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2019 AAPM Annual Meeting - Session: AI for Predicting Response


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Quantitative Imaging Response Metrics for Hepatobiliary and Pancreatic Cancers
Eugene Koay, MD Anderson
EKoay@mdanderson.org


Handout(s): 146-47169-486612-152517.pdf
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All videos in this session:
AI for Predicting Treatment Outcomes - Jayashree Kalpathy-Cramer, Massachusetts General Hospital
Radiomics and Machine Learning in Predicting Response From Medical Imaging - Maryellen Giger, PhD University of Chicago
Spearhead Clinically Relevant Radiologic Biomarker Discovery in Precision Oncology with Habitat Imaging - Jia Wu, Stanford University
Q & A -
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