Goh Guo Dong, Lee Jia Min, Goh Guo Liang, Huang Xi, Lee Samuel, Yeong Wai Yee
Singapore Center for 3D Printing, School of Mechanical & Aerospace Engineering, Nanyang Technological University Singapore, Singapore, Singapore.
NTU-HP Joint Lab and Nanyang Technological University Singapore, Singapore, Singapore.
Tissue Eng Part A. 2023 Jan;29(1-2):20-46. doi: 10.1089/ten.TEA.2022.0119. Epub 2022 Nov 17.
Bioelectronics presents a promising future in the field of embedded and implantable electronics, providing a range of functional applications, from personal health monitoring to bioactuators. However, due to the intrinsic difficulties present in producing and optimizing bioelectronics, recent research has focused on utilizing machine learning (ML) to reliably mitigate such issues and aid in process development. This review focuses on the recent developments of integrating ML into bioelectronics, aiding in a multitude of areas, such as material development, fabrication process optimization, and system integration. First, discussing how ML has aided in the material development by identifying complex relationships between process input parameters and desired outputs, such as product design. Second, examine the advancements in ML to accurately optimize fabrication precision and stability for various 3D printing technologies. Third, provide an overview of how ML can greatly assist in the analysis of complex, nonlinear relationships in data obtained from bioelectronics. Lastly, a summary of the challenges present with utilizing ML with bioelectronics and any other developments in this field. Such advancements in the field of bioelectronics and ML could hopefully build a strong foundation for this research field, promoting smart optimization together with effective use of ML to further enhance the effectiveness of such applications. Impact statement The article serves to give insight about the use of the machine learning (ML) techniques in the field of bioelectronics, since bioelectronics and ML are two distinct fields. This article allows bioelectronics researcher to get to know the latest advancement in the ML field. On the other hand, the article provides an insight to the ML researchers about how ML techniques can be useful in bioelectronics applications.
生物电子学在嵌入式和可植入电子学领域展现出了光明的未来,提供了一系列功能应用,从个人健康监测到生物致动器。然而,由于生产和优化生物电子学存在内在困难,最近的研究集中在利用机器学习(ML)来可靠地缓解此类问题并辅助工艺开发。本综述聚焦于将ML集成到生物电子学中的最新进展,这在多个领域有所帮助,如材料开发、制造工艺优化和系统集成。首先,讨论ML如何通过识别工艺输入参数与期望输出(如产品设计)之间的复杂关系来辅助材料开发。其次,研究ML在准确优化各种3D打印技术的制造精度和稳定性方面的进展。第三,概述ML如何能极大地帮助分析从生物电子学获得的数据中的复杂非线性关系。最后,总结在生物电子学中使用ML存在的挑战以及该领域的任何其他进展。生物电子学和ML领域的此类进展有望为该研究领域奠定坚实基础,促进智能优化以及有效利用ML以进一步提高此类应用的有效性。影响声明 本文旨在深入探讨机器学习(ML)技术在生物电子学领域的应用,因为生物电子学和ML是两个不同的领域。本文使生物电子学研究人员能够了解ML领域的最新进展。另一方面,本文为ML研究人员提供了关于ML技术在生物电子学应用中如何有用的见解。