Advanced-Data Analytics for Understanding Biochemical Pathway Models

Authors

  • Fatema Tuz Johora Department of Zoology, University of Dhaka, Dhaka 1000, Bangladesh
  • Mia Md Tofayel Gonee Manik Department of Biochemistry and Molecular Biology, University of Dhaka, Dhaka 1000, Bangladesh
  • Afia Fairooz Tasnim Department of Public Health, Asian University for Women, Chittagong, Bangladesh
  • Sadia Islam Nilima Department of Business Administration, National University, Dhaka - Mymensingh Hwy, Gazipur 1704, Bangladesh
  • Rakibul Hasan Department of Business Administration, National University, Dhaka - Mymensingh Hwy, Gazipur 1704, Bangladesh

DOI:

https://doi.org/10.47672/ajce.2451

Keywords:

Biochemical Pathway, BPM, Multi-Omics Integration, Monte Carlo Simulation, Drug Delivery Measurement

Abstract

Purpose: The article delves into the biochemical and metabolic processes, highlighting the importance of data analysis in system biology, drug investigations, illnesses, diagnostics, and therapies, highlighting the necessity of data collection and interpretation.

Materials and Methods: The data and sample is collected by analyzing several articles using a simple collective method.

Findings: Key pathways for cell respiration include glycolysis, Krebs cycle, and oxidative phosphorylation, which can cause metabolic disorders like diabetes or cancer. Advanced data processing methods and biochemical pathway models have been seen to have the potential to transform biomedical research, advancing our understanding of disease causes, medication development, and individualized medicine.

Implications to Theory, Practice and Policy: Challenges such as data complexity, technological limitations, and ethical concerns remain. As technology and methodologies continue to advance, pathway modeling will have more opportunities and become more useful in various sectors, leading to breakthroughs in biology and medicine.

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Published

2021-12-26

How to Cite

Johora, F. T., Mia Md Tofayel Gonee Manik, Tasnim, A. F., Nilima, S. I., & Hasan, R. (2021). Advanced-Data Analytics for Understanding Biochemical Pathway Models. American Journal of Computing and Engineering, 4(2), 21–34. https://doi.org/10.47672/ajce.2451

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