Expediting field-effect transistor chemical sensor design with neuromorphic spiking graph neural networks†

IF 3.2 3区 工程技术 Q2 CHEMISTRY, PHYSICAL
Rodrigo P. Ferreira, Rui Ding, Fengxue Zhang, Haihui Pu, Claire Donnat, Yuxin Chen and Junhong Chen
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引用次数: 0

Abstract

Improving the sensitive and selective detection of analytes in a variety of applications requires accelerating the rational design of field-effect transistor (FET) chemical sensors. Achieving high-performance detection relies on identifying optimal probe materials that can effectively interact with target analytes, a process traditionally driven by chemical intuition and time-consuming trial-and-error methods. To address the difficulties in probe screening for FET sensor development, this work presents a methodology that combines neuromorphic machine learning (ML) architectures, specifically a hybrid spiking graph neural network (SGNN), with an enriched dataset of physicochemical properties through semi-automated data extraction using large language models. Achieving a classification accuracy of 0.89 in predicting sensor sensitivity categories, the SGNN model outperformed traditional ML techniques by leveraging its ability to capture both global physicochemical properties and sparse topological features through a hybrid modeling framework. Next-generation sensor design was informed by the actionable insights into the connections between material properties and sensing performance offered by the SGNN framework. Through virtual screening for the detection of per- and polyfluoroalkyl substances (PFAS) as a use case, the effectiveness of the SGNN model was further validated. Density functional theory simulations confirmed graphene as a promising active material for PFAS detection as suggested by the SGNN framework. By bridging gaps in predictive modeling and data availability, this integrated approach provides a strong foundation for accelerating advancements in FET sensor design and innovation.

基于神经形态尖峰图神经网络的场效应晶体管化学传感器加速设计[j]
为了提高各种应用中分析物检测的灵敏度和选择性,需要加速场效应晶体管(FET)化学传感器的合理设计。实现高性能检测依赖于确定能够有效地与目标分析物相互作用的最佳探针材料,这一过程传统上由化学直觉和耗时的试错方法驱动。为了解决FET传感器开发中探针筛选的困难,本研究提出了一种方法,该方法将神经形态机器学习(ML)架构,特别是混合峰值图神经网络(SGNN)与丰富的物理化学性质数据集结合起来,通过使用大型语言模型进行半自动数据提取。SGNN模型在预测传感器灵敏度类别方面的分类精度为0.89,通过混合建模框架利用其捕获全局物理化学性质和稀疏拓扑特征的能力,优于传统的ML技术。SGNN框架提供了对材料特性和传感性能之间联系的可操作见解,为下一代传感器设计提供了信息。通过虚拟筛选检测全氟烷基和多氟烷基物质(PFAS)作为用例,进一步验证了SGNN模型的有效性。密度泛函理论模拟证实石墨烯是SGNN框架提出的一种很有前途的PFAS检测活性材料。通过弥补预测建模和数据可用性方面的差距,这种集成方法为加速FET传感器设计和创新的进步提供了坚实的基础。
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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来源期刊
Molecular Systems Design & Engineering
Molecular Systems Design & Engineering Engineering-Biomedical Engineering
CiteScore
6.40
自引率
2.80%
发文量
144
期刊介绍: Molecular Systems Design & Engineering provides a hub for cutting-edge research into how understanding of molecular properties, behaviour and interactions can be used to design and assemble better materials, systems, and processes to achieve specific functions. These may have applications of technological significance and help address global challenges.
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