Nodule Generation Algorithm Baseline and template code for node21 generation track

Overview

Nodule Generation Algorithm

This codebase implements a simple baseline model, by following the main steps in the paper published by Litjens et al. for nodule generation track in NODE21. It contains all necessary files to build a docker image which can be submitted as an algorithm on the grand-challenge platform. Participants in the generation track can use this codebase as a template to understand how to create their own algorithm for submission.

To serve this algorithm in a docker container compatible with the requirements of grand-challenge, we used evalutils which provides methods to wrap your algorithm in Docker containers. It automatically generates template scripts for your container files, and creates commands for building, testing, and exporting the algorithm container. We adapted this template code for our algorithm by following the general tutorial on how to create a grand-challenge algorithm.

We also explain this template repository, and how to set up your docker container in this video. Before diving into the details of this template code we recommend readers have the pre-requisites installed and have cloned this repository as described below:

Prerequisites

The code in this repository is based on docker and evalutils.

Windows Tip: For participants using Windows, it is highly recommended to install Windows Subsystem for Linux (WSL) to work with Docker on a Linux environment within Windows. Please make sure to install WSL 2 by following the instructions on the same page. The alternative is to work purely out of Ubuntu, or any other flavor of Linux. Also, note that the basic version of WSL 2 does not come with GPU support. Please watch the official tutorial by Microsoft on installing WSL 2 with GPU support.

Please clone the repository as follows:

git clone git@github.com:node21challenge/node21_generation_baseline.git
Table of Contents

An overview of the baseline algorithm
Configuring the Docker File
Export your algorithm container
Submit your algorithm

An overview of the baseline algorithm

The baseline nodule generation algorithm is based on the paper published by Litjens et al.. The main file executed by the docker container is process.py.

Input and output interfaces

The algorithm needs to generate nodules on a given chest X-ray image (CXR) at requested locations (given in a .json file) and return a CXR after placing nodules. The nodule generation algorithm takes as input a chest X-ray (CXR) and a nodules.json file, which holds the coordinates location of where to generate the nodules. The algorithm reads the input :

  • CXR at "/input/ .mha"
  • nodules.json file at "/input/nodules.json".

and writes the output to: /output/ .mha

The nodules.json file contains the predicted bounding box locations and associated nodule likelihoods (probabilities). This file is a dictionary and contains multiple 2D bounding boxes coordinates in CIRRUS compatible format. The coordinates are expected in milimiters when spacing information is available. An example nodules.json file is as follows:

{
    "type": "Multiple 2D bounding boxes",
    "boxes": [
        {
        "corners": [
            [ 92.66666412353516, 136.06668090820312, 0],
            [ 54.79999923706055, 136.06668090820312, 0],
            [ 54.79999923706055, 95.53333282470703, 0],
            [ 92.66666412353516, 95.53333282470703, 0]
        ]},
        {
        "corners": [
            [ 92.66666412353516, 136.06668090820312, 0],
            [ 54.79999923706055, 136.06668090820312, 0],
            [ 54.79999923706055, 95.53333282470703, 0],
            [ 92.66666412353516, 95.53333282470703, 0]
        ]}
    ],
    "version": { "major": 1, "minor": 0 }
}

The implementation of the algorithm inference in process.py is straightforward (and must be followed by participants creating their own algorithm): load the nodules.json file in the init function of the class, and implement a function called predict to generate nodules on a given CXR image.

The function predict is run by evalutils when the process function is called.

💡 To test this container locally without a docker container, you should the execute_in_docker flag to False - this sets all paths to relative paths. You should set it back to True when you want to switch back to the docker container setting.

Operating on a 3D image

For the sake of time efficiency in the evaluation process of NODE21, the submitted algorithms to NODE21 are expected to operate on a 3D image which consists of multiple CXR images stacked together. The algorithm should go through the slices (CXR images) one by one and process them individually, as shown in predict. When outputting results, the third coordinate of the bounding box in nodules.json file is used to identify the CXR from the stack. If the algorithm processes the first CXR image in 3D volume, the z coordinate output should be 0, if it processes the third CXR image, it should be 2, etc.

Configure the Docker file

Build, test and export your container

  1. Switch to the correct algorithm folder at algorithms/nodulegeneration. To test if all dependencies are met, you can run the file build.bat (Windows) / build.sh (Linux) to build the docker container. Please note that the next step (testing the container) also runs a build, so this step is not necessary if you are certain that everything is set up correctly.

    build.sh/build.bat files will run the following command to build the docker for you:

    docker build -t nodulegenerator .
  2. To test the docker container to see if it works as expected, test.sh/test.bat will run the container on images provided in test/ folder, and it will check the results (results.json produced by your algorithm) against test/expected_output.json. Please update your test/expected_output.json according to your algorithm result when it is run on the test data.

