Wang Chen, Cui Haoyang, Zhang Qinghao, Calle Paul, Yan Yuyang, Yan Feng, Fung Kar-Ming, Patel Sanjay G, Yu Zhongxin, Duguay Sean, Vanlandingham William, Jain Ajay, Pan Chongle, Tang Qinggong
Stephenson School of Biomedical Engineering, University of Oklahoma, Norman, OK, USA.
School of Computer Science, University of Oklahoma, Norman, OK, USA.
Commun Eng. 2024 Aug 2;3(1):107. doi: 10.1038/s44172-024-00254-9.
Percutaneous renal biopsy is commonly used for kidney cancer diagnosis. However, the biopsy procedure remains challenging in sampling accuracy. Here we introduce a forward-viewing optical coherence tomography probe for differentiating tumor and normal tissues, aiming at precise biopsy guidance. Totally, ten human kidney samples, nine of which had malignant renal carcinoma and one had benign oncocytoma, were used for system evaluation. Based on their distinct imaging features, carcinoma could be efficiently distinguished from normal renal tissues. Additionally, oncocytoma could be differentiated from carcinoma. We developed convolutional neural networks for tissue recognition. Compared to the conventional attenuation coefficient method, convolutional neural network models provided more accurate carcinoma predictions. These models reached a tissue recognition accuracy of 99.1% on a hold-out set of four kidney samples. Furthermore, they could efficiently distinguish oncocytoma from carcinoma. In conclusion, our convolutional neural network-aided endoscopic imaging platform could enhance carcinoma diagnosis during percutaneous renal biopsy procedures.
经皮肾活检常用于肾癌诊断。然而,活检过程在采样准确性方面仍然具有挑战性。在此,我们引入一种用于区分肿瘤组织和正常组织的前视光学相干断层扫描探头,旨在实现精确的活检引导。总共使用了10个人类肾脏样本进行系统评估,其中9个患有恶性肾癌,1个患有良性嗜酸细胞瘤。基于其独特的成像特征,癌组织能够与正常肾组织有效区分。此外,嗜酸细胞瘤也能与癌组织区分开来。我们开发了用于组织识别的卷积神经网络。与传统的衰减系数方法相比,卷积神经网络模型提供了更准确的癌组织预测。这些模型在一组4个肾脏样本的验证集上达到了99.1%的组织识别准确率。此外,它们能够有效地将嗜酸细胞瘤与癌组织区分开来。总之,我们的卷积神经网络辅助内镜成像平台可在经皮肾活检过程中提高癌组织的诊断能力。