Accepted at ICCV-2021: Workshop on Computer Vision for Automated Medical Diagnosis (CVAMD)

Overview

Is it Time to Replace CNNs with Transformers for Medical Images?

Accepted at ICCV-2021: Workshop on Computer Vision for Automated Medical Diagnosis (CVAMD)

Convolutional Neural Networks (CNNs) have reigned for a decade as the de facto approach to automated medical image diagnosis. Recently, vision transformers (ViTs) have appeared as a competitive alternative to CNNs, yielding similar levels of performance while possessing several interesting properties that could prove beneficial for medical imaging tasks. In this work, we explore whether it is time to move to transformer-based models or if we should keep working with CNNs - can we trivially switch to transformers? If so, what are the advantages and drawbacks of switching to ViTs for medical image diagnosis? We consider these questions in a series of experiments on three mainstream medical image datasets. Our findings show that, while CNNs perform better when trained from scratch, off-the-shelf vision transformers using default hyperparameters are on par with CNNs when pretrained on ImageNet, and outperform their CNN counterparts when pretrained using self-supervision.

Enviroment setup

To build using the docker file use the following command
docker build -f Dockerfile -t med_trans \
--build-arg UID=$(id -u) \
--build-arg GID=$(id -g) \
--build-arg USER=$(whoami) \
--build-arg GROUP=$(id -g -n) .

Usage:

  • Training: python classification.py
  • Training with DINO: python classification.py --dino
  • Testing (using json file): python classification.py --test
  • Testing (using saved checkpoint): python classification.py --checkpoint CheckpointName --test
  • Fine tune the learning rate: python classification.py --lr_finder

Configuration (json file)

  • dataset_params
    • dataset: Name of the dataset (ISIC2019, APTOS2019, DDSM)
    • data_location: Location that the datasets are located
    • train_transforms: Defines the augmentations for the training set
    • val_transforms: Defines the augmentations for the validation set
    • test_transforms: Defines the augmentations for the test set
  • dataloader_params: Defines the dataloader parameters (batch size, num_workers etc)
  • model_params
    • backbone_type: type of the backbone model (e.g. resnet50, deit_small)
    • transformers_params: Additional hyperparameters for the transformers
      • img_size: The size of the input images
      • patch_size: The patch size to use for patching the input
      • pretrained_type: If supervised it loads ImageNet weights that come from supervised learning. If dino it loads ImageNet weights that come from sefl-supervised learning with DINO.
    • pretrained: If True, it uses ImageNet pretrained weights
    • freeze_backbone: If True, it freezes the backbone network
    • DINO: It controls the hyperparameters for when training with DINO
  • optimization_params: Defines learning rate, weight decay, learning rate schedule etc.
    • optimizer: The default optimizer's parameters
      • type: The optimizer's type
      • autoscale_rl: If True it scales the learning rate based on the bach size
      • params: Defines the learning rate and the weght decay value
    • LARS_params: If use=True and bach size >= batch_act_thresh it uses LARS as optimizer
    • scheduler: Defines the learning rate schedule
      • type: A list of schedulers to use
      • params: Sets the hyperparameters of the optimizers
  • training_params: Defines the training parameters
    • model_name: The model's name
    • val_every: Sets the frequency of the valiidation step (epochs - float)
    • log_every: Sets the frequency of the logging (iterations - int)
    • save_best_model: If True it will save the bast model based on the validation metrics
    • log_embeddings: If True it creates U-maps on each validation step
    • knn_eval: If True, during validation it will also calculate the scores based on knn evalutation
    • grad_clipping: If > 0, it clips the gradients
    • use_tensorboard: If True, it will use tensorboard for logging instead of wandb
    • use_mixed_precision: If True, it will use mixed precision
    • save_dir: The dir to save the model's checkpoints etc.
  • system_params: Defines if GPUs are used, which GPUs etc.
  • log_params: Project and run name for the logger (we are using Weights & Biases by default)
  • lr_finder: Define the learning rate parameters
    • grid_search_params
      • min_pow, min_pow: The min and max power of 10 for the search
      • resolution: How many different learning rates to try
      • n_epochs: maximum epochs of the training session
      • random_lr: If True, it uses random learning rates withing the accepted range
      • keep_schedule: If True, it keeps the learning rate schedule
      • report_intermediate_steps: If True, it logs if validates throughout the training sessions
  • transfer_learning_params: Turns on or off transfer learning from pretrained models
    • use_pretrained: If True, it will use a pretrained model as a backbone
    • pretrained_model_name: The pretrained model's name
    • pretrained_path: If the prerained model's dir
Owner
Christos Matsoukas
PhD student in Deep Learning @ KTH Royal Institute of Technology
Christos Matsoukas
Github for the conference paper GLOD-Gaussian Likelihood OOD detector

FOOD - Fast OOD Detector Pytorch implamentation of the confernce peper FOOD arxiv link. Abstract Deep neural networks (DNNs) perform well at classifyi

