3D pathology

  • 文章类型: Journal Article
    目的:机化性肺炎(OP)的病理诊断依赖于传统的组织病理学分析,这包括检查染色的组织薄片。然而,由于组织采样率较低,这种方法通常导致诊断客观性欠佳.本研究旨在评估组织清除和浸润增强的3D空间成像技术对阐明OP的组织结构的功效。
    方法:H&E染色,三维成像技术,和人工智能辅助分析被用来促进多维组织结构的构建使用六个OP患者标本从台中退伍军人总医院采购,能够进行全面的形态学评估。
    结果:标本经H&E染色,显示Masson体和不同程度的间质纤维化。此外,我们通过深入的病理学分析,对重建的肺组织学的3D图像进行了全面的研究,并在OP标本的不同深度发现了纤维化和Masson体的异质分布。
    结论:将OP的3D成像与AI辅助分析相结合,可以显着增强复杂的组织学肺部疾病如OP的可视化和描绘。传统组织病理学与新型3D成像的协同应用阐明了OP的复杂空间配置,揭示了Masson体和间质纤维化的存在。这种方法超越了传统的病理学限制,为提高检测精度的先进算法方法铺平了道路。分类,和肺部病变的临床管理。
    OBJECTIVE: The pathological diagnosis of organizing pneumonia (OP) relies on conventional traditional histopathological analysis, which involves examining stained thin slices of tissue. However, this method often results in suboptimal diagnostic objectivity due to low tissue sampling rates. This study aimed to assess the efficacy of tissue-clearing and infiltration-enhanced 3D spatial imaging techniques for elucidating the tissue architecture of OP.
    METHODS: H&E staining, 3D imaging technology, and AI-assisted analysis were employed to facilitate the construction of a multidimensional tissue architecture using six OP patient specimens procured from Taichung Veterans General Hospital, enabling a comprehensive morphological assessment.
    RESULTS: Specimens underwent H&E staining and exhibited Masson bodies and varying degrees of interstitial fibrosis. Furthermore, we conducted a comprehensive study of 3D images of the pulmonary histology reconstructed through an in-depth pathology analysis, and uncovered heterogenous distributions of fibrosis and Masson bodies across different depths of the OP specimens.
    CONCLUSIONS: Integrating 3D imaging for OP with AI-assisted analysis permits a substantially enhanced visualization and delineation of complex histological pulmonary disorders such as OP. The synergistic application of conventional histopathology with novel 3D imaging elucidated the sophisticated spatial configuration of OP, revealing the presence of Masson bodies and interstitial fibrosis. This methodology transcends conventional pathology constraints and paves the way for advanced algorithmic approaches to enhance precision in the detection, classification, and clinical management of lung pathologies.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    突变在健康个体的组织中大量存在,包括乳腺上皮.然而,目前尚不清楚突变细胞是否直接诱导病变形成或首次扩散,导致突变细胞的领域倾向于病变形成。研究癌前病变附近形态正常的乳腺上皮之间的克隆和空间关系,我们开发了一个三维(3D)成像管道与空间分辨基因组学相结合的档案,福尔马林固定的乳腺组织与非专性乳腺癌前体导管原位癌(DCIS)。使用这种3D图像引导的表征方法,我们建立了DCIS病变和周围正常乳腺导管内DNA拷贝数畸变(CNA)谱的高分辨率空间图.我们表明DCIS病变内的局部异质性是有限的。然而,通过将CNA轮廓映射回3D重建的导管子树,我们发现16例中有8例与DCIS病变相邻的健康上皮与DCIS的CNA谱有重叠的结构变异.一起,我们的研究表明,在形态正常的导管的突变克隆区域内,癌前乳腺转化经常发生。©2024作者由JohnWiley&SonsLtd代表英国和爱尔兰病理学会出版的病理学杂志。
    Mutations are abundantly present in tissues of healthy individuals, including the breast epithelium. Yet it remains unknown whether mutant cells directly induce lesion formation or first spread, leading to a field of mutant cells that is predisposed towards lesion formation. To study the clonal and spatial relationships between morphologically normal breast epithelium adjacent to pre-cancerous lesions, we developed a three-dimensional (3D) imaging pipeline combined with spatially resolved genomics on archival, formalin-fixed breast tissue with the non-obligate breast cancer precursor ductal carcinoma in situ (DCIS). Using this 3D image-guided characterization method, we built high-resolution spatial maps of DNA copy number aberration (CNA) profiles within the DCIS lesion and the surrounding normal mammary ducts. We show that the local heterogeneity within a DCIS lesion is limited. However, by mapping the CNA profiles back onto the 3D reconstructed ductal subtree, we find that in eight out of 16 cases the healthy epithelium adjacent to the DCIS lesions has overlapping structural variations with the CNA profile of the DCIS. Together, our study indicates that pre-malignant breast transformations frequently develop within mutant clonal fields of morphologically normal-looking ducts. © 2024 The Authors. The Journal of Pathology published by John Wiley & Sons Ltd on behalf of The Pathological Society of Great Britain and Ireland.