混合人工智能从药物输注史预测麻醉深度。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Liang Wang, Yiqi Weng, Wenli Yu
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引用次数: 0

摘要

背景:准确预测麻醉深度对于确保患者安全和优化手术效果至关重要。传统的基于回归的方法往往难以模拟患者对麻醉剂反应的复杂性和动态性。机器学习技术通过捕获生理数据中的复杂关系提供了一个有希望的替代方案。本研究提出了一种整合长短期记忆(LSTM)网络、Transformer架构和Kolmogorov-Arnold网络(KAN)的混合模型,以提高麻醉深度的预测准确性。方法:提出的模型结合了多种深度学习技术来解决麻醉预测的不同方面。LSTM组件捕获药物给药和生理反应的顺序性质。Transformer体系结构利用注意机制来增强对患者数据的上下文理解。KAN模型建立了药物输注历史与麻醉深度之间的非线性关系。该模型是根据来自公开麻醉监测数据库的患者数据进行训练和评估的。使用均方误差(MSE)评估性能,并与其他模型进行比较。结果:与传统回归方法相比,混合模型表现出更好的预测性能。在VitalDB数据库上测试,该框架的MSE为0.0062,低于其他方法。注意机制和非线性建模有助于提高准确性和鲁棒性。结果表明,该方法有效地捕获了麻醉深度的时间和非线性特征,为临床应用提供了更可靠的预测工具。结论:本研究提出了一种新的深度学习框架,用于麻醉深度预测,整合了顺序、基于注意力和非线性建模技术。结果表明,这种混合方法提高了预测的可靠性,为麻醉医师提供了更全面的麻醉深度影响因素分析。未来的研究将集中于改进模型的鲁棒性,探索实时应用,并解决预测分析中的潜在偏差,以进一步改善临床决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anesthesia depth prediction from drug infusion history using hybrid AI.

Background: Accurately predicting the depth of anesthesia is essential for ensuring patient safety and optimizing surgical outcomes. Traditional regression-based approaches often struggle to model the complex and dynamic nature of patient responses to anesthetic agents. Machine learning techniques offer a promising alternative by capturing intricate relationships within physiological data. This study proposes a hybrid model integrating Long Short-Term Memory (LSTM) networks, Transformer architectures, and Kolmogorov-Arnold Networks (KAN) to improve the predictive accuracy of anesthesia depth.

Methods: The proposed model combines multiple deep learning techniques to address different aspects of anesthesia prediction. The LSTM component captures the sequential nature of drug administration and physiological responses. The Transformer architecture utilizes attention mechanisms to enhance contextual understanding of patient data. The KAN models nonlinear relationships between drug infusion histories and anesthesia depth. The model was trained and evaluated on patient data from a publicly available anesthesia monitoring database. Performance was assessed using Mean Squared Error (MSE) and compared against other models.

Results: The hybrid model demonstrated superior predictive performance compared to conventional regression approaches. Tested on the VitalDB database, the proposed framework achieved a MSE of 0.0062, which is lower than other methods. The inclusion of attention mechanisms and nonlinear modeling contributed to improved accuracy and robustness. The results indicate that the combined approach effectively captures the temporal and nonlinear characteristics of anesthesia depth, offering a more reliable predictive tool for clinical use.

Conclusions: This study presents a novel deep learning framework for anesthesia depth prediction, integrating sequential, attention-based, and nonlinear modeling techniques. The results suggest that this hybrid approach enhances prediction reliability and provides anesthesiologists with a more comprehensive analysis of factors influencing anesthesia depth. Future research will focus on refining model robustness, exploring real-time applications, and addressing potential biases in predictive analytics to further improve clinical decision-making.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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