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结合计算技术从鸡脚中获得高质量明胶基凝胶

Combination of Computational Techniques to Obtain High-Quality Gelatin-Base Gels from Chicken Feet.

作者信息

Santana José C C, Almeida Poliana F, Costa Nykael, Vasconcelos Isabella, Guerhardt Flavio, Boukouvalas Dimitria T, Alves Wonder A L, Mendoza Pedro C, Gamarra Felix M C, Llanos Segundo A V, Araujo Sidnei A, Quispe Ada P B, Vanalle Rosangela M, Berssaneti Fernando T

机构信息

Department of Production Engineering, Polytechnic School, University of São Paulo, Av. Prof. Luciano Gualberto, 1380, Butantã, São Paulo 05508-010, Brazil.

Department of Management Engineering, Federal University of ABC, University Mall, São Bernardo do Campo 09606-045, Brazil.

出版信息

Polymers (Basel). 2021 Apr 15;13(8):1289. doi: 10.3390/polym13081289.

Abstract

With the increasing global population, it has become necessary to explore new alternative food sources to meet the increasing demand. However, these alternatives sources should not only be nutritive and suitable for large scale production at low cost, but also present good sensory characteristics. Therefore, this situation has influenced some industries to develop new food sources with competitive advantages, which require continuous innovation by generating and utilising new technologies and tools to create opportunities for new products, services, and industrial processes. Thus, this study aimed to optimise the production of gelatin-base gels from chicken feet by response surface methodology (RSM) and facilitate its sensorial classification by Kohonen's self-organising maps (SOM). Herein, a 2 experimental design was developed by varying sugar and powdered collagen contents to obtain grape flavoured gelatin from chicken feet. The colour, flavour, aroma, and texture attributes of gelatines were evaluated by consumers according to a hedonic scale of 1-9 points. Least squares method was used to develop models relating the gelatin attributes with the sugar content and collagen mass, and their sensorial qualities were analysed and classified using the SOM algorithm. Results showed that all gelatin samples had an average above six hedonic points, implying that they had good consumer acceptance and can be marketed. Furthermore, gelatin D, with 3.65-3.80% () powdered collagen and 26.5-28.6% () sugar, was determined as the best. Thus, the SOM algorithm proved to be a useful computational tool for comparing sensory samples and identifying the best gelatin product.

摘要

随着全球人口的不断增加,探索新的替代食物来源以满足日益增长的需求变得十分必要。然而,这些替代来源不仅应营养丰富且适合低成本大规模生产,还应具有良好的感官特性。因此,这种情况促使一些行业开发具有竞争优势的新食物来源,这需要通过产生和利用新技术及工具来持续创新,为新产品、服务和工业流程创造机会。因此,本研究旨在通过响应面法(RSM)优化鸡脚明胶基凝胶的生产,并通过科赫伦自组织映射(SOM)促进其感官分类。在此,通过改变糖和胶原蛋白粉的含量开发了一个二因素实验设计,以从鸡脚中获得葡萄味明胶。消费者根据1 - 9分的享乐量表对明胶的颜色、风味、香气和质地属性进行评价。使用最小二乘法建立将明胶属性与糖含量和胶原蛋白质量相关的模型,并使用SOM算法分析和分类它们的感官品质。结果表明,所有明胶样品的享乐评分平均高于6分,这意味着它们具有良好的消费者接受度且可进行市场推广。此外,确定胶原蛋白粉含量为3.65 - 3.80%()且糖含量为26.5 - 28.6%()的明胶D为最佳。因此,SOM算法被证明是一种用于比较感官样品和识别最佳明胶产品的有用计算工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bd42/8071339/3f809c4c4ee7/polymers-13-01289-g002.jpg

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