Microscopy, Phase-Contrast

显微镜,相位对比度
  • 文章类型: Journal Article
    无标记定量相位成像可以以最小的扰动潜在地测量细胞动力学,激励努力开发更快、更灵敏的仪器。我们描述快速,单次定量相位梯度显微镜(ss-QPGM),可同时获取重建相位图像所需的多个偏振分量。我们集成了一个计算高效的最小二乘算法来提供实时,视频速率成像(高达75帧/秒)。开发的仪器用于观察细胞形态的变化,并将其与通常通过染色获得的分子测量值相关联。
    我们旨在表征ss-QPGM的快速方法,并记录单细胞相位图像中的形态变化。我们还使用同时获得的荧光图像将这些与指示细胞死亡的生化变化相关联。
    这里,我们研究了两种不同的乳腺细胞系中营养剥夺和抗癌药物诱导的细胞死亡,viz.,M2和MCF7。我们的方法涉及对ss-QPGM进行在线测量,并对生化标记的细胞进行荧光成像。
    我们使用USAF1951模式相位目标验证了相位测量的准确性。ss-QPGM系统的分辨率为912.3lp/mm,并且我们的分析方案准确地检索到具有高相关系数(~0.99)的相位,通过校准样品厚度测量。分析阶段的对比度,我们估计该显微镜可实现的空间分辨率为0.55μm。ss-QPGM延时活细胞成像揭示了生物化学诱导的细胞死亡过程中的多种细胞内和形态学变化。来自定量相位和荧光的共配准图像的推断表明坏死的可能性,这与之前的发现一致。
    演示了具有高时间分辨率和高空间保真度的无标签ss-QPGM。它在监测活细胞动态变化方面的应用前景广阔。
    UNASSIGNED: Label-free quantitative phase imaging can potentially measure cellular dynamics with minimal perturbation, motivating efforts to develop faster and more sensitive instrumentation. We characterize fast, single-shot quantitative phase gradient microscopy (ss-QPGM) that simultaneously acquires multiple polarization components required to reconstruct phase images. We integrate a computationally efficient least squares algorithm to provide real-time, video-rate imaging (up to 75   frames / s ). The developed instrument was used to observe changes in cellular morphology and correlate these to molecular measures commonly obtained by staining.
    UNASSIGNED: We aim to characterize a fast approach to ss-QPGM and record morphological changes in single-cell phase images. We also correlate these with biochemical changes indicating cell death using concurrently acquired fluorescence images.
    UNASSIGNED: Here, we examine nutrient deprivation and anticancer drug-induced cell death in two different breast cell lines, viz., M2 and MCF7. Our approach involves in-line measurements of ss-QPGM and fluorescence imaging of the cells biochemically labeled for viability.
    UNASSIGNED: We validate the accuracy of the phase measurement using a USAF1951 pattern phase target. The ss-QPGM system resolves 912.3    lp / mm , and our analysis scheme accurately retrieves the phase with a high correlation coefficient ( ∼ 0.99 ), as measured by calibrated sample thicknesses. Analyzing the contrast in phase, we estimate the spatial resolution achievable to be 0.55    μ m for this microscope. ss-QPGM time-lapse live-cell imaging reveals multiple intracellular and morphological changes during biochemically induced cell death. Inferences from co-registered images of quantitative phase and fluorescence suggest the possibility of necrosis, which agrees with previous findings.
    UNASSIGNED: Label-free ss-QPGM with high-temporal resolution and high spatial fidelity is demonstrated. Its application for monitoring dynamic changes in live cells offers promising prospects.
