Amante Edoardo, Ghyselinck Robin, Thiberville Luc, Trisolini Rocco, Guisier Florian, Delchevalerie Valentin, Dumas Bruno, Frénay Benoît, Duparc Inès, Mazellier Nicolas, Farhi Cecile, Jubert Christophe, Salaün Mathieu, Lachkar Samy
Department of Pneumology, Rouen University Hospital, Rouen, France.
Department of Pulmonary Medicine and Interventional Pulmonology, Catholic University of the Sacred Hearth, Fondazione Policlinico Universitario Agostino Gemelli IRCCS, Rome, Italy.
Respirology. 2025 Sep;30(9):861-870. doi: 10.1111/resp.70057. Epub 2025 May 28.
Iriscope, a 1.3 mm video endoscopic probe introduced through an r-EBUS catheter, allows for the direct visualisation of small peripheral pulmonary nodules (PPNs). This study assessed the ability of physicians with different levels of experience in bronchoscopy, and the ability of artificial intelligence (AI) to predict the malignant nature of small PPNs during Iriscope peripheral endoscopy.
Patients undergoing bronchoscopy with r-EBUS and Iriscope for peripheral PPNs < 20 mm with a definite diagnosis were analysed. Senior and Junior physicians independently interpreted video-recorded Iriscope sequences, classifying them as tumoral (malignant) or non-tumoral, blind to the final diagnosis. A deep learning (DL) model was also trained on Iriscope images and tested on a different set of patients for comparison with human interpretation. Diagnostic accuracy, sensitivity, specificity, and F1 score were calculated.
Sixty-one patients with small PPNs (median size 15 mm, IQR: 11-20 mm) were included. The technique allowed for the direct visualisation of the lesions in all cases. The final diagnosis was cancer for 37 cases and a benign lesion in 24 cases. Senior physicians outperformed junior physicians in recognising tumoral Iriscope images, with a balanced accuracy of 85.4% versus 66.7%, respectively, when compared with the final diagnosis. The DL model outperformed junior physicians with a balanced accuracy of 71.5% but was not superior to senior physicians.
Iriscope could be a valuable tool in PPNs management, especially for experienced operators. Applied to Iriscope images, DL could enhance overall performance of less experienced physicians in diagnosing malignancy.
虹膜镜是一种通过径向超声支气管镜(r-EBUS)导管插入的1.3毫米视频内镜探头,可直接观察外周小肺结节(PPN)。本研究评估了不同支气管镜经验水平的医生以及人工智能(AI)在虹膜镜外周内镜检查期间预测小PPN恶性性质的能力。
分析接受r-EBUS和虹膜镜检查以明确诊断<20毫米外周PPN的患者。高级和初级医生独立解读视频记录的虹膜镜序列,将其分类为肿瘤性(恶性)或非肿瘤性,对最终诊断不知情。还在虹膜镜图像上训练了一个深度学习(DL)模型,并在另一组患者上进行测试,以与人类解读进行比较。计算诊断准确性、敏感性、特异性和F1分数。
纳入61例小PPN患者(中位大小15毫米,四分位间距:11-20毫米)。该技术在所有病例中均能直接观察到病变。最终诊断为癌症37例,良性病变24例。与最终诊断相比,高级医生在识别肿瘤性虹膜镜图像方面优于初级医生,平衡准确率分别为85.4%和66.7%。DL模型的平衡准确率为71.5%,优于初级医生,但不优于高级医生。
虹膜镜可能是PPN管理中的一种有价值的工具,特别是对于有经验的操作者。应用于虹膜镜图像时,DL可以提高经验较少的医生诊断恶性肿瘤的整体表现。