利用人工智能机器学习优化设计和评估用于疟疾检测的可调太赫兹元表面生物传感器

IF 3.3 4区 物理与天体物理 Q2 CHEMISTRY, PHYSICAL
Jacob Wekalao, Ngaira Mandela, Apochi Obed, Abdessalem Bouhenna
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引用次数: 0

摘要

疟疾仍然是一个重大的全球健康问题,每年影响数百万人,导致数十万人死亡,尤其是在欠发达地区。及时准确的诊断对于有效治疗和管理这种寄生虫病至关重要。本研究介绍了一种专为疟疾检测量身定制的可调太赫兹(THz)元表面生物传感器的设计和评估,该传感器将等离子体材料与人工智能相结合。该生物传感器采用了由石墨烯、金和银组成的多层结构,以利用表面等离子体共振效应。全面的电磁模拟和参数优化证明,该传感器能够检测疟原虫浓度的微小变化,实现了 429 GHzRIU-1 的峰值灵敏度、25.6 的检测精度和 10.989 RIU-1 的优越性。该传感器采用可调元件,可进行动态性能调整。此外,XGBoost 机器学习算法可用于预测传感器在各种设计参数下的性能,其最大 R2 范围始终高达 100%。先进材料、精密工程和预测分析的融合代表了疟疾检测生物传感技术的重大进步,为早期准确诊断提供了巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Design and Evaluation of Tunable Terahertz Metasurface Biosensor for Malaria Detection with Machine learning Optimization Using Artificial Intelligence

Design and Evaluation of Tunable Terahertz Metasurface Biosensor for Malaria Detection with Machine learning Optimization Using Artificial Intelligence

Malaria continues to be a major global health issue, impacting millions each year and leading to hundreds of thousands of deaths, especially in less developed areas. Timely and precise diagnosis is essential for effective treatment and management of this parasitic illness. This study presents the design and evaluation of a tunable terahertz (THz) metasurface biosensor tailored for malaria detection, integrating plasmonic materials with artificial intelligence. The biosensor employs a multi-layer structure comprising graphene, gold, and silver to leverage surface plasmon resonance effects. Comprehensive electromagnetic simulations and parameter optimization demonstrate the sensor's ability to detect minute changes in malaria parasite concentrations, achieving a peak sensitivity of 429 GHzRIU−1, detection accuracy of 25.6 and a figure of merit of 10.989 RIU-1. The sensor features tunable elements that allow dynamic performance adjustments. Additionally, the XGBoost machine learning algorithm is harnessed to predict sensor performance across various design parameters, consistently demonstrating maximum R2 ranging up to 100%. This fusion of advanced materials, precise engineering, and predictive analytics represents a significant advancement in biosensing technology for malaria detection, offering substantial potential for early and accurate diagnosis.

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来源期刊
Plasmonics
Plasmonics 工程技术-材料科学:综合
CiteScore
5.90
自引率
6.70%
发文量
164
审稿时长
2.1 months
期刊介绍: Plasmonics is an international forum for the publication of peer-reviewed leading-edge original articles that both advance and report our knowledge base and practice of the interactions of free-metal electrons, Plasmons. Topics covered include notable advances in the theory, Physics, and applications of surface plasmons in metals, to the rapidly emerging areas of nanotechnology, biophotonics, sensing, biochemistry and medicine. Topics, including the theory, synthesis and optical properties of noble metal nanostructures, patterned surfaces or materials, continuous or grated surfaces, devices, or wires for their multifarious applications are particularly welcome. Typical applications might include but are not limited to, surface enhanced spectroscopic properties, such as Raman scattering or fluorescence, as well developments in techniques such as surface plasmon resonance and near-field scanning optical microscopy.
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