Tijue Wang, Jakob Dremel, Sven Richter, Witold Polanski, Ortrud Uckermann, Ilker Eyüpoglu, Jürgen W. Czarske, Robert Kuschmierz
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引用次数: 0
Abstract
SignificanceDeep learning enables label-free all-optical biopsies and automated tissue classification. Endoscopic systems provide intraoperative diagnostics to deep tissue and speed up treatment without harmful tissue removal. However, conventional multi-core fiber (MCF) endoscopes suffer from low resolution and artifacts, which hinder tumor diagnostics.AimWe introduce a method to enable unpixelated, high-resolution tumor imaging through a given MCF with a diameter of around 0.65 mm and arbitrary core arrangement and inhomogeneous transmissivity.ApproachImage reconstruction is based on deep learning and the digital twin concept of the single-reference-based simulation with inhomogeneous optical properties of MCF and transfer learning on a small experimental dataset of biological tissue. The reference provided physical information about the MCF during the training processes.ResultsFor the simulated data, hallucination caused by the MCF inhomogeneity was eliminated, and the averaged peak signal-to-noise ratio and structural similarity were increased from 11.2 dB and 0.20 to 23.4 dB and 0.74, respectively. By transfer learning, the metrics of independent test images experimentally acquired on glioblastoma tissue ex vivo can reach up to 31.6 dB and 0.97 with 14 fps computing speed.ConclusionsWith the proposed approach, a single reference image was required in the pre-training stage and laborious acquisition of training data was bypassed. Validation on glioblastoma cryosections with transfer learning on only 50 image pairs showed the capability for high-resolution deep tissue retrieval and high clinical feasibility.
意义深度学习可实现无标记全光学活检和自动组织分类。内窥镜系统可对深层组织进行术中诊断,并在不切除有害组织的情况下加快治疗速度。AimWe introduce a method to enable unpixelated, high-resolution tumor imaging through a given MCF with a diameter of around 0.65 mm and arbitrary core arrangement and inhomogeneous transmissivity.ApproachImage reconstruction is based on deep learning and the digital twin concept of the single-reference-based simulation with inhomogeneous optical properties of MCF and transfer learning on a small experimental dataset of biological tissue.ApproachImage reconstruction是基于深度学习和数字孪生概念,在生物组织的小型实验数据集上模拟 MCF 的不均匀光学特性和迁移学习。结果在模拟数据中,消除了 MCF 不均匀性引起的幻觉,平均峰值信噪比和结构相似度分别从 11.2 dB 和 0.20 提高到 23.4 dB 和 0.74。通过迁移学习,以 14 fps 的计算速度,在活体胶质母细胞瘤组织上实验获得的独立测试图像的指标可分别达到 31.6 dB 和 0.97。通过对 50 对图像进行迁移学习,在胶质母细胞瘤冷冻切片上进行了验证,结果表明该方法具有高分辨率深层组织检索能力和较高的临床可行性。
期刊介绍:
At the interface of optics and neuroscience, Neurophotonics is a peer-reviewed journal that covers advances in optical technology applicable to study of the brain and their impact on the basic and clinical neuroscience applications.