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Main Authors: Zhang, Jintao, Liu, Zirui, Cheng, Mingyue, Zhang, Shilong, Pan, Tingyue, zhou, Yitong, Liu, Qi, Xie, Yanhu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.22116
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author Zhang, Jintao
Liu, Zirui
Cheng, Mingyue
Zhang, Shilong
Pan, Tingyue
zhou, Yitong
Liu, Qi
Xie, Yanhu
author_facet Zhang, Jintao
Liu, Zirui
Cheng, Mingyue
Zhang, Shilong
Pan, Tingyue
zhou, Yitong
Liu, Qi
Xie, Yanhu
contents Intraoperative hypotension (IOH) frequently occurs under general anesthesia and is strongly linked to adverse outcomes such as myocardial injury and increased mortality. Despite its significance, IOH prediction is hindered by event sparsity and the challenge of integrating static and dynamic data across diverse patients. In this paper, we propose \textbf{IOHFuseLM}, a multimodal language model framework. To accurately identify and differentiate sparse hypotensive events, we leverage a two-stage training strategy. The first stage involves domain adaptive pretraining on IOH physiological time series augmented through diffusion methods, thereby enhancing the model sensitivity to patterns associated with hypotension. Subsequently, task fine-tuning is performed on the original clinical dataset to further enhance the ability to distinguish normotensive from hypotensive states. To enable multimodal fusion for each patient, we align structured clinical descriptions with the corresponding physiological time series at the token level. Such alignment enables the model to capture individualized temporal patterns alongside their corresponding clinical semantics. In addition, we convert static patient attributes into structured text to enrich personalized information. Experimental evaluations on two intraoperative datasets demonstrate that IOHFuseLM outperforms established baselines in accurately identifying IOH events, highlighting its applicability in clinical decision support scenarios. Our code is publicly available to promote reproducibility at https://github.com/zjt-gpu/IOHFuseLM.
format Preprint
id arxiv_https___arxiv_org_abs_2505_22116
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multimodal Forecasting of Sparse Intraoperative Hypotension Events Powered by Language Model
Zhang, Jintao
Liu, Zirui
Cheng, Mingyue
Zhang, Shilong
Pan, Tingyue
zhou, Yitong
Liu, Qi
Xie, Yanhu
Computation and Language
Artificial Intelligence
Intraoperative hypotension (IOH) frequently occurs under general anesthesia and is strongly linked to adverse outcomes such as myocardial injury and increased mortality. Despite its significance, IOH prediction is hindered by event sparsity and the challenge of integrating static and dynamic data across diverse patients. In this paper, we propose \textbf{IOHFuseLM}, a multimodal language model framework. To accurately identify and differentiate sparse hypotensive events, we leverage a two-stage training strategy. The first stage involves domain adaptive pretraining on IOH physiological time series augmented through diffusion methods, thereby enhancing the model sensitivity to patterns associated with hypotension. Subsequently, task fine-tuning is performed on the original clinical dataset to further enhance the ability to distinguish normotensive from hypotensive states. To enable multimodal fusion for each patient, we align structured clinical descriptions with the corresponding physiological time series at the token level. Such alignment enables the model to capture individualized temporal patterns alongside their corresponding clinical semantics. In addition, we convert static patient attributes into structured text to enrich personalized information. Experimental evaluations on two intraoperative datasets demonstrate that IOHFuseLM outperforms established baselines in accurately identifying IOH events, highlighting its applicability in clinical decision support scenarios. Our code is publicly available to promote reproducibility at https://github.com/zjt-gpu/IOHFuseLM.
title Multimodal Forecasting of Sparse Intraoperative Hypotension Events Powered by Language Model
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2505.22116