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  • 文章类型: Journal Article
    星形胶质细胞是中枢神经系统中的糖酵解活性细胞,在从稳态到神经传递的各种脑过程中发挥关键作用。星形胶质细胞具有复杂的分支形态,经常用荧光显微镜检查。然而,染色和固定可能会影响星形胶质细胞的特性,从而影响星形胶质细胞动力学和形态学实验数据的准确性。另一方面,相差显微镜可用于研究星形胶质细胞的形态而不影响它们,但产生的低对比度图像的后处理是具有挑战性的。这项工作的主要结果是一种基于显微图像的机器学习识别的未染色星形胶质细胞的识别和形态分析的新方法。我们进行了一系列实验,涉及从大鼠大脑皮层中培养分离的星形胶质细胞,然后进行显微镜检查。使用所提出的方法,我们追踪了分支平均总长度的时间演变,分支,在我们的实验中每个星形胶质细胞的面积。我们相信,提出的方法和获得的实验数据将对细胞生物学的科学界感兴趣和有益,生物物理学,和机器学习。
    Astrocytes are glycolytically active cells in the central nervous system playing a crucial role in various brain processes from homeostasis to neurotransmission. Astrocytes possess a complex branched morphology, frequently examined by fluorescent microscopy. However, staining and fixation may impact the properties of astrocytes, thereby affecting the accuracy of the experimental data of astrocytes dynamics and morphology. On the other hand, phase contrast microscopy can be used to study astrocytes morphology without affecting them, but the post-processing of the resulting low-contrast images is challenging. The main result of this work is a novel approach for recognition and morphological analysis of unstained astrocytes based on machine-learning recognition of microscopic images. We conducted a series of experiments involving the cultivation of isolated astrocytes from the rat brain cortex followed by microscopy. Using the proposed approach, we tracked the temporal evolution of the average total length of branches, branching, and area per astrocyte in our experiments. We believe that the proposed approach and the obtained experimental data will be of interest and benefit to the scientific communities in cell biology, biophysics, and machine learning.
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  • 文章类型: Journal Article
    定量相位成像(QPI)已成为生物成像中的重要工具,提供波前畸变的精确测量,因此,关键的细胞代谢指标,如干质量和密度。然而,只有少数QPI应用在光学厚的标本中得到了证明,其中散射增加背景并降低对比度。基于结构照明干涉术的概念,我们引入了薄样品和厚样品的QPI的梯度延迟光学显微镜(GROM)。GROM通过将液晶延迟器集成到照明路径中,将任何标准的差分干涉对比度(DIC)显微镜转换为QPI平台,使DIC显微镜的剪切光束的独立相移。GROM大大简化了相关配置,降低成本,并消除并行成像模式中的能量损失,如荧光。我们成功地在各种各样的标本上测试了GROM,从微生物和红细胞到光学厚(〜300μm)的植物根,没有固定或清除。
    Quantitative phase imaging (QPI) has become a vital tool in bioimaging, offering precise measurements of wavefront distortion and, thus, of key cellular metabolism metrics, such as dry mass and density. However, only a few QPI applications have been demonstrated in optically thick specimens, where scattering increases background and reduces contrast. Building upon the concept of structured illumination interferometry, we introduce Gradient Retardance Optical Microscopy (GROM) for QPI of both thin and thick samples. GROM transforms any standard Differential Interference Contrast (DIC) microscope into a QPI platform by incorporating a liquid crystal retarder into the illumination path, enabling independent phase-shifting of the DIC microscope\'s sheared beams. GROM greatly simplifies related configurations, reduces costs, and eradicates energy losses in parallel imaging modalities, such as fluorescence. We successfully tested GROM on a diverse range of specimens, from microbes and red blood cells to optically thick (~ 300 μm) plant roots without fixation or clearing.