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    人体组织,本质上是三维的(3D),传统上通过标准护理组织病理学检查,作为有限的二维(2D)横截面,由于采样偏差,该横截面不能充分代表组织。为了全面表征组织形态学,已经开发了3D成像模式,但是临床翻译受到复杂的人工评估和缺乏计算平台的阻碍,高分辨率数据集。我们介绍TriPath,用于处理组织体积并基于3D形态学特征有效预测临床结果的深度学习平台。在用开放式光片显微镜或显微计算机断层扫描成像的前列腺癌标本上训练复发风险分层模型。通过全面捕捉3D形态,基于3D体积的预测实现了优于传统的基于2D切片的方法的性能,包括来自六位经认证的泌尿生殖道病理学家的临床/组织病理学基线。合并更大的组织体积可提高预后性能,并减轻采样偏差带来的风险预测变异性,进一步强调了捕获更大范围的异质形态的价值。
    Human tissue, which is inherently three-dimensional (3D), is traditionally examined through standard-of-care histopathology as limited two-dimensional (2D) cross-sections that can insufficiently represent the tissue due to sampling bias. To holistically characterize histomorphology, 3D imaging modalities have been developed, but clinical translation is hampered by complex manual evaluation and lack of computational platforms to distill clinical insights from large, high-resolution datasets. We present TriPath, a deep-learning platform for processing tissue volumes and efficiently predicting clinical outcomes based on 3D morphological features. Recurrence risk-stratification models were trained on prostate cancer specimens imaged with open-top light-sheet microscopy or microcomputed tomography. By comprehensively capturing 3D morphologies, 3D volume-based prognostication achieves superior performance to traditional 2D slice-based approaches, including clinical/histopathological baselines from six certified genitourinary pathologists. Incorporating greater tissue volume improves prognostic performance and mitigates risk prediction variability from sampling bias, further emphasizing the value of capturing larger extents of heterogeneous morphology.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    基于三维(3D)光学显微镜的无损病理学有望通过以高通量方式提供细胞信息来补充传统的破坏性苏木精和伊红(H&E)染色的基于载玻片的病理学。然而,传统技术仅由于浅层成像深度而提供浅层信息。在这里,我们开发了用于术中3D病理的开放式双光子光片显微镜(OT-TP-LSM)。通过扫描非衍射贝塞尔光束,产生了扩展的景深双光子激发光片,在组织标本的横向平移过程中,用摄像机以最大400帧/s的速度进行选择性平面成像。收集固有二次谐波产生用于额外的细胞外基质(ECM)可视化。OT-TP-LSM在包括皮肤在内的各种人类癌症标本中进行了测试,胰腺,还有前列腺.由于长激发波长和长波长荧光团,可以实现高成像深度。细胞和ECM的3D可视化增强了癌症检测的能力。此外,采用无监督的深度学习网络将OT-TP-LSM图像样式转换为虚拟H&E图像。虚拟H&E图像表现出与真实图像相当的组织学特征。OT-TP-LSM可能通过快速提供3D信息而在手术和活检应用中具有组织病理学检查的潜力。
    Nondestructive pathology based on three-dimensional (3D) optical microscopy holds promise as a complement to traditional destructive hematoxylin and eosin (H&E) stained slide-based pathology by providing cellular information in high throughput manner. However, conventional techniques provided superficial information only due to shallow imaging depths. Herein, we developed open-top two-photon light sheet microscopy (OT-TP-LSM) for intraoperative 3D pathology. An extended depth of field two-photon excitation light sheet was generated by scanning a nondiffractive Bessel beam, and selective planar imaging was conducted with cameras at 400 frames/s max during the lateral translation of tissue specimens. Intrinsic second harmonic generation was collected for additional extracellular matrix (ECM) visualization. OT-TP-LSM was tested in various human cancer specimens including skin, pancreas, and prostate. High imaging depths were achieved owing to long excitation wavelengths and long wavelength fluorophores. 3D visualization of both cells and ECM enhanced the ability of cancer detection. Furthermore, an unsupervised deep learning network was employed for the style transfer of OT-TP-LSM images to virtual H&E images. The virtual H&E images exhibited comparable histological characteristics to real ones. OT-TP-LSM may have the potential for histopathological examination in surgical and biopsy applications by rapidly providing 3D information.