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Proof-of-familiarity: A privacy-preserved blockchain scheme for collaborative medical decision-making

journal contribution
posted on 2024-09-20, 03:26 authored by J Yang, Md Mehedi Hassan OnikMd Mehedi Hassan Onik, NY Lee, M Ahmed, CS Kim
The current healthcare sector is facing difficulty in satisfying the growing issues, expenses, and heavy regulation of quality treatment. Surely, electronic medical records (EMRs) and protected health information (PHI) are highly sensitive, personally identifiable information (PII). However, the sharing of EMRs, enhances overall treatment quality. A distributed ledger (blockchain) technology, embedded with privacy and security by architecture, provides a transparent application developing platform. Privacy, security, and lack of confidence among stakeholders are the main downsides of extensive medical collaboration. This study, therefore, utilizes the transparency, security, and efficiency of blockchain technology to establish a collaborative medical decision-making scheme. This study considers the experience, skill, and collaborative success rate of four key stakeholders (patient, cured patient, doctor, and insurance company) in the healthcare domain to propose a local reference-based consortium blockchain scheme, and an associated consensus gathering algorithm, proof-of-familiarity (PoF). Stakeholders create a transparent and tenable medical decision to increase the interoperability among collaborators through PoF. A prototype of PoF is tested with multichain 2.0, a blockchain implementing framework. Moreover, the privacy of identities, EMRs, and decisions are preserved by two-layer storage, encryption, and a timestamp storing mechanism. Finally, superiority over existing schemes is identified to improve personal data (PII) privacy and patient-centric outcomes research (PCOR).

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Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Journal

Applied Sciences (Switzerland)

Volume

9

Article number

ARTN 1370

ISSN

2076-3417

eISSN

2076-3417

Issue

7

Publisher

MDPI