Abstract
This paper outlines the protocol for the deployment of a cloud-based universal medical image repository system. The proposal aims not only at the deployment but also at the automatic expansion of the platform, incorporating Artificial Intelligence (AI) for the analysis of medical image examinations. The methodology encompasses efficient data management through a universal database, along with the deployment of various AI models designed to assist in diagnostic decision-making. By presenting this protocol, the goal is to overcome technical challenges and issues that impact all phases of the workflow, from data management to the deployment of AI models in the healthcare sector. These challenges include ethical considerations, compliance with legal regulations, establishing user trust, and ensuring data security. The system has been deployed, with a tested and validated proof of concept, possessing the capability to receive thousands of images daily and to sustain the ongoing deployment of new AI models to expedite the analysis process in medical image exams.
Funder
Conselho Nacional de Desenvolvimento Científico e Tecnológico
Sociedade Beneficente Israelita Brasileira Albert Einstein
Publisher
Public Library of Science (PLoS)
Reference80 articles.
1. MIRMAID: A content management system for medical image analysis research;PD Korfiatis;Radiographics,2015
2. Rehman M, Liew C, Abbas A, Jayaraman P, Wah T, Khan S. Big data reduction methods: A survey, Data Sci; 2016.
3. A survey on indexing techniques for big data: taxonomy and performance evaluation;A Gani;Knowledge and information systems,2016
4. Data sharing in neuroimaging research;JB Poline;Frontiers in neuroinformatics,2012
5. Chodorow K, Dirolf M. MongoDB: the definitive guide [M].”. Canada: O’Reilly Media. 2013;.