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Preparing pathological data to develop an artificial intelligence model in the nonclinical study.
Hwang, Ji-Hee; Lim, Minyoung; Han, Gyeongjin; Park, Heejin; Kim, Yong-Bum; Park, Jinseok; Jun, Sang-Yeop; Lee, Jaeku; Cho, Jae-Woo.
Affiliation
  • Hwang JH; Toxicologic Pathology Research Group, Department of Advanced Toxicology Research, Korea Institute of Toxicology, Daejeon, 34114, Korea.
  • Lim M; Toxicologic Pathology Research Group, Department of Advanced Toxicology Research, Korea Institute of Toxicology, Daejeon, 34114, Korea.
  • Han G; Toxicologic Pathology Research Group, Department of Advanced Toxicology Research, Korea Institute of Toxicology, Daejeon, 34114, Korea.
  • Park H; Toxicologic Pathology Research Group, Department of Advanced Toxicology Research, Korea Institute of Toxicology, Daejeon, 34114, Korea.
  • Kim YB; Department of Advanced Toxicology Research, Korea Institute of Toxicology, Daejeon, 34114, Korea.
  • Park J; Research and Development Team, LAC Inc., Seoul, 07807, Korea.
  • Jun SY; Research and Development Team, LAC Inc., Seoul, 07807, Korea.
  • Lee J; Research and Development Team, LAC Inc., Seoul, 07807, Korea.
  • Cho JW; Toxicologic Pathology Research Group, Department of Advanced Toxicology Research, Korea Institute of Toxicology, Daejeon, 34114, Korea. cjwoo@kitox.re.kr.
Sci Rep ; 13(1): 3896, 2023 03 08.
Article de En | MEDLINE | ID: mdl-36890209
Artificial intelligence (AI)-based analysis has recently been adopted in the examination of histological slides via the digitization of glass slides using a digital scanner. In this study, we examined the effect of varying the staining color tone and magnification level of a dataset on the result of AI model prediction in hematoxylin and eosin stained whole slide images (WSIs). The WSIs of liver tissues with fibrosis were used as an example, and three different datasets (N20, B20, and B10) were prepared with different color tones and magnifications. Using these datasets, we built five models trained Mask R-CNN algorithm by a single or mixed dataset of N20, B20, and B10. We evaluated their model performance using the test dataset of three datasets. It was found that the models that were trained with mixed datasets (models B20/N20 and B10/B20), which consist of different color tones or magnifications, performed better than the single dataset trained models. Consequently, superior performance of the mixed models was obtained from the actual prediction results of the test images. We suggest that training the algorithm with various staining color tones and multi-scaled image datasets would be more optimized for consistent remarkable performance in predicting pathological lesions of interest.
Sujet(s)

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Algorithmes / Intelligence artificielle Type d'étude: Clinical_trials / Prognostic_studies Langue: En Journal: Sci Rep Année: 2023 Type de document: Article Pays de publication: Royaume-Uni

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Algorithmes / Intelligence artificielle Type d'étude: Clinical_trials / Prognostic_studies Langue: En Journal: Sci Rep Année: 2023 Type de document: Article Pays de publication: Royaume-Uni