Patch-level instance-group discrimination with pretext-invariant
learning for colitis scoring
- URL: http://arxiv.org/abs/2207.05192v1
- Date: Mon, 11 Jul 2022 21:06:29 GMT
- Title: Patch-level instance-group discrimination with pretext-invariant
learning for colitis scoring
- Authors: Ziang Xu, Sharib Ali, Soumya Gupta, Simon Leedham, James E East, Jens
Rittscher
- Abstract summary: We introduce a novel patch-level instance-group discrimination with pretext-invariant representation learning (PLD-PIRL) for self-supervised learning (SSL)
Our experiments demonstrate both improved accuracy and robustness compared to the baseline supervised network and several state-of-the-art SSL methods.
- Score: 2.691339855008848
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Inflammatory bowel disease (IBD), in particular ulcerative colitis (UC), is
graded by endoscopists and this assessment is the basis for risk stratification
and therapy monitoring. Presently, endoscopic characterisation is largely
operator dependant leading to sometimes undesirable clinical outcomes for
patients with IBD. We focus on the Mayo Endoscopic Scoring (MES) system which
is widely used but requires the reliable identification of subtle changes in
mucosal inflammation. Most existing deep learning classification methods cannot
detect these fine-grained changes which make UC grading such a challenging
task. In this work, we introduce a novel patch-level instance-group
discrimination with pretext-invariant representation learning (PLD-PIRL) for
self-supervised learning (SSL). Our experiments demonstrate both improved
accuracy and robustness compared to the baseline supervised network and several
state-of-the-art SSL methods. Compared to the baseline (ResNet50) supervised
classification our proposed PLD-PIRL obtained an improvement of 4.75% on
hold-out test data and 6.64% on unseen center test data for top-1 accuracy.
Related papers
- Improving Multiple Sclerosis Lesion Segmentation Across Clinical Sites:
A Federated Learning Approach with Noise-Resilient Training [75.40980802817349]
Deep learning models have shown promise for automatically segmenting MS lesions, but the scarcity of accurately annotated data hinders progress in this area.
We introduce a Decoupled Hard Label Correction (DHLC) strategy that considers the imbalanced distribution and fuzzy boundaries of MS lesions.
We also introduce a Centrally Enhanced Label Correction (CELC) strategy, which leverages the aggregated central model as a correction teacher for all sites.
arXiv Detail & Related papers (2023-08-31T00:36:10Z) - SPLAL: Similarity-based pseudo-labeling with alignment loss for
semi-supervised medical image classification [11.435826510575879]
Semi-supervised learning (SSL) methods can mitigate challenges by leveraging both labeled and unlabeled data.
SSL methods for medical image classification need to address two key challenges: (1) estimating reliable pseudo-labels for the images in the unlabeled dataset and (2) reducing biases caused by class imbalance.
In this paper, we propose a novel SSL approach, SPLAL, that effectively addresses these challenges.
arXiv Detail & Related papers (2023-07-10T14:53:24Z) - SSL-CPCD: Self-supervised learning with composite pretext-class
discrimination for improved generalisability in endoscopic image analysis [3.1542695050861544]
Deep learning-based supervised methods are widely popular in medical image analysis.
They require a large amount of training data and face issues in generalisability to unseen datasets.
We propose to explore patch-level instance-group discrimination and penalisation of inter-class variation using additive angular margin.
arXiv Detail & Related papers (2023-05-31T21:28:08Z) - Learning to diagnose cirrhosis from radiological and histological labels
with joint self and weakly-supervised pretraining strategies [62.840338941861134]
We propose to leverage transfer learning from large datasets annotated by radiologists, to predict the histological score available on a small annex dataset.
We compare different pretraining methods, namely weakly-supervised and self-supervised ones, to improve the prediction of the cirrhosis.
This method outperforms the baseline classification of the METAVIR score, reaching an AUC of 0.84 and a balanced accuracy of 0.75.
arXiv Detail & Related papers (2023-02-16T17:06:23Z) - An interpretable machine learning system for colorectal cancer diagnosis from pathology slides [2.7968867060319735]
This study is conducted with one of the largest WSI colorectal samples dataset with approximately 10,500 WSIs.
Our proposed method predicts, for the patch-based tiles, a class based on the severity of the dysplasia.
It is trained with an interpretable mixed-supervision scheme to leverage the domain knowledge introduced by pathologists.
arXiv Detail & Related papers (2023-01-06T17:10:32Z) - Hierarchical Semi-Supervised Contrastive Learning for
Contamination-Resistant Anomaly Detection [81.07346419422605]
Anomaly detection aims at identifying deviant samples from the normal data distribution.
Contrastive learning has provided a successful way to sample representation that enables effective discrimination on anomalies.
We propose a novel hierarchical semi-supervised contrastive learning framework, for contamination-resistant anomaly detection.
arXiv Detail & Related papers (2022-07-24T18:49:26Z) - Self-supervised contrastive learning of echocardiogram videos enables
label-efficient cardiac disease diagnosis [48.64462717254158]
We developed a self-supervised contrastive learning approach, EchoCLR, to catered to echocardiogram videos.
When fine-tuned on small portions of labeled data, EchoCLR pretraining significantly improved classification performance for left ventricular hypertrophy (LVH) and aortic stenosis (AS)
EchoCLR is unique in its ability to learn representations of medical videos and demonstrates that SSL can enable label-efficient disease classification from small, labeled datasets.
arXiv Detail & Related papers (2022-07-23T19:17:26Z) - Knowledge distillation with a class-aware loss for endoscopic disease
detection [1.1470070927586016]
In this work, we leverage deep learning to develop a framework to improve the localization of difficult to detect lesions.
Our model achieves higher performance in terms of mean average precision (mAP) on both endoscopic disease detection challenge and Kvasir-SEG datasets.
arXiv Detail & Related papers (2022-07-19T19:56:12Z) - Dynamic Bank Learning for Semi-supervised Federated Image Diagnosis with
Class Imbalance [65.61909544178603]
We study a practical yet challenging problem of class imbalanced semi-supervised FL (imFed-Semi)
This imFed-Semi problem is addressed by a novel dynamic bank learning scheme, which improves client training by exploiting class proportion information.
We evaluate our approach on two public real-world medical datasets, including the intracranial hemorrhage diagnosis with 25,000 CT slices and skin lesion diagnosis with 10,015 dermoscopy images.
arXiv Detail & Related papers (2022-06-27T06:51:48Z) - Coherence Learning using Keypoint-based Pooling Network for Accurately
Assessing Radiographic Knee Osteoarthritis [18.47511520060851]
Knee osteoarthritis (OA) is a common degenerate joint disorder that affects a large population of elderly people worldwide.
Current clinically-adopted knee OA grading systems are observer subjective and suffer from inter-rater disagreements.
We propose a computer-aided diagnosis approach to provide more accurate and consistent assessments of both composite and fine-grained OA grades simultaneously.
arXiv Detail & Related papers (2021-12-16T19:59:13Z) - Predictive Modeling of ICU Healthcare-Associated Infections from
Imbalanced Data. Using Ensembles and a Clustering-Based Undersampling
Approach [55.41644538483948]
This work is focused on both the identification of risk factors and the prediction of healthcare-associated infections in intensive-care units.
The aim is to support decision making addressed at reducing the incidence rate of infections.
arXiv Detail & Related papers (2020-05-07T16:13:12Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.