Code for Paper Predicting Osteoarthritis Progression via Unsupervised Adversarial Representation Learning

Overview

Predicting Osteoarthritis Progression via Unsupervised Adversarial Representation Learning

(c) Tianyu Han and Daniel Truhn, RWTH Aachen University, 2021

About

What's included in this Repo

The repository includes the codes for data / label preparation and inferencing the future knee radiograph, training and testing the baseline classifier and also the links to the pre-trained generative model.

Focus of the current work

Osteoarthritis (OA) is the most common joint disorder in the world affecting 10% of men and 18% of women over 60 years of age. In this paper, we present an unsupervised learning scheme to predict the future image appearance of patients at recurring visits.

By exploring the latent temporal trajectory based on knee radiographs, our system predicts the risk of accelerated progression towards OA and surpasses its supervised counterpart. We demonstrate this paradigm with seven radiologists who were tasked to predict which patients will undergo a rapid progression.

Requirements

pytorch 1.8.1
tensorboard 2.5.0
numpy 1.20.3
scipy 1.6.2
scikit-image 0.18.1
pandas
tqdm
glob
pickle5
  • StyleGAN2-ADA-Pytorch
    This repository is an official reimplementation of StyleGAN2-ADA in PyTorch, focusing on correctness, performance, and compatibility.
  • KNEE Localization
    The repository includes the codes for training and testing, annotations for the OAI dataset and also the links to the pre-trained models.
  • Robust ResNet classifier
    The repository contains codes for developing robust ResNet classifier with a superior performance and interpretability.

How to predict the future state of a knee

Preparing the training data and labels

Download all available OAI and MOST images from https://nda.nih.gov/oai/ and https://most.ucsf.edu/. The access to the images is free and painless. You just need to register and provide the information about yourself and agree with the terms of data use. Besides, please also download the label files named Semi-Quant_Scoring_SAS and MOSTV01235XRAY.txt from OAI and MOST, separately.

Following the repo of KNEE Localization, we utilized a pre-trained Hourglass network and extracted 52,981 and 20,158 (separated left or right) knee ROI (256x256) radiographs from both OAI and MOST datasets. We further extract the semi-quantitative assessment Kellgren-Lawrence Score (KLS) from the labels files above. To better relate imaging and tabular data together, in OAI dataset, we name the knee radiographs using ID_BARCDBU_DATE_SIDE.png, e.g., 9927360_02160601_20070629_l.png. For instance, to generate the KLS label file (most.csv) of the MOST dataset, one can run:

python kls.py

Training a StyleGAN2 model on radiological data

Follow the official repo StyleGAN2, datasets are stored as uncompressed ZIP archives containing uncompressed PNG files. Our datasets can be created from a folder containing radiograph images; see python dataset_tool.py --help for more information. In the auto configuration, training a OAI GAN boils down to:

python train.py --outdir=~/training-runs --data=~/OAI_data.zip --gpus=2

The total training time on 2 Titan RTX cards with a resolution of 256x256 takes around 4 days to finish. The best GAN model of our experiment can be downloaded at here.

Projecting training radiographs to latent space

To find the matching latent vector for a given training set, run:

python projector.py --outdir=~/pro_out --target=~/training_set/ --network=checkpoint.pkl

The function multi_projection() within the script will generate a dictionary contains pairs of image name and its corresponding latent code and individual projection folders.

Synthesize future radiograph

  • require: A pre-trained network G, test dataframe path (contains test file names), and individual projection folders (OAI training set). To predict the baseline radiographs within the test dataframe, just run:
python prog_w.py --network=checkpoint.pkl --frame=test.csv --pfolder=~/pro_out/ 

Estimating the risk of OA progression

In this study, we have the ability to predict the morphological appearance of the radiograph at a future time point and compute the risk based on the above synthesized state. We used an adversarially trained ResNet model that can correctly classify the KLS of the input knee radiograph.

To generate the ROC curve of our model, run:

python risk.py --ytrue=~/y_true.npy --ystd=~/baseline/pred/y_pred.npy --ybase=~/kls_cls/pred/ypred.npy --yfinal=~/kls_cls/pred/ypred_.npy --df=~/oai.csv

Baseline classifier

To compare what is achievable with supervised learning based on the existing dataset, we finetune a ResNet-50 classifier pretrained on ImageNet that tries to distinguish fast progressors based on baseline radiographs in a supervised end-to-end manner. The output probability of such a classifier is based on baseline radiographs only. To train the classifier, after putting the label files to the base_classifier/label folder, one can run:

cd base_classifier/
python train.py --todo train --data_root ../Xray/dataset_oai/imgs/ --affix std --pretrain True --batch_size 32

To test, just run:

cd base_classifier/
python train.py --todo test --data_root ../Xray/dataset_oai/imgs/ --batch_size 1

