软件包影像与病理科研包与框架

histolab

Lightweight WSI tile extraction and preprocessing. Use for basic slide processing tissue detection, tile extraction, stain normalization for H&E images. Best for simple pipelines, dataset preparation, quick tile-based analysis. For advanced spatial proteomics, multiplexed imaging, or deep learning pipelines use pathml.

这页展示的是上游仓库条目,不代表已进入 SCI Skills 精选目录。

原始路径
scientific-skills/histolab
允许工具
-
仓库版本
2.31.0
同步时间
2026年3月27日

条目说明

条目说明

Histolab is a Python library for processing whole slide images (WSI) in digital pathology. It automates tissue detection, extracts informative tiles from gigapixel images, and prepares datasets for deep learning pipelines. The library handles multiple WSI formats, implements sophisticated tissue segmentation, and provides flexible tile extraction strategies.

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