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    前列腺癌(PCa)的预后很大程度上依赖于在显微镜下对一些薄切片的活检标本进行视觉评估,以分配格里森等级组(GG)。不幸的是,分配的GG并不总是与患者的结果相关,部分是由于二维组织病理学对空间异质性肿瘤的采样有限。在这项研究中,使用开顶光片(OTLS)显微镜来获得由四位人类读者评估的3D病理学数据集。通过要求读者对每次活检进行5个不同水平的Gleason分级,总共进行20个核心针活检(即,总共100张图像)。活检内变异性(Cohen'skappa)计算为每个活检内个体水平之间GG最差的成对一致性,四位病理学家分别为0.34、0.34、0.38和0.43。这些初步结果表明,即使在直径为1毫米的针芯内,基于2D图像的GG可以根据被分析的活检内的位置而显著变化。我们认为,3D整体活检的形态学评估有可能实现更可靠和一致的肿瘤分级。
    Prostate cancer prognostication largely relies on visual assessment of a few thinly sectioned biopsy specimens under a microscope to assign a Gleason grade group (GG). Unfortunately, the assigned GG is not always associated with a patient\'s outcome in part because of the limited sampling of spatially heterogeneous tumors achieved by 2-dimensional histopathology. In this study, open-top light-sheet microscopy was used to obtain 3-dimensional pathology data sets that were assessed by 4 human readers. Intrabiopsy variability was assessed by asking readers to perform Gleason grading of 5 different levels per biopsy for a total of 20 core needle biopsies (ie, 100 total images). Intrabiopsy variability (Cohen κ) was calculated as the worst pairwise agreement in GG between individual levels within each biopsy and found to be 0.34, 0.34, 0.38, and 0.43 for the 4 pathologists. These preliminary results reveal that even within a 1-mm-diameter needle core, GG based on 2-dimensional images can vary dramatically depending on the location within a biopsy being analyzed. We believe that morphologic assessment of whole biopsies in 3 dimension has the potential to enable more reliable and consistent tumor grading.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    通过评估内镜监测活检早期发现食管肿瘤是最大限度提高Barrett食管患者生存率的关键。但受到常规基于载玻片的组织病理学的采样限制的阻碍。用3D病理学对整个活检进行综合评估可以改善恶性肿瘤的早期发现。但是大型3D病理学数据集对病理学家来说是乏味的。在这里,我们提出了一种基于深度学习的方法,可以自动识别3D病理数据集中最关键的2D图像部分,以供病理学家进行审查。我们的方法首先为每个活检生成肿瘤风险的3D热图,然后按照肿瘤风险的顺序对3D数据集中的所有2D图像部分进行分类。在一项临床验证研究中,我们诊断食管活检与AI-trimed3D病理学(每个活检3张图像)与基于标准载玻片的组织病理学(每个活检16张图像),并表明我们的方法提高了检测灵敏度,同时减少了病理学家的工作量。
    Early detection of esophageal neoplasia via evaluation of endoscopic surveillance biopsies is the key to maximizing survival for patients with Barrett\'s esophagus, but it is hampered by the sampling limitations of conventional slide-based histopathology. Comprehensive evaluation of whole biopsies with 3-dimensional (3D) pathology may improve early detection of malignancies, but large 3D pathology data sets are tedious for pathologists to analyze. Here, we present a deep learning-based method to automatically identify the most critical 2-dimensional (2D) image sections within 3D pathology data sets for pathologists to review. Our method first generates a 3D heatmap of neoplastic risk for each biopsy, then classifies all 2D image sections within the 3D data set in order of neoplastic risk. In a clinical validation study, we diagnose esophageal biopsies with artificial intelligence-triaged 3D pathology (3 images per biopsy) vs standard slide-based histopathology (16 images per biopsy) and show that our method improves detection sensitivity while reducing pathologist workloads.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    狼疮性肾炎(LN)是小儿发作的系统性红斑狼疮(pSLE)的常见和严重表现。它是pSLE长期使用糖皮质激素/免疫抑制剂的主要原因之一。它会导致长期使用糖皮质激素/免疫抑制剂,甚至导致pSLE的终末期肾病(ESRD)。现在众所周知,高慢性,尤其是肾活检中的肾小管间质成分,预测肾脏预后不良。间质性炎症(II),LN病理学活动的一个组成部分,可以作为肾脏结局的早期预测指标。随着3D病理学和CD19靶向CAR-T细胞疗法在2020年代的出现,本研究集中在II中详细的病理学和B细胞表达。我们招募了48例III/IV级LN的pSLE患者,根据不同的II评分分析ESRD的风险。我们还研究了II评分高但慢性低的患者的CD3,19,20和138的3D肾脏病理学和免疫荧光(IF)染色。那些II评分为2或3的pSLELN患者比II评分为0或1的患者表现出更高的ESRD风险(p=0.003)。排除慢性>3的患者,高II评分仍然具有较高的ESRD风险(p=0.005)。检查来自不同深度的肾脏样本的平均分数,II,和慢性性在3D和2D病理学之间显示出良好的一致性(类间相关系数[ICC],II=0.91,p=0.0015;慢性=0.86,p=0.024)。然而,肾小管萎缩加间质纤维化的总和未显示良好的一致性(ICC=0.79,p=0.071).所选择的CD19/20IF染色阴性的LN患者显示分散的CD3浸润和Syndecan-1表达的不同IF模式。我们的研究提供了LN的独特数据,包括LN患者的3D病理学和不同的原位Syndecan-1模式。
