学习免疫学、神经科学和癌症中的细胞识别。

IF 7.9 2区 医学 Q1 IMMUNOLOGY Seminars in Immunopathology Pub Date : 2023-01-01 DOI:10.1007/s00281-022-00976-y
Stephanie Medina, Rebecca A Ihrie, Jonathan M Irish
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引用次数: 2

摘要

悬浮和成像细胞术技术同时测量数百个细胞特征,正在推动细胞生物学的新时代,并改变我们对人体组织和肿瘤的理解。然而,一个核心的挑战仍然是学习意想不到的或新的细胞类型的身份。无论是人还是机器,能够帮助受训者的细胞鉴定标准并不总是严格定义的,因领域而异,并且不同地依赖于细胞内部测量,细胞外部组织测量或外部背景信息,如临床结果。在肿瘤的情况下,这种挑战尤其严重,因为肿瘤细胞异常表达的发育程序通常受到时间、位置或细胞类型的限制。成熟的领域对细胞身份有不同的做法,这些做法来自惯例和便利,以及设计。例如,早期免疫学专注于识别标记个体功能不同细胞的最小蛋白质特征集。在神经科学中,包括形态、发育和解剖位置在内的特征是定义细胞类型的典型起点。免疫学和神经科学现在都致力于将蛋白质或RNA的标准化测量与细胞功能信息联系起来,如电生理学、连通性、谱系电位、磷酸化蛋白信号传导、细胞抑制和肿瘤细胞杀伤能力。随着学习细胞身份的自动化、机器驱动方法的扩展,进一步迫切需要一个协调的框架来区分不同领域和技术平台的细胞身份。在这里,我们比较了免疫学和神经科学领域的实践,强调了每个领域的概念可能在另一个领域很好地工作,并提出了实现这些想法的方法,以研究脑肿瘤和相关模型系统中的神经和免疫细胞相互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Learning cell identity in immunology, neuroscience, and cancer.

Suspension and imaging cytometry techniques that simultaneously measure hundreds of cellular features are powering a new era of cell biology and transforming our understanding of human tissues and tumors. However, a central challenge remains in learning the identities of unexpected or novel cell types. Cell identification rubrics that could assist trainees, whether human or machine, are not always rigorously defined, vary greatly by field, and differentially rely on cell intrinsic measurements, cell extrinsic tissue measurements, or external contextual information such as clinical outcomes. This challenge is especially acute in the context of tumors, where cells aberrantly express developmental programs that are normally time, location, or cell-type restricted. Well-established fields have contrasting practices for cell identity that have emerged from convention and convenience as much as design. For example, early immunology focused on identifying minimal sets of protein features that mark individual, functionally distinct cells. In neuroscience, features including morphology, development, and anatomical location were typical starting points for defining cell types. Both immunology and neuroscience now aim to link standardized measurements of protein or RNA to informative cell functions such as electrophysiology, connectivity, lineage potential, phospho-protein signaling, cell suppression, and tumor cell killing ability. The expansion of automated, machine-driven methods for learning cell identity has further created an urgent need for a harmonized framework for distinguishing cell identity across fields and technology platforms. Here, we compare practices in the fields of immunology and neuroscience, highlight concepts from each that might work well in the other, and propose ways to implement these ideas to study neural and immune cell interactions in brain tumors and associated model systems.

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来源期刊
Seminars in Immunopathology
Seminars in Immunopathology 医学-病理学
CiteScore
19.80
自引率
2.20%
发文量
69
审稿时长
12 months
期刊介绍: The aim of Seminars in Immunopathology is to bring clinicians and pathologists up-to-date on developments in the field of immunopathology.For this purpose topical issues will be organized usually with the help of a guest editor.Recent developments are summarized in review articles by authors who have personally contributed to the specific topic.
期刊最新文献
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