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
VLG-Net: Video-Language Graph Matching Networks for Video Grounding

VLG-Net: Video-Language Graph Matching Networks for Video Grounding Introduction Official repository for VLG-Net: Video-Language Graph Matching Networ

Mattia Soldan 25 Dec 04, 2022
The all new way to turn your boring vector meshes into the new fad in town; Voxels!

Voxelator The all new way to turn your boring vector meshes into the new fad in town; Voxels! Notes: I have not tested this on a rotated mesh. With fu

6 Feb 03, 2022
pytorch implementation of dftd2 & dftd3

torch-dftd pytorch implementation of dftd2 [1] & dftd3 [2, 3] Install # Install from pypi pip install torch-dftd # Install from source (for developer

33 Nov 28, 2022
A large dataset of 100k Google Satellite and matching Map images, resembling pix2pix's Google Maps dataset.

Larger Google Sat2Map dataset This dataset extends the aerial ⟷ Maps dataset used in pix2pix (Isola et al., CVPR17). The provide script download_sat2m

34 Dec 28, 2022
Segment axon and myelin from microscopy data using deep learning

Segment axon and myelin from microscopy data using deep learning. Written in Python. Using the TensorFlow framework. Based on a convolutional neural network architecture. Pixels are classified as eit

NeuroPoly 103 Nov 29, 2022
Automatic caption evaluation metric based on typicality analysis.

SeMantic and linguistic UndeRstanding Fusion (SMURF) Automatic caption evaluation metric described in the paper "SMURF: SeMantic and linguistic UndeRs

Joshua Feinglass 6 Jan 09, 2022
Pneumonia Detection using machine learning - with PyTorch

Pneumonia Detection Pneumonia Detection using machine learning. Training was done in colab: DEMO: Result (Confusion Matrix): Data I uploaded my datase

Wilhelm Berghammer 12 Jul 07, 2022
Dataset for the Research2Clinics @ NeurIPS 2021 Paper: What Do You See in this Patient? Behavioral Testing of Clinical NLP Models

Behavioral Testing of Clinical NLP Models This repository contains code for testing the behavior of clinical prediction models based on patient letter

Betty van Aken 2 Sep 20, 2022
code for paper "Does Unsupervised Architecture Representation Learning Help Neural Architecture Search?"

Does Unsupervised Architecture Representation Learning Help Neural Architecture Search? Code for paper: Does Unsupervised Architecture Representation

39 Dec 17, 2022
Distributed Asynchronous Hyperparameter Optimization better than HyperOpt.

UltraOpt : Distributed Asynchronous Hyperparameter Optimization better than HyperOpt. UltraOpt is a simple and efficient library to minimize expensive

98 Aug 16, 2022
Official implementation of VQ-Diffusion

Official implementation of VQ-Diffusion: Vector Quantized Diffusion Model for Text-to-Image Synthesis

Microsoft 592 Jan 03, 2023
Warning: This project does not have any current developer. See bellow.

Pylearn2: A machine learning research library Warning : This project does not have any current developer. We will continue to review pull requests and

Laboratoire d’Informatique des Systèmes Adaptatifs 2.7k Dec 26, 2022
The repo of the preprinting paper "Labels Are Not Perfect: Inferring Spatial Uncertainty in Object Detection"

Inferring Spatial Uncertainty in Object Detection A teaser version of the code for the paper Labels Are Not Perfect: Inferring Spatial Uncertainty in

ZINING WANG 21 Mar 03, 2022
Lenia - Mathematical Life Forms

For full version list, see Timeline in Lenia portal [2020-10-13] Update Python version with multi-kernel and multi-channel extensions (v3.4 LeniaNDK.p

Bert Chan 3.1k Dec 28, 2022
Deep Learning for Natural Language Processing SS 2021 (TU Darmstadt)

Deep Learning for Natural Language Processing SS 2021 (TU Darmstadt) Task Training huge unsupervised deep neural networks yields to strong progress in

2 Aug 05, 2022
MinkLoc3D-SI: 3D LiDAR place recognition with sparse convolutions,spherical coordinates, and intensity

MinkLoc3D-SI: 3D LiDAR place recognition with sparse convolutions,spherical coordinates, and intensity Introduction The 3D LiDAR place recognition aim

16 Dec 08, 2022
商品推荐系统

商品top50推荐系统 问题建模 本项目的数据集给出了15万左右的用户以及12万左右的商品, 以及对应的经过脱敏处理的用户特征和经过预处理的商品特征,旨在为用户推荐50个其可能购买的商品。 推荐系统架构方案 本项目采用传统的召回+排序的方案。

107 Dec 29, 2022
Scikit-learn compatible estimation of general graphical models

skggm : Gaussian graphical models using the scikit-learn API In the last decade, learning networks that encode conditional independence relationships

213 Jan 02, 2023
Explicable Reward Design for Reinforcement Learning Agents [NeurIPS'21]

Explicable Reward Design for Reinforcement Learning Agents [NeurIPS'21]

3 May 12, 2022
This is the official PyTorch implementation for "Mesa: A Memory-saving Training Framework for Transformers".

A Memory-saving Training Framework for Transformers This is the official PyTorch implementation for Mesa: A Memory-saving Training Framework for Trans

Zhuang AI Group 105 Dec 06, 2022