pathml

Solid

Computational pathology toolkit for analyzing whole-slide images (WSI) and multiparametric imaging data. Use this skill when working with histopathology slides, H&E stained images, multiplex immunofluorescence (CODEX, Vectra), spatial proteomics, nucleus detection/segmentation, tissue graph construction, or training ML models on pathology data. Supports 160+ slide formats including Aperio SVS, NDPI, DICOM, OME-TIFF for digital pathology workflows.

AI & Automation 2,279 stars 168 forks Updated 3 weeks ago Apache-2.0

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Quality Score: 91/100

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90
Frontmatter 20%
70
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100
Issue Health 10%
50
License 10%
100
Description 5%
100

Skill Content

# PathML ## Overview PathML is a comprehensive Python toolkit for computational pathology workflows, designed to facilitate machine learning and image analysis for whole-slide pathology images. The framework provides modular, composable tools for loading diverse slide formats, preprocessing images, constructing spatial graphs, training deep learning models, and analyzing multiparametric imaging data from technologies like CODEX and multiplex immunofluorescence. ## When to Use This Skill Apply this skill for: - Loading and processing whole-slide images (WSI) in various proprietary formats - Preprocessing H&E stained tissue images with stain normalization - Nucleus detection, segmentation, and classification workflows - Building cell and tissue graphs for spatial analysis - Training or deploying machine learning models (HoVer-Net, HACTNet) on pathology data - Analyzing multiparametric imaging (CODEX, Vectra, MERFISH) for spatial proteomics - Quantifying marker expression from multiplex immunofluorescence - Managing large-scale pathology datasets with HDF5 storage - Tile-based analysis and stitching operations ## Core Capabilities PathML provides six major capability areas documented in detail within reference files: ### 1. Image Loading & Formats Load whole-slide images from 160+ proprietary formats including Aperio SVS, Hamamatsu NDPI, Leica SCN, Zeiss ZVI, DICOM, and OME-TIFF. PathML automatically handles vendor-specific formats and provides unified interfaces for acc...

Details

Author
foryourhealth111-pixel
Repository
foryourhealth111-pixel/Vibe-Skills
Created
3 months ago
Last Updated
3 weeks ago
Language
Python
License
Apache-2.0

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