Technological Innovations in Food Quality Analysis

Q2 Agricultural and Biological Sciences Food Science and Technology Pub Date : 2024-12-05 DOI:10.1002/fsat.3804_6.x
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With increasing global trade and complex food supply chains, ensuring food safety has become a significant challenge. Innovations in food quality analysis have led to the development of technologies that can rapidly detect contaminants, pathogens, and other harmful substances<sup>(</sup><span><sup>1</sup></span><sup>)</sup>. These technologies not only offer greater precision but also facilitate real-time monitoring, ensuring timely corrective actions. Recent research has highlighted the role of AI, biosensors, spectroscopy, and blockchain in transforming traditional food analysis methods and contributing to improved food safety<sup>(</sup><span><sup>2</sup></span><sup>)</sup>. This article will explore further key technological developments.</p><p>Spectroscopic techniques have been widely adopted in food quality analysis for their non-invasive and rapid detection capabilities. The most prominent methods include near-infrared (NIR) Spectroscopy, Fourier transform infrared (FTIR), and laser-induced breakdown spectroscopy (LIBS). NIR spectroscopy is extensively used to analyze food composition, including moisture, fat, protein, and carbohydrate contents. Recent advances in portable NIR devices have enabled on-site analysis, which is critical for real-time quality monitoring. FTIR spectroscopy is highly effective for detecting food adulteration and assessing the quality of fats and oils. New FTIR-based methods combine multivariate analyses to identify subtle changes in food composition that are otherwise undetectable<sup>(</sup><span><sup>3</sup></span><sup>)</sup>. LIBS is emerging as a powerful tool for the detection of metal contaminants in food. Its ability to perform rapid elemental analysis without extensive sample preparation makes it ideal for food safety applications<sup>(</sup><span><sup>3</sup></span><sup>)</sup>.</p><p>Biosensors have revolutionised food quality monitoring by combining biological recognition elements with transducer components to detect and measure specific analytes in food samples. They offer fast and accurate detection of contaminants, pathogens, and allergens, providing real-time analyses. This makes them crucial for perishable goods and large-scale food production environments. Electrochemical biosensors are highly sensitive to foodborne pathogens, including <i>Escherichia coli</i> and <i>Salmonella</i>. Their integration with portable devices has enabled on-site testing, thereby reducing the need for complex laboratory equipment<sup>(</sup><span><sup>4</sup></span><sup>)</sup>. Optical biosensors, particularly those that use fluorescence and surface plasmon resonance (SPR), have been used to detect allergens and chemical residues in food matrices. They offer real-time monitoring and high specificity, which are important for ensuring food safety during production and processing<sup>(</sup><span><sup>4</sup></span><sup>)</sup>. Recent advancements in nanotechnology have further enhanced biosensor sensitivity, allowing for the detection of contaminants at the molecular level<sup>(</sup><span><sup>2</sup></span><sup>)</sup>.</p><p>Rapid detection methods are essential for modern food analysis owing to the need for timely results. PCR-based methods, lab-on-a-chip technologies, and advanced sensors are helping speed up food testing. Lab-on-a-chip technologies integrate multiple laboratory functions into a single chip, enabling rapid detection of contaminants in food. These miniaturised systems are highly portable and offer immediate results<sup>(</sup><span><sup>4</sup></span><sup>)</sup>.</p><p>Nanotechnology is opening new possibilities for food quality testing, particularly for detecting contaminants at very low concentrations. Nanoparticles and nanosensors are being used to develop highly sensitive detection systems that can be embedded in food packaging or used in rapid testing devices. Nanosensors are effective in detecting toxins, allergens, and pathogens. They can be integrated into portable devices to enable on-site and real-time food safety monitoring<sup>(</sup><span><sup>4</sup></span><sup>)</sup>.</p><p>AI has emerged as a transformative tool for automated food quality analysis. 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引用次数: 0

Abstract

Ahmed Hamad explores the world of food quality analysis with an overview of advancements.

Food quality analysis has advanced considerably due to technological innovations that offer enhanced detection capability, speed, and accuracy. This article explores advancements in spectroscopy, biosensors, artificial intelligence (AI), and blockchain technology, which address the complex needs of food quality monitoring and safety assessment. These innovations improve both the efficiency of testing and the transparency of food supply chains, supported by relevant studies from scientific literature. Food quality analysis is critical to ensure that food products consumed by the public meet the required safety and quality standards. With increasing global trade and complex food supply chains, ensuring food safety has become a significant challenge. Innovations in food quality analysis have led to the development of technologies that can rapidly detect contaminants, pathogens, and other harmful substances(1). These technologies not only offer greater precision but also facilitate real-time monitoring, ensuring timely corrective actions. Recent research has highlighted the role of AI, biosensors, spectroscopy, and blockchain in transforming traditional food analysis methods and contributing to improved food safety(2). This article will explore further key technological developments.

