通过抗体进行超复合物空间蛋白质组学的 "眼见为实"。基于图像技术的新旧偏见

Maddalena M Bolognesi, Lorenzo Dall’Olio, Amy Maerten, Simone Borghesi, Gastone Castellani, Giorgio Cattoretti
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摘要

通过抗体免疫检测(即 15 个标记物)进行的超复合物原位靶向蛋白质组学正在改变我们对细胞和组织进行分类的方式。与其他高维单细胞检测(流式细胞仪、单细胞 RNA 测序)不同,人眼是多个程序步骤中的必要组成部分:图像分割、信号阈值、抗体验证和图标渲染。已有的方法是对人类图像评估的补充,但在这种新情况下可能会出现未披露的偏差,因此我们重新评估了超复杂蛋白质组学的所有步骤。我们发现,人眼只能分辨出 256 个灰度级中的不到 64 个,而且在分辨传统组织学图像的亮度级方面也有局限性。此外,只有包含可见信号的图像才会被选中,而人眼引导的数字阈值能将信号与噪声分离开来。BRAQUE 是一种超复合物蛋白质组学工具,能以标记识别的方式从信噪比极低的标记物中提取颗粒信息,因此传统的视觉渲染方法无法将其可视化。通过分析公开的人类淋巴结数据集,我们还发现了有效抗体无法预测的染色结果,这凸显了在超复合物免疫染色中提升抗体特异性定义的必要性。空间超复合物方法提升并取代了传统的基于图像的组织免疫染色分析,超越了人眼的贡献。
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Seeing or believing in hyperplexed spatial proteomics via antibodies. New and old biases for an image-based technology
Hyperplexed in-situ targeted proteomics via antibody immunodetection (i.e. > 15 markers) is changing how we classify cells and tissues. Differently from other high-dimensional single-cell assays (flow cytometry, single cell RNA sequencing), the human eye is a necessary component in multiple procedural steps: image segmentation, signal thresholding, antibody validation and iconographic rendering. Established methods complement the human image evaluation, but may carry undisclosed biases in such a new context, therefore we re-evaluate all the steps in hyperplexed proteomics. We found that the human eye can discriminate less than 64 out of 256 gray levels and has limitations in discriminating luminance levels in conventional histology images. Furthermore, only images containing visible signals are selected and eye-guided digital thresholding separates signal from noise. BRAQUE, a hyperplexed proteomic tool, can extract, in a marker-agnostic fashion, granular information from markers which have a very low signal-to-noise ratio and therefore are not visualized by traditional visual rendering. By analyzing a public human lymph node dataset, we also found unpredicted staining results by validated antibodies, which highlight the need to upgrade the definition of antibody specificity in hyperplexed immunostaining. Spatially hyperplexed methods upgrade and supplant traditional image-based analysis of tissue immunostaining, beyond the human eye contribution.
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