    . ./test.sh

    If the test runs successfully you will see the message Tests successfully passed... at the end of the output.

    Once you validated that the algorithm works as expected, you might want to simply run the algorithm on the test folder and check the output images for yourself. If you are on a native Linux system you will need to create a results folder that the docker container can write to as follows (WSL users can skip this step) (Note that $SCRIPTPATH was created in the previous test script).

    mkdir $SCRIPTPATH/results
    chmod 777 $SCRIPTPATH/results

    To write the output of the algorithm to the results folder use the following command (note that $SCRIPTPATH was created in the previous test script):

    docker run --rm --memory=11g -v $SCRIPTPATH/test:/input/ -v $SCRIPTPATH/results:/output/ nodulegenerator
  3. Run export.sh/export.bat to save the docker image which runs the following command:

     docker save nodulegenerator | gzip -c > nodulegenerator.tar.gz

Submit your algorithm

Details of how to create an algorithm on grand-challenge and submit it to the node21 challenge will be added here soon.
Please make sure all steps described above work as expected before proceeding. Ensure also that you have an account on grand-challenge.org and that you are a
verified user there.

You might also like...
[SIGGRAPH 2022 Journal Track] AvatarCLIP: Zero-Shot Text-Driven Generation and Animation of 3D Avatars
[SIGGRAPH 2022 Journal Track] AvatarCLIP: Zero-Shot Text-Driven Generation and Animation of 3D Avatars

AvatarCLIP: Zero-Shot Text-Driven Generation and Animation of 3D Avatars Fangzhou Hong1*  Mingyuan Zhang1*  Liang Pan1  Zhongang Cai1,2,3  Lei Yang2 

Official Code for ICML 2021 paper
Official Code for ICML 2021 paper "Revisiting Point Cloud Shape Classification with a Simple and Effective Baseline"

Revisiting Point Cloud Shape Classification with a Simple and Effective Baseline Ankit Goyal, Hei Law, Bowei Liu, Alejandro Newell, Jia Deng Internati

A baseline code for VSPW

A baseline code for VSPW Preparation Download VSPW dataset The VSPW dataset with extracted frames and masks is available here.

A tiny, friendly, strong baseline code for Person-reID (based on pytorch).
A tiny, friendly, strong baseline code for Person-reID (based on pytorch).

Pytorch ReID Strong, Small, Friendly A tiny, friendly, strong baseline code for Person-reID (based on pytorch). Strong. It is consistent with the new

Code for technical report "An Improved Baseline for Sentence-level Relation Extraction".

RE_improved_baseline Code for technical report "An Improved Baseline for Sentence-level Relation Extraction". Requirements torch = 1.8.1 transformers

Project code for weakly supervised 3D object detectors using wide-baseline multi-view traffic camera data: WIBAM.
Project code for weakly supervised 3D object detectors using wide-baseline multi-view traffic camera data: WIBAM.

WIBAM (Work in progress) Weakly Supervised Training of Monocular 3D Object Detectors Using Wide Baseline Multi-view Traffic Camera Data 3D object dete

This is the official code repository for A Simple Long-Tailed Rocognition Baseline via Vision-Language Model.
This is the official code repository for A Simple Long-Tailed Rocognition Baseline via Vision-Language Model.

BALLAD This is the official code repository for A Simple Long-Tailed Rocognition Baseline via Vision-Language Model. Requirements Python3 Pytorch(1.7.

RL algorithm  PPO and IRL algorithm AIRL written with Tensorflow.
RL algorithm PPO and IRL algorithm AIRL written with Tensorflow.

RL algorithm PPO and IRL algorithm AIRL written with Tensorflow. They have a parallel sampling feature in order to increase computation speed (especially in high-performance computing (HPC)).

Simple is not Easy: A Simple Strong Baseline for TextVQA and TextCaps[AAAI2021]

Simple is not Easy: A Simple Strong Baseline for TextVQA and TextCaps Here is the code for ssbassline model. We also provide OCR results/features/mode

Releases(v1.0addedtag)
Owner
node21challenge
Repositories associated with the grand challenge at https://node21.grand-challenge.org/
node21challenge
HairCLIP: Design Your Hair by Text and Reference Image

Overview This repository hosts the official PyTorch implementation of the paper: "HairCLIP: Design Your Hair by Text and Reference Image". Our single

322 Jan 06, 2023
ConvMixer unofficial implementation

ConvMixer ConvMixer 非官方实现 pytorch 版本已经实现。 nets 是重构版本 ,test 是官方代码 感兴趣小伙伴可以对照看一下。 keras 已经实现 tf2.x 中 是tensorflow 2 版本 gelu 激活函数要求 tf=2.4 否则使用入下代码代替gelu

Jian Tengfei 8 Jul 11, 2022
Continual learning with sketched Jacobian approximations

Continual learning with sketched Jacobian approximations This repository contains the code for reproducing figures and results in the paper ``Provable

Machine Learning and Information Processing Laboratory 1 Jun 30, 2022
Radar-to-Lidar: Heterogeneous Place Recognition via Joint Learning

radar-to-lidar-place-recognition This page is the coder of a pre-print, implemented by PyTorch. If you have some questions on this project, please fee

Huan Yin 37 Oct 09, 2022
A repository for benchmarking neural vocoders by their quality and speed.

