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Chemiresistive Sensor Array and Machine Learning Classification of Food.
Schroeder, Vera; Evans, Ethan D; Wu, You-Chi Mason; Voll, Constantin-Christian A; McDonald, Benjamin R; Savagatrup, Suchol; Swager, Timothy M.
Affiliation
  • Schroeder V; Department of Chemistry and Institute for Soldier Nanotechnologies , Massachusetts Institute of Technology , 77 Massachusetts Avenue , Cambridge Massachusetts 02139 , United States.
  • Evans ED; Department of Biological Engineering , Massachusetts Institute of Technology , Cambridge Massachusetts 02139 , United States.
  • Wu YM; Department of Chemistry and Institute for Soldier Nanotechnologies , Massachusetts Institute of Technology , 77 Massachusetts Avenue , Cambridge Massachusetts 02139 , United States.
  • Voll CA; Department of Chemistry and Institute for Soldier Nanotechnologies , Massachusetts Institute of Technology , 77 Massachusetts Avenue , Cambridge Massachusetts 02139 , United States.
  • McDonald BR; Department of Chemistry and Institute for Soldier Nanotechnologies , Massachusetts Institute of Technology , 77 Massachusetts Avenue , Cambridge Massachusetts 02139 , United States.
  • Savagatrup S; Department of Chemistry and Institute for Soldier Nanotechnologies , Massachusetts Institute of Technology , 77 Massachusetts Avenue , Cambridge Massachusetts 02139 , United States.
  • Swager TM; Department of Chemistry and Institute for Soldier Nanotechnologies , Massachusetts Institute of Technology , 77 Massachusetts Avenue , Cambridge Massachusetts 02139 , United States.
ACS Sens ; 4(8): 2101-2108, 2019 08 23.
Article in En | MEDLINE | ID: mdl-31339035
ABSTRACT
Successful identification of complex odors by sensor arrays remains a challenging problem. Herein, we report robust, category-specific multiclass-time series classification using an array of 20 carbon nanotube-based chemical sensors. We differentiate between samples of cheese, liquor, and edible oil based on their odor. In a two-stage machine-learning approach, we first obtain an optimal subset of sensors specific to each category and then validate this subset using an independent and expanded data set. We determined the optimal selectors via independent selector classification accuracy, as well as a combinatorial scan of all 4845 possible four selector combinations. We performed sample classification using two models-a k-nearest neighbors model and a random forest model trained on extracted features. This protocol led to high classification accuracy in the independent test sets for five cheese and five liquor samples (accuracies of 91% and 78%, respectively) and only a slightly lower (73%) accuracy on a five edible oil data set.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Plant Oils / Biosensing Techniques / Electrochemical Techniques / Machine Learning / Odorants Limits: Humans Language: En Journal: ACS Sens Year: 2019 Document type: Article Affiliation country:

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Plant Oils / Biosensing Techniques / Electrochemical Techniques / Machine Learning / Odorants Limits: Humans Language: En Journal: ACS Sens Year: 2019 Document type: Article Affiliation country:
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