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Real-time retinal layer segmentation of OCT volumes with GPU accelerated inferencing using a compressed low-latency neural network

机译:10月的Real-Time视网膜分段与GPU加速推断使用压缩低延迟神经网络的推动

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摘要

Segmentation of retinal layers in optical coherence tomography (OCT) is an essential step in OCT image analysis for screening, diagnosis, and assessment of retinal disease progression. Real-time segmentation together with high-speed OCT volume acquisition allows rendering of en face OCT of arbitrary retinal layers, which can be used to increase the yield rate of high-quality scans, provide real-time feedback during image-guided surgeries, and compensate aberrations in adaptive optics (AO) OCT without using wavefront sensors. We demonstrate here unprecedented real-time OCT segmentation of eight retinal layer boundaries achieved by 3 levels of optimization: 1) a modified, low complexity, neural network structure, 2) an innovative scheme of neural network compression with TensorRT, and 3) specialized GPU hardware to accelerate computation. Inferencing with the compressed network U-NetRT took 3.5 ms, improving by 21 times the speed of conventional U-Net inference without reducing the accuracy. The latency of the entire pipeline from data acquisition to inferencing was only 41 ms, enabled by parallelized batch processing. The system and method allow real-time updating of en face OCT and OCTA visualizations of arbitrary retinal layers and plexuses in continuous mode scanning. To the best our knowledge, our work is the first demonstration of an ophthalmic imager with embedded artificial intelligence (AI) providing real-time feedback.
机译:光学相干断层扫描(OCT)中视网膜层的分割是筛选,诊断和视网膜疾病进展的筛选,诊断和评估的重要步骤。实时分割与高速OCT体积采集一起允许ZH面部OCT的任意视网膜层,可用于提高高质量扫描的产量率,在图像引导的手术期间提供实时反馈,以及在不使用波前传感器的情况下补偿自适应光学(AO)OCT中的像差。我们在这里展示了通过3级优化级别实现的八个视网膜层边界的前所未有的实时分割:1)修改,低复杂性,神经网络结构,2)具有规图的神经网络压缩的创新方案,以及3)专业的GPU硬件加速计算。使用压缩网络U-NetRT推动3.5毫秒,通过传统U-Net推理的速度提高21倍而不降低精度。通过数据采集到推理的整个流水线的延迟仅为41毫秒,通过并行批处理启用。系统和方法允许在连续模式扫描中实时更新OCT和Octa可视化的任意视网膜层和曲折。为了最好的知识,我们的作品是具有嵌入式人工智能(AI)的眼科成像仪提供实时反馈的首次演示。

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