License

This project is licensed under the MIT License - see the LICENSE.md file for details

Citation

@misc{han2021predicting,
      title={Predicting Osteoarthritis Progression in Radiographs via Unsupervised Representation Learning}, 
      author={Tianyu Han and Jakob Nikolas Kather and Federico Pedersoli and Markus Zimmermann and Sebastian Keil and Maximilian Schulze-Hagen and Marc Terwoelbeck and Peter Isfort and Christoph Haarburger and Fabian Kiessling and Volkmar Schulz and Christiane Kuhl and Sven Nebelung and Daniel Truhn},
      year={2021},
      eprint={2111.11439},
      archivePrefix={arXiv},
      primaryClass={eess.IV}
}

Acknowledgments

You might also like...
This repo is a PyTorch implementation for Paper
This repo is a PyTorch implementation for Paper "Unsupervised Learning for Cuboid Shape Abstraction via Joint Segmentation from Point Clouds"

Unsupervised Learning for Cuboid Shape Abstraction via Joint Segmentation from Point Clouds This repository is a PyTorch implementation for paper: Uns

Official code for paper "Optimization for Oriented Object Detection via Representation Invariance Loss".

Optimization for Oriented Object Detection via Representation Invariance Loss By Qi Ming, Zhiqiang Zhou, Lingjuan Miao, Xue Yang, and Yunpeng Dong. Th

Propagate Yourself: Exploring Pixel-Level Consistency for Unsupervised Visual Representation Learning, CVPR 2021
Propagate Yourself: Exploring Pixel-Level Consistency for Unsupervised Visual Representation Learning, CVPR 2021

Propagate Yourself: Exploring Pixel-Level Consistency for Unsupervised Visual Representation Learning By Zhenda Xie*, Yutong Lin*, Zheng Zhang, Yue Ca

[CVPR 2021] Unsupervised Degradation Representation Learning for Blind Super-Resolution
[CVPR 2021] Unsupervised Degradation Representation Learning for Blind Super-Resolution

DASR Pytorch implementation of "Unsupervised Degradation Representation Learning for Blind Super-Resolution", CVPR 2021 [arXiv] Overview Requirements

UniMoCo: Unsupervised, Semi-Supervised and Full-Supervised Visual Representation Learning
UniMoCo: Unsupervised, Semi-Supervised and Full-Supervised Visual Representation Learning

UniMoCo: Unsupervised, Semi-Supervised and Full-Supervised Visual Representation Learning This is the official PyTorch implementation for UniMoCo pape

[NeurIPS 2021] ORL: Unsupervised Object-Level Representation Learning from Scene Images
[NeurIPS 2021] ORL: Unsupervised Object-Level Representation Learning from Scene Images

Unsupervised Object-Level Representation Learning from Scene Images This repository contains the official PyTorch implementation of the ORL algorithm

An official PyTorch implementation of the TKDE paper "Self-Supervised Graph Representation Learning via Topology Transformations".

Self-Supervised Graph Representation Learning via Topology Transformations This repository is the official PyTorch implementation of the following pap

A PyTorch implementation of the paper
A PyTorch implementation of the paper "Semantic Image Synthesis via Adversarial Learning" in ICCV 2017

Semantic Image Synthesis via Adversarial Learning This is a PyTorch implementation of the paper Semantic Image Synthesis via Adversarial Learning. Req

Implementation based on Paper - Learning a Probabilistic Latent Space of Object Shapes via 3D Generative-Adversarial Modeling

Implementation based on Paper - Learning a Probabilistic Latent Space of Object Shapes via 3D Generative-Adversarial Modeling

Releases(v1.0)
Owner
Tianyu Han
Tianyu Han
A pytorch reproduction of { Co-occurrence Feature Learning from Skeleton Data for Action Recognition and Detection with Hierarchical Aggregation }.

A PyTorch Reproduction of HCN Co-occurrence Feature Learning from Skeleton Data for Action Recognition and Detection with Hierarchical Aggregation. Ch

Guyue Hu 210 Dec 31, 2022
Camera ready code repo for the NeuRIPS 2021 paper: "Impression learning: Online representation learning with synaptic plasticity".

