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A User Interface for Optimizing Radiologist Engagement in Image Data Curation for Artificial Intelligence.
Demirer, Mutlu; Candemir, Sema; Bigelow, Matthew T; Yu, Sarah M; Gupta, Vikash; Prevedello, Luciano M; White, Richard D; Yu, Joseph S; Grimmer, Rainer; Wels, Michael; Wimmer, Andreas; Halabi, Abdul H; Ihsani, Alvin; O'Donnell, Thomas P; Erdal, Barbaros S.
Afiliação
  • Demirer M; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Candemir S; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Bigelow MT; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Yu SM; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Gupta V; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Prevedello LM; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • White RD; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Yu JS; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Grimmer R; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Wels M; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Wimmer A; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Halabi AH; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Ihsani A; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • O'Donnell TP; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
  • Erdal BS; Department of Radiology, Laboratory for Augmented Intelligence in Imaging-Division of Medical Imaging Informatics, Ohio State University College of Medicine, OSU Wexner Medical Center, 395 W 12th Ave, Suite 452, Columbus, OH 43210 (M.D., S.C., M.T.B., S.M.Y., V.G., L.M.P., R.D.W., J.S.Y., B.S.E.); S
Radiol Artif Intell ; 1(6): e180095, 2019 Nov.
Article em En | MEDLINE | ID: mdl-33937804
ABSTRACT

PURPOSE:

To delineate image data curation needs and describe a locally designed graphical user interface (GUI) to aid radiologists in image annotation for artificial intelligence (AI) applications in medical imaging. MATERIALS AND

METHODS:

GUI components support image analysis toolboxes, picture archiving and communication system integration, third-party applications, processing of scripting languages, and integration of deep learning libraries. For clinical AI applications, GUI components included two-dimensional segmentation and classification; three-dimensional segmentation and quantification; and three-dimensional segmentation, quantification, and classification. To assess radiologist engagement and performance efficiency associated with GUI-related capabilities, image annotation rate (studies per day) and speed (minutes per case) were evaluated in two clinical scenarios of varying complexity hip fracture detection and coronary atherosclerotic plaque demarcation and stenosis grading.

RESULTS:

For hip fracture, 1050 radiographs were annotated over 7 days (150 studies per day; median speed 10 seconds per study [interquartile range, 3-21 seconds per study]). A total of 294 coronary CT angiographic studies with 1843 arteries and branches were annotated for atherosclerotic plaque over 23 days (15.2 studies [80.1 vessels] per day; median speed 6.08 minutes per study [interquartile range, 2.8-10.6 minutes per study] and 73 seconds per vessel [interquartile range, 20.9-155 seconds per vessel]).

CONCLUSION:

GUI-component compatibility with common image analysis tools facilitates radiologist engagement in image data curation, including image annotation, supporting AI application development and evolution for medical imaging. When complemented by other GUI elements, a continuous integrated workflow supporting formation of an agile deep neural network life cycle results.Supplemental material is available for this article.© RSNA, 2019.

Texto completo: 1 Bases de dados: MEDLINE Idioma: En Revista: Radiol Artif Intell Ano de publicação: 2019 Tipo de documento: Article

Texto completo: 1 Bases de dados: MEDLINE Idioma: En Revista: Radiol Artif Intell Ano de publicação: 2019 Tipo de documento: Article