Protocol to annotate and automate single-cell instance segmentation on stimulated Raman histology using deep learning

利用深度学习对受激拉曼组织学上的单细胞实例进行注释和自动化分割的协议

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Abstract

Stimulated Raman histology (SRH) is a label-free optical imaging technique that can discern molecular components such as lipids and proteins at subcellular spatial resolution without histologic staining. Here, we present a protocol for labeling cells and training AI models for automated cell segmentation on SRH images acquired intra-operatively from neurosurgical cases. We describe steps to enable single-cell spatial analysis on SRH using ELUCIDATE, a web-based SRH cell annotation tool, and DetectSRH Python library.

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