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Main Authors: Wang, Yifan, Ai, Hongfeng, Li, Ruiqi, Jiang, Maowei, Kang, Ruiyuan, Dong, Jiahua, Jiang, Cheng, Li, Chenzhong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.05572
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author Wang, Yifan
Ai, Hongfeng
Li, Ruiqi
Jiang, Maowei
Kang, Ruiyuan
Dong, Jiahua
Jiang, Cheng
Li, Chenzhong
author_facet Wang, Yifan
Ai, Hongfeng
Li, Ruiqi
Jiang, Maowei
Kang, Ruiyuan
Dong, Jiahua
Jiang, Cheng
Li, Chenzhong
contents In medical time series disease diagnosis, two key challenges are identified. First, the high annotation cost of medical data leads to overfitting in models trained on label-limited, single-center datasets. To address this, we propose incorporating external data from related tasks and leveraging AE-GAN to extract prior knowledge, providing valuable references for downstream tasks. Second, many existing studies employ contrastive learning to derive more generalized medical sequence representations for diagnostic tasks, usually relying on manually designed diverse positive and negative sample pairs. However, these approaches are complex, lack generalizability, and fail to adaptively capture disease-specific features across different conditions. To overcome this, we introduce LMCF (Learnable Multi-views Contrastive Framework), a framework that integrates a multi-head attention mechanism and adaptively learns representations from different views through inter-view and intra-view contrastive learning strategies. Additionally, the pre-trained AE-GAN is used to reconstruct discrepancies in the target data as disease probabilities, which are then integrated into the contrastive learning process. Experiments on three target datasets demonstrate that our method consistently outperforms other seven baselines, highlighting its significant impact on healthcare applications such as the diagnosis of myocardial infarction, Alzheimer's disease, and Parkinson's disease. We release the source code at xxxxx.
format Preprint
id arxiv_https___arxiv_org_abs_2508_05572
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Discrepancy-Aware Contrastive Adaptation in Medical Time Series Analysis
Wang, Yifan
Ai, Hongfeng
Li, Ruiqi
Jiang, Maowei
Kang, Ruiyuan
Dong, Jiahua
Jiang, Cheng
Li, Chenzhong
Human-Computer Interaction
In medical time series disease diagnosis, two key challenges are identified. First, the high annotation cost of medical data leads to overfitting in models trained on label-limited, single-center datasets. To address this, we propose incorporating external data from related tasks and leveraging AE-GAN to extract prior knowledge, providing valuable references for downstream tasks. Second, many existing studies employ contrastive learning to derive more generalized medical sequence representations for diagnostic tasks, usually relying on manually designed diverse positive and negative sample pairs. However, these approaches are complex, lack generalizability, and fail to adaptively capture disease-specific features across different conditions. To overcome this, we introduce LMCF (Learnable Multi-views Contrastive Framework), a framework that integrates a multi-head attention mechanism and adaptively learns representations from different views through inter-view and intra-view contrastive learning strategies. Additionally, the pre-trained AE-GAN is used to reconstruct discrepancies in the target data as disease probabilities, which are then integrated into the contrastive learning process. Experiments on three target datasets demonstrate that our method consistently outperforms other seven baselines, highlighting its significant impact on healthcare applications such as the diagnosis of myocardial infarction, Alzheimer's disease, and Parkinson's disease. We release the source code at xxxxx.
title Discrepancy-Aware Contrastive Adaptation in Medical Time Series Analysis
topic Human-Computer Interaction
url https://arxiv.org/abs/2508.05572