애스크로AIPublic Preview
← 학술논문 검색
학술논문웰빙융합연구2025.12 발행

Proposed Engineering Design Model for a Blockchain-Enabled Collaborative Medical Information Platform Utilizing AI Imaging Diagnosis Patent Technology

Proposed Engineering Design Model for a Blockchain-Enabled Collaborative Medical Information Platform Utilizing AI Imaging Diagnosis Patent Technology

Junchul KANG(Jeju National University)

8권 6호, 81~96쪽

초록

Purpose: This study proposes an engineering design model for a blockchain-enabled collaborative medical information platform that integrates patented AI imaging-diagnosis technology. Research design, data and methodology: Building upon Patent KR10-2604558, the platform incorporates a multi-layered architecture consisting of an AI diagnostic engine, a self-corrective learning loop (ADE), a PBFT-based blockchain integrity module, and an FMEA-driven risk-management framework. A synthetic dataset of 2,000 musculoskeletal ultrasound images was generated to evaluate the structural feasibility of the proposed model. The AI module, developed using a ResNet50 backbone and a four-class Softmax classifier, demonstrated stable self-correction through ADE, which autonomously identified false positives and false negatives and used them to construct a hard-case dataset for selective retraining. Results: The blockchain module—designed with ECC-256 encryption, SHA-256 hashing, and a seven-node PBFT network—successfully ensured immutability, tamper detection, and privacy preservation using Zero-Knowledge Encryption Exchange (ZKEE). FMEA analysis confirmed that risks related to AI misclassification, data integrity, consensus failure, and user input errors could be decomposed into modular risk structures, resulting in a 44.8% reduction in overall RPN.Conclusions: The findings demonstrate that the proposed design model can serve as a technically reliable architecture for AI-driven, legally robust, and privacy-preserving collaborative healthcare data platforms

Abstract

Purpose: This study proposes an engineering design model for a blockchain-enabled collaborative medical information platform that integrates patented AI imaging-diagnosis technology. Research design, data and methodology: Building upon Patent KR10-2604558, the platform incorporates a multi-layered architecture consisting of an AI diagnostic engine, a self-corrective learning loop (ADE), a PBFT-based blockchain integrity module, and an FMEA-driven risk-management framework. A synthetic dataset of 2,000 musculoskeletal ultrasound images was generated to evaluate the structural feasibility of the proposed model. The AI module, developed using a ResNet50 backbone and a four-class Softmax classifier, demonstrated stable self-correction through ADE, which autonomously identified false positives and false negatives and used them to construct a hard-case dataset for selective retraining. Results: The blockchain module—designed with ECC-256 encryption, SHA-256 hashing, and a seven-node PBFT network—successfully ensured immutability, tamper detection, and privacy preservation using Zero-Knowledge Encryption Exchange (ZKEE). FMEA analysis confirmed that risks related to AI misclassification, data integrity, consensus failure, and user input errors could be decomposed into modular risk structures, resulting in a 44.8% reduction in overall RPN.Conclusions: The findings demonstrate that the proposed design model can serve as a technically reliable architecture for AI-driven, legally robust, and privacy-preserving collaborative healthcare data platforms

발행기관:
한국웰빙융합학회
DOI:
http://dx.doi.org/10.13106/jwmap.2025.vol8.no6.81
분류:
후생복지/보건/후생경제

AI 법률 상담

이 논문의 주제에 대해 더 알고 싶으신가요?

460만+ 법률 자료에서 관련 판례·법령·해석례를 찾아 답변합니다

AI 상담 시작
Proposed Engineering Design Model for a Blockchain-Enabled Collaborative Medical Information Platform Utilizing AI Imaging Diagnosis Patent Technology | 웰빙융합연구 2025 | AskLaw | 애스크로 AI