Impression-Learning-Camera-Ready Camera ready code repo for the NeuRIPS 2021 paper: "Impression learning: Online representation learning with synaptic

2 Feb 09, 2022
[NeurIPS 2021] Large Scale Learning on Non-Homophilous Graphs: New Benchmarks and Strong Simple Methods

Large Scale Learning on Non-Homophilous Graphs: New Benchmarks and Strong Simple Methods Large Scale Learning on Non-Homophilous Graphs: New Benchmark

60 Jan 03, 2023
Huawei Hackathon 2021 - Sweden (Stockholm)

huawei-hackathon-2021 Contributors DrakeAxelrod Challenge Requirements: python=3.8.10 Standard libraries (no importing) Important factors: Data depend

Drake Axelrod 32 Nov 08, 2022
An unofficial implementation of "Unpaired Image Super-Resolution using Pseudo-Supervision." CVPR2020

UnpairedSR An unofficial implementation of "Unpaired Image Super-Resolution using Pseudo-Supervision." CVPR2020 turn RCAN(modified) -- xmodel(xilinx

JiaKui Hu 10 Oct 28, 2022
Additional code for Stable-baselines3 to load and upload models from the Hub.

Hugging Face x Stable-baselines3 A library to load and upload Stable-baselines3 models from the Hub. Installation With pip Examples [Todo: add colab t

Hugging Face 34 Dec 10, 2022
[CVPR 2022] Structured Sparse R-CNN for Direct Scene Graph Generation

Structured Sparse R-CNN for Direct Scene Graph Generation Our paper Structured Sparse R-CNN for Direct Scene Graph Generation has been accepted by CVP

Multimedia Computing Group, Nanjing University 44 Dec 23, 2022
This is the official code of our paper "Diversity-based Trajectory and Goal Selection with Hindsight Experience Relay" (PRICAI 2021)

Diversity-based Trajectory and Goal Selection with Hindsight Experience Replay This is the official implementation of our paper "Diversity-based Traje

Tianhong Dai 6 Jul 18, 2022
DyNet: The Dynamic Neural Network Toolkit

The Dynamic Neural Network Toolkit General Installation C++ Python Getting Started Citing Releases and Contributing General DyNet is a neural network

Chris Dyer's lab @ LTI/CMU 3.3k Jan 06, 2023
PyTorch code for the "Deep Neural Networks with Box Convolutions" paper

Box Convolution Layer for ConvNets Single-box-conv network (from `examples/mnist.py`) learns patterns on MNIST What This Is This is a PyTorch implemen

Egor Burkov 515 Dec 18, 2022
PyExplainer: A Local Rule-Based Model-Agnostic Technique (Explainable AI)

PyExplainer PyExplainer is a local rule-based model-agnostic technique for generating explanations (i.e., why a commit is predicted as defective) of J

AI Wizards for Software Management (AWSM) Research Group 14 Nov 13, 2022
This is the official code of L2G, Unrolling and Recurrent Unrolling in Learning to Learn Graph Topologies.

Learning to Learn Graph Topologies This is the official code of L2G, Unrolling and Recurrent Unrolling in Learning to Learn Graph Topologies. Requirem

Stacy X PU 16 Dec 09, 2022
Torch Implementation of "Photo-Realistic Single Image Super-Resolution Using a Generative Adversarial Network"

Photo-Realistic-Super-Resoluton Torch Implementation of "Photo-Realistic Single Image Super-Resolution Using a Generative Adversarial Network" [Paper]

Harry Yang 199 Dec 01, 2022
The code for 'Deep Residual Fourier Transformation for Single Image Deblurring'

Deep Residual Fourier Transformation for Single Image Deblurring Xintian Mao, Yiming Liu, Wei Shen, Qingli Li and Yan Wang code will be released soon

145 Dec 13, 2022
Experiments and code to generate the GINC small-scale in-context learning dataset from "An Explanation for In-context Learning as Implicit Bayesian Inference"

GINC small-scale in-context learning dataset GINC (Generative In-Context learning Dataset) is a small-scale synthetic dataset for studying in-context

P-Lambda 29 Dec 19, 2022
Python Assignments for the Deep Learning lectures by Andrew NG on coursera with complete submission for grading capability.

Python Assignments for the Deep Learning lectures by Andrew NG on coursera with complete submission for grading capability.

Utkarsh Agiwal 1 Feb 03, 2022
nextPARS, a novel Illumina-based implementation of in-vitro parallel probing of RNA structures.

nextPARS, a novel Illumina-based implementation of in-vitro parallel probing of RNA structures. Here you will find the scripts necessary to produce th

Jesse Willis 0 Jan 20, 2022
Paaster is a secure by default end-to-end encrypted pastebin built with the objective of simplicity.

Follow the development of our desktop client here Paaster Paaster is a secure by default end-to-end encrypted pastebin built with the objective of sim

Ward 211 Dec 25, 2022
Fast mesh denoising with data driven normal filtering using deep variational autoencoders

Fast mesh denoising with data driven normal filtering using deep variational autoencoders This is an implementation for the paper entitled "Fast mesh

9 Dec 02, 2022
Depression Asisstant GDSC Challenge Solution

Depression Asisstant can help you give solution. Please using Python version 3.9.5 for contribute.

Ananda Rauf 1 Jan 30, 2022