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Unberath</p> <p style=\"font-style: italic;\">arXiv preprint arXiv:2502.09688 (2025).</p>","category":"Medical AI","title":"Towards Virtual Clinical Trials of Radiology AI with Conditional Generative Modeling","github":"","paper":"https://arxiv.org/abs/2502.09688","socialImage":{"publicURL":"/static/1c953bf94b26f59fc6ee0fc03d2b21f8/architecture.png","childImageSharp":{"fluid":{"base64":"data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAABQAAAALCAIAAADwazoUAAAACXBIWXMAAAsSAAALEgHS3X78AAACqklEQVQozwGfAmD9AFxcXFRUVVVVVmFiYltybVFoZFJpZFpzblp0b114c1RrZ01hXVVqZkxhXVx3c156dGBuaGdgWVxXUWdgWgDHx8axsbC8vLfFxsW/7+as2s+u2s+86+K56d+dwbecxr2r3NKhycI+OjdnZl+dwrzG39XUwrTGuKrby7wAr6/JgYDatLTTqqutrNLFo7Gie5WNosrBl7WtaHZtprCo0erntcTAhoF+YzIma21lp722wrOqsbO3ycC5ALCwyp6e1L28z8PGyMHv4p64sX+mo7nr4Lrr4ajSysXSwq28wK+7tsDn3bHX0q3Y0Mjj2Mq+tLu3s8zDuwAjIyErKyUpKSUkJCQgKCcmMS8pMi8hKighKykkLy0fLSsiMC0iLi0iKyokLSwiLy0hKCYpJSIsKSMpJiIAkJGQhYWFhoaHlpiYjrKrfJ6Yep+ZjrKrmY6Fl4p/lIl/jYF3jYN3hIJxk4x+mYmCppmOnZKJkoZ/n5OLAMXEyaqqusHBwb2/vrnh2rLZ0bjVzr3Tzby3pl9dS5yQg/Li0nOCZikpHVJiQYKic8e+scq/sbW3nc7IswCurdeCgei1tNq5vb+rxL+50MnQ0MPDs6m6taNAUS44li9nxWA9pTI/gjJBOh9MYj3HvrHJwLCixZDHza4Ag4SVgYGVnZyboaOihqehhqagnZ2SpZiNopiNiYp0bJZhX4ZZa5Fai6V7gZhxiJJ2taWcp52SqJmSrZ+WADk5OSsrKAEBAQUFBTE9OiYuLAIBAQcGBjk0MSsmJgoCCA0ICgoFCAcBBgkECAcFBgICAgQDAwMDAgECAQCyscV7e4YAAAAICgqRtKxngHoAAAAJCAiZjIFtZV0AAAABAQEAAAAAAQAAAQAAAAABAQEAAAAAAAABAQGrnjqxDRtQtgAAAABJRU5ErkJggg==","aspectRatio":1.7730496453900708,"src":"/static/1c953bf94b26f59fc6ee0fc03d2b21f8/5e370/architecture.png","srcSet":"/static/1c953bf94b26f59fc6ee0fc03d2b21f8/f26e3/architecture.png 750w,\n/static/1c953bf94b26f59fc6ee0fc03d2b21f8/8d364/architecture.png 1500w,\n/static/1c953bf94b26f59fc6ee0fc03d2b21f8/5e370/architecture.png 3000w,\n/static/1c953bf94b26f59fc6ee0fc03d2b21f8/b7a32/architecture.png 4299w","sizes":"(max-width: 3000px) 100vw, 3000px","maxHeight":1690,"maxWidth":3000}}}}}},{"node":{"fields":{"categorySlug":"/category/medical-ai/","slug":"/posts/Deep-learning-xerostomia-prediction-model-with-anatomy-normalization-and-high-resolution-class-activation-map"},"frontmatter":{"date":"2024-02-01T14:13:40.121Z","description":"<p>We develop an interpretable deep learning model for xerostomia prediction using anatomy normalization and high-resolution class activation maps for improved spatial interpretability.</p> <p style=\"font-style: italic;\"><span style=\"font-weight: bold\">Bohua Wan</span>, T. McNutt, H. Quon, J. Lee</p> <p style=\"font-style: italic;\">Proc. SPIE Medical Imaging 2025 (2025).</p>","category":"Medical AI","title":"Deep learning xerostomia prediction model with anatomy normalization and high-resolution class activation map","github":"","paper":"https://doi.org/10.1117/12.3046796","socialImage":{"publicURL":"/static/c4f57f9af7708858fec4ab36916dc0f9/fig1.jpg","childImageSharp":{"fluid":{"base64":"data:image/jpeg;base64,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","aspectRatio":2.4976076555023923,"src":"/static/c4f57f9af7708858fec4ab36916dc0f9/b417d/fig1.jpg","srcSet":"/static/c4f57f9af7708858fec4ab36916dc0f9/b417d/fig1.jpg 522w","sizes":"(max-width: 522px) 100vw, 522px","maxHeight":209,"maxWidth":522}}}}}},{"node":{"fields":{"categorySlug":"/category/medical-ai/","slug":"/posts/Deep-learning-prediction-of-radiation-induced-xerostomia-with-supervised-contrastive-pre-training-and-cluster-guided-loss"},"frontmatter":{"date":"2024-01-01T14:13:40.121Z","description":"<p>We propose a novel deep learning framework for predicting radiation-induced xerostomia using supervised contrastive pre-training and cluster-guided loss.</p> <p style=\"font-style: italic;\"><span style=\"font-weight: bold\">Bohua Wan</span>, T. McNutt, R. Ger, H. Quon, J. Lee</p> <p style=\"font-style: italic;\">Proc. SPIE Medical Imaging 2024 (2024).</p>","category":"Medical AI","title":"Deep learning prediction of radiation-induced xerostomia with supervised contrastive pre-training and cluster-guided loss","github":"","paper":"https://doi.org/10.1117/12.3004498","socialImage":{"publicURL":"/static/d64185c384f0737dd62cd896b484ca93/architecture.jpg","childImageSharp":{"fluid":{"base64":"data:image/jpeg;base64,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","aspectRatio":1.1645962732919255,"src":"/static/d64185c384f0737dd62cd896b484ca93/9f35d/architecture.jpg","srcSet":"/static/d64185c384f0737dd62cd896b484ca93/faa31/architecture.jpg 750w,\n/static/d64185c384f0737dd62cd896b484ca93/9f35d/architecture.jpg 1347w","sizes":"(max-width: 1347px) 100vw, 1347px","maxHeight":1157,"maxWidth":1347}}}}}}]}},"pageContext":{"category":"Medical AI","currentPage":0,"postsLimit":8,"postsOffset":0,"prevPagePath":"/category/medical-ai","nextPagePath":"/category/medical-ai/page/1","hasPrevPage":false,"hasNextPage":false}},"staticQueryHashes":["251939775","401334301","41472230"]}