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采后条件下检测水果和蔬菜中虫害的无损技术:综述

Non-Destructive Technologies for Detecting Insect Infestation in Fruits and Vegetables under Postharvest Conditions: A Critical Review.

作者信息

Adedeji Akinbode A, Ekramirad Nader, Rady Ahmed, Hamidisepehr Ali, Donohue Kevin D, Villanueva Raul T, Parrish Chadwick A, Li Mengxing

机构信息

Department of Biosystems and Agricultural Engineering, University of Kentucky, Lexington, KY 40546, USA.

Department of Biosystems and Agricultural Engineering, Alexandria University, Alexandria 21526, Egypt.

出版信息

Foods. 2020 Jul 14;9(7):927. doi: 10.3390/foods9070927.

Abstract

In the last two decades, food scientists have attempted to develop new technologies that can improve the detection of insect infestation in fruits and vegetables under postharvest conditions using a multitude of non-destructive technologies. While consumers' expectations for higher nutritive and sensorial value of fresh produce has increased over time, they have also become more critical on using insecticides or synthetic chemicals to preserve food quality from insects' attacks or enhance the quality attributes of minimally processed fresh produce. In addition, the increasingly stringent quarantine measures by regulatory agencies for commercial import-export of fresh produce needs more reliable technologies for quickly detecting insect infestation in fruits and vegetables before their commercialization. For these reasons, the food industry investigates alternative and non-destructive means to improve food quality. Several studies have been conducted on the development of rapid, accurate, and reliable insect infestation monitoring systems to replace invasive and subjective methods that are often inefficient. There are still major limitations to the effective in-field, as well as postharvest on-line, monitoring applications. This review presents a general overview of current non-destructive techniques for the detection of insect damage in fruits and vegetables and discusses basic principles and applications. The paper also elaborates on the specific post-harvest fruit infestation detection methods, which include principles, protocols, specific application examples, merits, and limitations. The methods reviewed include those based on spectroscopy, imaging, acoustic sensing, and chemical interactions, with greater emphasis on the noninvasive methods. This review also discusses the current research gaps as well as the future research directions for non-destructive methods' application in the detection and classification of insect infestation in fruits and vegetables.

摘要

在过去二十年中,食品科学家们试图开发新技术,利用多种非破坏性技术来改进对采后条件下水果和蔬菜中昆虫侵染的检测。随着时间的推移,消费者对新鲜农产品更高营养价值和感官品质的期望有所增加,同时他们对于使用杀虫剂或合成化学品来保护食品质量免受昆虫侵害或提升最少加工新鲜农产品的品质属性也变得更加挑剔。此外,监管机构对新鲜农产品商业进出口日益严格的检疫措施,需要更可靠的技术来在水果和蔬菜商业化之前快速检测其中的昆虫侵染情况。出于这些原因,食品行业在研究替代的非破坏性方法来提高食品质量。已经开展了多项研究来开发快速、准确且可靠的昆虫侵染监测系统,以取代那些往往效率低下的侵入性和主观性方法。在有效的田间以及采后在线监测应用方面仍然存在重大限制。本综述概述了当前用于检测水果和蔬菜中昆虫损害的非破坏性技术,并讨论了其基本原理和应用。本文还详细阐述了具体的采后果实侵染检测方法,包括原理、方案、具体应用实例、优点和局限性。所综述的方法包括基于光谱学、成像、声学传感和化学相互作用的方法,更侧重于非侵入性方法。本综述还讨论了当前的研究差距以及非破坏性方法在水果和蔬菜昆虫侵染检测及分类中的应用的未来研究方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/185a/7404779/f973fda054e9/foods-09-00927-g001.jpg

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