Investigating automatic navigation towards standard US views integrating MARL with the virtual US environment developed in CT2US simulation

Overview

AutomaticUSnavigation

Investigating automatic navigation towards standard US views integrating MARL with the virtual US environment developed in CT2US simulation. We will start by investigating navigation in the XCAT phantom volumes, then integrate our cycleGAN model to the pipeline to perform navigation in US domain. We also test navigation on clinical CT scans.

example of agents navigating in a test XCAT phantom volume (not seen at train time)

The agent is in control of moving 3 points in a 3D volume, which will sample the corresponding plane. We aim to model the agent to learn to move towards 4-chamber views. We define such views as the plane passing through the centroids of the Left Ventricle, Right Ventricle and Right Atrium (XCAT volumes come with semantic segmentations). We reward the agent when it moves towards this goal plane, and when the number of pixels of tissues of interest present in the current plane increase (see rewards/rewards.py fro more details). Furthermore, we add some good-behaviour inducing reards: we maximize the area of the triangle spanned by the agents and we penalize the agents for moving outside of the volumes boundaries. The former encourages smooth transitions (if the agents are clustered close together we would get abrupt transitions) the latter makes sure that the agents stay within the boundaries of the environment. The following animation shows agents navigating towards a 4-Chamber view on a test XCAT volume, agents are initialized randomly within the volume.

trained agent acting greedily.
Fig 1: Our best agent acting greedily for 250 steps after random initialization. Our full agent consists of 3 sub-agents, each controlling the movement of 1 point in a 3D space. As each agent moves around the 3 points will sample a particular view of the CT volume.

example of agents navigating in clinical CTs

We than upgrade our pipeline generating realistic fake CT volumes using Neural Style Transfer on our XCAT volumes. We will generate volumes which aim to resemble CT texture while retaining XCAT content. We train the agents in the same manner on this new simulated environment and we test practicality both on unseen fake CT volumes and on clinical volumes from LIDC-IDRI dataset.

trained agent acting greedily on fake CT. trained agent acting greedily on real CT.
Fig 2: Left) Our best agent acting greedily on a test fake CT volume for 125 steps after random initialization. Right) same agents tested on clinical CT data.

example of agents navigating on synthetic US

We couple our navigation framework with a CycleGAN that transforms XCAT slices into US images on the fly. Our CycleGAN model is not perfect yet and we are limited to contrain the agent within +/- 20 pixels from the goal plane. Note that we invert intensities of the XCAT images to facilitate the translation process.

trained agent acting greedily on US environment.
Fig 1: Our best agent acting greedily for 50 steps after initialization within +/- 20 pixels from the goal plane. The XCAT volume is used a proxy for navigation in US domain.

usage

  1. clone the repo and install dependencies
git clone [email protected]:CesareMagnetti/AutomaticUSnavigation.git
cd AutomaticUSnavigation
python3 -m venv env
source env/bin/activate
pip install -r requirements
  1. if you don't want to integrate the script with weights and biases run scripts with the additional --wandb disabled flag.

  2. train our best agents on 15 XCAT volumes (you must generate these yourself). It will save results to ./results/ and checkpoints to ./checkpoints/. Then test the agent 100 times on all available volumes (in our case 20) and generate some test trajectories to visualize results.

python train.py --name 15Volume_both_terminateOscillate_Recurrent --dataroot [path/to/XCAT/volumes] --volume_ids samp0,samp1,samp2,samp3,samp4,samp5,samp6,samp7,samp8,samp9,samp10,samp11,samp12,samp13,samp14 --anatomyRewardWeight 1 --planeDistanceRewardWeight 1 --incrementalAnatomyReward --termination oscillate --exploring_steps 0 --recurrent --batch_size 8 --update_every 15

python test.py --name 15Volume_both_terminateOscillate_Recurrent --dataroot [path/to/XCAT/volumes] --volume_ids samp0,samp1,samp2,samp3,samp4,samp5,samp6,samp7,samp8,samp9,samp10,samp11,samp12,samp13,samp14,
samp15,samp16,samp17,samp18,samp19 --n_runs 2000 --load latest --fname quantitative_metrics

