MultiMix: Sparingly Supervised, Extreme Multitask Learning From Medical Images (ISBI 2021, MELBA 2021)

Overview

MultiMix

This repository contains the implementation of MultiMix. Our publications for this project are listed below:

"MultiMix: Sparingly Supervised, Extreme Multitask Learning From Medical Images," by Ayaan Haque, Abdullah-Al-Zubaer Imran, Adam Wang, and Demetri Terzopoulos. In ISBI, 2021.

"Generalized Multi-Task Learning from Substantially Unlabeled Multi-Source Medical Image Data," by Ayaan Haque, Abdullah-Al-Zubaer Imran, Adam Wang, and Demetri Terzopoulos. In MELBA, 2021.

Our proposed model performs joint semi-supervised classification and segmentation by employing a confidence-based augmentation strategy for semi-supervised classification along with a novel saliency bridge module that guides segmentation and provides explainability for the joint tasks.

Abstract

Semi-supervised learning via learning from limited quantities of labeled data has been investigated as an alternative to supervised counterparts. Maximizing knowledge gains from copious unlabeled data benefit semi-supervised learning settings. Moreover, learning multiple tasks within the same model further improves model generalizability. We propose a novel multitask learning model, namely MultiMix, which jointly learns disease classification and anatomical segmentation in a sparingly supervised manner, while preserving explainability through bridge saliency between the two tasks. Our extensive experimentation with varied quantities of labeled data in the training sets justify the effectiveness of our multitasking model for the classification of pneumonia and segmentation of lungs from chest X-ray images. Moreover, both in-domain and cross-domain evaluations across the tasks further showcase the potential of our model to adapt to challenging generalization scenarios.

Model

Figure

For sparingly-supervised classification, we leverage data augmentation and pseudo-labeling. We take an unlabeled image and perform two separate augmentations. A single unlabeled image is first weakly augmented, and from that weakly augmented version of the image, a pseudo-label is assumed based on the prediction from the current state of the model. Secondly, the same unlabeled image is then augmented strongly, and a loss is calculated with the pseudo-label from the weakly augmented image and the strongly augmented image itself. Note that this image-label pair is retained only if the confidence with which the model generates the pseudo-label is above a tuned threshold, which prevents the model from learning from incorrect and poor labels.

For sparingly-supervised segmentation, we generate saliency maps based on the predicted classes using the gradients of the encoder. While the segmentation images do not necessarily represent pneumonia, the classification task, the generated maps highlight the lungs, creating images at the final segmentation resolution. These saliency maps can be used to guide the segmentation during the decoder phase, yielding improved segmentation while learning from limited labeled data. In our algorithm, the generated saliency maps are concatenated with the input images, downsampled, and added to the feature maps input to the first decoder stage. Moreover, to ensure consistency, we compute the KL divergence between segmentation predictions for labeled and unlabeled examples. This penalizes the model from making predictions that are increasingly different than those of the labeled data, which helps the model fit more appropriately for the unlabeled data.

Results

A brief summary of our results are shown below. Our algorithm MultiMix is compared to various baselines. In the table, the best fully-supervised scores are underlined and the best semi-supervised scores are bolded.

Results

Boundaries

Code

The code has been written in Python using the Pytorch framework. Training requries a GPU. We provide a Jupyter Notebook, which can be run in Google Colab, containing the algorithm in a usable version. Open MultiMix.ipynb and run it through. The notebook includes annotations to follow along. Open the sample_data folder and use the classification and segmentation sample images for making predictions. Load multimix_trained_model.pth and make predictions on the provided images. Uncomment the training cell to train the model.

Citation

If you find this repo or the paper useful, please cite:

ISBI Paper

@inproceedings{haque2020multimix,
      author={Haque, Ayaan and Imran, Abdullah-Al-Zubaer and Wang, Adam and Terzopoulos, Demetri},
      booktitle={2021 IEEE 18th International Symposium on Biomedical Imaging (ISBI)}, 
      title={Multimix: Sparingly-Supervised, Extreme Multitask Learning from Medical Images}, 
      year={2021},
      volume={},
      number={},
      pages={693-696},
      doi={10.1109/ISBI48211.2021.9434167}
}

MELBA Paper

To be released
Owner
Ayaan Haque
“Major League Hacker 💻” Builder 🧱 Learning about learning
Ayaan Haque
Rendering Point Clouds with Compute Shaders

Compute Shader Based Point Cloud Rendering This repository contains the source code to our techreport: Rendering Point Clouds with Compute Shaders and

Markus Schütz 460 Jan 05, 2023
ICLR 2021 i-Mix: A Domain-Agnostic Strategy for Contrastive Representation Learning

Introduction PyTorch code for the ICLR 2021 paper [i-Mix: A Domain-Agnostic Strategy for Contrastive Representation Learning]. @inproceedings{lee2021i

Kibok Lee 68 Nov 27, 2022
Implementation of Shape and Electrostatic similarity metric in deepFMPO.

