| Literature DB >> 33812383 |
Yunsook Kang1, Yoo Jung Kim2, Seongkeun Park3, Gun Ro4, Choyeon Hong2, Hyungjoon Jang5, Sungduk Cho6, Won Jae Hong7, Dong Un Kang7, Jonghoon Chun4,8, Kyoungbun Lee2, Gyeong Hoon Kang9, Kyoung Chul Moon9, Gheeyoung Choe10, Kyu Sang Lee11, Jeong Hwan Park12, Won-Ki Jeong6, Se Young Chun13, Peom Park14, Jinwook Choi15,16.
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.Entities:
Keywords: Artificial intelligence-assisted annotation; Digital pathology; Medical image dataset; Open platform
Mesh:
Year: 2021 PMID: 33812383 PMCID: PMC8019341 DOI: 10.1186/s12911-021-01466-1
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Number of images acquired by cancer type
| Organs | Histology | Number of images |
|---|---|---|
| Liver | Hepatocellular carcinoma | 600 |
| Colon | Adenocarcinoma | 900 |
| Prostate | Adenocarcinoma | 600 |
| Pancreas and biliary tract | Adenocarcinoma | 600 |
| Kidney | Renal cell carcinoma | 400 |
| Total | 3100 |
Fig. 1File nomenclature for whole slide image files
Fig. 2Annotated whole slide image sample
Fig. 3Artificial intelligence-assisted annotation process
Fig. 4Enhancement by artificial intelligence-assisted annotation process
Status of manual annotation
| Organ | Cases | Manual annotation (rate) | AI-assisted annotation (rate) |
|---|---|---|---|
| Colon | 900 | 900 (100%) | 0 (−) |
| Liver | 600 | 300 (50%) | 300 (50%) |
| Prostate | 600 | 310 (52%) | 290 (48%) |
| Kidney | 400 | 103 (26%) | 297 (74%) |
| Pancreas and biliary track | 600 | 10 (2%) | 590 (98%) |
| Total | 3100 | 1623 (52%) | 1477 (48%) |
User level management
| User level | Right to use | |||
|---|---|---|---|---|
| User guide | News | Slide search | Slide download | |
| L0 (Unregistered user) | ○ | ○ | ||
| L1 (Email confirmed user) | ○ | ○ | ○ | |
| L2 (DUA-approved user) | ○ | ○ | ○ | ○ |
| L3 (Membership) | ○ | ○ | ○ | ○ |
Fig. 5Screenshot of the pathology artificial intelligence platform and the thumbnail view
List of five pre-processing algorithms
| Toolbox no | Major function |
|---|---|
| Toolbox #1 | Generating and classifying patches |
| Toolbox #2 | Smooth stitching of prediction patches |
| Toolbox #3 | Generating heat map and overlay pyramid zoom image |
| Toolbox #4 | SVS load and tissue mask segmentation |
| Toolbox #5 | XML load and convert to masks |