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MedTsLLM: Medical Time Series Analysis Using Multimodal LLMs.

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    MedTsLLM integrates physiological signals with clinical text using large language models (LLMs) for better biomedical time series analysis. This multimodal approach enhances diagnostic accuracy and patient monitoring by combining diverse data types.

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    Area of Science:

    • Biomedical Engineering
    • Artificial Intelligence
    • Clinical Informatics

    Background:

    • Traditional machine learning struggles with heterogeneous biomedical data.
    • Unstructured clinical text is crucial but inaccessible to standard time series models.
    • Integrating physiological signals with clinical context is vital for accurate patient assessment.

    Purpose of the Study:

    • To develop a multimodal model (MedTsLLM) for analyzing biomedical time series data.
    • To bridge the gap between numerical physiological signals and unstructured clinical text using large language models (LLMs).
    • To improve clinical understanding and decision-making through integrated data analysis.

    Main Methods:

    • Proposed MedTsLLM, a multimodal framework integrating physiological signals and clinical text via LLMs.
    • Utilized patch reprogramming for time series-LLM alignment.
    • Introduced novel covariate handling and contextual prompting for patient-specific information.

    Main Results:

    • MedTsLLM demonstrated superior performance across semantic segmentation, boundary detection, anomaly detection, and classification tasks.
    • Outperformed state-of-the-art baselines on diverse datasets including ECG, respiratory monitoring, and arrhythmia detection.
    • Validated the model's effectiveness in real-world clinical scenarios.

    Conclusions:

    • Multimodal LLMs offer transformative potential for biomedical signal analysis.
    • MedTsLLM enables deeper insights from physiological data by leveraging comprehensive clinical context.
    • Enhanced diagnostic accuracy, patient monitoring, and personalized treatment decisions are achievable.