    Lupus nephritis (LN) is a common and severe manifestation of pediatric-onset systemic lupus erythematosus (pSLE). It is one of the major causes of long-term glucocorticoid/immune suppressants use in pSLE. It causes long-term glucocorticoid/immune suppressants use and even end-stage renal disease (ESRD) in pSLE. It is now well known that high chronicity, especially the tubulointerstitial components in the renal biopsy, predicts a poor renal outcome. Interstitial inflammation (II), a component of activity in LN pathology, can be an early predictor for the renal outcome. With the advent of 3D pathology and CD19-targeted CAR-T cell therapy in the 2020s, the present study focuses on detailed pathology and B cell expression in II. We recruited 48 pSLE patients with class III/IV LN to analyze the risk of ESRD based on different II scores. We also studied 3D renal pathology and immunofluorescence (IF) staining of CD3, 19, 20, and 138 in patients with a high II score but low chronicity. Those pSLE LN patients with II scores of 2 or 3 showed a higher risk for ESRD (p = 0.003) than those with II scores of 0 or 1. Excluding patients with chronicity >3, high II scores still carried a higher risk for ESRD (p = 0.005). Checking the average scores from the renal specimens from different depths, the II, and chronicity showed good consistency between 3D and 2D pathology (interclass correlation coefficient [ICC], II = 0.91, p = 0.0015; chronicity = 0.86, p = 0.024). However, the sum of tubular atrophy plus interstitial fibrosis showed no good consistency (ICC = 0.79, p = 0.071). The selected LN patients with negative CD19/20 IF stains showed scattered CD3 infiltration and a different IF pattern of Syndecan-1 expression. Our study provides unique data in LN, including 3D pathology and different in situ Syndecan-1 patterns in LN patients.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    对整个大脑成像是生物光子学的中心工作之一。虽然在放射学中使用的已建立的成像模式,比如MRI和CT,已经实现了各种认知和情感过程的体内研究,一立方毫米的普遍分辨率限制了它们在研究神经元活动的“真相”中的使用。另一方面,电子显微镜(EM)在30nm左右的分辨率下显示最精细的解剖结构。然而,广泛的组织制备过程和所需的大规模形态学重建限制了这种方法的小样品体积。光学显微镜(LM)具有桥接上述两个空间尺度的潜力,分辨率从几百纳米到几微米不等。组织清除的最新进展为大型完整组织体积的光学研究铺平了道路。然而,这些LM研究中的大多数依赖于荧光-一种非线性光学过程来提供对比度。本章介绍了一种替代类型的LM,它仅基于线性光学过程-弹性散射,与传统的LM方法相比,在大规模生物系统的研究中具有一些独特的优势,比如完整的鼠脑.这里,我们将首先阐述开发这种基于散射的方法的背景和动机。然后,将介绍这种方法的基本原理,包括控制组织散射和相干成像。接下来,我们探讨当前的实施和实际考虑。还将展示最新结果和该方法的实用性。最后,我们讨论了这个有前途的领域的当前局限性和未来方向。
    Imaging whole brains is one of the central efforts of biophotonics. While the established imaging modalities used in radiology, such as MRI and CT, have enabled in vivo investigations of various cognitive and affective processes, the prevailing resolution of one-cubic-millimeter has limited their use in studying the \"ground-truth\" of neuronal activities. On the other hand, electron microscopy (EM) visualizes the finest anatomic structures at a resolution of around 30 nm. However, the extensive tissue preparation process and the required large-scale morphological reconstruction restrict this method to small sample volumes. Light microscopy (LM) has the potential to bridge the above two spatial scales, with a resolution ranging from a few hundred nanometers to a few micrometers. Recent advances in tissue clearing have paved the way for optical investigation of large intact tissue volumes. However, most of these LM studies rely on fluorescence-a nonlinear optical process to provide contrast. This chapter introduces an alternative type of LM that is solely based on a linear optical process-elastic scattering, which has some unique