SCI-AIDE : High-fidelity Few-shot Histopathology Image Synthesis for Rare Cancer Diagnosis

Related tags

Deep LearningSCI-AIDE
Overview

SCI-AIDE : High-fidelity Few-shot Histopathology Image Synthesis for Rare Cancer Diagnosis

Pretrained Models

In this work, we created synthetic tissue microscopy images using few-shot learning and developed a digital pathology pipeline called SCI-AIDE to improve diagnostic accuracy. Since rare cancers encompass a very large group of tumours, we used childhood cancer histopathology images to develop and test our system. Our computational experiments demonstrate that the synthetic images significantly enhances performance of various AI classifiers.

Example Results

Real and Synthetic Images

Dataset

In this study, we conducted experiments using histopathological whole slide images(WSIs) of five rare childhood cancer types and their sub-types, namely ependymoma (anaplastic, myxopapillary, subependymoma and no-subtype), medulloblastoma (anaplastic, desmoplastic and no-subtype), Wilms tumour, also known as nephroblastoma (epithelial, blastomatous, stromal, Wilms epithelial-stromal, epithelial-blastomatous and blastomatous-stromal), pilocytic astrocytoma and Ewing sarcoma.

Tumour histopathology WSIs are collected at Ege University, Turkey and Aperio AT2 scanner digitised the WSIs at 20× magnification. WSIs will be available publicly soon

Prerequisites

  • Linux (Tested on Red Hat Enterprise Linux 8.5)
  • NVIDIA GPU (Tested on Nvidia GeForce RTX 3090 Ti x 4 on local workstations, and Nvidia A100 GPUs on TRUBA
  • Python (3.9.7), matplotlib (3.4.3), numpy (1.21.2), opencv (4.5.3), openslide-python (1.1.1), openslides (3.4.1), pandas (1.3.3), pillow (8.3.2), PyTorch (1.9.0), scikit-learn (1.0), scipy (1.7.1), tensorboardx (2.4), torchvision (0.10.1).

Getting started

  • Clone this repo:
git clone https://github.com/ekurtulus/SCI-AIDE.git
cd SCI-AIDE
  • Install PyTorch 3.9 and other dependencies (e.g., PyTorch).

  • For pip users, please type the command pip install -r requirements.txt.

  • For Conda users, you can create a new Conda environment using conda env create -f environment.yml.

Synthetic Images Generation

  • Clone FastGAN repo:
git clone https://github.com/odegeasslbc/FastGAN-pytorch.git
cd FastGAN-pytorch
  • Train the FastGAN model:
python classifer.py --path $REAL_IMAGE_DIR --iter 100000 --batch_size 16
  • Inference the FastGAN model:
python eval.py --ckpt $CKPT_PATH --n_sample $NUMBERS_OF_SAMPLE
  • Train the SCI-AIDE model:
python train.py --datapath $DATAPATH_PATH --model $MODEL --savepath $SAVING_PATH --task $TRAINING_TASK

The list of other arguments is as follows:

  • --lr : Learning rate (default: 5e-5)

  • --opt : Optimizers ( "Adam", "SGD", "RMSprop", "AdamW" , default= "SGD")

  • --batch-size : Batch size (default: 32)

  • --halftensor : Mixed presicion acivaiton

  • --epochs : Numbers of epochs

  • --scheduler : Learning scheduler ( "cosine", "multiplicative" , default="cosine")

  • --augmentation : Augmentation selection ( "randaugment", "autoaugment", "augmix", "none", default= "randaugment" )

  • --memory : Data reading selection ( "none", "cached", default= "none" )

  • Evaluation the SCI-AIDE model:

python wsi_attention.py --datapath $DATAPATH_PATH --model $MODEL --model_weights $MODEL_WEIGHT --output $OUTPUT_PATH --name $NAME --num_classes $NUM_CLASSES

The list of other arguments is as follows:

  • --attention_level : ("pixel", "patch", default="patch)

  • --cam : CAM selection ( "GradCAM", "ScoreCAM", "GradCAMPlusPlus", "AblationCAM", "XGradCAM", "EigenCAM", "FullGrad", default="EigenCAM" )

  • Diagnosis WSI with the SCI-AIDE model:

python wsi_diagnosis.py --task $DIAGNOSIS_TASK --datapath $WSI_PATH --output $OUTPUT_PATH --config $CONFIG_FILE_PATH --name $NAME

The list of other arguments is as follows:

  • --overlap : Patches overlaping raito (default :0 )
  • --patch_size : WSI oatching size (default : 1024 )
  • --heatmap : Heatmap inference activation
  • --white_threshold : White pathch elimiantion ration (default :0.3)

Apply a pre-trained SCI-AIDE model and evaluate

For reproducability, you can download the pretrained models for each algorithm here.

Issues

  • Please report all issues on the public forum.

