Robust Semi-Supervised Learning for Histopathology Images through Self-Supervision Guided Out-of-Distribution Scoring

03/17/2023
by   Nikhil Cherian Kurian, et al.
0

Semi-supervised learning (semi-SL) is a promising alternative to supervised learning for medical image analysis when obtaining good quality supervision for medical imaging is difficult. However, semi-SL assumes that the underlying distribution of unaudited data matches that of the few labeled samples, which is often violated in practical settings, particularly in medical images. The presence of out-of-distribution (OOD) samples in the unlabeled training pool of semi-SL is inevitable and can reduce the efficiency of the algorithm. Common preprocessing methods to filter out outlier samples may not be suitable for medical images that involve a wide range of anatomical structures and rare morphologies. In this paper, we propose a novel pipeline for addressing open-set supervised learning challenges in digital histology images. Our pipeline efficiently estimates an OOD score for each unlabelled data point based on self-supervised learning to calibrate the knowledge needed for a subsequent semi-SL framework. The outlier score derived from the OOD detector is used to modulate sample selection for the subsequent semi-SL stage, ensuring that samples conforming to the distribution of the few labeled samples are more frequently exposed to the subsequent semi-SL framework. Our framework is compatible with any semi-SL framework, and we base our experiments on the popular Mixmatch semi-SL framework. We conduct extensive studies on two digital pathology datasets, Kather colorectal histology dataset and a dataset derived from TCGA-BRCA whole slide images, and establish the effectiveness of our method by comparing with popular methods and frameworks in semi-SL algorithms through various experiments.

READ FULL TEXT

page 1

page 2

page 5

page 7

research
09/22/2021

3N-GAN: Semi-Supervised Classification of X-Ray Images with a 3-Player Adversarial Framework

The success of deep learning for medical imaging tasks, such as classifi...
research
08/16/2021

Semi-Supervised Siamese Network for Identifying Bad Data in Medical Imaging Datasets

Noisy data present in medical imaging datasets can often aid the develop...
research
07/18/2023

Accuracy versus time frontiers of semi-supervised and self-supervised learning on medical images

For many applications of classifiers to medical images, a trustworthy la...
research
06/15/2023

A Comparison of Self-Supervised Pretraining Approaches for Predicting Disease Risk from Chest Radiograph Images

Deep learning is the state-of-the-art for medical imaging tasks, but req...
research
04/08/2023

Towards Open-Scenario Semi-supervised Medical Image Classification

Semi-supervised learning (SSL) has attracted much attention since it red...
research
03/21/2023

Adaptive Negative Evidential Deep Learning for Open-set Semi-supervised Learning

Semi-supervised learning (SSL) methods assume that labeled data, unlabel...
research
05/23/2023

A Semi-Supervised Learning Approach for Ranging Error Mitigation Based on UWB Waveform

Localization systems based on ultra-wide band (UWB) measurements can hav...

Please sign up or login with your details

Forgot password? Click here to reset