Medical Data Asset Management and an Approach for Disease Prediction
using Blockchain and Machine Learning
- URL: http://arxiv.org/abs/2305.11063v1
- Date: Thu, 27 Apr 2023 10:38:25 GMT
- Title: Medical Data Asset Management and an Approach for Disease Prediction
using Blockchain and Machine Learning
- Authors: Shruthi K, Poornima A.S
- Abstract summary: This paper proposes an engineering utilizing an off-chain arrangement that will empower specialists and patients to get records in a protected manner.
The eventual outcome will be seen as a web and portable connection point to get to, identify, and guarantee high-security information handily.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In the present medical services, the board, clinical well-being records are
as electronic clinical record (EHR/EMR) frameworks. These frameworks store
patients' clinical histories in a computerized design. Notwithstanding, a
patient's clinical information is gained in a productive and ideal way and is
demonstrated to be troublesome through these records. Powerlessness constantly
prevents the well-being of the board from getting data, less use of data
obtained, unmanageable protection controls, and unfortunate information
resource security. In this paper, we present an effective and safe clinical
information resource, the executives' framework involving Blockchain, to
determine these issues. Blockchain innovation facilitates the openness of all
such records by keeping a block for each patient. This paper proposes an
engineering utilizing an off-chain arrangement that will empower specialists
and patients to get records in a protected manner. Blockchain makes clinical
records permanent and scrambles them for information honesty. Clients can
notice their well-being records, yet just patients own the confidential key and
can impart it to those they want.
Smart contracts likewise help our information proprietors to deal with their
information access in a permission way. The eventual outcome will be seen as a
web and portable connection point to get to, identify, and guarantee
high-security information handily. In this adventure, we will give deals with
any consequences regarding the issues associated with clinical consideration
data and the chiefs using AI and Blockchain. Removing only the imperative
information from the data is possible with the use of AI. This is done using
arranged estimations. At the point when this data is taken care of, the
accompanying issue is information sharing and its constancy.
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