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Huangjing Lin

Showing results (11-20 of 15) with videos related to

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Radiology. Artificial Intelligence|October 7, 2022
Rethinking Annotation Granularity for Overcoming Shortcuts in Deep Learning-based Radiograph Diagnosis: A Multicenter StudyLuyang Luo, Hao Chen, Yongjie Xiao, et al.
Nature Communications|March 28, 2024
Development and validation of an interpretable model integrating multimodal information for improving ovarian cancer diagnosisHuiling Xiang, Yongjie Xiao, Fang Li, et al.
Nature Communications|December 12, 2025
A multimodal knowledge-enhanced whole-slide pathology foundation modelYingxue Xu, Yihui Wang, Fengtao Zhou, et al.
Eclinicalmedicine|October 13, 2025
Development of a multi-task deep learning system for classification of nine common knee abnormalities on MRI: a large-scale, multicentre, stepwise validation studyZhuoyao Xie, Zelin Qiu, Yanwen Li, et al.
IEEE Transactions on Medical Imaging|February 5, 2019
From Detection of Individual Metastases to Classification of Lymph Node Status at the Patient Level: The CAMELYON17 ChallengePeter Bandi, Oscar Geessink, Quirine Manson, et al.
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Showing results (11-20 of 15) with videos related to

Sort By:
Pageof 2
You have reached the last page of results.This site can display upto 15 results.
Radiology. Artificial Intelligence|October 7, 2022
Rethinking Annotation Granularity for Overcoming Shortcuts in Deep Learning-based Radiograph Diagnosis: A Multicenter StudyLuyang Luo, Hao Chen, Yongjie Xiao, et al.
Nature Communications|March 28, 2024
Development and validation of an interpretable model integrating multimodal information for improving ovarian cancer diagnosisHuiling Xiang, Yongjie Xiao, Fang Li, et al.
Nature Communications|December 12, 2025
A multimodal knowledge-enhanced whole-slide pathology foundation modelYingxue Xu, Yihui Wang, Fengtao Zhou, et al.
Eclinicalmedicine|October 13, 2025
Development of a multi-task deep learning system for classification of nine common knee abnormalities on MRI: a large-scale, multicentre, stepwise validation studyZhuoyao Xie, Zelin Qiu, Yanwen Li, et al.
IEEE Transactions on Medical Imaging|February 5, 2019
From Detection of Individual Metastases to Classification of Lymph Node Status at the Patient Level: The CAMELYON17 ChallengePeter Bandi, Oscar Geessink, Quirine Manson, et al.
Pageof 2