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Deficit irrigation and organic amendments can reduce dietary arsenic risk from rice : introducing machine learning-based prediction models from field data

Sengupta, S; Bhattacharyya, K; Mandal, J; Bhattacharya, P; Halder, S; Pari, A

Deficit irrigation and organic amendments can reduce dietary arsenic risk from rice : introducing machine learning-based prediction models from field data Thumbnail


Authors

S Sengupta

K Bhattacharyya

P Bhattacharya

S Halder

A Pari



Abstract

Dietary rice consumption can assume a significant pathway of the carcinogenic arsenic (As) in the human system. In search of a viable mitigation strategy, a field experiment was conducted with rice (cv. IET-4786) at geogenically arsenic-contaminated areas (West Bengal, India) for two consecutive years. The research aimed to explore irrigation management (saturation and alternate wetting and drying), and organic amendments (vermicompost, farmyard manure, and mustard cake) efficiencies in reducing As load in the whole soil-plant system. A thrice replicated strip plot design was employed and As content in the soil, plant parts, and the associated soil physicochemical properties were determined through a standard protocol. Results revealed that the most negligible As accumulation in the edible grains was accomplished by vermicompost amendment along with alternate wetting and drying (0.318 mg kg−1) over farmer’s practice of continuous submergence with no manure situation (0.895 mg kg−1). Interestingly, an increase in the grain yield by 25% was also observed. The risk of dietary exposure to As through rice was assessed by target cancer risk (TCR) and severity adjusted margin of exposure (SAMOE) mediated risk thermometer. The adopted strategy made all the risk factors somewhat benign to ensure a better standard of health. The Machine Learning algorithm revealed that Random Forest performed better in predicting grain As concentration than k-Nearest Neighbour and Generalized Regression Model. Hence, if properly calibrated and validated, the former can represent an effective tool for predicting grain As concentration in rice.

Citation

Sengupta, S., Bhattacharyya, K., Mandal, J., Bhattacharya, P., Halder, S., & Pari, A. (2021). Deficit irrigation and organic amendments can reduce dietary arsenic risk from rice : introducing machine learning-based prediction models from field data. Agriculture, ecosystems & environment, 319, 107516. https://doi.org/10.1016/j.agee.2021.107516

Journal Article Type Article
Acceptance Date May 21, 2021
Online Publication Date May 28, 2021
Publication Date Oct 1, 2021
Deposit Date Jun 4, 2021
Publicly Available Date May 28, 2022
Journal Agriculture, Ecosystems and Environment
Print ISSN 0167-8809
Publisher Elsevier
Volume 319
Pages 107516
DOI https://doi.org/10.1016/j.agee.2021.107516
Publisher URL https://doi.org/10.1016/j.agee.2021.107516
Related Public URLs http://www.journals.elsevier.com/agriculture-ecosystems-and-environment/
Additional Information Additional Information : ** Article version: AM ** From Elsevier via Jisc Publications Router ** Licence for AM version of this article starting on 28-05-2023: http://creativecommons.org/licenses/by-nc-nd/4.0/ **Journal IDs: issn 01678809 **History: issue date 01-10-2021; published_online 28-05-2021; accepted 21-05-2021
Funders : Indian Institute of Water Management (ICAR);ICAR
Projects : 751023
Grant Number: 751023