使用自动图像分析对肉类类似物视觉纤维性的定量表征。

IF 2.8 3区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY Journal of texture studies Pub Date : 2023-10-19 DOI:10.1111/jtxs.12806
Yizhou Ma, Miek Schlangen, Jelle Potappel, Lu Zhang, Atze Jan van der Goot
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引用次数: 0

摘要

植物肉类似物的一个理想质量是类似于煮熟的肌肉肉的纤维结构。虽然纹理分析可以机械地表征纤维结构,但视觉纤维结构的评估仍然是主观的。肉类类似物视觉纤维结构的定量评估依赖于专家知识,资源密集且耗时。在这项研究中,开发了一种新的基于图像的方法(Fiberlyzer),以提供对肉类类似物视觉纤维性的自动化、定量和标准化评估。Fiberlyzer方法从2D图像中分割纤维区域,并提取纤维形状特征,以表征由绿豆、大豆和豌豆蛋白制成的肉类似物的纤维结构。计算出的纤维分数(纤维长度和宽度之间的比率)与专家小组的评估有很强的相关性,特别是在每个配方的基础上(r2 = 0.93)。此外,Fiberlyzer方法生成纤维形状特征,包括纤维分数、纤维面积和纤维分支数量,有助于比较肉类类似物样品和作为基准的熟鸡肉之间的结构相似性。凭借简单的测量设置和用户友好的界面,Fiberlyzer方法可以成为一种标准工具,集成到植物肉类似物的配方开发、质量控制和生产程序中。这种方法提供了快速、廉价和标准化的视觉纤维化量化,最大限度地减少了质量控制过程中对专家知识的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Quantitative characterizations of visual fibrousness in meat analogues using automated image analysis

A desirable quality of plant-based meat analogues is to resemble the fibrous structure of cooked muscle meat. While texture analysis can characterize fibrous structures mechanically, assessment of visual fibrous structures remains subjective. Quantitative assessment of visual fibrous structures of meat analogues relies on expert knowledge, is resource-intensive, and time-consuming. In this study, a novel image-based method (Fiberlyzer) is developed to provide automated, quantitative, and standardized assessment of visual fibrousness of meat analogues. The Fiberlyzer method segments fibrous regions from 2D images and extracts fiber shape features to characterize the fibrous structure of meat analogues made from mung bean, soy, and pea protein. The computed fiber scores (the ratio between fiber length and width) demonstrate a strong correlation with expert panel evaluations, particularly on a per-formulation basis (r2 = 0.93). Additionally, the Fiberlyzer method generates fiber shape features including fiber score, fiber area, and the number of fiber branches, facilitating comparisons of structural similarity between meat analogue samples and cooked chicken meat as a benchmark. With a simple measurement setup and user-friendly interface, the Fiberlyzer method can become a standard tool integrated into formulation development, quality control, and production routines of plant-based meat analogue. This method offers rapid, cheap, and standardized quantification of visual fibrousness, minimizing the need for expert knowledge in the process of quality control.

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来源期刊
Journal of texture studies
Journal of texture studies 工程技术-食品科技
CiteScore
6.30
自引率
9.40%
发文量
78
审稿时长
>24 weeks
期刊介绍: The Journal of Texture Studies is a fully peer-reviewed international journal specialized in the physics, physiology, and psychology of food oral processing, with an emphasis on the food texture and structure, sensory perception and mouth-feel, food oral behaviour, food liking and preference. The journal was first published in 1969 and has been the primary source for disseminating advances in knowledge on all of the sciences that relate to food texture. In recent years, Journal of Texture Studies has expanded its coverage to a much broader range of texture research and continues to publish high quality original and innovative experimental-based (including numerical analysis and simulation) research concerned with all aspects of eating and food preference. Journal of Texture Studies welcomes research articles, research notes, reviews, discussion papers, and communications from contributors of all relevant disciplines. Some key coverage areas/topics include (but not limited to): • Physical, mechanical, and micro-structural principles of food texture • Oral physiology • Psychology and brain responses of eating and food sensory • Food texture design and modification for specific consumers • In vitro and in vivo studies of eating and swallowing • Novel technologies and methodologies for the assessment of sensory properties • Simulation and numerical analysis of eating and swallowing
期刊最新文献
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