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Phikon V2

Developed by owkin
Phikon-v2 is a model based on the Vision Transformer Large architecture, pre-trained on the PANCAN-XL dataset using the DinoV2 self-supervised method, specifically designed for histological image analysis.
Downloads 64.20k
Release Time : 5/17/2024

Model Overview

Phikon-v2 is a pre-trained visual backbone network primarily used for extracting features from histological images, supporting various downstream applications such as ROI classification, slide classification, and segmentation.

Model Features

Large-scale Pre-training
Pre-trained on the PANCAN-XL dataset, containing 450 million 20x magnified histological images sampled from 60,000 whole slide images.
Self-supervised Learning
Utilizes the DINOv2 self-supervised scheme, including DINO self-distillation loss, iBOT masked image modeling loss, and KoLeo regularization.
High-performance Feature Extraction
Supports extracting 1024-dimensional features from histological images, suitable for various downstream tasks.

Model Capabilities

Image Feature Extraction
ROI Classification
Slide Classification
Segmentation

Use Cases

Medical Image Analysis
Biomarker Discovery
Uses extracted histological image features for biomarker prediction and analysis.
Tumor Classification
Used for classification tasks between malignant and normal tissues.
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