Block chain technology for e-health


Review Article

Author Details : Mohammed Sanusi Sadiq, I. P. Singh, N. Karunakaran*, M. M. Ahmad, B. Maryam

Volume : 11, Issue : 2, Year : 2024

Article Page : 71-87

https://doi.org/10.18231/j.jchm.2024.014



Suggest article by email

Get Permission

Abstract

There is a dearth of interoperability between apps, data streams, and predictability in the healthcare industry for a significant amount of the data generated by multiple digital ecosystems. Real-time data streams can be derived as meaningful and scalable enough to enable real-time healthcare predictive analytics thanks to the new technology approach in distributed messaging and Blockchain, which has become a fundamental component of many healthcare technology stacks. Additionally, absorbing data streams from multiple sources from patterns of data can enhance models that are hampered by complex and lengthy analyses by raising the level of prediction and accuracy. Improved responses, lowered availability requirements, and unified predictive modeling will speed up healthcare interoperability and, in turn, improve diagnosis accuracy, move evidence-based medicine (EBM) in the right direction, and produce other positive effects on healthcare that improve best results and quality.


Keywords: Block chain, Technology, e-Health, Health care


How to cite : Sadiq M S, Singh I P, Karunakaran N, Ahmad M M, Maryam B, Block chain technology for e-health. J Community Health Manag 2024;11(2):71-87


This is an Open Access (OA) journal, and articles are distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as appropriate credit is given and the new creations are licensed under the identical terms.







Article History

Received : 29-05-2024

Accepted : 03-06-2024


View Article

PDF File   Full Text Article


Copyright permission

Get article permission for commercial use

Downlaod

PDF File   XML File   ePub File


Digital Object Identifier (DOI)

Article DOI

https://doi.org/10.18231/j.jchm.2024.014


Article Metrics






Article Access statistics

Viewed: 4571

PDF Downloaded: 209