[Special Issue for Honor Award dedicating to Prof Kimito Funatsu]Chemoinformatics Approach for Estimating Recovery Rates of Pesticides in Fruits and Vegetables

Pesticides are considered a vital component of modern farming, playing major roles in maintaining high agricultural productivity. Pesticide recovery rates in vegetables and fruits determined using GC/MS depends on various factors including the matrix effect and chemical interactions between pesticid...

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Veröffentlicht in:Journal of Computer Aided Chemistry 2019, Vol.20, pp.92-103
Hauptverfasser: Serino, Takeshi, Takigawa, Yoshizumi, Nakamura, Sadao, Huang, Ming, Ono, Naoaki, Altaf-Ul-Amin, Kanaya, Shigehiko
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container_end_page 103
container_issue
container_start_page 92
container_title Journal of Computer Aided Chemistry
container_volume 20
creator Serino, Takeshi
Takigawa, Yoshizumi
Nakamura, Sadao
Huang, Ming
Ono, Naoaki
Altaf-Ul-Amin
Kanaya, Shigehiko
description Pesticides are considered a vital component of modern farming, playing major roles in maintaining high agricultural productivity. Pesticide recovery rates in vegetables and fruits determined using GC/MS depends on various factors including the matrix effect and chemical interactions between pesticides and mixing compounds in crops. In this study, the recovery rate of a pesticide is defined by a ratio of peak area of 50 ppb spiked in a crop sample to that in the solvent standard calibration curve. The estimation of recovery rates of pesticides in crops leads to evaluation of precise contents of them in the crops. In the present study, we performed regression models of the recovery rates based on molecular descriptors using R-packages rcdk and caret. Each of the chemical structures of 248 pesticides was converted to 174 molecular descriptors, then, for 7 crops, we created 69 ordinary and 20 ensemble learning regression models for estimating the recovery rates from the molecular descriptors using R-package caret. In the present study, two machine learning regression methods called mSBC and xgbLinear performed the best in view of prediction rates and execution times. In those two regression models predictions of recovery rates of pesticides are carried out in local distribution of chemical properties out of the 174 molecular descriptors. This concludes that closely related pesticides in the chemical space have also very similar recovery rates.
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source Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals; J-STAGE (Japan Science & Technology Information Aggregator, Electronic) Freely Available Titles - Japanese; Free Full-Text Journals in Chemistry
subjects Agrochemicals
Chemical properties
Crops
Estimation
Fruits
Machine learning
Pesticides
quantitative-structure property relation ships
Recovery
recovery rate
regression analysis
Regression models
Vegetables
title [Special Issue for Honor Award dedicating to Prof Kimito Funatsu]Chemoinformatics Approach for Estimating Recovery Rates of Pesticides in Fruits and Vegetables
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