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Deep learning model to predict Epstein Barr virus associated gastric cancer in histology

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Abstract
The detection of Epstein–Barr virus (EBV) in gastric cancer patients is crucial for clinical decision making, as it is related with specific treatment responses and prognoses. Despite its importance, the limited medical resources preclude universal EBV testing. Herein, we propose a deep learning-based EBV prediction method from H&E-stained whole-slide images (WSI). Our model was developed using 319 H&E stained WSI (26 EBV positive; TCGA dataset) from the Cancer Genome Atlas, and 108 WSI (8 EBV positive; ISH dataset) from an independent institution. Our deep learning model, EBVNet consists of two sequential components: a tumor classifier and an EBV classifier. We visualized the learned representation by the classifiers using UMAP. We externally validated the model using 60 additional WSI (7 being EBV positive; HGH dataset). We compared the model’s performance with those of four pathologists. EBVNet achieved an AUPRC of 0.65, whereas the four pathologists yielded a mean AUPRC of 0.41. Moreover, EBVNet achieved an negative predictive value, sensitivity, specificity, precision, and F1-score of 0.98, 0.86, 0.92, 0.60, and 0.71, respectively. Our proposed model is expected to contribute to prescreen patients for confirmatory testing, potentially to save test-related cost and labor.
Author(s)
Yeojin JeongCristina Eunbee ChoJi-Eon KimJonghyun LeeNamkug KimWoon Yong JungJoohon SungJu Han KimYoo Jin LeeJiyoon JungJuyeon PyoJisun SongJihwan ParkKyoung Min MoonSangjeong Ahn
Issued Date
2022
Type
Article
Keyword
Decision makingEpstein-Barr virusGenomesHistologyHuman beingsPatientsPrognosisTumors
DOI
10.1038/s41598-022-22731-x
URI
https://oak.ulsan.ac.kr/handle/2021.oak/15111
Publisher
SCIENTIFIC REPORTS
Language
영어
ISSN
2045-2322
Citation Volume
12
Citation Number
1
Citation Start Page
1
Citation End Page
10
Appears in Collections:
Medicine > Nursing
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