python test_trajectory.py --name 15Volume_both_terminateOscillate_Recurrent --dataroot [path/to/XCAT/volumes] --volume_ids samp15,samp16,samp17,samp18,samp19 --n_steps 250 --load latest
  1. train our best agent on the fake CT volumes (we can then test on real CT data).
python make_XCAT_volumes_realistic.py --dataroot [path/to/XCAT/volumes] --saveroot [path/to/save/fakeCT/volumes] --volume_ids samp0,samp1,samp2,samp3,samp4,samp5,samp6,samp7,samp8,samp9,samp10,samp11,samp12,samp13,samp14,
samp15,samp16,samp17,samp18,samp19 --style_imgs [path/to/style/realCT/images] --window 3

python train.py --name 15Volume_CT_both_terminateOscillate_Recurrent_smoothedVolumes_lessSteps --volume_ids samp0,samp1,samp2,samp3,samp4,samp5,samp6,samp7,samp8,samp9,samp10,samp11,samp12,samp13,samp14 --anatomyRewardWeight 1 --planeDistanceRewardWeight 1 --incrementalAnatomyReward --termination oscillate --exploring_steps 0 --recurrent --batch_size 8 --update_every 15 --dataroot [path/to/fakeCT/volumes] --load_size 128 --no_preprocess --n_steps_per_episode 125 --buffer_size 25000 --randomize_intensities

python test_trajectory.py --name 15Volume_CT_both_terminateOscillate_Recurrent_smoothedVolumes_lessSteps --dataroot [path-to/realCT/volumes] --volume_ids 128_LIDC-IDRI-0101,128_LIDC-IDRI-0102 --load latest --n_steps 125 --no_preprocess --realCT
  1. train our best agent on fake US environment
python train.py --name 15Volumes_easyObjective20_CT2USbestModel_bestRL --easy_objective --n_steps_per_episode 50 --buffer_size 10000 --volume_ids samp0,samp1,samp2,samp3,samp4,samp5,samp6,samp7,samp8,samp9,samp10,samp11,samp12,samp13,samp14 --dataroot [path/to/XCAT/volumes(must rotate)] --anatomyRewardWeight 1 --planeDistanceRewardWeight 1 --incrementalAnatomyReward --termination oscillate --exploring_steps 0 --batch_size 8 --update_every 12 --recurrent --CT2US --ct2us_model_name bestCT2US

python test_trajectory.py --name 15Volumes_easyObjective20_CT2USbestModel_bestRL --dataroot [path/to/XCAT/volumes(must rotate)] --volume_ids samp15,samp16,samp17,samp18,samp19 --easy_objective --n_steps 50 --CT2US --ct2us_model_name bestCT2US --load latest

Acknowledgements

Work done with the help of Hadrien Reynaud. Our CT2US models are built upon the CT2US simulation repo, which itself is heavily based on CycleGAN-and-pix2pix and CUT repos.

Owner
Cesare Magnetti
Cesare Magnetti
Multi-view 3D reconstruction using neural rendering. Unofficial implementation of UNISURF, VolSDF, NeuS and more.

Volume rendering + 3D implicit surface Showcase What? previous: surface rendering; now: volume rendering previous: NeRF's volume density; now: implici

Jianfei Guo 682 Jan 04, 2023
Identifying Stroke Indicators Using Rough Sets

Identifying Stroke Indicators Using Rough Sets With the spirit of reproducible research, this repository contains all the codes required to produce th

Muhammad Salman Pathan 0 Jun 09, 2022
An experimentation and research platform to investigate the interaction of automated agents in an abstract simulated network environments.

CyberBattleSim April 8th, 2021: See the announcement on the Microsoft Security Blog. CyberBattleSim is an experimentation research platform to investi

Microsoft 1.5k Dec 25, 2022
Training data extraction on GPT-2

Training data extraction from GPT-2 This repository contains code for extracting training data from GPT-2, following the approach outlined in the foll

Florian Tramer 62 Dec 07, 2022
Research shows Google collects 20x more data from Android than Apple collects from iOS. Block this non-consensual telemetry using pihole blocklists.

pihole-antitelemetry Research shows Google collects 20x more data from Android than Apple collects from iOS. Block both using these pihole lists. Proj

Adrian Edwards 290 Jan 09, 2023
Extracts data from the database for a graph-node and stores it in parquet files

subgraph-extractor Extracts data from the database for a graph-node and stores it in parquet files Installation For developing, it's recommended to us

Cardstack 0 Jan 10, 2022
A production-ready, scalable Indexer for the Jina neural search framework, based on HNSW and PSQL

🌟 HNSW + PostgreSQL Indexer HNSWPostgreSQLIndexer Jina is a production-ready, scalable Indexer for the Jina neural search framework. It combines the

Jina AI 25 Oct 14, 2022
A library for building and serving multi-node distributed faiss indices.

