Literature DB >> 29027463

Machine-Learning-Based Olfactometer: Prediction of Odor Perception from Physicochemical Features of Odorant Molecules.

Liang Shang, Chuanjun Liu1, Yoichi Tomiura, Kenshi Hayashi.   

Abstract

Gas chromatography/olfactometry (GC/O) has been used in various fields as a valuable method to identify odor-active components from a complex mixture. Since human assessors are employed as detectors to obtain the olfactory perception of separated odorants, the GC/O technique is limited by its subjectivity, variability, and high cost of the trained panelists. Here, we present a proof-of-concept model by which odor information can be obtained by machine-learning-based prediction from molecular parameters (MPs) of odorant molecules. The odor prediction models were established using a database of flavors and fragrances including 1026 odorants and corresponding verbal odor descriptors (ODs). Physicochemical parameters of the odorant molecules were acquired by use of molecular calculation software (DRAGON). Ten representative ODs were selected to build the prediction models based on their high frequency of occurrence in the database. The features of the MPs were extracted via either unsupervised (principal component analysis) or supervised (Boruta, BR) approaches and then used as input to calibrate machine-learning models. Predictions were performed by various machine-learning approaches such as support vector machine (SVM), random forest, and extreme learning machine. All models were optimized via parameter tuning and their prediction accuracies were compared. A SVM model combined with feature extraction by BR-C (confirmed only) was found to afford the best results with an accuracy of 97.08%. Validation of the models was verified by using the GC/O data of an apple sample for comparison between the predicted and measured results. The prediction models can be used as an auxiliary tool in the existing GC/O by suggesting possible OD candidates to the panelists and thus helping to give more objective and correct judgment. In addition, a machine-based GC/O in which the panelist is no longer needed might be expected after further development of the proposed odor prediction technique.

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Year:  2017        PMID: 29027463     DOI: 10.1021/acs.analchem.7b02389

Source DB:  PubMed          Journal:  Anal Chem        ISSN: 0003-2700            Impact factor:   6.986


  7 in total

1.  Imputation of sensory properties using deep learning.

Authors:  Samar Mahmoud; Benedict Irwin; Dmitriy Chekmarev; Shyam Vyas; Jeff Kattas; Thomas Whitehead; Tamsin Mansley; Jack Bikker; Gareth Conduit; Matthew Segall
Journal:  J Comput Aided Mol Des       Date:  2021-10-30       Impact factor: 3.686

2.  Determining the Balance Between Drug Efficacy and Safety by the Network and Biological System Profile of Its Therapeutic Target.

Authors:  Xiao Xu Li; Jiayi Yin; Jing Tang; Yinghong Li; Qingxia Yang; Ziyu Xiao; Runyuan Zhang; Yunxia Wang; Jiajun Hong; Lin Tao; Weiwei Xue; Feng Zhu
Journal:  Front Pharmacol       Date:  2018-10-31       Impact factor: 5.810

3.  Chemical features mining provides new descriptive structure-odor relationships.

Authors:  Carmen C Licon; Guillaume Bosc; Mohammed Sabri; Marylou Mantel; Arnaud Fournel; Caroline Bushdid; Jerome Golebiowski; Celine Robardet; Marc Plantevit; Mehdi Kaytoue; Moustafa Bensafi
Journal:  PLoS Comput Biol       Date:  2019-04-25       Impact factor: 4.475

4.  Exploration of sensing data to realize intended odor impression using mass spectrum of odor mixture.

Authors:  Daisuke Hasebe; Manuel Alexandre; Takamichi Nakamoto
Journal:  PLoS One       Date:  2022-08-17       Impact factor: 3.752

5.  Insight into the Structure-Odor Relationship of Molecules: A Computational Study Based on Deep Learning.

Authors:  Weichen Bo; Yuandong Yu; Ran He; Dongya Qin; Xin Zheng; Yue Wang; Botian Ding; Guizhao Liang
Journal:  Foods       Date:  2022-07-09

Review 6.  Machine Learning in Human Olfactory Research.

Authors:  Jörn Lötsch; Dario Kringel; Thomas Hummel
Journal:  Chem Senses       Date:  2019-01-01       Impact factor: 3.160

7.  Data based predictive models for odor perception.

Authors:  Rinu Chacko; Deepak Jain; Manasi Patwardhan; Abhishek Puri; Shirish Karande; Beena Rai
Journal:  Sci Rep       Date:  2020-10-13       Impact factor: 4.379

  7 in total

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