17 Jun 19, 2022
Implementation of Shape Generation and Completion Through Point-Voxel Diffusion

Shape Generation and Completion Through Point-Voxel Diffusion Project | Paper Implementation of Shape Generation and Completion Through Point-Voxel Di

Linqi Zhou 103 Dec 29, 2022
AAAI 2022 paper - Unifying Model Explainability and Robustness for Joint Text Classification and Rationale Extraction

AT-BMC Unifying Model Explainability and Robustness for Joint Text Classification and Rationale Extraction (AAAI 2022) Paper Prerequisites Install pac

16 Nov 26, 2022
A semantic segmentation toolbox based on PyTorch

Introduction vedaseg is an open source semantic segmentation toolbox based on PyTorch. Features Modular Design We decompose the semantic segmentation

407 Dec 15, 2022
The InterScript dataset contains interactive user feedback on scripts generated by a T5-XXL model.

Interscript The Interscript dataset contains interactive user feedback on a T5-11B model generated scripts. Dataset data.json contains the data in an

AI2 8 Dec 01, 2022
This is Official implementation for "Pose-guided Feature Disentangling for Occluded Person Re-Identification Based on Transformer" in AAAI2022

PFD:Pose-guided Feature Disentangling for Occluded Person Re-identification based on Transformer This repo is the official implementation of "Pose-gui

Tao Wang 93 Dec 18, 2022
Visualization toolkit for neural networks in PyTorch! Demo -->

FlashTorch A Python visualization toolkit, built with PyTorch, for neural networks in PyTorch. Neural networks are often described as "black box". The

Misa Ogura 692 Dec 29, 2022
A set of examples around hub for creating and processing datasets

Examples for Hub - Dataset Format for AI A repository showcasing examples of using Hub Uploading Dataset Places365 Colab Tutorials Notebook Link Getti

Activeloop 11 Dec 14, 2022
Adjust Decision Boundary for Class Imbalanced Learning

Adjusting Decision Boundary for Class Imbalanced Learning This repository is the official PyTorch implementation of WVN-RS, introduced in Adjusting De

Peyton Byungju Kim 16 Jan 04, 2023
This is a collection of simple PyTorch implementations of neural networks and related algorithms. These implementations are documented with explanations,

labml.ai Deep Learning Paper Implementations This is a collection of simple PyTorch implementations of neural networks and related algorithms. These i

labml.ai 16.4k Jan 09, 2023
DirectVoxGO reconstructs a scene representation from a set of calibrated images capturing the scene.

DirectVoxGO reconstructs a scene representation from a set of calibrated images capturing the scene. We achieve NeRF-comparable novel-view synthesis quality with super-fast convergence.

sunset 709 Dec 31, 2022
Hcpy - Interface with Home Connect appliances in Python

Interface with Home Connect appliances in Python This is a very, very beta inter

Trammell Hudson 116 Dec 27, 2022
A Home Assistant custom component for Lobe. Lobe is an AI tool that can classify images.

Lobe This is a Home Assistant custom component for Lobe. Lobe is an AI tool that can classify images. This component lets you easily use an exported m

Kendell R 4 Feb 28, 2022
Text completion with Hugging Face and TensorFlow.js running on Node.js

Katana ML Text Completion 🤗 Description Runs with with Hugging Face DistilBERT and TensorFlow.js on Node.js distilbert-model - converter from Hugging

Katana ML 2 Nov 04, 2022
Pytorch implementation for RelTransformer

RelTransformer Our Architecture This is a Pytorch implementation for RelTransformer The implementation for Evaluating on VG200 can be found here Requi

Vision CAIR Research Group, KAUST 21 Nov 22, 2022
Jiminy Cricket Environment (NeurIPS 2021)

Jiminy Cricket This is the repository for "What Would Jiminy Cricket Do? Towards Agents That Behave Morally" by Dan Hendrycks*, Mantas Mazeika*, Andy

Dan Hendrycks 15 Aug 29, 2022
[KDD 2021, Research Track] DiffMG: Differentiable Meta Graph Search for Heterogeneous Graph Neural Networks

DiffMG This repository contains the code for our KDD 2021 Research Track paper: DiffMG: Differentiable Meta Graph Search for Heterogeneous Graph Neura

AutoML Research 24 Nov 29, 2022
A pytorch implementation of MBNET: MOS PREDICTION FOR SYNTHESIZED SPEECH WITH MEAN-BIAS NETWORK

Pytorch-MBNet A pytorch implementation of MBNET: MOS PREDICTION FOR SYNTHESIZED SPEECH WITH MEAN-BIAS NETWORK Training To train a new model, please ru

46 Dec 28, 2022
FluidNet re-written with ATen tensor lib

fluidnet_cxx: Accelerating Fluid Simulation with Convolutional Neural Networks. A PyTorch/ATen Implementation. This repository is based on the paper,

JoliBrain 50 Jun 07, 2022
Dilated Convolution with Learnable Spacings PyTorch

Dilated-Convolution-with-Learnable-Spacings-PyTorch Ismail Khalfaoui Hassani Dilated Convolution with Learnable Spacings (abbreviated to DCLS) is a no

15 Dec 09, 2022