Machine Learning Enhanced Multimodal Bioelectronics: Advancement Toward Intelligent Healthcare Systems

Myoungjae Oh, Enji Kim, Jakyoung Lee, Inhea Jeong, Eunmin Kim, Joonho Paek, Taekyeong Lee, Dayeon Kim, Seung Hyun An, Sumin Kim, Jung Ah Lim, Jang-Ung Park
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Abstract

Multimodal bioelectronics has enabled comprehensive understanding of complex biological states by capturing diverse biosignals and interacting with the physiological changes with the biological environment. These systems are categorized into multi-sensing devices, which collect and analyze multiple biosignals concurrently, and multifunctional devices, which provide dynamic feedback through mechanisms such as drug release, electrical stimulation, and mechanical actuation. However, the acquisition and integrated analysis of heterogeneous data from these biosensors pose significant computational challenges, necessitating advanced analytical frameworks to extract meaningful insights. Machine learning has emerged as an essential tool for data interpretation and real-time decision-making through addressing challenges in broad data integration, feature extraction, and predictive modeling. Implementation of machine learning to multimodal devices extend their capabilities beyond conventional biosensors, performing crossmodal correlation analysis, real-time anomaly detection, and situation-dependent feedback. This review explores recent progress in multimodal bioelectronics and the integration of machine learning in multimodal bioelectronics. Moreover, evaluations of various machine learning applications are conducted by discussing key advancements, challenges, and future research directions in intelligent multimodal biosensor technology, which holds immense potential to revolutionize biomedical applications, facilitating the development of autonomous and responsive health monitoring systems.

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机器学习增强多模态生物电子学:迈向智能医疗保健系统
多模态生物电子学通过捕获多种生物信号并与生物环境的生理变化相互作用,使人们能够全面了解复杂的生物状态。这些系统分为多传感装置和多功能装置,前者可以同时收集和分析多种生物信号,后者可以通过药物释放、电刺激和机械驱动等机制提供动态反馈。然而,从这些生物传感器获取和综合分析异构数据带来了重大的计算挑战,需要先进的分析框架来提取有意义的见解。通过解决广泛的数据集成、特征提取和预测建模方面的挑战,机器学习已经成为数据解释和实时决策的重要工具。将机器学习应用于多模态设备,将其功能扩展到传统生物传感器之外,可以执行跨模态相关分析、实时异常检测和基于情况的反馈。本文综述了多模态生物电子学的最新进展以及机器学习在多模态生物电子学中的应用。此外,通过讨论智能多模态生物传感器技术的关键进展、挑战和未来研究方向,对各种机器学习应用进行了评估,该技术具有巨大的潜力,可以彻底改变生物医学应用,促进自主和响应式健康监测系统的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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