首页|Machine Learning-Aided Data Analysis in Single-Protein Conductance Measurement with Electron Tunneling Probes

Machine Learning-Aided Data Analysis in Single-Protein Conductance Measurement with Electron Tunneling Probes

扫码查看
The electrical tunneling sensors have excellent potential in the next generation of single-molecule measurement and sequencing technologies due to their high sensitivity and spatial resolution capabilities.Electrical tunneling signals that have been measured at a high sampling rate may provide detailed molecular information.Despite the extraordinarily large amount of data that has been gathered,it is still difficult to correlate signal transformations with molecular processes,which creates great obstacles for signal analysis.Machine learning is an effective tool for data analysis that is currently gaining more significance.It has demonstrated prom-ising results when used to analyze data from single-molecule electrical measurements.In order to extract meaningful information from raw measurement data,we have combined intelligent machine learning with tunneling electrical signals.For the purpose of analyzing tunneling electrical signals,we investigated the clustering approach,which is a classic algorithm in machine learning.A clustering model was built that combines the advantages of hierarchical clustering and Gaussian mixture model clustering.Addition-ally,customized statistical algorithms were designed.It has been proven to efficiently gather molecular information and enhance the effectiveness of data analysis.

Tunneling sensorSingle-molecule measurementMachine learningSingle-protein conductanceMolecular electrochemistryNanotechnologyMolecular electronics

Yuxin Yang、Tao Jiang、Ye Tian、Biaofeng Zeng、Longhua Tang

展开 >

State Key Laboratory of Extreme Photonics and Instrumentation,College of Optical Science and Engineering,Zhejiang University,Hangzhou,Zhejiang 310027,China

Nanhu Brain-computer Interface Institute,Hangzhou,Zhejiang 311100,China

State Key Laboratory of Fluid Power and Mechatronic Systems,College of Mechanical Engineering,Zhejiang University,Hangzhou,Zhejiang 310027,China

国家自然科学基金浙江省自然科学基金中央高校基本科研业务费专项

62127818LR22F050003

2024

中国化学(英文版)
中国化学会 上海有机化学研究所

中国化学(英文版)

CSTPCD
影响因子:0.848
ISSN:1001-604X
年,卷(期):2024.42(1)
  • 27