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Main Authors: Wang, Bingxu, Ge, Min, Cai, Kunzhi, Zhang, Yuqi, Zhou, Zeyi, Li, Wenjiao, Guo, Yachong, Wang, Wei, Zhou, Qing
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.04120
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author Wang, Bingxu
Ge, Min
Cai, Kunzhi
Zhang, Yuqi
Zhou, Zeyi
Li, Wenjiao
Guo, Yachong
Wang, Wei
Zhou, Qing
author_facet Wang, Bingxu
Ge, Min
Cai, Kunzhi
Zhang, Yuqi
Zhou, Zeyi
Li, Wenjiao
Guo, Yachong
Wang, Wei
Zhou, Qing
contents Postoperative delirium (POD), a severe neuropsychiatric complication affecting nearly 50% of high-risk surgical patients, is defined as an acute disorder of attention and cognition, It remains significantly underdiagnosed in the intensive care units (ICUs) due to subjective monitoring methods. Early and accurate diagnosis of POD is critical and achievable. Here, we propose a POD prediction framework comprising a Transformer representation model followed by traditional machine learning algorithms. Our approaches utilizes multi-modal physiological data, including amplitude-integrated electroencephalography (aEEG), vital signs, electrocardiographic monitor data as well as hemodynamic parameters. We curated the first multi-modal POD dataset encompassing two patient types and evaluated the various Transformer architectures for representation learning. Empirical results indicate a consistent improvements of sensitivity and Youden index in patient TYPE I using Transformer representations, particularly our fusion adaptation of Pathformer. By enabling effective delirium diagnosis from postoperative day 1 to 3, our extensive experimental findings emphasize the potential of multi-modal physiological data and highlight the necessity of representation learning via multi-modal Transformer architecture in clinical diagnosis.
format Preprint
id arxiv_https___arxiv_org_abs_2504_04120
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Transformer representation learning is necessary for dynamic multi-modal physiological data on small-cohort patients
Wang, Bingxu
Ge, Min
Cai, Kunzhi
Zhang, Yuqi
Zhou, Zeyi
Li, Wenjiao
Guo, Yachong
Wang, Wei
Zhou, Qing
Machine Learning
Postoperative delirium (POD), a severe neuropsychiatric complication affecting nearly 50% of high-risk surgical patients, is defined as an acute disorder of attention and cognition, It remains significantly underdiagnosed in the intensive care units (ICUs) due to subjective monitoring methods. Early and accurate diagnosis of POD is critical and achievable. Here, we propose a POD prediction framework comprising a Transformer representation model followed by traditional machine learning algorithms. Our approaches utilizes multi-modal physiological data, including amplitude-integrated electroencephalography (aEEG), vital signs, electrocardiographic monitor data as well as hemodynamic parameters. We curated the first multi-modal POD dataset encompassing two patient types and evaluated the various Transformer architectures for representation learning. Empirical results indicate a consistent improvements of sensitivity and Youden index in patient TYPE I using Transformer representations, particularly our fusion adaptation of Pathformer. By enabling effective delirium diagnosis from postoperative day 1 to 3, our extensive experimental findings emphasize the potential of multi-modal physiological data and highlight the necessity of representation learning via multi-modal Transformer architecture in clinical diagnosis.
title Transformer representation learning is necessary for dynamic multi-modal physiological data on small-cohort patients
topic Machine Learning
url https://arxiv.org/abs/2504.04120