医学
节的
阶段(地层学)
放射科
节点分析
节点信号
采样(信号处理)
癌症
内科学
肿瘤科
滤波器(信号处理)
电气工程
计算机视觉
基因
工程类
原肠化
生物
胚胎干细胞
生物化学
古生物学
计算机科学
作者
K. Sullivan,Forough Farrokhyar,Yogita S. Patel,Moïshe Liberman,Simon R. Turner,Anne V. Gonzalez,Rahul Nayak,Kazuhiro Yasufuku,Waël C. Hanna
标识
DOI:10.1016/j.jtcvs.2023.11.020
摘要
Objective To determine whether targeted sampling (TS), which omits biopsy of triple- normal lymph nodes (LNs) on positron emission tomography, computed tomography, and endobronchial ultrasound (EBUS), is noninferior to systematic sampling (SS) of mediastinal LNs during EBUS for staging of patients with early-stage non–small cell lung cancer (NSCLC). Methods Patients who are clinical nodal (cN)0-N1 with suspected NSCLC eligible for EBUS based on positron emission tomography/computed tomography were enrolled in this prospective, multicenter trial. During EBUS, all patients underwent TS and then crossed over to SS, whereby at least 3 mediastinal LN stations (4R, 4L, 7) were routinely sampled. Gold standard of comparison was pathologic results. Based on the previous feasibility trial, a noninferiority margin of 6% was established for difference in missed nodal metastasis (MNM) incidence between TS and SS. The McNemar test on paired proportions was used to determine MNM incidence for each sampling method. Analysis was per-protocol using a level of significance of P < .05. Results Between November 2020 and April 2022, 91 patients were enrolled at 6 high-volume Canadian tertiary care centers. A total of 256 LNs underwent TS and SS. Incidence of MNM was 0.78% in SS and 2.34% in TS, with an absolute difference of 1.56% (95% confidence interval, −0.003% to 4.1%; P = .13). This falls within the noninferiority margin. A total of 6/256 LNs from 4 patients who were not sampled by TS were found to be malignant when sampled by SS. Conclusions In high-volume thoracic endosonography centers, TS is not inferior to SS in nodal staging of early-stage NSCLC. This results in change of clinical management for a minority of patients.
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