Spectroscopic techniques have been widely adopted in food quality analysis for their non-invasive and rapid detection capabilities. The most prominent methods include near-infrared (NIR) Spectroscopy, Fourier transform infrared (FTIR), and laser-induced breakdown spectroscopy (LIBS). NIR spectroscopy is extensively used to analyze food composition, including moisture, fat, protein, and carbohydrate contents. Recent advances in portable NIR devices have enabled on-site analysis, which is critical for real-time quality monitoring. FTIR spectroscopy is highly effective for detecting food adulteration and assessing the quality of fats and oils. New FTIR-based methods combine multivariate analyses to identify subtle changes in food composition that are otherwise undetectable(3). LIBS is emerging as a powerful tool for the detection of metal contaminants in food. Its ability to perform rapid elemental analysis without extensive sample preparation makes it ideal for food safety applications(3).

Biosensors have revolutionised food quality monitoring by combining biological recognition elements with transducer components to detect and measure specific analytes in food samples. They offer fast and accurate detection of contaminants, pathogens, and allergens, providing real-time analyses. This makes them crucial for perishable goods and large-scale food production environments. Electrochemical biosensors are highly sensitive to foodborne pathogens, including Escherichia coli and Salmonella. Their integration with portable devices has enabled on-site testing, thereby reducing the need for complex laboratory equipment(4). Optical biosensors, particularly those that use fluorescence and surface plasmon resonance (SPR), have been used to detect allergens and chemical residues in food matrices. They offer real-time monitoring and high specificity, which are important for ensuring food safety during production and processing(4). Recent advancements in nanotechnology have further enhanced biosensor sensitivity, allowing for the detection of contaminants at the molecular level(2).

Rapid detection methods are essential for modern food analysis owing to the need for timely results. PCR-based methods, lab-on-a-chip technologies, and advanced sensors are helping speed up food testing. Lab-on-a-chip technologies integrate multiple laboratory functions into a single chip, enabling rapid detection of contaminants in food. These miniaturised systems are highly portable and offer immediate results(4).

Nanotechnology is opening new possibilities for food quality testing, particularly for detecting contaminants at very low concentrations. Nanoparticles and nanosensors are being used to develop highly sensitive detection systems that can be embedded in food packaging or used in rapid testing devices. Nanosensors are effective in detecting toxins, allergens, and pathogens. They can be integrated into portable devices to enable on-site and real-time food safety monitoring(4).

AI has emerged as a transformative tool for automated food quality analysis. Machine learning models and neural networks are used to assess food quality based on complex datasets, offering faster and more accurate predictions than traditional methods.

Machine learning algorithms are now widely applied to predict food spoilage, optimise shelf-life, and detect fraud. These models can analyse large datasets, identify patterns, and provide early warning regarding food degradation(5). AI-driven computer vision systems are deployed in food processing plants to monitor product appearance, detect surface defects, and ensure consistency in quality. This application is particularly valuable for grading fruits and vegetables(2, 5).

Blockchain technology is integrated into food supply chains to enhance traceability and transparency. A blockchain creates a decentralised ledger that tracks every step of the supply chain from farm to fork.

Blockchain ensures that data on the origin, processing, and transportation of food products are recorded securely, making it possible for consumers and regulators to verify the authenticity of food products(1). When integrated with the Internet of Things (IoT), blockchain enables real-time monitoring of conditions such as temperature, humidity, and handling during food transportation. This real-time data can ensure that perishable foods maintain their quality throughout the supply chain(1).

Although these technologies offer significant improvements in food quality analysis, there are still challenges to be addressed. The cost of implementing advanced technologies can be prohibitive for small and medium-sized enterprises (SMEs). Moreover, regulatory frameworks must be adapted to incorporate these new technologies. As AI, biosensors, and blockchain become more prevalent, regulators need to develop new standards and guidelines to ensure that these technologies are used effectively and safely(1). Although large food corporations can afford to invest in these technologies, SMEs may struggle with high initial costs. Developing low-cost alternatives or offering subsidies may help bridge this gap(3).

