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name: computational-pathology-agent description: Analyze Whole Slide Images (WSI) for digital pathology, including tissue segmentation and feature extraction. keywords:

  • wsi
  • digital-pathology
  • deep-learning
  • resnet
  • openslide measurable_outcome: Preprocess and extract tissue patches from a 1GB+ .svs slide within 15 minutes for downstream ML tasks. license: MIT metadata: author: MD BABU MIA, PhD version: "1.0.0" compatibility:
  • system: python 3.9+ allowed-tools:
  • run_shell_command
  • read_file
  • write_file

Computational Pathology Agent

Version: 1.0.0 Author: MD BABU MIA, PhD Date: February 2026

Overview

This agent specializes in the analysis of Whole Slide Images (WSIs) for digital pathology. It leverages Deep Learning models (ResNet, ViT, HoverNet) to perform segmentation, classification, and feature extraction from gigapixel histology images.

Capabilities

  1. WSI Handling: Efficient reading/tiling of .svs, .ndpi, .tiff files (using OpenSlide/TiffSlide).
  2. Tissue Segmentation: Separation of tissue from background.
  3. Patch Extraction: Automated generation of patches for ML training/inference.
  4. Nuclei Segmentation: Integration with StarDist/HoverNet for cellular analysis.
  5. Feature Extraction: Generating feature vectors for slide-level clustering.

Usage

from Skills.Pathology_AI.Computational_Pathology_Agent.wsi_analyzer import WSIAnalyzer

# Initialize
path_agent = WSIAnalyzer(slide_path="./data/biopsy_001.svs")

# Extract tissue patches
path_agent.extract_patches(patch_size=256, level=1)

# Analyze Nuclei (requires model weights)
# path_agent.segment_nuclei()

Requirements

  • openslide-python
  • opencv-python
  • pytorch
  • scikit-image