Application of Three-Dimensional Computed Tomography Bronchography and Angiography Reconstruction in Thoracoscopic Segmentectomy and Segmental Structure Analysis

C. Pan, Guoqiu Xu, Bin Xu, Wei Gan, Yunkun Liu, Guangxia Wei, Lei Jiang, Yunhe Huang, C. Ye
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Abstract

In thoracoscopic segmentectomy, accurate preoperative identification of intersegmental vessels, bronchi, and the surgical safety margin is vital. We applied three dimensional computed tomography bronchography and angiography (3D-CTBA) reconstruction to appropriately plan thoracoscopic segmentectomy for Patients with pulmonary nodules. In this study, we evaluated the effectiveness and accuracy of 3D-CTBA reconstruction for the identification of segmental anatomical structures and variation during thoracoscopic segmentectomy.We retrospectively analyzed data of 30 patients who underwent 3D-CTBA reconstruction before thoracoscopic segmentectomy between January and May 2019 in the Department of Thoracic Surgery, First Affiliated Hospital of Nanchang University. We compared the individual target segment arteries, veins, and bronchi identified during surgery with the preoperative 3D-CTBA model to evaluate its effectiveness and accuracy. The accuracy of the preoperative 3D-CTBA model for the identification of target segmental arteries, veins, and bronchi was 99.08% (108/109), 98.39% (122/124), and 100% (118/118), respectively. Through 3DCTBA modeling, we found mediastinal and interlobar types of lingular segmental arteries in six patients, and central veins were not found in seven patients. In addition, we detected rare anatomical variations in two patients; one patient had the right apical segmental bronchus that stemmed solely from the right primary bronchus (tracheal bronchus), and the other had rare right basal segmental variant bronchi and vessels. The 3D-CTBA model can precisely predict segmental bronchi and vessels and identify anatomical structure variations before operation, which can aid surgeons to avoid incorrect operation and improve surgical efficiency. This has important implications for thoracoscopic segmentectomy.
三维计算机断层支气管造影及血管造影重建在胸腔镜下节段切除术及节段结构分析中的应用
在胸腔镜节段切除术中,准确的术前识别节段间血管、支气管和手术安全裕度至关重要。我们应用三维计算机断层扫描支气管造影和血管造影术(3D-CTBA)重建来适当规划肺结节患者的胸腔镜节段切除术。在本研究中,我们评估了3D-CTBA重建在胸腔镜节段切除术中识别节段解剖结构和变异的有效性和准确性。我们回顾性分析了2019年1月至5月在南昌大学第一附属医院胸外科接受胸腔镜下胸段切除术前3D-CTBA重建的30名患者的数据。我们将手术中确定的单个靶段动脉、静脉和支气管与术前3D-CTBA模型进行了比较,以评估其有效性和准确性。术前3D-CTBA模型识别目标节段动脉、静脉和支气管的准确率分别为99.08%(108/109)、98.39%(122/124)和100%(118/118)。通过3DCTBA建模,我们在6名患者中发现了纵隔和叶间型舌段动脉,在7名患者中没有发现中央静脉。此外,我们在两名患者身上发现了罕见的解剖变异;一名患者的右顶段支气管仅源于右原发支气管(气管支气管),另一名患者有罕见的右基底段变异支气管和血管。3D-CTBA模型可以准确预测节段支气管和血管,并在手术前识别解剖结构变化,这可以帮助外科医生避免错误的手术,提高手术效率。这对胸腔镜节段切除术有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Nanoscience and Nanotechnology Letters
Nanoscience and Nanotechnology Letters Physical, Chemical & Earth Sciences-MATERIALS SCIENCE, MULTIDISCIPLINARY
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审稿时长
2.6 months
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