Jerome S Arceneaux, Asa A Brockman, Rohit Khurana, Mary-Bronwen L Chalkley, Laura C Geben, Aleksandar Krbanjevic, Matthew Vestal, Muhammad Zafar, Sarah Weatherspoon, Bret C Mobley, Kevin C Ess, Rebecca A Ihrie
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引用次数: 0
摘要
高维成像技术的出现为诊断细胞的分子特征提供了新的机会,而这些诊断细胞以前一直依赖于组织病理学定义。结节性硬化综合征(TSC)就是一个例子,这是一种以良性肿瘤的系统性生长为特征的发育障碍。在 TSC 患者切除的脑组织中,发现异常增大的气球细胞(BC)是这种疾病的病理标志。虽然神经病理学家可以鉴定出气球细胞,但对这些细胞的蛋白质标记物的特异性和广泛适用性却知之甚少,这使得在该疾病的实验模型中鉴定出的气球细胞的分类变得更加复杂。在此,我们报告了定制机器学习管道(BAlloon IDENtifier; BAIDEN)的开发情况,该管道经过训练,可使用与高维细胞仪兼容的组织学染色法在组织切片中前瞻性地识别 BCs。这种方法与定制的 36 种抗体面板和成像质谱(IMC)相结合,探索了之前提出的多种 BC 标记蛋白的表达情况,并开发出了在 TSC 患者的多个组织样本中保持一致的 BC 特征描述。在这里,我们介绍了一种模块化工作流程,其中包括 BAIDEN、定制抗体面板、对照样本微阵列和分析管道(包括开源和内部管道),并将该工作流程应用于了解 BC 的丰度、结构和信号活动,以此作为高维成像如何应用于人体组织的一个示例。
Multiparameter quantitative analyses of diagnostic cells in brain tissues from tuberous sclerosis complex.
The advent of high-dimensional imaging offers new opportunities to molecularly characterize diagnostic cells in disorders that have previously relied on histopathological definitions. One example case is found in tuberous sclerosis complex (TSC), a developmental disorder characterized by systemic growth of benign tumors. Within resected brain tissues from patients with TSC, detection of abnormally enlarged balloon cells (BCs) is pathognomonic for this disorder. Though BCs can be identified by an expert neuropathologist, little is known about the specificity and broad applicability of protein markers for these cells, complicating classification of proposed BCs identified in experimental models of this disorder. Here, we report the development of a customized machine learning pipeline (BAlloon IDENtifier; BAIDEN) that was trained to prospectively identify BCs in tissue sections using a histological stain compatible with high-dimensional cytometry. This approach was coupled to a custom 36-antibody panel and imaging mass cytometry (IMC) to explore the expression of multiple previously proposed BC marker proteins and develop a descriptor of BC features conserved across multiple tissue samples from patients with TSC. Here, we present a modular workflow encompassing BAIDEN, a custom antibody panel, a control sample microarray, and analysis pipelines-both open-source and in-house-and apply this workflow to understand the abundance, structure, and signaling activity of BCs as an example case of how high-dimensional imaging can be applied within human tissues.