Expansion-enhanced super-resolution radial fluctuations enable nanoscale molecular profiling of pathology specimens

扩展增强的超分辨率径向波动使病理标本的纳米级分子分析成为可能

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作者:Dominik Kylies, Marina Zimmermann, Fabian Haas, Maria Schwerk, Malte Kuehl, Michael Brehler, Jan Czogalla, Lola C Hernandez, Leonie Konczalla, Yusuke Okabayashi, Julia Menzel, Ilka Edenhofer, Sam Mezher, Hande Aypek, Bernhard Dumoulin, Hui Wu, Smilla Hofmann, Oliver Kretz, Nicola Wanner, Nicola M To

Abstract

Expansion microscopy physically enlarges biological specimens to achieve nanoscale resolution using diffraction-limited microscopy systems1. However, optimal performance is usually reached using laser-based systems (for example, confocal microscopy), restricting its broad applicability in clinical pathology, as most centres have access only to light-emitting diode (LED)-based widefield systems. As a possible alternative, a computational method for image resolution enhancement, namely, super-resolution radial fluctuations (SRRF)2,3, has recently been developed. However, this method has not been explored in pathology specimens to date, because on its own, it does not achieve sufficient resolution for routine clinical use. Here, we report expansion-enhanced super-resolution radial fluctuations (ExSRRF), a simple, robust, scalable and accessible workflow that provides a resolution of up to 25 nm using LED-based widefield microscopy. ExSRRF enables molecular profiling of subcellular structures from archival formalin-fixed paraffin-embedded tissues in complex clinical and experimental specimens, including ischaemic, degenerative, neoplastic, genetic and immune-mediated disorders. Furthermore, as examples of its potential application to experimental and clinical pathology, we show that ExSRRF can be used to identify and quantify classical features of endoplasmic reticulum stress in the murine ischaemic kidney and diagnostic ultrastructural features in human kidney biopsies.

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