Automatic renal carcinoma biopsy guidance using forward-viewing endoscopic optical coherence tomography and deep learning.
Chen WangHaoyang CuiQinghao ZhangPaul CalleYuyang YanFeng YanKar-Ming FungSanjay G PatelZhongxin YuSean DuguayWilliam VanlandinghamAjay JainChongle PanQinggong TangPublished in: Communications engineering (2024)
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.
Keyphrases
- convolutional neural network
- deep learning
- ultrasound guided
- fine needle aspiration
- optical coherence tomography
- high resolution
- minimally invasive
- artificial intelligence
- gene expression
- endothelial cells
- young adults
- high throughput
- magnetic resonance
- diabetic retinopathy
- squamous cell carcinoma
- living cells
- photodynamic therapy
- quantum dots
- radiofrequency ablation
- fluorescence imaging