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Garry E. Gold

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Department of Biomedical Engineering, Stanford University, California, USA, Department of Radiology, Stanford University, California, USA, Department of Orthopaedic Surgery, Stanford University, California, USA

Data-Limited Tissue Segmentation using Inpainting-Based Self-Supervised Learning

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Oct 14, 2022
Jeffrey Dominic, Nandita Bhaskhar, Arjun D. Desai, Andrew Schmidt, Elka Rubin, Beliz Gunel, Garry E. Gold, Brian A. Hargreaves, Leon Lenchik, Robert Boutin, Akshay S. Chaudhari

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Open source software for automatic subregional assessment of knee cartilage degradation using quantitative T2 relaxometry and deep learning

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Dec 22, 2020
Kevin A. Thomas, Dominik Krzemiński, Łukasz Kidziński, Rohan Paul, Elka B. Rubin, Eni Halilaj, Marianne S. Black, Akshay Chaudhari, Garry E. Gold, Scott L. Delp

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The International Workshop on Osteoarthritis Imaging Knee MRI Segmentation Challenge: A Multi-Institute Evaluation and Analysis Framework on a Standardized Dataset

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May 26, 2020
Arjun D. Desai, Francesco Caliva, Claudia Iriondo, Naji Khosravan, Aliasghar Mortazi, Sachin Jambawalikar, Drew Torigian, Jutta Ellermann, Mehmet Akcakaya, Ulas Bagci, Radhika Tibrewala, Io Flament, Matthew O`Brien, Sharmila Majumdar, Mathias Perslev, Akshay Pai, Christian Igel, Erik B. Dam, Sibaji Gaj, Mingrui Yang, Kunio Nakamura, Xiaojuan Li, Cem M. Deniz, Vladimir Juras, Ravinder Regatte, Garry E. Gold, Brian A. Hargreaves, Valentina Pedoia, Akshay S. Chaudhari

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Technical Considerations for Semantic Segmentation in MRI using Convolutional Neural Networks

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Feb 05, 2019
Arjun D. Desai, Garry E. Gold, Brian A. Hargreaves, Akshay S. Chaudhari

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