Trustworthy image-to-image translation: evaluating uncertainty calibration in unpaired training scenarios
- URL: http://arxiv.org/abs/2501.17570v1
- Date: Wed, 29 Jan 2025 11:09:50 GMT
- Title: Trustworthy image-to-image translation: evaluating uncertainty calibration in unpaired training scenarios
- Authors: Ciaran Bench, Emir Ahmed, Spencer A. Thomas,
- Abstract summary: Mammographic screening is an effective method for detecting breast cancer, facilitating early diagnosis.
Deep neural networks have been shown effective in some studies, but their tendency to overfit leaves considerable risk for poor generalisation and misdiagnosis.
Data augmentation schemes based on unpaired neural style transfer models have been proposed that improve generalisability.
We evaluate their performance when trained on image patches parsed from three open access mammography datasets and one non-medical image dataset.
- Score: 0.0
- License:
- Abstract: Mammographic screening is an effective method for detecting breast cancer, facilitating early diagnosis. However, the current need to manually inspect images places a heavy burden on healthcare systems, spurring a desire for automated diagnostic protocols. Techniques based on deep neural networks have been shown effective in some studies, but their tendency to overfit leaves considerable risk for poor generalisation and misdiagnosis, preventing their widespread adoption in clinical settings. Data augmentation schemes based on unpaired neural style transfer models have been proposed that improve generalisability by diversifying the representations of training image features in the absence of paired training data (images of the same tissue in either image style). But these models are similarly prone to various pathologies, and evaluating their performance is challenging without ground truths/large datasets (as is often the case in medical imaging). Here, we consider two frameworks/architectures: a GAN-based cycleGAN, and the more recently developed diffusion-based SynDiff. We evaluate their performance when trained on image patches parsed from three open access mammography datasets and one non-medical image dataset. We consider the use of uncertainty quantification to assess model trustworthiness, and propose a scheme to evaluate calibration quality in unpaired training scenarios. This ultimately helps facilitate the trustworthy use of image-to-image translation models in domains where ground truths are not typically available.
Related papers
- Style transfer as data augmentation: evaluating unpaired image-to-image translation models in mammography [0.0]
Deep learning models can learn to detect breast cancer from mammograms.
However, challenges with overfitting and poor generalisability prevent their routine use in the clinic.
Data augmentation techniques can be used to improve generalisability.
arXiv Detail & Related papers (2025-02-04T16:52:45Z) - Latent Drifting in Diffusion Models for Counterfactual Medical Image Synthesis [55.959002385347645]
Scaling by training on large datasets has been shown to enhance the quality and fidelity of image generation and manipulation with diffusion models.
Latent Drifting enables diffusion models to be conditioned for medical images fitted for the complex task of counterfactual image generation.
Our results demonstrate significant performance gains in various scenarios when combined with different fine-tuning schemes.
arXiv Detail & Related papers (2024-12-30T01:59:34Z) - Adapting Visual-Language Models for Generalizable Anomaly Detection in Medical Images [68.42215385041114]
This paper introduces a novel lightweight multi-level adaptation and comparison framework to repurpose the CLIP model for medical anomaly detection.
Our approach integrates multiple residual adapters into the pre-trained visual encoder, enabling a stepwise enhancement of visual features across different levels.
Our experiments on medical anomaly detection benchmarks demonstrate that our method significantly surpasses current state-of-the-art models.
arXiv Detail & Related papers (2024-03-19T09:28:19Z) - Rescuing referral failures during automated diagnosis of domain-shifted
medical images [17.349847762608086]
We show that even state-of-the-art domain generalization approaches fail severely during referral when tested on medical images acquired from a different demographic or using a different technology.
We evaluate novel combinations of robust generalization and post hoc referral approaches, that rescue these failures and achieve significant performance improvements.
arXiv Detail & Related papers (2023-11-28T13:14:55Z) - Realistic Data Enrichment for Robust Image Segmentation in
Histopathology [2.248423960136122]
We propose a new approach, based on diffusion models, which can enrich an imbalanced dataset with plausible examples from underrepresented groups.
Our method can simply expand limited clinical datasets making them suitable to train machine learning pipelines.
arXiv Detail & Related papers (2023-04-19T09:52:50Z) - Significantly improving zero-shot X-ray pathology classification via fine-tuning pre-trained image-text encoders [50.689585476660554]
We propose a new fine-tuning strategy that includes positive-pair loss relaxation and random sentence sampling.
Our approach consistently improves overall zero-shot pathology classification across four chest X-ray datasets and three pre-trained models.
arXiv Detail & Related papers (2022-12-14T06:04:18Z) - Adapting Pretrained Vision-Language Foundational Models to Medical
Imaging Domains [3.8137985834223502]
Building generative models for medical images that faithfully depict clinical context may help alleviate the paucity of healthcare datasets.
We explore the sub-components of the Stable Diffusion pipeline to fine-tune the model to generate medical images.
Our best-performing model improves upon the stable diffusion baseline and can be conditioned to insert a realistic-looking abnormality on a synthetic radiology image.
arXiv Detail & Related papers (2022-10-09T01:43:08Z) - Out-of-Distribution Detection for Dermoscopic Image Classification [0.0]
We develop a novel yet simple method to train neural networks, which enables them to classify in-distribution dermoscopic skin disease images.
We show that our BinaryHeads model not only does not hurt classification balanced accuracy when the data is imbalanced, but also consistently improves the balanced accuracy.
arXiv Detail & Related papers (2021-04-15T23:34:53Z) - Malignancy Prediction and Lesion Identification from Clinical
Dermatological Images [65.1629311281062]
We consider machine-learning-based malignancy prediction and lesion identification from clinical dermatological images.
We first identify all lesions present in the image regardless of sub-type or likelihood of malignancy, then it estimates their likelihood of malignancy, and through aggregation, it also generates an image-level likelihood of malignancy.
arXiv Detail & Related papers (2021-04-02T20:52:05Z) - Multi-label Thoracic Disease Image Classification with Cross-Attention
Networks [65.37531731899837]
We propose a novel scheme of Cross-Attention Networks (CAN) for automated thoracic disease classification from chest x-ray images.
We also design a new loss function that beyond cross-entropy loss to help cross-attention process and is able to overcome the imbalance between classes and easy-dominated samples within each class.
arXiv Detail & Related papers (2020-07-21T14:37:00Z) - Semi-supervised Medical Image Classification with Relation-driven
Self-ensembling Model [71.80319052891817]
We present a relation-driven semi-supervised framework for medical image classification.
It exploits the unlabeled data by encouraging the prediction consistency of given input under perturbations.
Our method outperforms many state-of-the-art semi-supervised learning methods on both single-label and multi-label image classification scenarios.
arXiv Detail & Related papers (2020-05-15T06:57:54Z)
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.