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Seyed Kahaki

Showing results (1-10 of 5) with videos related to

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Proceedings of Spie--The International Society for Optical Engineering|May 9, 2023
Weakly Supervised Deep Learning for Predicting the Response to Hormonal Treatment of Women with Atypical Endometrial Hyperplasia: A Feasibility StudySeyed Kahaki, Ian S Hagemann, Kenny Cha, et al.
Journal of Medical Imaging (Bellingham, Wash.)|June 17, 2026
Methodological considerations for evaluating deep learning segmentation models in digital pathology whole-slide imagesArian Arab, Victor Garcia, Seyed Kahaki, et al.
Journal of Medical Imaging (Bellingham, Wash.)|February 19, 2024
End-to-end deep learning method for predicting hormonal treatment response in women with atypical endometrial hyperplasia or endometrial cancerSeyed Kahaki, Ian S Hagemann, Kenny H Cha, et al.
Scientific Data|August 1, 2025
Multimodal data curation via interoperability: use cases with the Medical Imaging and Data Resource CenterWeijie Chen, Heather M Whitney, Seyed Kahaki, et al.
Journal of Imaging Informatics in Medicine|August 15, 2025
Demonstration of Interoperability Between MIDRC and N3C: A COVID-19 Severity Prediction Use CaseHeather M Whitney, Rachel Baccile, Hui Li, et al.
Pageof 1

Showing results (1-10 of 5) with videos related to

Sort By:
Pageof 1
Proceedings of Spie--The International Society for Optical Engineering|May 9, 2023
Weakly Supervised Deep Learning for Predicting the Response to Hormonal Treatment of Women with Atypical Endometrial Hyperplasia: A Feasibility StudySeyed Kahaki, Ian S Hagemann, Kenny Cha, et al.
Journal of Medical Imaging (Bellingham, Wash.)|June 17, 2026
Methodological considerations for evaluating deep learning segmentation models in digital pathology whole-slide imagesArian Arab, Victor Garcia, Seyed Kahaki, et al.
Journal of Medical Imaging (Bellingham, Wash.)|February 19, 2024
End-to-end deep learning method for predicting hormonal treatment response in women with atypical endometrial hyperplasia or endometrial cancerSeyed Kahaki, Ian S Hagemann, Kenny H Cha, et al.
Scientific Data|August 1, 2025
Multimodal data curation via interoperability: use cases with the Medical Imaging and Data Resource CenterWeijie Chen, Heather M Whitney, Seyed Kahaki, et al.
Journal of Imaging Informatics in Medicine|August 15, 2025
Demonstration of Interoperability Between MIDRC and N3C: A COVID-19 Severity Prediction Use CaseHeather M Whitney, Rachel Baccile, Hui Li, et al.
Pageof 1