DeepFMPO v3D Code accompanying the paper "On the value of using 3D-shape and electrostatic similarities in deep generative methods". The paper can be

34 Nov 28, 2022
Implementation of ICCV 2021 oral paper -- A Novel Self-Supervised Learning for Gaussian Mixture Model

SS-GMM Implementation of ICCV 2021 oral paper -- Self-Supervised Image Prior Learning with GMM from a Single Noisy Image with supplementary material R

HUST-The Tan Lab 4 Dec 05, 2022
Rule-based Customer Segmentation

Rule-based Customer Segmentation Business Problem A game company wants to create level-based new customer definitions (personas) by using some feature

Cem Çaluk 2 Jan 03, 2022
Spectral Temporal Graph Neural Network (StemGNN in short) for Multivariate Time-series Forecasting

Spectral Temporal Graph Neural Network for Multivariate Time-series Forecasting This repository is the official implementation of Spectral Temporal Gr

Microsoft 306 Dec 29, 2022
S2-BNN: Bridging the Gap Between Self-Supervised Real and 1-bit Neural Networks via Guided Distribution Calibration (CVPR 2021)

S2-BNN (Self-supervised Binary Neural Networks Using Distillation Loss) This is the official pytorch implementation of our paper: "S2-BNN: Bridging th

Zhiqiang Shen 52 Dec 24, 2022
Irrigation controller for Home Assistant

Irrigation Unlimited This integration is for irrigation systems large and small. It can offer some complex arrangements without large and messy script

Robert Cook 176 Jan 02, 2023
CR-Fill: Generative Image Inpainting with Auxiliary Contextual Reconstruction. ICCV 2021

crfill Usage | Web App | | Paper | Supplementary Material | More results | code for paper ``CR-Fill: Generative Image Inpainting with Auxiliary Contex

182 Dec 20, 2022
TensorFlow for Raspberry Pi

TensorFlow on Raspberry Pi It's officially supported! As of TensorFlow 1.9, Python wheels for TensorFlow are being officially supported. As such, this

Sam Abrahams 2.2k Dec 16, 2022
Sequence to Sequence (seq2seq) Recurrent Neural Network (RNN) for Time Series Forecasting

Sequence to Sequence (seq2seq) Recurrent Neural Network (RNN) for Time Series Forecasting Note: You can find here the accompanying seq2seq RNN forecas

Guillaume Chevalier 1k Dec 25, 2022
LQM - Improving Object Detection by Estimating Bounding Box Quality Accurately

Improving Object Detection by Estimating Bounding Box Quality Accurately Abstract Object detection aims to locate and classify object instances in ima

IM Lab., POSTECH 0 Sep 28, 2022
Reimplementation of Dynamic Multi-scale filters for Semantic Segmentation.

Paddle implementation of Dynamic Multi-scale filters for Semantic Segmentation.

Hongqiang.Wang 2 Nov 01, 2021
Python Library for learning (Structure and Parameter) and inference (Statistical and Causal) in Bayesian Networks.

pgmpy pgmpy is a python library for working with Probabilistic Graphical Models. Documentation and list of algorithms supported is at our official sit

pgmpy 2.2k Jan 03, 2023
A simple root calculater for python

Root A simple root calculater Usage/Examples python3 root.py 9 3 4 # Order: number - grid - number of decimals # Output: 2.08

Reza Hosseinzadeh 5 Feb 10, 2022
QHack—the quantum machine learning hackathon

Official repo for QHack—the quantum machine learning hackathon

Xanadu 72 Dec 21, 2022
This is an example of object detection on Micro bacterium tuberculosis using Mask-RCNN

Mask-RCNN on Mycobacterium tuberculosis This is an example of object detection on Mycobacterium Tuberculosis using Mask RCNN. Implement of Mask R-CNN

Jun-En Ding 1 Sep 16, 2021
Implementation of Graph Transformer in Pytorch, for potential use in replicating Alphafold2

Graph Transformer - Pytorch Implementation of Graph Transformer in Pytorch, for potential use in replicating Alphafold2. This was recently used by bot

Phil Wang 97 Dec 28, 2022
Unified Pre-training for Self-Supervised Learning and Supervised Learning for ASR

UniSpeech The family of UniSpeech: UniSpeech (ICML 2021): Unified Pre-training for Self-Supervised Learning and Supervised Learning for ASR UniSpeech-

Microsoft 282 Jan 09, 2023
Pytorch code for "Text-Independent Speaker Verification Using 3D Convolutional Neural Networks".

:speaker: Deep Learning & 3D Convolutional Neural Networks for Speaker Verification

Amirsina Torfi 114 Dec 18, 2022