License

© This code is made available under the GPLv3 License and is available for non-commercial academic purposes.

Reference

If you find our work useful in your research or if you use parts of this code please consider citing our paper:


Acknowledgments

Our code is developed based on pytorch-image-models. We also thank pytorch-fid for FID computation, and FastGAN-pytorch for the PyTorch implementation of FastGAN used in our single-image translation setting.

You might also like...
Deep generative modeling for time-stamped heterogeneous data, enabling high-fidelity models for a large variety of spatio-temporal domains.
Deep generative modeling for time-stamped heterogeneous data, enabling high-fidelity models for a large variety of spatio-temporal domains.

Neural Spatio-Temporal Point Processes [arxiv] Ricky T. Q. Chen, Brandon Amos, Maximilian Nickel Abstract. We propose a new class of parameterizations

《Towards High Fidelity Face Relighting with Realistic Shadows》(CVPR 2021)
《Towards High Fidelity Face Relighting with Realistic Shadows》(CVPR 2021)

Towards High Fidelity Face-Relighting with Realistic Shadows Andrew Hou, Ze Zhang, Michel Sarkis, Ning Bi, Yiying Tong, Xiaoming Liu. In CVPR, 2021. T

HiFi-GAN: High Fidelity Denoising and Dereverberation Based on Speech Deep Features in Adversarial Networks
HiFi-GAN: High Fidelity Denoising and Dereverberation Based on Speech Deep Features in Adversarial Networks

HiFiGAN Denoiser This is a Unofficial Pytorch implementation of the paper HiFi-GAN: High Fidelity Denoising and Dereverberation Based on Speech Deep F

Tensorflow python implementation of
Tensorflow python implementation of "Learning High Fidelity Depths of Dressed Humans by Watching Social Media Dance Videos"

Learning High Fidelity Depths of Dressed Humans by Watching Social Media Dance Videos This repository is the official tensorflow python implementation

UnivNet: A Neural Vocoder with Multi-Resolution Spectrogram Discriminators for High-Fidelity Waveform Generation

UnivNet UnivNet: A Neural Vocoder with Multi-Resolution Spectrogram Discriminators for High-Fidelity Waveform Generation. Training python train.py --c

Unofficial PyTorch Implementation of UnivNet: A Neural Vocoder with Multi-Resolution Spectrogram Discriminators for High-Fidelity Waveform Generation
Unofficial PyTorch Implementation of UnivNet: A Neural Vocoder with Multi-Resolution Spectrogram Discriminators for High-Fidelity Waveform Generation

UnivNet UnivNet: A Neural Vocoder with Multi-Resolution Spectrogram Discriminators for High-Fidelity Waveform Generation This is an unofficial PyTorch

Unofficial PyTorch Implementation of UnivNet: A Neural Vocoder with Multi-Resolution Spectrogram Discriminators for High-Fidelity Waveform Generation
Unofficial PyTorch Implementation of UnivNet: A Neural Vocoder with Multi-Resolution Spectrogram Discriminators for High-Fidelity Waveform Generation

UnivNet UnivNet: A Neural Vocoder with Multi-Resolution Spectrogram Discriminators for High-Fidelity Waveform Generation This is an unofficial PyTorch

A two-stage U-Net for high-fidelity denoising of historical recordings
A two-stage U-Net for high-fidelity denoising of historical recordings

A two-stage U-Net for high-fidelity denoising of historical recordings Official repository of the paper (not submitted yet): E. Moliner and V. Välimäk

PyTorch Implementation of DiffGAN-TTS: High-Fidelity and Efficient Text-to-Speech with Denoising Diffusion GANs
PyTorch Implementation of DiffGAN-TTS: High-Fidelity and Efficient Text-to-Speech with Denoising Diffusion GANs

DiffGAN-TTS - PyTorch Implementation PyTorch implementation of DiffGAN-TTS: High

Owner
Emirhan Kurtuluş
Emirhan Kurtuluş
Sequential model-based optimization with a `scipy.optimize` interface

Scikit-Optimize Scikit-Optimize, or skopt, is a simple and efficient library to minimize (very) expensive and noisy black-box functions. It implements

Scikit-Optimize 2.5k Jan 04, 2023
Object DGCNN and DETR3D, Our implementations are built on top of MMdetection3D.

