Wang Hao-Jen, Chen Li-Wei, Lee Hsin-Ying, Chung Yu-Jung, Lin Yan-Ting, Lee Yi-Chieh, Chen Yi-Chang, Chen Chung-Ming, Lin Mong-Wei
Department of Biomedical Engineering, College of Medicine and College of Engineering, National Taiwan University, Taipei 106, Taiwan.
Department of Medicine, National Taiwan University, Taipei 100, Taiwan.
Diagnostics (Basel). 2022 Apr 12;12(4):967. doi: 10.3390/diagnostics12040967.
Pulmonary hypertension should be preoperatively evaluated for optimal surgical planning to reduce surgical risk in lung cancer patients. Preoperative measurement of vascular diameter in computed tomography (CT) images is a noninvasive prediction method for pulmonary hypertension. However, the current estimation method, 2D manual arterial diameter measurement, may yield inaccurate results owing to low tissue contrast in non-contrast-enhanced CT (NECT). Furthermore, it provides an incomplete evaluation by measuring only the diameter of the arteries rather than the volume. To provide a more complete and accurate estimation, this study proposed a novel two-stage deep learning (DL) model for 3D aortic and pulmonary artery segmentation in NECT. In the first stage, a DL model was constructed to enhance the contrast of NECT; in the second stage, two DL models then applied the enhanced images for aorta and pulmonary artery segmentation. Overall, 179 patients were divided into contrast enhancement model (n = 59), segmentation model (n = 120), and testing (n = 20) groups. The performance of the proposed model was evaluated using Dice similarity coefficient (DSC). The proposed model could achieve 0.97 ± 0.66 and 0.93 ± 0.16 DSC for aortic and pulmonary artery segmentation, respectively. The proposed model may provide 3D diameter information of the arteries before surgery, facilitating the estimation of pulmonary hypertension and supporting preoperative surgical method selection based on the predicted surgical risks.
对于肺癌患者,术前应评估肺动脉高压情况,以制定最佳手术方案,降低手术风险。术前在计算机断层扫描(CT)图像中测量血管直径是一种用于预测肺动脉高压的非侵入性方法。然而,目前的估计方法,即二维手动测量动脉直径,由于非增强CT(NECT)中组织对比度低,可能会产生不准确的结果。此外,它仅通过测量动脉直径而非体积来进行不完整的评估。为了提供更完整和准确的估计,本研究提出了一种新颖的两阶段深度学习(DL)模型,用于在NECT中对主动脉和肺动脉进行三维分割。在第一阶段,构建一个DL模型以增强NECT的对比度;在第二阶段,两个DL模型然后将增强后的图像用于主动脉和肺动脉的分割。总体而言,179例患者被分为对比增强模型组(n = 59)、分割模型组(n = 120)和测试组(n = 20)。使用Dice相似系数(DSC)评估所提出模型的性能。所提出的模型在主动脉和肺动脉分割方面的DSC分别可达到0.97±0.66和0.93±0.16。所提出的模型可以在手术前提供动脉的三维直径信息,有助于肺动脉高压的评估,并支持基于预测手术风险选择术前手术方法。