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  • 文章类型: Journal Article
    核糖体生物发生是在核仁中开始的,通过液-液相分离形成的多相生物分子缩合物。核仁是一种强大的疾病生物标志物和应激生物传感器,其形态反映了功能。在这里,我们使用了数字全息显微镜(DHM),一种无标签的定量相差显微镜技术,检测贴壁和悬浮人细胞中的核仁。我们训练卷积神经网络来自动检测和量化DHM图像上的核仁。包含细胞光学厚度信息的全息图使我们能够定义一种新的指数,我们使用该指数来区分其物质状态已被蓝光诱导的蛋白质聚集光遗传学调节的核仁。也可以区分其功能受到药物治疗或核糖体蛋白消耗影响的核仁。我们探索了该技术检测其他天然和病理冷凝物的潜力,例如在过表达亨廷顿突变形式时形成的那些,ataxin-3或TDP-43,以及其他细胞组件(脂滴)。我们得出的结论是,DHM是定量表征核仁和其他细胞组件的强大工具,包括他们的物质状态,没有任何染色。
    Ribosome biogenesis is initiated in the nucleolus, a multiphase biomolecular condensate formed by liquid-liquid phase separation. The nucleolus is a powerful disease biomarker and stress biosensor whose morphology reflects function. Here we have used digital holographic microscopy (DHM), a label-free quantitative phase contrast microscopy technique, to detect nucleoli in adherent and suspension human cells. We trained convolutional neural networks to detect and quantify nucleoli automatically on DHM images. Holograms containing cell optical thickness information allowed us to define a novel index which we used to distinguish nucleoli whose material state had been modulated optogenetically by blue-light-induced protein aggregation. Nucleoli whose function had been impacted by drug treatment or depletion of ribosomal proteins could also be distinguished. We explored the potential of the technology to detect other natural and pathological condensates, such as those formed upon overexpression of a mutant form of huntingtin, ataxin-3, or TDP-43, and also other cell assemblies (lipid droplets). We conclude that DHM is a powerful tool for quantitatively characterizing nucleoli and other cell assemblies, including their material state, without any staining.
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  • 文章类型: Journal Article
    全视场光学相干显微镜(FF-OCM)是一种用于背散射和具有外延检测的相位成像的流行技术。传统方法有两个局限性:关于样品的功能信息的次优利用和具有多个运动部件的复杂光学设计用于相衬。
    我们报告了一种能够产生动态强度的OCM设置,阶段,和伪光谱对比度与单发全场视频速率成像,称为双色四相(BiTe)全场OCM,没有移动部件。
    BiTeOCM在额定带宽之外资源地使用抗反射(AR)涂层的相移特性来创建四个独特的相移,用两个发射滤光片检测光谱对比度。
    BiTeOCM通过捕获强度和相位轮廓而没有任何伪影或斑点噪声,从而克服了先前FF-OCM设置技术的缺点,用于对三维(3D)中的散射样品进行成像。BiTeOCM还有效地利用原始数据来生成三个互补对比:强度,阶段,和颜色。我们展示了BiTeOCM来观察细胞动力学,图像生活,在3D中移动微型动物,捕获散射组织的光谱血液动力学以及动态强度和相位曲线,并用两种不同的颜色对秋叶的微观结构进行成像。
    BiTeOCM可以最大限度地提高FF-OCM的信息效率,同时保持定量设计的整体简单性,动态,和生物样品的光谱表征。
    UNASSIGNED: Full-field optical coherence microscopy (FF-OCM) is a prevalent technique for backscattering and phase imaging with epi-detection. Traditional methods have two limitations: suboptimal utilization of functional information about the sample and complicated optical design with several moving parts for phase contrast.
    UNASSIGNED: We report an OCM setup capable of generating dynamic intensity, phase, and pseudo-spectroscopic contrast with single-shot full-field video-rate imaging called bichromatic tetraphasic (BiTe) full-field OCM with no moving parts.
    UNASSIGNED: BiTe OCM resourcefully uses the phase-shifting properties of anti-reflection (AR) coatings outside the rated bandwidths to create four unique phase shifts, which are detected with two emission filters for spectroscopic contrast.
