Abstract
In today’s digitized era, data is one of the most important entities. Every system generates a lot of data and even it has to deal with bulk data. The efficiency of the system depends on how the data is available and in which form the data is stored. With the advent of newer techniques of storing and processing the data, the medical domain has leaped the form of the electronic patient record (EPR) or electronic health record (EHR). This paper is based on a study of EHR which aims at highlighting its significance and emphasize its importance for medical reforms. In this paper, our sincere efforts were to introduce the concept of EHR with the help of literature that was already in place. Further, we have focussed on the proposed structure of EHR along with the different categories. Even though the EHR system has added a lot of benefits, there were many challenges in its adoption and implementation. We had tried enlisting the challenges for the EHR system and sincerely tried suggesting some measures to mitigate the same. Keeping aside the obstacles in a way of EHRs, numerous existing applications have been discussed further. Finally, we have given some novel and evolving usages of the EHR system which has increased its productivity to a greater extent. Overall our paper tries to give a complete overview of the EHR system which shall be useful in earning a basic understanding of the concept. It shall prove to be good literature for the novices working on the EHR related research.
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We are thankful to all those who helped us make this paper, for the valuable information provided by them in their respective fields. We are grateful for their co-operation during the writing of the paper.
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Deolekar, R.V., Wankhade, S.B. (2021). A Study of Electronic Health Record to Unfold Its Significance for Medical Reforms. In: Chen, J.IZ., Tavares, J.M.R.S., Shakya, S., Iliyasu, A.M. (eds) Image Processing and Capsule Networks. ICIPCN 2020. Advances in Intelligent Systems and Computing, vol 1200. Springer, Cham. https://doi.org/10.1007/978-3-030-51859-2_11
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