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Deep learning of tissue specific speckle representations in optical coherence tomography and deeper exploration for in situ histology

机译:光学相干断层扫描中对组织特定斑点表示的深度学习和对原位组织学的更深入探索

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Optical coherence tomography (OCT) relies on speckle image formation by coherent sensing of photons diffracted from a broadband laser source incident on tissues. Its non-ionizing nature and tissue specific speckle appearance has leveraged rapid clinical translation for non-invasive high-resolution in situ imaging of critical organs and tissue viz. coronary vessels, healing wounds, retina and choroid. However the stochastic nature of speckles introduces inter- and intra-observer reporting variability challenges. This paper proposes a deep neural network (DNN) based architecture for unsupervised learning of speckle representations in swept-source OCT using denoising auto-encoders (DAE) and supervised learning of tissue specifics using stacked DAEs for histologically characterizing healthy skin and healing wounds with the aim of reducing clinical reporting variability. Performance of our deep learning based tissue characterization method in comparison with conventional histology of healthy and wounded mice skin strongly advocates its use for in situ histology of live tissues.
机译:光学相干断层扫描(OCT)依赖于散斑图像的形成,该图像是通过对入射在组织上的宽带激光源衍射的光子进行相干传感而形成的。它的非电离性质和组织特定的斑点外观已利用快速的临床翻译技术对关键器官和组织进行了非侵入性的高分辨率原位成像,即。冠状血管,愈合伤口,视网膜和脉络膜。然而,散斑的随机性引入了观察者间和观察者内报告变异性的挑战。本文提出了一种基于深度神经网络(DNN)的架构,用于使用去噪自动编码器(DAE)对扫频源OCT中的斑点表示进行非监督学习,并使用堆叠式DAE对组织细节进行监督学习,以组织学表征健康的皮肤和愈合伤口。目的是减少临床报告变异性。与健康和受伤小鼠皮肤的常规组织学相比,我们基于深度学习的组织表征方法的性能强烈提倡将其用于活组织的原位组织学。

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