Object DGCNN & DETR3D This repo contains the implementations of Object DGCNN (https://arxiv.org/abs/2110.06923) and DETR3D (https://arxiv.org/abs/2110

Wang, Yue 539 Jan 07, 2023
Training BERT with Compute/Time (Academic) Budget

Training BERT with Compute/Time (Academic) Budget This repository contains scripts for pre-training and finetuning BERT-like models with limited time

Intel Labs 263 Jan 07, 2023
Code basis for the paper "Camera Condition Monitoring and Readjustment by means of Noise and Blur" (2021)

Camera Condition Monitoring and Readjustment by means of Noise and Blur This repository contains the source code of the paper: Wischow, M., Gallego, G

7 Dec 22, 2022
Codes of paper "Unseen Object Amodal Instance Segmentation via Hierarchical Occlusion Modeling"

Unseen Object Amodal Instance Segmentation (UOAIS) Seunghyeok Back, Joosoon Lee, Taewon Kim, Sangjun Noh, Raeyoung Kang, Seongho Bak, Kyoobin Lee This

GIST-AILAB 92 Dec 13, 2022
Pytorch implementation of BRECQ, ICLR 2021

BRECQ Pytorch implementation of BRECQ, ICLR 2021 @inproceedings{ li&gong2021brecq, title={BRECQ: Pushing the Limit of Post-Training Quantization by Bl

Yuhang Li 148 Dec 28, 2022
Disentangled Cycle Consistency for Highly-realistic Virtual Try-On, CVPR 2021

Disentangled Cycle Consistency for Highly-realistic Virtual Try-On, CVPR 2021 [WIP] The code for CVPR 2021 paper 'Disentangled Cycle Consistency for H

ChongjianGE 94 Dec 11, 2022
YOLOv5 Series Multi-backbone, Pruning and quantization Compression Tool Box.

YOLOv5-Compression Update News Requirements 环境安装 pip install -r requirements.txt Evaluation metric Visdrone Model mAP ZhangYuan 719 Jan 02, 2023

TensorFlow Tutorials with YouTube Videos

TensorFlow Tutorials Original repository on GitHub Original author is Magnus Erik Hvass Pedersen Introduction These tutorials are intended for beginne

9.1k Jan 02, 2023
[ICML 2021] DouZero: Mastering DouDizhu with Self-Play Deep Reinforcement Learning | 斗地主AI

[ICML 2021] DouZero: Mastering DouDizhu with Self-Play Deep Reinforcement Learning DouZero is a reinforcement learning framework for DouDizhu (斗地主), t

Kwai Inc. 3.1k Jan 04, 2023
Real-Time SLAM for Monocular, Stereo and RGB-D Cameras, with Loop Detection and Relocalization Capabilities

ORB-SLAM2 Authors: Raul Mur-Artal, Juan D. Tardos, J. M. M. Montiel and Dorian Galvez-Lopez (DBoW2) 13 Jan 2017: OpenCV 3 and Eigen 3.3 are now suppor

Raul Mur-Artal 7.8k Dec 30, 2022
Deep Learning for Time Series Forecasting.

nixtlats:Deep Learning for Time Series Forecasting [nikstla] (noun, nahuatl) Period of time. State-of-the-art time series forecasting for pytorch. Nix

Nixtla 5 Dec 06, 2022
Lightweight, Portable, Flexible Distributed/Mobile Deep Learning with Dynamic, Mutation-aware Dataflow Dep Scheduler; for Python, R, Julia, Scala, Go, Javascript and more

Apache MXNet (incubating) for Deep Learning Master Docs License Apache MXNet (incubating) is a deep learning framework designed for both efficiency an

ROCm Software Platform 29 Nov 16, 2022
Self-Supervised Document-to-Document Similarity Ranking via Contextualized Language Models and Hierarchical Inference

Self-Supervised Document Similarity Ranking (SDR) via Contextualized Language Models and Hierarchical Inference This repo is the implementation for SD

Microsoft 36 Nov 28, 2022
Morphable Detector for Object Detection on Demand

Morphable Detector for Object Detection on Demand (ICCV 2021) PyTorch implementation of the paper Morphable Detector for Object Detection on Demand. I

9 Feb 23, 2022
The 1st place solution of track2 (Vehicle Re-Identification) in the NVIDIA AI City Challenge at CVPR 2021 Workshop.

AICITY2021_Track2_DMT The 1st place solution of track2 (Vehicle Re-Identification) in the NVIDIA AI City Challenge at CVPR 2021 Workshop. Introduction

Hao Luo 91 Dec 21, 2022
implementation of paper - You Only Learn One Representation: Unified Network for Multiple Tasks

YOLOR implementation of paper - You Only Learn One Representation: Unified Network for Multiple Tasks To reproduce the results in the paper, please us

Kin-Yiu, Wong 1.8k Jan 04, 2023
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
Object tracking implemented with YOLOv4, DeepSort, and TensorFlow.

Object tracking implemented with YOLOv4, DeepSort, and TensorFlow. YOLOv4 is a state of the art algorithm that uses deep convolutional neural networks to perform object detections. We can take the ou

The AI Guy 1.1k Dec 29, 2022
The lightweight PyTorch wrapper for high-performance AI research. Scale your models, not the boilerplate.

The lightweight PyTorch wrapper for high-performance AI research. Scale your models, not the boilerplate. Website • Key Features • How To Use • Docs •

Pytorch Lightning 21.1k Jan 01, 2023