Acknowledgement
This research is financial supported by "The digital pathology-based AI analysis solution development project" through the Ministry of Health and Welfare, Republic of Korea (HI21C0977) and Korea Basic Science Institute (National research Facilities and Equipment Center) grant funded by the Ministry of Education.(grant No.2020R1A6C101B189).
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