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食品质量分析中的技术创新
艾哈迈德·哈马德探索世界食品质量分析与进步的概述。由于技术创新提供了增强的检测能力、速度和准确性,食品质量分析取得了相当大的进步。本文探讨了光谱学、生物传感器、人工智能(AI)和区块链技术的进展,这些技术解决了食品质量监测和安全评估的复杂需求。这些创新既提高了检测效率,又提高了食品供应链的透明度,并得到了科学文献相关研究的支持。食品质量分析对于确保公众消费的食品符合规定的安全和质量标准至关重要。随着全球贸易的增加和食品供应链的复杂,确保食品安全已成为一项重大挑战。食品质量分析的创新导致了能够快速检测污染物、病原体和其他有害物质的技术的发展(1)。这些技术不仅提供更高的精度,而且便于实时监控,确保及时采取纠正措施。最近的研究强调了人工智能、生物传感器、光谱学和区块链在改变传统食品分析方法和提高食品安全方面的作用(2)。本文将进一步探讨关键技术的发展。光谱技术以其无创、快速的检测能力在食品质量分析中得到广泛应用。最主要的方法包括近红外光谱(NIR)、傅里叶变换红外光谱(FTIR)和激光诱导击穿光谱(LIBS)。近红外光谱被广泛用于分析食物成分,包括水分、脂肪、蛋白质和碳水化合物的含量。便携式近红外设备的最新进展使现场分析成为可能,这对实时质量监测至关重要。FTIR光谱是检测食品掺假和评估油脂质量的有效方法。新的基于红外光谱的方法结合了多变量分析来识别食物成分的细微变化,否则无法检测到(3)。LIBS正在成为检测食品中金属污染物的有力工具。它能够进行快速元素分析,而无需大量的样品制备,使其成为食品安全应用的理想选择(3)。生物传感器通过将生物识别元件与传感器组件相结合来检测和测量食品样品中的特定分析物,从而彻底改变了食品质量监测。它们可以快速准确地检测污染物、病原体和过敏原,提供实时分析。这使得它们对易腐货物和大规模食品生产环境至关重要。电化学生物传感器对包括大肠杆菌和沙门氏菌在内的食源性病原体高度敏感。它们与便携式设备的集成使现场测试成为可能,从而减少了对复杂实验室设备的需求(4)。光学生物传感器,特别是那些使用荧光和表面等离子体共振(SPR)的传感器,已被用于检测食物基质中的过敏原和化学残留物。它们提供实时监控和高特异性,这对确保生产和加工过程中的食品安全至关重要(4)。纳米技术的最新进展进一步提高了生物传感器的灵敏度,允许在分子水平上检测污染物(2)。由于需要及时的结果,快速检测方法对于现代食品分析至关重要。基于聚合酶链反应的方法、芯片实验室技术和先进的传感器有助于加快食品检测速度。Lab-on-a-chip技术将多个实验室功能集成到单个芯片中,能够快速检测食品中的污染物。这些小型化的系统具有高度的可移植性和立竿见影的效果。纳米技术为食品质量检测开辟了新的可能性,特别是在检测极低浓度的污染物方面。纳米粒子和纳米传感器正被用于开发高灵敏度的检测系统,这些系统可以嵌入食品包装或用于快速测试设备。纳米传感器在检测毒素、过敏原和病原体方面是有效的。它们可以集成到便携式设备中,实现现场和实时的食品安全监测(4)。人工智能已经成为自动化食品质量分析的变革性工具。机器学习模型和神经网络用于基于复杂数据集评估食品质量,提供比传统方法更快、更准确的预测。机器学习算法现在被广泛应用于预测食物变质、优化保质期和检测欺诈。这些模型可以分析大型数据集,识别模式,并提供有关粮食退化的早期预警(5)。 人工智能驱动的计算机视觉系统被部署在食品加工厂,以监控产品外观,检测表面缺陷,并确保质量的一致性。该应用程序对于水果和蔬菜的分级特别有价值(2,5)。区块链技术被整合到食品供应链中,以提高可追溯性和透明度。区块链创建了一个分散的分类账,可以跟踪从农场到餐桌的供应链的每一步。区块链确保安全记录食品的来源、加工和运输数据,使消费者和监管机构能够验证食品的真实性(1)。当与物联网(IoT)集成时,区块链可以实时监控食品运输过程中的温度、湿度和处理等条件。这种实时数据可以确保易腐食品在整个供应链中保持其质量(1)。尽管这些技术为食品质量分析提供了重大改进,但仍有挑战需要解决。实施先进技术的成本可能使中小型企业望而却步。此外,必须调整监管框架以纳入这些新技术。随着人工智能、生物传感器和区块链变得越来越普遍,监管机构需要制定新的标准和指导方针,以确保这些技术的有效和安全使用(1)。虽然大型食品公司能够负担得起对这些技术的投资,但中小企业可能难以应付高昂的初始成本。开发低成本替代品或提供补贴可能有助于弥补这一差距(3)。
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来源期刊
Food Science and Technology
Food Science and Technology 农林科学-食品科技
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Cover and contents Editorial and News From the President and IFST News Technological Innovations in Food Quality Analysis Not all bubbles are equal: bread texture and the science of baking
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