The Internet of Medical Things (IoMT). Группа авторов

The Internet of Medical Things (IoMT) - Группа авторов


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href="#uac2c3c9a-97f1-5247-9783-c82ab1a23294">Chapter 12 explores the concepts of wearable health monitoring systems using IoMT technology. Additionally, this chapter also provides a brief review about challenges and applications of customized wearable healthcare system that are trending these days. The basic idea is to have a detailed study about the recent developments in IoMT technologies and the drawbacks, as well as future advancements related to it. The recent innovations, implications and key issues are discussed in the context of the framework.

       • Chapter 13 provides knowledge on biomedical big data analysis which plays a huge impact in personalized medicine. Some challenges in big data analysis like data acquisition, data accuracy, data security are discussed. Huge volume of data in healthcare can be managed by integrating biomedical data management. This chapter will provide brief information on different software that are used to manage data in healthcare domain. Impact of big data and IoMT in healthcare will enhance data analytics research.

       • Chapter 14 concentrates on blockchain which is a highly secure and decentralized networking platform of multiple computers called nodes. Predictive analysis, soft computing (SC) and optimization and data science is becoming increasingly important. In this chapter, the authors investigate privacy issues around large cloud medical data in the remote cloud. Their proposed framework ensures data privacy, integrity, and access control over the shared data with better efficiency. It reduces the turnaround time for data sharing, improves the decision-making process, and reduces the overall cost while providing better security of electronic medical records.

       • Chapter 15 discusses the evolution of electronic health record starting with the history and evolution of the health record system in the Egyptian era when the first health record was written, all the way to the modern computerized health record system. This chapter also includes various documentation procedures for the health records that were followed from the ancient times and by other civilizations around the world.

      We thank the chapter authors most profusely for their contributors written during the pandemic.

      R. J. HemalathaD. AkilaD. BalaganeshAnand Paul January 2022

      In Silico Molecular Modeling and Docking Analysis in Lung Cancer Cell Proteins

       Manisha Sritharan1 and Asita Elengoe2*

       1Department of Science and Biotechnology, Faculty of Engineering and Life Sciences, University of Selangor, Bestari Jaya, Selangor, Malaysia

       2Department of Biotechnology, Faculty of Science, Lincoln University College, Petaling Jaya, Selangor, Malaysia

       Abstract

      In this study, the three-dimensional (3D) models of lung cancer cell line proteins [epidermal growth factor (EGFR), K-ras oncogene protein, and tumor suppressor (TP53)] were generated and their binding affinities with curcumin, ellagic acid, and quercetin through local docking were assessed. Firstly, Swiss model was used to build lung cancer cell line proteins and then visualized by the PyMol software. Next, ExPASy ProtParam Proteomics server was used to evaluate the physical and chemical parameters of the protein structures. Furthermore, the protein models were validated using PROCHECK, ProQ, ERRAT, and Verify3D programs. Lastly, the protein models were docked with curcumin, ellagic acid, and quercetin by using BSP-Slim server. All three protein models were adequate and in exceptional standard. The curcumin showed binding energy with EGFR, K-ras oncogene protein, and TP53 at 5.320, 2.730, and 1.633, kcal/mol, respectively. Besides that, the ellagic acid showed binding energy of EGFR, K-ras oncogene protein, and TP53 at –2.892, 0.921, and 0.054 kcal/mol, respectively. Moreover, the quercetin showed binding energy of EGFR, K-ras oncogene protein, and TP53 at –1.249, –1.154, and –0.809 kcal/mol, respectively. The EGFR had the strongest bond with ellagic acid while K-ras oncogene protein and TP53 had the strongest interaction with quercetin. In order to identify the appropriate function, all these potential drug candidates can be further assessed through laboratory experiments.

      Keywords: EGFR, K-ras, TP53, curcumin, ellagic acid, quercetin, docking

      Furthermore, it seems that most lung cancer signs do not appear until the cancer has spread, although some people with early lung cancer do have symptoms. Generally, the symptoms of lung cancer are a cough that does not go away and instead gets worse, shortness of breath, chest pain, feeling tired or weak, new onset of wheezing, and some lung cancer can even cause syndrome [3]. On top of that, a number of tests can be conducted in order to look for cancerous cell such as X-ray image of lung that could disclose the abnormal mass or nodule, a CT scan to exhibit small lesions in the lungs which may not detected on X-ray, blood investigations, sputum cytology, and tissue biopsy [4]. Lung cancer treatments being carried out are adjuvant therapy which may include radiation, chemotherapy, targeted therapy, or immunotherapy.


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