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Real-time retinal layer segmentation of adaptive optics optical coherence tomography angiography with deep learning

机译:深度学习的自适应光学相干断层扫描血管造影实时视网膜层分割

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Real time rendering of en face optical coherence tomography (OCT) and OCT-angiography (OCTA) of arbitrary retinal layers in ophthalmic imaging sessions can be used to increase the yield rate of high-quality acquisitions, provide real-time feedback during image-guided surgeries and compensate aberrations in sensorless adaptive optics (AO) OCT and OCTA. However, real-time en face visualizations rely critically on the accurate segmentation of retinal layers in the three-dimensional OCT volumes. Here, we demonstrate a compact deep-learning architecture that segmented batches of OCT B-scans and produced the corresponding OCT and OCTA projections within only 41 ms. The short latency was possible due to a low complexity neural network structure, CNN compression using TensorRT, and the use of Tensor Cores on GPU hardware to accelerate the computation of convolutions. Inferencing of the original U-net was accelerated by 21 times without reducing the accuracy. 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:眼科成像会议中任意视网膜层的实时光学相干断层扫描(OCT)和OCT血管造影(OCTA)实时渲染可用于提高高质量采集的合格率,在图像引导期间提供实时反馈无传感器自适应光学(AO)OCT和OCTA中的手术和补偿像差。然而,实时面部可视化严重依赖于三维OCT体积中视网膜层的准确分割。在这里,我们展示了一种紧凑的深度学习体系结构,该体系结构将OCT B扫描的批次进行了细分,并在41毫秒内生成了相应的OCT和OCTA投影。由于低复杂度的神经网络结构,使用TensorRT进行CNN压缩以及在GPU硬件上使用Tensor Core来加速卷积计算,因此可能会导致较短的延迟。在不降低准确性的情况下,原始U-net的推理速度提高了21倍。据我们所知,我们的工作是首次演示具有嵌入式人工智能(AI)的眼科成像仪,该实时成像可提供实时反馈。

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