论文标题
深度学习的全息极化显微镜
Deep learning-based holographic polarization microscopy
论文作者
论文摘要
偏振光显微镜与双重试样可高度鲜明对比,并广泛用作病理学的诊断工具。但是,极化显微镜系统通常是通过分析从不同极化状态下的两个或多个光路的图像来运行的,这会导致相对复杂的光学设计,高系统成本或经验丰富的技术人员。在这里,我们提出了一个基于深度学习的全息极化显微镜,该显微镜能够从相恢复的全息图中获得标本的定量双发性延迟和样品的定向信息,而只需要将一个偏振器/分析仪对添加到现有的全息图像系统中。使用深层神经网络,可以将来自单个极化状态的重建全息图像转换为相当于使用单次计算偏振光显微镜(SCPLM)捕获的图像。我们的分析表明,受过训练的深神经网络可以使用样本特定的形态特征以及全息幅度和相位分布提取双折射信息。为了证明这种方法的疗效,我们通过成像各种双折射样品(包括例如单钠(MSU)(MSU)和Triamcinolone乙酰酮(TCA)晶体)对其进行了测试。我们的方法在定性和定量上都取得了与SCPLM相似的结果,并且由于其更简单的光学设计且视野明显更大,该方法具有扩展对极化显微镜的访问及其在资源有限设置中用于医学诊断的访问。
Polarized light microscopy provides high contrast to birefringent specimen and is widely used as a diagnostic tool in pathology. However, polarization microscopy systems typically operate by analyzing images collected from two or more light paths in different states of polarization, which lead to relatively complex optical designs, high system costs or experienced technicians being required. Here, we present a deep learning-based holographic polarization microscope that is capable of obtaining quantitative birefringence retardance and orientation information of specimen from a phase recovered hologram, while only requiring the addition of one polarizer/analyzer pair to an existing holographic imaging system. Using a deep neural network, the reconstructed holographic images from a single state of polarization can be transformed into images equivalent to those captured using a single-shot computational polarized light microscope (SCPLM). Our analysis shows that a trained deep neural network can extract the birefringence information using both the sample specific morphological features as well as the holographic amplitude and phase distribution. To demonstrate the efficacy of this method, we tested it by imaging various birefringent samples including e.g., monosodium urate (MSU) and triamcinolone acetonide (TCA) crystals. Our method achieves similar results to SCPLM both qualitatively and quantitatively, and due to its simpler optical design and significantly larger field-of-view, this method has the potential to expand the access to polarization microscopy and its use for medical diagnosis in resource limited settings.