Protein Identification and Quantification Using Porous Silicon Arrays, Optical Measurements, and Machine Learning

使用多孔硅阵列、光学测量和机器学习进行蛋白质识别和定量

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作者:Simon J Ward, Tengfei Cao, Xiang Zhou, Catie Chang, Sharon M Weiss

Abstract

We report a versatile platform based on an array of porous silicon (PSi) thin films that can identify analytes based on their physical and chemical properties without the use of specific capture agents. The ability of this system to reproducibly classify, quantify, and discriminate three proteins separately is demonstrated by probing the reflectance of PSi array elements with a unique combination of pore size and buffer pH, and by analyzing the optical signals using machine learning. Protein identification and discrimination are reported over a concentration range of two orders of magnitude. This work represents a significant first step towards a low-cost, simple, versatile, and robust sensor platform that is able to detect biomolecules without the added expense and limitations of using capture agents.

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