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Abstract
Two-dimensional materials such as graphene have shown great promise as biosensors, but suffer from large device-to-device variation due to non-uniform material synthesis and device fabrication technologies. Here, we develop a robust bioelectronic sensing platform composed of more than 200 integrated sensing units, custom-built high-speed readout electronics, and machine learning inference that overcomes these challenges to achieve rapid, portable, and reliable measurements. The platform demonstrates reconfigurable multi-ion electrolyte sensing capability and provides highly sensitive, reversible, and real-time response for potassium, sodium, and calcium ions in complex solutions despite variations in device performance. A calibration method leveraging the sensor redundancy and device-to-device variation is also proposed, while a machine learning model trained with multi-dimensional information collected through the multiplexed sensor array is used to enhance the sensing system’s functionality and accuracy in ion classification.
The potential of 2D materials for biosensing applications is often limited by large device-to-device variation. Here, the authors report a calibration method and a machine learning approach leveraging the redundancy of a sensing platform based on 256 integrated graphene transistors to enhance the system accuracy in real-time ion classification.
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1 Massachusetts Institute of Technology, Department of Electrical Engineering & Computer Science, Cambridge, USA (GRID:grid.116068.8) (ISNI:0000 0001 2341 2786)
2 IBM Research–Almaden, San Jose, USA (GRID:grid.481551.c)
3 Massachusetts Institute of Technology, Department of Chemistry and Institute for Soldier Nanotechnologies, Cambridge, USA (GRID:grid.116068.8) (ISNI:0000 0001 2341 2786)