About Distributed faiss index service. A lightweight library that lets you work with FAISS indexes which don't fit into a single server memory. It fol

Meta Research 170 Dec 30, 2022
用强化学习DQN算法,训练AI模型来玩合成大西瓜游戏,提供Keras版本和PARL(paddle)版本

用强化学习玩合成大西瓜 代码地址:https://github.com/Sharpiless/play-daxigua-using-Reinforcement-Learning 用强化学习DQN算法,训练AI模型来玩合成大西瓜游戏,提供Keras版本、PARL(paddle)版本和pytorch版本

72 Dec 17, 2022
Diffgram - Supervised Learning Data Platform

Data Annotation, Data Labeling, Annotation Tooling, Training Data for Machine Learning

Diffgram 1.6k Jan 07, 2023
AI创造营 :Metaverse启动机之重构现世,结合PaddlePaddle 和 Wechaty 创造自己的聊天机器人

paddle-wechaty-Zodiac AI创造营 :Metaverse启动机之重构现世,结合PaddlePaddle 和 Wechaty 创造自己的聊天机器人 12星座若穿越科幻剧,会拥有什么超能力呢?快来迎接你的专属超能力吧! 现在很多年轻人都喜欢看科幻剧,像是复仇者系列,里面有很多英雄、超

105 Dec 22, 2022
Hyperparameter tuning for humans

KerasTuner KerasTuner is an easy-to-use, scalable hyperparameter optimization framework that solves the pain points of hyperparameter search. Easily c

Keras 2.6k Dec 27, 2022
A Real-Time-Strategy game for Deep Learning research

Description DeepRTS is a high-performance Real-TIme strategy game for Reinforcement Learning research. It is written in C++ for performance, but provi

Centre for Artificial Intelligence Research (CAIR) 156 Dec 19, 2022
QuickAI is a Python library that makes it extremely easy to experiment with state-of-the-art Machine Learning models.

QuickAI is a Python library that makes it extremely easy to experiment with state-of-the-art Machine Learning models.

152 Jan 02, 2023
SimDeblur is a simple framework for image and video deblurring, implemented by PyTorch

SimDeblur (Simple Deblurring) is an open source framework for image and video deblurring toolbox based on PyTorch, which contains most deep-learning based state-of-the-art deblurring algorithms. It i

220 Jan 07, 2023
Instance Segmentation by Jointly Optimizing Spatial Embeddings and Clustering Bandwidth

Instance segmentation by jointly optimizing spatial embeddings and clustering bandwidth This codebase implements the loss function described in: Insta

209 Dec 07, 2022
TraSw for FairMOT - A Single-Target Attack example (Attack ID: 19; Screener ID: 24):

TraSw for FairMOT A Single-Target Attack example (Attack ID: 19; Screener ID: 24): Fig.1 Original Fig.2 Attacked By perturbing only two frames in this

Derry Lin 21 Dec 21, 2022
Designing a Minimal Retrieve-and-Read System for Open-Domain Question Answering (NAACL 2021)

Designing a Minimal Retrieve-and-Read System for Open-Domain Question Answering Abstract In open-domain question answering (QA), retrieve-and-read mec

Clova AI Research 34 Apr 13, 2022
Perfect implement. Model shared. x0.5 (Top1:60.646) and 1.0x (Top1:69.402).

Shufflenet-v2-Pytorch Introduction This is a Pytorch implementation of faceplusplus's ShuffleNet-v2. For details, please read the following papers:

423 Dec 07, 2022
Deeper insights into graph convolutional networks for semi-supervised learning

deeper_insights_into_GCNs Deeper insights into graph convolutional networks for semi-supervised learning References data and utils.py come from Implem

Davidham3 17 Dec 16, 2022