%肿瘤直径小(<2cm)的患者的淋巴结疾病。
使用 RF 和临床病理特征进行非侵入性术前淋巴结疾病评估是可行的。