Wang Chen, Calle Paul, Tran Ton Nu Bao, Zhang Zuyuan, Yan Feng, Donaldson Anthony M, Bradley Nathan A, Yu Zhongxin, Fung Kar-Ming, Pan Chongle, Tang Qinggong
Stephenson School of Biomedical Engineering, University of Oklahoma, Norman, OK 73072, USA.
These authors contributed equally to this work.
Biomed Opt Express. 2021 Mar 29;12(4):2404-2418. doi: 10.1364/BOE.421299. eCollection 2021 Apr 1.
Percutaneous renal access is the critical initial step in many medical settings. In order to obtain the best surgical outcome with minimum patient morbidity, an improved method for access to the renal calyx is needed. In our study, we built a forward-view optical coherence tomography (OCT) endoscopic system for percutaneous nephrostomy (PCN) guidance. Porcine kidneys were imaged in our experiment to demonstrate the feasibility of the imaging system. Three tissue types of porcine kidneys (renal cortex, medulla, and calyx) can be clearly distinguished due to the morphological and tissue differences from the OCT endoscopic images. To further improve the guidance efficacy and reduce the learning burden of the clinical doctors, a deep-learning-based computer aided diagnosis platform was developed to automatically classify the OCT images by the renal tissue types. Convolutional neural networks (CNN) were developed with labeled OCT images based on the ResNet34, MobileNetv2 and ResNet50 architectures. Nested cross-validation and testing was used to benchmark the classification performance with uncertainty quantification over 10 kidneys, which demonstrated robust performance over substantial biological variability among kidneys. ResNet50-based CNN models achieved an average classification accuracy of 82.6%±3.0%. The classification precisions were 79%±4% for cortex, 85%±6% for medulla, and 91%±5% for calyx and the classification recalls were 68%±11% for cortex, 91%±4% for medulla, and 89%±3% for calyx. Interpretation of the CNN predictions showed the discriminative characteristics in the OCT images of the three renal tissue types. The results validated the technical feasibility of using this novel imaging platform to automatically recognize the images of renal tissue structures ahead of the PCN needle in PCN surgery.
经皮肾穿刺通路是许多医疗场景中的关键初始步骤。为了以最低的患者发病率获得最佳的手术效果,需要一种改进的肾盏穿刺方法。在我们的研究中,我们构建了一种用于经皮肾造瘘术(PCN)引导的前视光学相干断层扫描(OCT)内镜系统。在我们的实验中对猪肾进行了成像,以证明该成像系统的可行性。由于OCT内镜图像中猪肾的三种组织类型(肾皮质、髓质和肾盏)存在形态和组织差异,因此可以清晰区分。为了进一步提高引导效果并减轻临床医生的学习负担,开发了一个基于深度学习的计算机辅助诊断平台,以根据肾组织类型自动对OCT图像进行分类。基于ResNet34、MobileNetv2和ResNet50架构,利用标记的OCT图像开发了卷积神经网络(CNN)。采用嵌套交叉验证和测试对10个肾脏的分类性能进行基准测试,并进行不确定性量化,结果表明在肾脏之间存在显著生物学差异的情况下,该方法具有稳健的性能。基于ResNet50的CNN模型平均分类准确率达到82.6%±3.0%。皮质的分类精度为79%±4%,髓质为85%±6%,肾盏为91%±5%;皮质的分类召回率为68%±11%,髓质为91%±4%,肾盏为89%±3%。对CNN预测结果的解读显示了三种肾组织类型在OCT图像中的判别特征。结果验证了在PCN手术中使用这种新型成像平台在PCN穿刺针之前自动识别肾组织结构图像的技术可行性。