Quantifying Nuclear Structures of Digital Pathology Images Across Cancers Using Transport-Based Morphometry.

IF 2.5 4区 生物学 Q3 BIOCHEMICAL RESEARCH METHODS Cytometry Part A Pub Date : 2025-02-21 DOI:10.1002/cyto.a.24917
Mohammad Shifat-E-Rabbi, Natasha Ironside, Naqib Sad Pathan, John A Ozolek, Rajendra Singh, Liron Pantanowitz, Gustavo K Rohde
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Abstract

Alterations in nuclear morphology are useful adjuncts and even diagnostic tools used by pathologists in the diagnosis and grading of many tumors, particularly malignant tumors. Large datasets such as TCGA and the Human Protein Atlas, in combination with emerging machine learning and statistical modeling methods, such as feature extraction and deep learning techniques, can be used to extract meaningful knowledge from images of nuclei, particularly from cancerous tumors. Here, we describe a new technique based on the mathematics of optimal transport for modeling the information content related to nuclear chromatin structure directly from imaging data. In contrast to other techniques, our method represents the entire information content of each nucleus relative to a template nucleus using a transport-based morphometry (TBM) framework. We demonstrate that the model is robust to different staining patterns and imaging protocols, and can be used to discover meaningful and interpretable information within and across datasets and cancer types. In particular, we demonstrate morphological differences capable of distinguishing nuclear features along the spectrum from benign to malignant categories of tumors across different cancer tissue types, including tumors derived from liver parenchyma, thyroid gland, lung mesothelium, and skin epithelium. We believe these proof-of-concept calculations demonstrate that the TBM framework can provide the quantitative measurements necessary for performing meaningful comparisons across a wide range of datasets and cancer types that can potentially enable numerous cancer studies, technologies, and clinical applications and help elevate the role of nuclear morphometry into a more quantitative science.

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核形态的改变是病理学家在诊断和分级许多肿瘤,尤其是恶性肿瘤时使用的有用辅助工具,甚至是诊断工具。TCGA和人类蛋白质图谱等大型数据集与新兴的机器学习和统计建模方法(如特征提取和深度学习技术)相结合,可用于从细胞核图像中提取有意义的知识,尤其是从癌症肿瘤中提取。在此,我们介绍一种基于最优传输数学的新技术,可直接从成像数据中提取与核染色质结构相关的信息内容建模。与其他技术不同的是,我们的方法使用基于输运的形态测量(TBM)框架来表示每个核相对于模板核的全部信息内容。我们证明了该模型对不同染色模式和成像方案的鲁棒性,可用于发现数据集和癌症类型内部和之间有意义且可解释的信息。特别是,我们证明了形态学差异能够区分不同癌症组织类型从良性到恶性肿瘤的核特征,包括来自肝实质、甲状腺、肺间皮细胞和皮肤上皮细胞的肿瘤。我们相信,这些概念验证计算表明,TBM 框架可以提供必要的定量测量,以便在广泛的数据集和癌症类型中进行有意义的比较,从而有可能促进众多癌症研究、技术和临床应用,并有助于将核形态测量的作用提升为一门更加定量的科学。
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来源期刊
Cytometry Part A
Cytometry Part A 生物-生化研究方法
CiteScore
8.10
自引率
13.50%
发文量
183
审稿时长
4-8 weeks
期刊介绍: Cytometry Part A, the journal of quantitative single-cell analysis, features original research reports and reviews of innovative scientific studies employing quantitative single-cell measurement, separation, manipulation, and modeling techniques, as well as original articles on mechanisms of molecular and cellular functions obtained by cytometry techniques. The journal welcomes submissions from multiple research fields that fully embrace the study of the cytome: Biomedical Instrumentation Engineering Biophotonics Bioinformatics Cell Biology Computational Biology Data Science Immunology Parasitology Microbiology Neuroscience Cancer Stem Cells Tissue Regeneration.
期刊最新文献
A User-Centric Approach to Reliable Automated Flow Cytometry Data Analysis for Biomedical Applications. Investigating T-Cell Receptor Dynamics Under In Vitro Antibody-Based Stimulation Using Imaging Flow Cytometry. Quantifying Nuclear Structures of Digital Pathology Images Across Cancers Using Transport-Based Morphometry. CytoNorm 2.0: A flexible normalization framework for cytometry data without requiring dedicated controls. A 37-Color Spectral Flow Cytometric Panel to Assess Transcription Factors and Chemokine Receptors in Human Intestinal Lymphoid Cells.
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