Document detail
ID

oai:arXiv.org:2404.06057

Topic
Computer Science - Computer Vision...
Author
Zhang, Yupei Pan, Li Yang, Qiushi Li, Tan Chen, Zhen
Category

Computer Science

Year

2024

listing date

4/17/2024

Keywords
medical tasks datasets data heterogeneity multi-modal downstream pre-training
Metrics

Abstract

Medical multi-modal pre-training has revealed promise in computer-aided diagnosis by leveraging large-scale unlabeled datasets.

However, existing methods based on masked autoencoders mainly rely on data-level reconstruction tasks, but lack high-level semantic information.

Furthermore, two significant heterogeneity challenges hinder the transfer of pre-trained knowledge to downstream tasks, \textit{i.e.}, the distribution heterogeneity between pre-training data and downstream data, and the modality heterogeneity within downstream data.

To address these challenges, we propose a Unified Medical Multi-modal Diagnostic (UMD) framework with tailored pre-training and downstream tuning strategies.

Specifically, to enhance the representation abilities of vision and language encoders, we propose the Multi-level Reconstruction Pre-training (MR-Pretrain) strategy, including a feature-level and data-level reconstruction, which guides models to capture the semantic information from masked inputs of different modalities.

Moreover, to tackle two kinds of heterogeneities during the downstream tuning, we present the heterogeneity-combat downstream tuning strategy, which consists of a Task-oriented Distribution Calibration (TD-Calib) and a Gradient-guided Modality Coordination (GM-Coord).

In particular, TD-Calib fine-tunes the pre-trained model regarding the distribution of downstream datasets, and GM-Coord adjusts the gradient weights according to the dynamic optimization status of different modalities.

Extensive experiments on five public medical datasets demonstrate the effectiveness of our UMD framework, which remarkably outperforms existing approaches on three kinds of downstream tasks.

;Comment: to be published in IEEE JBHI; Code available at https://github.com/helenypzhang/UMD

Zhang, Yupei,Pan, Li,Yang, Qiushi,Li, Tan,Chen, Zhen, 2024, Unified Multi-modal Diagnostic Framework with Reconstruction Pre-training and Heterogeneity-combat Tuning

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