Pan Moning, Wang Yuxing, Gong Peijun, Wang Qiang, Cense Barry
Key Laboratory for Biomedical Engineering of Ministry of Education, Embedded System Engineering Research Center of Ministry of Education and Zhejiang Provincial Key Laboratory for Network Multimedia Technologies, Zhejiang University, Hangzhou, 310027, China.
BRITElab, Harry Perkins Institute of Medical Research, QEII Medical Centre, Nedlands and Centre for Medical Research, The University of Western Australia, Perth, WA 6009, Australia.
Biomed Opt Express. 2023 Jul 5;14(8):3856-3870. doi: 10.1364/BOE.488822. eCollection 2023 Aug 1.
Polarization-sensitive optical coherence tomography (PS-OCT) measures the polarization states of the backscattered light from tissue that can improve angiography based on conventional optical coherence tomography (OCT). We present a feasibility study on PS-OCT integrated with deep learning for PS-OCT angiography (PS-OCTA) imaging of human cutaneous microvasculature. Two neural networks were assessed for PS-OCTA, including the residual dense network (RDN), which previously showed superior performance for angiography with conventional OCT and the upgraded grouped RDN (GRDN). We also investigated different protocols to process the multiple signal channels provided by the Jones matrices from the PS-OCT system to achieve optimal PS-OCTA performance. The training and testing of the deep learning-based PS-OCTA were performed using PS-OCT scans collected from 18 skin locations comprising 16,600 B-scan pairs. The results demonstrated a moderately improved performance of GRDN over RDN, and of the use of the combined signal from the Jones matrix elements over the separate use of the elements, as well as a similar image quality to that provided by speckle decorrelation angiography. GRDN-based PS-OCTA also showed ∼2-3 times faster processing and improved mitigation of tissue motion as compared to speckle decorrelation angiography, and enabled fully automatic processing. Deep learning-based PS-OCTA can be used for imaging cutaneous microvasculature, which may enable easy adoption of PS-OCTA for preclinical and clinical applications.
偏振敏感光学相干断层扫描(PS-OCT)可测量来自组织的后向散射光的偏振态,这能够改进基于传统光学相干断层扫描(OCT)的血管造影技术。我们开展了一项可行性研究,将PS-OCT与深度学习相结合,用于人体皮肤微血管的PS-OCT血管造影(PS-OCTA)成像。对用于PS-OCTA的两种神经网络进行了评估,包括残差密集网络(RDN),其先前在传统OCT血管造影中表现出卓越性能,以及升级后的分组RDN(GRDN)。我们还研究了不同的方案,以处理PS-OCT系统中琼斯矩阵提供的多个信号通道,从而实现最佳的PS-OCTA性能。基于深度学习的PS-OCTA的训练和测试使用了从18个皮肤部位采集的PS-OCT扫描数据,包括16,600对B扫描。结果表明,GRDN的性能比RDN略有提高,使用琼斯矩阵元素的组合信号比单独使用这些元素的性能更好,并且图像质量与散斑去相关血管造影提供的图像质量相似。与散斑去相关血管造影相比,基于GRDN的PS-OCTA的处理速度也快约2至3倍,并且能更好地减轻组织运动的影响,还实现了全自动处理。基于深度学习的PS-OCTA可用于皮肤微血管成像,这可能使PS-OCTA易于应用于临床前和临床应用。