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Deep neural network to locate and segment brain tumors outperformed the expert technicians who created the training data.
Mitchell, Joseph Ross; Kamnitsas, Konstantinos; Singleton, Kyle W; Whitmire, Scott A; Clark-Swanson, Kamala R; Ranjbar, Sara; Rickertsen, Cassandra R; Johnston, Sandra K; Egan, Kathleen M; Rollison, Dana E; Arrington, John; Krecke, Karl N; Passe, Theodore J; Verdoorn, Jared T; Nagelschneider, Alex A; Carr, Carrie M; Port, John D; Patton, Alice; Campeau, Norbert G; Liebo, Greta B; Eckel, Laurence J; Wood, Christopher P; Hunt, Christopher H; Vibhute, Prasanna; Nelson, Kent D; Hoxworth, Joseph M; Patel, Ameet C; Chong, Brian W; Ross, Jeffrey S; Boxerman, Jerrold L; Vogelbaum, Michael A; Hu, Leland S; Glocker, Ben; Swanson, Kristin R.
Afiliação
  • Mitchell JR; H. Lee Moffitt Cancer Center and Research Institute, Department of Machine Learning, Tampa, Florida, United States.
  • Kamnitsas K; Imperial College, Biomedical Image Analysis Group, London, United Kingdom.
  • Singleton KW; Mayo Clinic, Mathematical NeuroOncology Lab, Phoenix, Arizona, United States.
  • Whitmire SA; Mayo Clinic, Mathematical NeuroOncology Lab, Phoenix, Arizona, United States.
  • Clark-Swanson KR; Mayo Clinic, Mathematical NeuroOncology Lab, Phoenix, Arizona, United States.
  • Ranjbar S; Mayo Clinic, Mathematical NeuroOncology Lab, Phoenix, Arizona, United States.
  • Rickertsen CR; Mayo Clinic, Mathematical NeuroOncology Lab, Phoenix, Arizona, United States.
  • Johnston SK; Mayo Clinic, Mathematical NeuroOncology Lab, Phoenix, Arizona, United States.
  • Egan KM; University of Washington, Department of Radiology, Seattle, Washington, United States.
  • Rollison DE; H. Lee Moffitt Cancer Center and Research Institute, Department of Cancer Epidemiology, Tampa, Florida, United States.
  • Arrington J; H. Lee Moffitt Cancer Center and Research Institute, Department of Cancer Epidemiology, Tampa, Florida, United States.
  • Krecke KN; H. Lee Moffitt Cancer Center and Research Institute, Department of Diagnostic Imaging and Interventional Radiology, Tampa, Florida, United States.
  • Passe TJ; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Verdoorn JT; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Nagelschneider AA; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Carr CM; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Port JD; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Patton A; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Campeau NG; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Liebo GB; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Eckel LJ; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Wood CP; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Hunt CH; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Vibhute P; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Nelson KD; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Hoxworth JM; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Patel AC; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Chong BW; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Ross JS; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Boxerman JL; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Vogelbaum MA; Rhode Island Hospital and Alpert Medical School of Brown University, Department of Diagnostic Imaging, Providence, Rhode Island, United States.
  • Hu LS; H. Lee Moffitt Cancer Center and Research Institute, Department of Neurosurgery, Tampa, Florida, United States.
  • Glocker B; Mayo Clinic, Mathematical NeuroOncology Lab, Phoenix, Arizona, United States.
  • Swanson KR; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
J Med Imaging (Bellingham) ; 7(5): 055501, 2020 Sep.
Article em En | MEDLINE | ID: mdl-33102623
Purpose: Deep learning (DL) algorithms have shown promising results for brain tumor segmentation in MRI. However, validation is required prior to routine clinical use. We report the first randomized and blinded comparison of DL and trained technician segmentations. Approach: We compiled a multi-institutional database of 741 pretreatment MRI exams. Each contained a postcontrast T1-weighted exam, a T2-weighted fluid-attenuated inversion recovery exam, and at least one technician-derived tumor segmentation. The database included 729 unique patients (470 males and 259 females). Of these exams, 641 were used for training the DL system, and 100 were reserved for testing. We developed a platform to enable qualitative, blinded, controlled assessment of lesion segmentations made by technicians and the DL method. On this platform, 20 neuroradiologists performed 400 side-by-side comparisons of segmentations on 100 test cases. They scored each segmentation between 0 (poor) and 10 (perfect). Agreement between segmentations from technicians and the DL method was also evaluated quantitatively using the Dice coefficient, which produces values between 0 (no overlap) and 1 (perfect overlap). Results: The neuroradiologists gave technician and DL segmentations mean scores of 6.97 and 7.31, respectively ( p < 0.00007 ). The DL method achieved a mean Dice coefficient of 0.87 on the test cases. Conclusions: This was the first objective comparison of automated and human segmentation using a blinded controlled assessment study. Our DL system learned to outperform its "human teachers" and produced output that was better, on average, than its training data.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Clinical_trials / Qualitative_research Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Clinical_trials / Qualitative_research Idioma: En Ano de publicação: 2020 Tipo de documento: Article