    UNASSIGNED: BiTe OCM overcomes the disadvantages of previous FF-OCM setup techniques by capturing both the intensity and phase profiles without any artifacts or speckle noise for imaging scattering samples in three-dimensional (3D). BiTe OCM also utilizes the raw data effectively to generate three complementary contrasts: intensity, phase, and color. We demonstrate BiTe OCM to observe cellular dynamics, image live, and moving micro-animals in 3D, capture the spectroscopic hemodynamics of scattering tissues along with dynamic intensity and phase profiles, and image the microstructure of fall foliage with two different colors.
    UNASSIGNED: BiTe OCM can maximize the information efficiency of FF-OCM while maintaining overall simplicity in design for quantitative, dynamic, and spectroscopic characterization of biological samples.
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  • 文章类型: Journal Article
    检测乳腺组织改变对于癌症诊断至关重要。然而,固有的二维限制了组织学程序识别这些变化的有效性。我们的研究应用了基于X射线相衬显微断层成像(PhCμCT)的3D虚拟组织学方法,在同步加速器设施执行,调查包括不同类型病变的乳腺组织样本,即导管内乳头状瘤,微乳头状囊内癌,和浸润性小叶癌.X射线和组织学图像的一对一比较探讨了3DX射线虚拟组织学的临床潜力。结果表明,PhCμCT技术具有较高的空间分辨率和软组织敏感性,虽然是非破坏性的,不需要专门的样品处理,并且与常规组织学兼容。PhCμCT可以增强基质组织等形态学特征的可视化,纤维血管核心,末端导管小叶单元,基质/上皮界面,基底膜,和脂肪细胞。尽管没有达到(亚)细胞水平,PhCμCT图像的三维性可以描述乳腺组织的深度变化,可能揭示单个组织学切片遗漏的病理相关细节。与连续切片相比,PhCμCT允许沿任何方向对样品体积进行虚拟调查,可能指导病理学家选择最合适的切割平面。总的来说,PhCμCT虚拟组织学作为增加传统组织学以提高效率的工具,具有很大的前景。可访问性,病理评价的诊断准确性。
    Detecting breast tissue alterations is essential for cancer diagnosis. However, inherent bidimensionality limits histological procedures\' effectiveness in identifying these changes. Our study applies a 3D virtual histology method based on X-ray phase-contrast microtomography (PhC μ CT), performed at a synchrotron facility, to investigate breast tissue samples including different types of lesions, namely intraductal papilloma, micropapillary intracystic carcinoma, and invasive lobular carcinoma. One-to-one comparisons of X-ray and histological images explore the clinical potential of 3D X-ray virtual histology. Results show that PhC μ CT technique provides high spatial resolution and soft tissue sensitivity, while being non-destructive, not requiring a dedicated sample processing and being compatible with conventional histology. PhC μ CT can enhance the visualization of morphological characteristics such as stromal tissue, fibrovascular core, terminal duct lobular unit, stromal/epithelium interface, basement membrane, and adipocytes. Despite not reaching the (sub) cellular level, the three-dimensionality of PhC μ CT images allows to depict in-depth alterations of the breast tissues, potentially revealing pathologically relevant details missed by a single histological section. Compared to serial sectioning, PhC μ CT allows the virtual investigation of the sample volume along any orientation, possibly guiding the pathologist in the choice of the most suitable cutting plane. Overall, PhC μ CT virtual histology holds great promise as a tool adding to conventional histology for improving efficiency, accessibility, and diagnostic accuracy of pathological evaluation.
