DyMix: Dynamic Frequency Mixup Scheduler based Unsupervised Domain Adaptation for Enhancing Alzheimer's Disease Identification
- URL: http://arxiv.org/abs/2410.12827v1
- Date: Wed, 02 Oct 2024 07:18:47 GMT
- Title: DyMix: Dynamic Frequency Mixup Scheduler based Unsupervised Domain Adaptation for Enhancing Alzheimer's Disease Identification
- Authors: Yooseung Shin, Kwanseok Oh, Heung-Il Suk,
- Abstract summary: We propose a novel approach called the dynamic frequency mixup scheduler (DyMix) for unsupervised domain adaptation.
Our proposed DyMix adjusts the magnitude of the frequency regions being mixed from the source and target domains.
We demonstrate its outstanding performance in Alzheimer's disease diagnosis compared to state-of-the-art methods.
- Score: 9.506504023554031
- License:
- Abstract: Advances in deep learning (DL)-based models for brain image analysis have significantly enhanced the accuracy of Alzheimer's disease (AD) diagnosis, allowing for more timely interventions. Despite these advancements, most current DL models suffer from performance degradation when inferring on unseen domain data owing to the variations in data distributions, a phenomenon known as domain shift. To address this challenge, we propose a novel approach called the dynamic frequency mixup scheduler (DyMix) for unsupervised domain adaptation. Contrary to the conventional mixup technique, which involves simple linear interpolations between predefined data points from the frequency space, our proposed DyMix dynamically adjusts the magnitude of the frequency regions being mixed from the source and target domains. Such an adaptive strategy optimizes the model's capacity to deal with domain variability, thereby enhancing its generalizability across the target domain. In addition, we incorporate additional strategies to further enforce the model's robustness against domain shifts, including leveraging amplitude-phase recombination to ensure resilience to intensity variations and applying self-adversarial learning to derive domain-invariant feature representations. Experimental results on two benchmark datasets quantitatively and qualitatively validated the effectiveness of our DyMix in that we demonstrated its outstanding performance in AD diagnosis compared to state-of-the-art methods.
Related papers
- FIESTA: Fourier-Based Semantic Augmentation with Uncertainty Guidance for Enhanced Domain Generalizability in Medical Image Segmentation [10.351755243183383]
Single-source domain generalization (SDG) in medical image segmentation (MIS) aims to generalize a model using data from only one source domain to segment data from an unseen target domain.
Existing methods often fail to fully consider the details and uncertain areas prevalent in MIS, leading to mis-segmentation.
This paper proposes a Fourier-based semantic augmentation method called FIESTA using uncertainty guidance to enhance the fundamental goals of MIS.
arXiv Detail & Related papers (2024-06-20T13:37:29Z) - Augmentation-based Unsupervised Cross-Domain Functional MRI Adaptation for Major Depressive Disorder Identification [23.639488571585044]
Major depressive disorder (MDD) is a common mental disorder that typically affects a person's mood, cognition, behavior, and physical health.
In this work, we propose a new augmentation-based unsupervised cross-domain fMRI adaptation framework for automatic diagnosis of MDD.
arXiv Detail & Related papers (2024-05-31T13:55:33Z) - Adaptive Affinity-Based Generalization For MRI Imaging Segmentation Across Resource-Limited Settings [1.5703963908242198]
This paper introduces a novel relation-based knowledge framework by seamlessly combining adaptive affinity-based and kernel-based distillation.
To validate our innovative approach, we conducted experiments on publicly available multi-source prostate MRI data.
arXiv Detail & Related papers (2024-04-03T13:35:51Z) - Weakly supervised covariance matrices alignment through Stiefel matrices
estimation for MEG applications [64.20396555814513]
This paper introduces a novel domain adaptation technique for time series data, called Mixing model Stiefel Adaptation (MSA)
We exploit abundant unlabeled data in the target domain to ensure effective prediction by establishing pairwise correspondence with equivalent signal variances between domains.
MSA outperforms recent methods in brain-age regression with task variations using magnetoencephalography (MEG) signals from the Cam-CAN dataset.
arXiv Detail & Related papers (2024-01-24T19:04:49Z) - ArSDM: Colonoscopy Images Synthesis with Adaptive Refinement Semantic
Diffusion Models [69.9178140563928]
Colonoscopy analysis is essential for assisting clinical diagnosis and treatment.
The scarcity of annotated data limits the effectiveness and generalization of existing methods.
We propose an Adaptive Refinement Semantic Diffusion Model (ArSDM) to generate colonoscopy images that benefit the downstream tasks.
arXiv Detail & Related papers (2023-09-03T07:55:46Z) - A Novel Cross-Perturbation for Single Domain Generalization [54.612933105967606]
Single domain generalization aims to enhance the ability of the model to generalize to unknown domains when trained on a single source domain.
The limited diversity in the training data hampers the learning of domain-invariant features, resulting in compromised generalization performance.
We propose CPerb, a simple yet effective cross-perturbation method to enhance the diversity of the training data.
arXiv Detail & Related papers (2023-08-02T03:16:12Z) - Curriculum-Based Augmented Fourier Domain Adaptation for Robust Medical
Image Segmentation [18.830738606514736]
This work proposes the Curriculum-based Augmented Fourier Domain Adaptation (Curri-AFDA) for robust medical image segmentation.
In particular, our curriculum learning strategy is based on the causal relationship of a model under different levels of data shift.
Experiments on two segmentation tasks of Retina and Nuclei collected from multiple sites and scanners suggest that our proposed method yields superior adaptation and generalization performance.
arXiv Detail & Related papers (2023-06-06T08:56:58Z) - Domain Generalization with Adversarial Intensity Attack for Medical
Image Segmentation [27.49427483473792]
In real-world scenarios, it is common for models to encounter data from new and different domains to which they were not exposed to during training.
domain generalization (DG) is a promising direction as it enables models to handle data from previously unseen domains.
We introduce a novel DG method called Adversarial Intensity Attack (AdverIN), which leverages adversarial training to generate training data with an infinite number of styles.
arXiv Detail & Related papers (2023-04-05T19:40:51Z) - IDA: Informed Domain Adaptive Semantic Segmentation [51.12107564372869]
We propose an Domain Informed Adaptation (IDA) model, a self-training framework that mixes the data based on class-level segmentation performance.
In our IDA model, the class-level performance is tracked by an expected confidence score (ECS) and we then use a dynamic schedule to determine the mixing ratio for data in different domains.
Our proposed method is able to outperform the state-of-the-art UDA-SS method by a margin of 1.1 mIoU in the adaptation of GTA-V to Cityscapes and of 0.9 mIoU in the adaptation of SYNTHIA to City
arXiv Detail & Related papers (2023-03-05T18:16:34Z) - A Novel Mix-normalization Method for Generalizable Multi-source Person
Re-identification [49.548815417844786]
Person re-identification (Re-ID) has achieved great success in the supervised scenario.
It is difficult to directly transfer the supervised model to arbitrary unseen domains due to the model overfitting to the seen source domains.
We propose MixNorm, which consists of domain-aware mix-normalization (DMN) and domain-ware center regularization (DCR)
arXiv Detail & Related papers (2022-01-24T18:09:38Z) - Adversarial Sample Enhanced Domain Adaptation: A Case Study on
Predictive Modeling with Electronic Health Records [57.75125067744978]
We propose a data augmentation method to facilitate domain adaptation.
adversarially generated samples are used during domain adaptation.
Results confirm the effectiveness of our method and the generality on different tasks.
arXiv Detail & Related papers (2021-01-13T03:20:20Z)
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.