共形矩阵
碳纳米管
生物传感器
纳米技术
材料科学
纳米管
晶体管
碳纳米管场效应晶体管
工程类
电气工程
场效应晶体管
复合材料
电压
作者
Hanxiang Wu,Yu Song,Hexing Yin,Yuan Zhu,Ao Zhang,Zhixin Xie,Canran Wang,Meng Gao,Wei Gao,Qibing Pei
标识
DOI:10.1021/acsanm.5c01165
摘要
Semiconductive single-walled carbon nanotube (SWNT)-based transistors have long and extensively been explored for sensing applications, biosensors in particular, but reproducible reliable results remain elusive. The random distribution of the nanotube network, as well as the variation of the network due to deformation or surrounding fluidic dynamics, leads to fluctuation of the channel current, which is difficult to control. The signal-to-noise ratio is thus low, and calibration is required. To mitigate this challenge, SWNT-based twin transistors are introduced, where one acts as a sensor and the other as a reference. The twin transistors share gate and source electrodes, and all of the source/drain electrodes are sealed by a parylene layer to minimize electrolytic leakage. A common-source amplifier circuit generates voltage signal readouts from the sensor and reference transistors, and the differential outputs reduce the noise level by 59%. Arrays of twin transistors were fabricated in a hybrid process involving photolithography, solution-based deposition of the SWNTs, and transfer to a polyurethane substrate. To demonstrate glucose biosensing, glucose oxidase was immobilized on the SWNTs in the sensor channels. A semipermeable Nafion layer was applied to embed the SWNT network. This resulted in a sensor that can deliver real-time detection of glucose in human serum and a 100% increase in normalized responses per decade of glucose concentrations between 100 μM and 100 mM. The response is proportional to the cubic root of glucose concentration, indicating that the redox electrons conducted by the nanotubes in the channel length direction contribute to the sensor response. A portable glucose-sensing system with flexible twin transistors is also demonstrated without the need for device-specific calibrations.
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