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Asymmetric Source-Free Unsupervised Domain Adaptation for Medical Image Diagnosis

Research output: Chapters, Conference Papers, Creative and Literary WorksRGC 32 - Refereed conference paper (with host publication)peer-review

Abstract

Existing source-free unsupervised domain adaptation (SFUDA) methods primarily focus on addressing the domain gap issue for single-modal data, overlooking two crucial aspects: 1) In medical scenarios, clinicians often rely on multi-modal information for disease diagnosis. Consequently, emphasizing single-modal (symmetric modality) SFUDA algorithms neglect the complementary information from other modalities (asymmetric modalities). 2) Restricting SFUDA to a single modality limits downstream institutions's ability to handle diverse modalities beyond that singular modality. To tackle these challenges, we propose an Asymmetric Source-Free Unsupervised Domain Adaptation (A-SFUDA) algorithm. This method leverages source model and unlabeled data from both symmetric and asymmetric modalities in the target domain for disease diagnosis. A-SFUDA adopts a two-stage training approach. In the first stage, A-SFUDA employs knowledge distillation (KD) to obtain two models capable of handling symmetric and asymmetric data in the target domain, facilitating preliminary diagnosis ability. In the second stage, A-SFUDA optimizes the target models through a pseudo-label correction mechanism based on multi-modal prediction correction and class-centered distance correction. Incorporating the two pseudo-label correction modules effectively mitigates noise within the training data, thereby facilitating the learning of the target models. We validate the performance of the proposed A-SFUDA algorithm on a large chest X-ray dataset, demonstrating its excellent performance for disease diagnosis in the target domain. © 2024 IEEE.
Original languageEnglish
Title of host publicationProceedings - 2024 IEEE Conference on Artificial Intelligence, CAI 2024
Place of PublicationLos Alamitos, Calif.
PublisherIEEE
Pages234-239
ISBN (Electronic)9798350354096
ISBN (Print)9798350354102
DOIs
Publication statusPublished - 2024
Event2nd IEEE Conference on Artificial Intelligence (IEEE CAI 2024) - Marina Bay Sands, Singapore
Duration: 25 Jun 202427 Jun 2024
https://ieeecai.org/2024/

Publication series

NameProceedings - IEEE Conference on Artificial Intelligence, CAI

Conference

Conference2nd IEEE Conference on Artificial Intelligence (IEEE CAI 2024)
Abbreviated titleCAI 2024
PlaceSingapore
Period25/06/2427/06/24
Internet address

Funding

This work was supported by the Research Grants Council of the Hong Kong SAR (Grant No. PolyU11211521, PolyU15218622, PolyU15215623, and PolyU25216423), The Hong Kong Polytechnic University (Project IDs: P0039734, P0035379, P0043563, and P0046094), and the National Natural Science Foundation of China (Grant No. U21A20512, 62306259, and 62202399).

Research Keywords

  • asymmetric modality
  • pseudo-labeling
  • source-free
  • unsupervised domain adaptation

RGC Funding Information

  • RGC-funded

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