Jung Hyunuk, Gonzalez Yesenia, Shen Chenyang, Klages Peter, Albuquerque Kevin, Jia Xun
Innovation Technology of Radiotherapy Computation and Hardware (iTORCH) Lab, University of Texas Southwestern Medical Center, Dallas, TX; Medical Artificial Intelligence and Automation (MAIA) Lab, University of Texas Southwestern Medical Center, Dallas, TX; Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, TX.
Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, TX.
Brachytherapy. 2019 Nov-Dec;18(6):841-851. doi: 10.1016/j.brachy.2019.06.003. Epub 2019 Jul 22.
Applicator digitization is one of the most critical steps in 3D high-dose-rate brachytherapy (HDRBT) treatment planning. Motivated by recent advances in deep-learning, we propose a deep-learning-assisted applicator digitization method for 3D CT image-based HDRBT. This study demonstrates its feasibility and potential in gynecological cancer HDRBT.
Our method consisted of two steps. The first step used a U-net to segment applicator regions. We trained the U-net using two-dimensional CT images with a tandem-and-ovoid (T&O) applicator and corresponding applicator mask images. The second step applied a spectral clustering method and a polynomial curve fitting method to extract applicator central paths. We evaluated the accuracy, efficiency, and robustness of our method in different scenarios including other T&O cases that were not used in training, a T&O case scanned with cone-beam CT, and Y-tandem and cylinder-applicator cases.
In test cases with a T&O applicator, average 3D Dice similarity coefficient between automatic and manual segmented applicator regions was 0.93. Average distance between tip positions and average Hausdorff distance between applicator channels determined by our method and manually were 0.64 mm and 0.68 mm, respectively. Although trained only using CT images of T&O cases, our tool can also digitize Y-tandem, cylinder applicator, and T&O applicator scanned in cone-beam CT with error of tip position and Hausdorff distance <1 mm. Computation time was ∼15 s per case.
We have developed a deep-learning-assisted applicator digitization tool for 3D CT image-based HDRBT of gynecological cancer. The achieved accuracy, efficiency, and robustness made our tool clinically attractive.
施源器数字化是三维高剂量率近距离放射治疗(HDRBT)治疗计划中最关键的步骤之一。受深度学习最新进展的推动,我们提出了一种用于基于三维CT图像的HDRBT的深度学习辅助施源器数字化方法。本研究证明了其在妇科癌症HDRBT中的可行性和潜力。
我们的方法包括两个步骤。第一步使用U-net分割施源器区域。我们使用带有串形和卵圆形(T&O)施源器的二维CT图像以及相应的施源器掩码图像训练U-net。第二步应用谱聚类方法和多项式曲线拟合方法提取施源器中心路径。我们在不同场景下评估了我们方法的准确性、效率和鲁棒性,包括未用于训练的其他T&O病例、用锥形束CT扫描的T&O病例以及Y形串形和圆柱形施源器病例。
在使用T&O施源器的测试病例中,自动分割和手动分割的施源器区域之间的平均三维骰子相似系数为0.93。我们的方法确定的尖端位置之间的平均距离以及施源器通道之间的平均豪斯多夫距离与手动测量值分别为0.64毫米和0.68毫米。尽管仅使用T&O病例的CT图像进行训练,但我们的工具也可以对Y形串形、圆柱形施源器以及用锥形束CT扫描的T&O施源器进行数字化,尖端位置和豪斯多夫距离的误差<1毫米。每个病例的计算时间约为15秒。
我们开发了一种用于妇科癌症基于三维CT图像的HDRBT的深度学习辅助施源器数字化工具。所实现的准确性、效率和鲁棒性使我们的工具在临床上具有吸引力。