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Published in: BMC Medical Informatics and Decision Making 1/2021

Open Access 01-12-2021 | Artificial Intelligence | Database

Development and operation of a digital platform for sharing pathology image data

Authors: Yunsook Kang, Yoo Jung Kim, Seongkeun Park, Gun Ro, Choyeon Hong, Hyungjoon Jang, Sungduk Cho, Won Jae Hong, Dong Un Kang, Jonghoon Chun, Kyoungbun Lee, Gyeong Hoon Kang, Kyoung Chul Moon, Gheeyoung Choe, Kyu Sang Lee, Jeong Hwan Park, Won-Ki Jeong, Se Young Chun, Peom Park, Jinwook Choi

Published in: BMC Medical Informatics and Decision Making | Issue 1/2021

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Abstract

Background

Artificial intelligence (AI) research is highly dependent on the nature of the data available. With the steady increase of AI applications in the medical field, the demand for quality medical data is increasing significantly. We here describe the development of a platform for providing and sharing digital pathology data to AI researchers, and highlight challenges to overcome in operating a sustainable platform in conjunction with pathologists.

Methods

Over 3000 pathological slides from five organs (liver, colon, prostate, pancreas and biliary tract, and kidney) in histologically confirmed tumor cases by pathology departments at three hospitals were selected for the dataset. After digitalizing the slides, tumor areas were annotated and overlaid onto the images by pathologists as the ground truth for AI training. To reduce the pathologists’ workload, AI-assisted annotation was established in collaboration with university AI teams.

Results

A web-based data sharing platform was developed to share massive pathological image data in 2019. This platform includes 3100 images, and 5 pre-processing algorithms for AI researchers to easily load images into their learning models.

Discussion

Due to different regulations among countries for privacy protection, when releasing internationally shared learning platforms, it is considered to be most prudent to obtain consent from patients during data acquisition.

Conclusions

Despite limitations encountered during platform development and model training, the present medical image sharing platform can steadily fulfill the high demand of AI developers for quality data. This study is expected to help other researchers intending to generate similar platforms that are more effective and accessible in the future.
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Metadata
Title
Development and operation of a digital platform for sharing pathology image data
Authors
Yunsook Kang
Yoo Jung Kim
Seongkeun Park
Gun Ro
Choyeon Hong
Hyungjoon Jang
Sungduk Cho
Won Jae Hong
Dong Un Kang
Jonghoon Chun
Kyoungbun Lee
Gyeong Hoon Kang
Kyoung Chul Moon
Gheeyoung Choe
Kyu Sang Lee
Jeong Hwan Park
Won-Ki Jeong
Se Young Chun
Peom Park
Jinwook Choi
Publication date
01-12-2021
Publisher
BioMed Central
Published in
BMC Medical Informatics and Decision Making / Issue 1/2021
Electronic ISSN: 1472-6947
DOI
https://doi.org/10.1186/s12911-021-01466-1

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