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  • 文章类型: Journal Article
    自制造以来,进口,日本已经完全废除了石棉产品的使用,石棉排放到大气中的主要原因是拆除和拆除用含石棉材料建造的建筑物。及早发现和纠正不适当的拆除和清除作业所产生的石棉排放,需要一种快速的方法来测量大气中的石棉纤维。当前的快速测量方法是短期大气采样和相差显微镜计数的组合。然而,视觉计数需要相当长的时间并且不够快。使用人工智能(AI)分析显微镜图像以检测纤维可能会大大减少计数所需的时间。因此,在这项研究中,我们研究了使用AI图像分析来检测相差显微镜图像中的纤维。使用相差显微镜观察了由铁石棉和温石棉的标准样品制备的一系列模拟大气样品。图像被捕获,和培训数据集是根据专家分析师的计数结果创建的。我们采用了两种类型的人工智能模型——实例分割模型,即基于掩模区域的卷积神经网络(MaskR-CNN),和语义分割模型,即多级聚合网络(MA-Net)-经过训练可以检测石棉纤维。使用MaskR-CNN模型实现的光纤检测准确率为57%的召回率和46%的准确率,而MA-Net模型的召回准确率为95%,准确率为91%。因此,MA-Net模型得到了满意的结果。在两种AI模型中,光纤检测所需的时间均小于1s/图像,这比专家分析师计数所需的时间要快。
    Since the manufacture, import, and use of asbestos products have been completely abolished in Japan, the main cause of asbestos emissions into the atmosphere is the demolition and removal of buildings built with asbestos-containing materials. To detect and correct asbestos emissions from inappropriate demolition and removal operations at an early stage, a rapid method to measure atmospheric asbestos fibers is required. The current rapid measurement method is a combination of short-term atmospheric sampling and phase-contrast microscopy counting. However, visual counting takes a considerable amount of time and is not sufficiently fast. Using artificial intelligence (AI) to analyze microscope images to detect fibers may greatly reduce the time required for counting. Therefore, in this study, we investigated the use of AI image analysis for detecting fibers in phase-contrast microscope images. A series of simulated atmospheric samples prepared from standard samples of amosite and chrysotile were observed using a phase-contrast microscope. Images were captured, and training datasets were created from the counting results of expert analysts. We adopted 2 types of AI models-an instance segmentation model, namely the mask region-based convolutional neural network (Mask R-CNN), and a semantic segmentation model, namely the multi-level aggregation network (MA-Net)-that were trained to detect asbestos fibers. The accuracy of fiber detection achieved with the Mask R-CNN model was 57% for recall and 46% for precision, whereas the accuracy achieved with the MA-Net model was 95% for recall and 91% for precision. Therefore, satisfactory results were obtained with the MA-Net model. The time required for fiber detection was less than 1 s per image in both AI models, which was faster than the time required for counting by an expert analyst.
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  • 文章类型: Journal Article
    显微镜技术的成像深度受到光穿透生物组织的能力的限制。最近的研究通过将反射共聚焦显微镜与NIR-II(或短波红外)光谱相结合来解决这一限制。这种方法提供了显着的成像深度,在设计上很简单,并且仍然具有成本效益。然而,成像系统,依赖于内在信号,可以从其光学设计和后处理方法的调整中受益,以区分皮质细胞,如神经元和小血管。
    我们使用NIR-II光谱范围作为照明对反射共聚焦显微镜实施了相衬检测方案。
    我们在测试成像深度的同时分析了图像中检索到的特征。此外,我们介绍了一种从背景中区分动态信号的采集方法,允许创建类似于光学相干断层扫描生成的血管图。
    相衬实现成功地使用颅窗在皮质中检索高达800μm的深图像。在相似的皮质深度处检索血管图,并且组合多个图像的可能性可以提供血管网络。
    相衬反射共聚焦显微镜可以改善皮质细胞体的轮廓。在提出的框架下,血管造影图可以从生物组织中的动态信号检索。我们的工作提出了一种光学实现和分析技术从以前的显微镜设计。
    UNASSIGNED: The imaging depth of microscopy techniques is limited by the ability of light to penetrate biological tissue. Recent research has addressed this limitation by combining a reflectance confocal microscope with the NIR-II (or shortwave infrared) spectrum. This approach offers significant imaging depth, is straightforward in design, and remains cost-effective. However, the imaging system, which relies on intrinsic signals, could benefit from adjustments in its optical design and post-processing methods to differentiate cortical cells, such as neurons and small blood vessels.