License The majority of VocBench is licensed under CC-BY-NC, however portions of the project are available under separate license terms: Wavenet, Para

Meta Research 177 Dec 12, 2022
Construct a neural network frame by Numpy

本项目的CSDN博客链接:https://blog.csdn.net/weixin_41578567/article/details/111482022 1. 概览 本项目主要用于神经网络的学习,通过基于numpy的实现,了解神经网络底层前向传播、反向传播以及各类优化器的原理。 该项目目前已实现的功

24 Jan 22, 2022
Brain tumor detection using Convolution-Neural Network (CNN)

Detect and Classify Brain Tumor using CNN. A system performing detection and classification by using Deep Learning Algorithms using Convolution-Neural Network (CNN).

assia 1 Feb 07, 2022
Which Style Makes Me Attractive? Interpretable Control Discovery and Counterfactual Explanation on StyleGAN

Interpretable Control Exploration and Counterfactual Explanation (ICE) on StyleGAN Which Style Makes Me Attractive? Interpretable Control Discovery an

Bo Li 11 Dec 01, 2022
This a classic fintech problem that introduces real life difficulties such as data imbalance. Check out the notebook to find out more!

Credit Card Fraud Detection Introduction Online transactions have become a crucial part of any business over the years. Many of those transactions use

Jonathan Hasbani 0 Jan 20, 2022
A simple interface for editing natural photos with generative neural networks.

Neural Photo Editor A simple interface for editing natural photos with generative neural networks. This repository contains code for the paper "Neural

Andy Brock 2.1k Dec 29, 2022
SAPIEN Manipulation Skill Benchmark

ManiSkill Benchmark SAPIEN Manipulation Skill Benchmark (abbreviated as ManiSkill, pronounced as "Many Skill") is a large-scale learning-from-demonstr

Hao Su's Lab, UCSD 107 Jan 08, 2023
Plugin adapted from Ultralytics to bring YOLOv5 into Napari

napari-yolov5 Plugin adapted from Ultralytics to bring YOLOv5 into Napari. Training and detection can be done using the GUI. Training dataset must be

2 May 05, 2022
A set of tools for creating and testing machine learning features, with a scikit-learn compatible API

Feature Forge This library provides a set of tools that can be useful in many machine learning applications (classification, clustering, regression, e

Machinalis 380 Nov 05, 2022
This is the repository for CVPR2021 Dynamic Metric Learning: Towards a Scalable Metric Space to Accommodate Multiple Semantic Scales

Intro This is the repository for CVPR2021 Dynamic Metric Learning: Towards a Scalable Metric Space to Accommodate Multiple Semantic Scales Vehicle Sam

39 Jul 21, 2022
A minimal TPU compatible Jax implementation of NeRF: Representing Scenes as Neural Radiance Fields for View Synthesis

NeRF Minimal Jax implementation of NeRF: Representing Scenes as Neural Radiance Fields for View Synthesis. Result of Tiny-NeRF RGB Depth

Soumik Rakshit 11 Jul 24, 2022
Get started with Machine Learning with Python - An introduction with Python programming examples

Machine Learning With Python Get started with Machine Learning with Python An engaging introduction to Machine Learning with Python TL;DR Download all

Learn Python with Rune 130 Jan 02, 2023
U-Net Implementation: Convolutional Networks for Biomedical Image Segmentation" using the Carvana Image Masking Dataset in PyTorch

U-Net Implementation By Christopher Ley This is my interpretation and implementation of the famous paper "U-Net: Convolutional Networks for Biomedical

Christopher Ley 1 Jan 06, 2022
Pytorch implementation of paper: "NeurMiPs: Neural Mixture of Planar Experts for View Synthesis"

NeurMips: Neural Mixture of Planar Experts for View Synthesis This is the official repo for PyTorch implementation of paper "NeurMips: Neural Mixture

James Lin 101 Dec 13, 2022
A python package simulating the quasi-2D pseudospin-1/2 Gross-Pitaevskii equation with NVIDIA GPU acceleration.

A python package simulating the quasi-2D pseudospin-1/2 Gross-Pitaevskii equation with NVIDIA GPU acceleration. Introduction spinor-gpe is high-level,

2 Sep 20, 2022
A collection of scripts I developed for personal and working projects.

A collection of scripts I developed for personal and working projects Table of contents Introduction Repository diagram structure List of scripts pyth

Gianluca Bianco 109 Dec 26, 2022