61 research outputs found
Deep Learning Approaches for Data Augmentation in Medical Imaging: A Review
Deep learning has become a popular tool for medical image analysis, but the
limited availability of training data remains a major challenge, particularly
in the medical field where data acquisition can be costly and subject to
privacy regulations. Data augmentation techniques offer a solution by
artificially increasing the number of training samples, but these techniques
often produce limited and unconvincing results. To address this issue, a
growing number of studies have proposed the use of deep generative models to
generate more realistic and diverse data that conform to the true distribution
of the data. In this review, we focus on three types of deep generative models
for medical image augmentation: variational autoencoders, generative
adversarial networks, and diffusion models. We provide an overview of the
current state of the art in each of these models and discuss their potential
for use in different downstream tasks in medical imaging, including
classification, segmentation, and cross-modal translation. We also evaluate the
strengths and limitations of each model and suggest directions for future
research in this field. Our goal is to provide a comprehensive review about the
use of deep generative models for medical image augmentation and to highlight
the potential of these models for improving the performance of deep learning
algorithms in medical image analysis
Domain Generalization for Medical Image Analysis: A Survey
Medical Image Analysis (MedIA) has become an essential tool in medicine and
healthcare, aiding in disease diagnosis, prognosis, and treatment planning, and
recent successes in deep learning (DL) have made significant contributions to
its advances. However, DL models for MedIA remain challenging to deploy in
real-world situations, failing for generalization under the distributional gap
between training and testing samples, known as a distribution shift problem.
Researchers have dedicated their efforts to developing various DL methods to
adapt and perform robustly on unknown and out-of-distribution data
distributions. This paper comprehensively reviews domain generalization studies
specifically tailored for MedIA. We provide a holistic view of how domain
generalization techniques interact within the broader MedIA system, going
beyond methodologies to consider the operational implications on the entire
MedIA workflow. Specifically, we categorize domain generalization methods into
data-level, feature-level, model-level, and analysis-level methods. We show how
those methods can be used in various stages of the MedIA workflow with DL
equipped from data acquisition to model prediction and analysis. Furthermore,
we include benchmark datasets and applications used to evaluate these
approaches and analyze the strengths and weaknesses of various methods,
unveiling future research opportunities
Deep learning for unsupervised domain adaptation in medical imaging: Recent advancements and future perspectives
Deep learning has demonstrated remarkable performance across various tasks in
medical imaging. However, these approaches primarily focus on supervised
learning, assuming that the training and testing data are drawn from the same
distribution. Unfortunately, this assumption may not always hold true in
practice. To address these issues, unsupervised domain adaptation (UDA)
techniques have been developed to transfer knowledge from a labeled domain to a
related but unlabeled domain. In recent years, significant advancements have
been made in UDA, resulting in a wide range of methodologies, including feature
alignment, image translation, self-supervision, and disentangled representation
methods, among others. In this paper, we provide a comprehensive literature
review of recent deep UDA approaches in medical imaging from a technical
perspective. Specifically, we categorize current UDA research in medical
imaging into six groups and further divide them into finer subcategories based
on the different tasks they perform. We also discuss the respective datasets
used in the studies to assess the divergence between the different domains.
Finally, we discuss emerging areas and provide insights and discussions on
future research directions to conclude this survey.Comment: Under Revie
Generative adversarial networks in ophthalmology: what are these and how can they be used?
PURPOSE OF REVIEW: The development of deep learning (DL) systems requires a large amount of data, which may be limited by costs, protection of patient information and low prevalence of some conditions. Recent developments in artificial intelligence techniques have provided an innovative alternative to this challenge via the synthesis of biomedical images within a DL framework known as generative adversarial networks (GANs). This paper aims to introduce how GANs can be deployed for image synthesis in ophthalmology and to discuss the potential applications of GANs-produced images. RECENT FINDINGS: Image synthesis is the most relevant function of GANs to the medical field, and it has been widely used for generating 'new' medical images of various modalities. In ophthalmology, GANs have mainly been utilized for augmenting classification and predictive tasks, by synthesizing fundus images and optical coherence tomography images with and without pathologies such as age-related macular degeneration and diabetic retinopathy. Despite their ability to generate high-resolution images, the development of GANs remains data intensive, and there is a lack of consensus on how best to evaluate the outputs produced by GANs. SUMMARY: Although the problem of artificial biomedical data generation is of great interest, image synthesis by GANs represents an innovation with yet unclear relevance for ophthalmology
Federated Domain Generalization: A Survey
Machine learning typically relies on the assumption that training and testing
distributions are identical and that data is centrally stored for training and
testing. However, in real-world scenarios, distributions may differ
significantly and data is often distributed across different devices,
organizations, or edge nodes. Consequently, it is imperative to develop models
that can effectively generalize to unseen distributions where data is
distributed across different domains. In response to this challenge, there has
been a surge of interest in federated domain generalization (FDG) in recent
years. FDG combines the strengths of federated learning (FL) and domain
generalization (DG) techniques to enable multiple source domains to
collaboratively learn a model capable of directly generalizing to unseen
domains while preserving data privacy. However, generalizing the federated
model under domain shifts is a technically challenging problem that has
received scant attention in the research area so far. This paper presents the
first survey of recent advances in this area. Initially, we discuss the
development process from traditional machine learning to domain adaptation and
domain generalization, leading to FDG as well as provide the corresponding
formal definition. Then, we categorize recent methodologies into four classes:
federated domain alignment, data manipulation, learning strategies, and
aggregation optimization, and present suitable algorithms in detail for each
category. Next, we introduce commonly used datasets, applications, evaluations,
and benchmarks. Finally, we conclude this survey by providing some potential
research topics for the future
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