    UNASSIGNED: We implemented a phase contrast detection scheme to a reflectance confocal microscope using NIR-II spectral range as illumination.
    UNASSIGNED: We analyzed the features retrieved in the images while testing the imaging depth. Moreover, we introduce an acquisition method for distinguishing dynamic signals from the background, allowing the creation of vascular maps similar to those produced by optical coherence tomography.
    UNASSIGNED: The phase contrast implementation is successful to retrieve deep images in the cortex up to 800  μm using a cranial window. Vascular maps were retrieved at similar cortical depth and the possibility of combining multiple images can provide a vessel network.
    UNASSIGNED: Phase contrast reflectance confocal microscopy can improve the outlining of cortical cell bodies. With the presented framework, angiograms can be retrieved from the dynamic signal in the biological tissue. Our work presents an optical implementation and analysis techniques from a former microscope design.
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  • 文章类型: Journal Article
    对人体中的细菌和其他病原体进行可靠的检测和分类,动物,食物,水对改善和保障公众健康至关重要。例如,确定物种及其抗生素敏感性对于有效的细菌感染治疗至关重要。在这里,我们表明相衬延时显微镜与深度学习相结合足以对与人类健康相关的四种细菌进行分类。分类是在活细菌上进行的,不需要固定或染色,这意味着可以将细菌物种确定为在微流体设备中繁殖的细菌,能够平行测定对抗生素的敏感性。我们评估卷积神经网络和视觉变压器的性能,其中最好的模型达到了超过98%的类平均准确率。我们成功的原理证明结果表明,该方法应受到涵盖更多物种和临床相关分离株的数据的挑战,以供将来临床使用。
    Reliable detection and classification of bacteria and other pathogens in the human body, animals, food, and water is crucial for improving and safeguarding public health. For instance, identifying the species and its antibiotic susceptibility is vital for effective bacterial infection treatment. Here we show that phase contrast time-lapse microscopy combined with deep learning is sufficient to classify four species of bacteria relevant to human health. The classification is performed on living bacteria and does not require fixation or staining, meaning that the bacterial species can be determined as the bacteria reproduce in a microfluidic device, enabling parallel determination of susceptibility to antibiotics. We assess the performance of convolutional neural networks and vision transformers, where the best model attained a class-average accuracy exceeding 98%. Our successful proof-of-principle results suggest that the methods should be challenged with data covering more species and clinically relevant isolates for future clinical use.
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  • 文章类型: Journal Article
    延时显微镜是唯一能够以高时间分辨率在单细胞水平上直接捕获基本细胞过程的动力学和异质性的方法。单细胞延时显微镜的成功应用需要在几个时间点自动分割和跟踪数百个单个细胞。然而,单细胞的分割和跟踪对于延时显微镜图像的分析仍然具有挑战性,特别是对于广泛可用且无毒的成像方式,例如相衬成像。这项工作提出了一种通用且可训练的深度学习模型,称为深海,这允许在比现有模型更高精度的相衬实时显微镜图像序列中分割和跟踪单细胞。我们通过分析胚胎干细胞中的细胞大小调节来展示DeepSea的应用。
    Time-lapse microscopy is the only method that can directly capture the dynamics and heterogeneity of fundamental cellular processes at the single-cell level with high temporal resolution. Successful application of single-cell time-lapse microscopy requires automated segmentation and tracking of hundreds of individual cells over several time points. However, segmentation and tracking of single cells remain challenging for the analysis of time-lapse microscopy images, in particular for widely available and non-toxic imaging modalities such as phase-contrast imaging. This work presents a versatile and trainable deep-learning model, termed DeepSea, that allows for both segmentation and tracking of single cells in sequences of phase-contrast live microscopy images with higher precision than existing models. We showcase the application of DeepSea by analyzing cell size regulation in embryonic stem cells.
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