Literature DB >> 30110149

Functional Nanoparticles-Coated Nanomechanical Sensor Arrays for Machine Learning-Based Quantitative Odor Analysis.

Kota Shiba, Ryo Tamura1,2, Takako Sugiyama, Yuko Kameyama, Keiko Koda, Eri Sakon, Kosuke Minami, Huynh Thien Ngo, Gaku Imamura, Koji Tsuda1,2,3, Genki Yoshikawa4.   

Abstract

A sensing signal obtained by measuring an odor usually contains varied information that reflects an origin of the odor itself, while an effective approach is required to reasonably analyze informative data to derive the desired information. Herein, we demonstrate that quantitative odor analysis was achieved through systematic material design-based nanomechanical sensing combined with machine learning. A ternary mixture consisting of water, ethanol, and methanol was selected as a model system where a target molecule coexists with structurally similar species in a humidified condition. To predict the concentration of each species in the system via the data-driven approach, six types of nanoparticles functionalized with hydroxyl, aminopropyl, phenyl, and/or octadecyl groups were synthesized as a receptor coating of a nanomechanical sensor. Then, a machine learning model based on Gaussian process regression was trained with sensing data sets obtained from the samples with diverse concentrations. As a result, the octadecyl-modified nanoparticles enhanced prediction accuracy for water while the use of both octadecyl and aminopropyl groups was indicated to be a key for a better prediction accuracy for ethanol and methanol. As the prediction accuracy for ethanol and methanol was improved by introducing two additional nanoparticles with finely controlled octadecyl and aminopropyl amount, the feedback obtained by the present machine learning was effectively utilized to optimize material design for better performance. We demonstrate through this study that various information which was extracted from plenty of experimental data sets was successfully combined with our knowledge to produce wisdom for addressing a critical issue in gas phase sensing.

Entities:  

Keywords:  MSS; machine learning; nanomechanical sensing; nanoparticle; odor; quantification; sensor array; surface functionality

Mesh:

Substances:

Year:  2018        PMID: 30110149     DOI: 10.1021/acssensors.8b00450

Source DB:  PubMed          Journal:  ACS Sens        ISSN: 2379-3694            Impact factor:   7.711


  4 in total

1.  Algorithmically Guided Optical Nanosensor Selector (AGONS): Guiding Data Acquisition, Processing, and Discrimination for Biological Sampling.

Authors:  Christopher W Smith; Mustafa Salih Hizir; Nidhi Nandu; Mehmet V Yigit
Journal:  Anal Chem       Date:  2021-12-29       Impact factor: 8.008

2.  Adsorption/Combustion-type Micro Gas Sensors: Typical VOC-sensing Properties and Material-design Approach for Highly Sensitive and Selective VOC Detection.

Authors:  Takeo Hyodo; Yasuhiro Shimizu
Journal:  Anal Sci       Date:  2020-02-14       Impact factor: 2.081

3.  Determination of quasi-primary odors by endpoint detection.

Authors:  Hanxiao Xu; Koki Kitai; Kosuke Minami; Makito Nakatsu; Genki Yoshikawa; Koji Tsuda; Kota Shiba; Ryo Tamura
Journal:  Sci Rep       Date:  2021-06-08       Impact factor: 4.379

Review 4.  Electrospinning Nanoparticles-Based Materials Interfaces for Sensor Applications.

Authors:  Shan Zhang; Zhenxin Jia; Tianjiao Liu; Gang Wei; Zhiqiang Su
Journal:  Sensors (Basel)       Date:  2019-09-14       Impact factor: 3.576

  4 in total

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