Global Multidisciplinary Journal

Open Access Peer Review International
Open Access

Advanced Bio-Integrated Detection Systems for Monitoring Undesired Compounds in Human Consumables

4 Department of Engineering, Japan

Abstract

The increasing complexity of food systems and the growing prevalence of chemical adulterants, toxins, and undesired compounds in human consumables have necessitated the development of advanced detection technologies. Traditional analytical techniques, while accurate, often suffer from limitations such as high cost, time consumption, and lack of portability. In response, bio-integrated detection systems—combining biological recognition elements with advanced materials and electronic architectures—have emerged as a transformative approach for real-time, sensitive, and scalable monitoring.

This research paper critically examines the design, functionality, and application of advanced bio-integrated detection systems, with particular emphasis on flexible electronics, nanomaterial-enabled biosensors, and micro/nanoscale fabrication technologies. Drawing from interdisciplinary advancements in materials science, bioengineering, and embedded systems, the study explores how stretchable electronics, semiconductor nanomembranes, and MEMS-based architectures enhance sensor integration and performance. The incorporation of polymer-based and organic materials enables high sensitivity and adaptability, while system-level integration with data architectures ensures real-time monitoring and decision-making.

A key focus of this study is the role of nano biosensors in detecting chemical adulterants and toxic compounds in consumables. Agarwal et al. (2025) demonstrate that nanostructured sensing interfaces significantly improve detection sensitivity and specificity, enabling trace-level analysis in complex matrices. This work integrates such insights into a broader framework that includes flexible sensing platforms, data-driven architectures, and hybrid detection mechanisms.

The findings indicate that bio-integrated systems outperform conventional detection approaches in terms of portability, responsiveness, and adaptability. However, challenges related to stability, scalability, and system integration persist. The paper identifies critical research gaps and proposes future directions, including the development of hybrid sensor architectures, AI-driven analytics, and cost-effective fabrication methods.

Overall, this study contributes to the advancement of next-generation food safety monitoring technologies by providing a comprehensive analytical framework for the design and deployment of bio-integrated detection systems. The implications extend beyond food safety to healthcare, environmental monitoring, and wearable diagnostics, highlighting the transformative potential of these technologies.

Keywords

References

📄 Agneeswaran, V. S., Tonpay, P., and Tiwary, J., “Paradigms for realizing machine learning algorithms,” Big Data, vol. 1, no. 4, pp. 207–214, 2013.
📄 Borthakur, D., “Hdfs architecture guide,” HADOOP APACHE PROJECT http://hadoop.apache.org/common/docs/current/hdfsdesign.pdf, 2008.
📄 Burgio, P.; Marongiu, A.; Coussy, P.; Benini, L., “A HLS-Based Toolflow to Design Next-Generation Heterogeneous Many-Core Platforms with Shared Memory,” Embedded and Ubiquitous Computing (EUC), 2014 12th IEEE International Conference on, vol., no., pp. 130, 137, 26–28 Aug. 2014.
📄 Cardoso, J. M. P., and Hübner, M., Reconfigurable Computing - From FPGAs to Hardware/Software Codesign, Springer New York, 2011.
📄 Milojicic, D. S., Kalogeraki, V., Lukose, R., Nagaraja, K., Pruyne, J., Richard, B., Rollins, S., and Xu, Z., “Peer-to-peer computing,” 2002.
📄 Nelson, A.; Nejad, A. B.; Molnos, A.; Koedam, M.; Goossens, K., “CoMik: A predictable and cycle-accurately composable real-time microkernel,” Design, Automation and Test in Europe Conference and Exhibition (DATE), 2014, vol., no., pp. 1, 4, 24–28 March 2014.
📄 Roth, C.; Almeida, G. M.; Sander, O.; Ost, L.; Hébert, N.; Sassatelli, G.; Benoit, P.; Torres, L.; Becker, J., “Modular Framework for Multi-level Multi-device MPSoC Simulation,” Parallel and Distributed Processing Workshops and PhD Forum (IPDPSW), 2011 IEEE International Symposium on, vol., no., pp. 136, 142, 16–20 May 2011.
📄 Singh, J. (2024). The impact of real-time analytics dashboards on decision-making quality and organizational responsiveness: An empirical study. Journal of Information Systems Engineering and Management, 9(3). https://www.jisem-journal.com/
📄 Steinmetz, R., and Wehrle, K., 2. What Is This Peer-to-Peer About? Springer, 2005.
📄 “Welcome to apache hadoop! ” http://hadoop.apacheorg/, (Accessed on 02 / 29 / 2016).
📄 Agarwal, R., Harini, P., Sri Varshni, J. (2025). New Insights on Nano Biosensors Applications for Chemical and Adulterant in Foods. In: Sillu, D., Bey Hing, G., Akhtar, N. (eds) Nanobiosensors for the Food Industry. Smart Nanomaterials Technology. Springer, Singapore. https://doi.org/10.1007/978-981-95-0136-6_9

How to Cite

Dr. Y. Satox mn. (2026). Advanced Bio-Integrated Detection Systems for Monitoring Undesired Compounds in Human Consumables. Global Multidisciplinary Journal, 5(02), 149-160. https://www.grpublishing.org/journals/index.php/gmj/article/view/414

Most read articles by the same author(s)

<< < 9 10 11 12 13 14 15 16 17 18 > >> 

Similar Articles

1-10 of 80

You may also start an advanced similarity search for this article.