advantages over conventional LM methods for the investigation of large-scale biological systems, such as intact murine brains. Here, we will first lay out the background and the motivation of developing this scattering-based method. Then, the basic principle of this approach will be introduced, including controlling tissue scattering and coherent imaging. Next, we explore current implementation and practical considerations. Up-to-date results and the utility of this method will also be demonstrated. Finally, we discuss current limitations and future directions in this promising field.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    Although human anatomy and histology are naturally three-dimensional (3D), commonly used diagnostic and educational tools are technologically restricted to providing two-dimensional representations (e.g. gross photography and glass slides). This limitation may be overcome by employing techniques to acquire and display 3D data, which refers to the digital information used to describe a 3D object mathematically. There are several established and experimental strategies to capture macroscopic and microscopic 3D data. In addition, recent hardware and software innovations have propelled the visualization of 3D models, including virtual and augmented reality. Accompanying these advances are novel clinical and non-clinical applications of 3D data in pathology. Medical education and research stand to benefit a great deal from utilizing 3D data as it can change our understanding of complex anatomical and histological structures. Although these technologies are yet to be adopted in routine surgical pathology, forensic pathology has embraced 3D scanning and model reconstruction. In this review, we intend to provide a general overview of the technologies and emerging applications involved with 3D data.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    For cancer diagnoses, core biopsies (CBs) obtained from patients using coring needles (CNs) are traditionally visualized and assessed on microscope slides by pathologists after samples are processed and sectioned. A fundamental gain in optical information (i.e., diagnosis/staging) may be achieved when whole, unsectioned CBs (L = 5-20, D = 0.5-2.0 mm) are analyzed in 3D. This approach preserves CBs for traditional pathology and maximizes the diagnostic potential of patient samples. To bridge CNs/CBs with imaging, our group developed a microfluidic device that performs biospecimen preparation on unsectioned CBs for pathology. The ultimate goal is an automated and rapid point-of-care system that aids pathologists by processing tissue for advanced 3D imaging platforms. An inherent, but essential device feature is the microfluidic transport of CBs, which has not been previously investigated. Early experiments demonstrated proof-of-concept: pancreas CBs (D = 0.3-2.0 mm) of set lengths were transported in straight/curved microchannels, but dimensional tolerance and flow rates were variable, and preservation of CB integrity was uncontrolled. A second study used metal cylinder substitutes (L = 10, D = 1 mm) in microchannels to understand the transport mechanism. However, CBs are imperfectly shaped, rough, porous and viscoelastic. In this study, fresh/formalin-fixed porcine and human pancreas CBs were deposited into our device through a custom interface using clinical CNs. CB integrity (i.e., sample viability) may be assessed at every stage using an optomechanical metric: physical breaks were determined when specimen intensity profile data deviated beyond xavg + 2σ. Flow rates for human CBs were determined for several CNs, and microfluidic transport of fresh and formalin-fixed CBs was analyzed.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Sci-hub)

公众号