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Advancing Research on Medical Image Perception by Strengthening Multidisciplinary Collaboration
8
Zitationen
28
Autoren
2021
Jahr
Abstract
Medical image interpretation is central to detecting, diagnosing, and staging cancer and many other disorders. At a time when medical imaging is being transformed by digital technologies and artificial intelligence, understanding the basic perceptual and cognitive processes underlying medical image interpretation is vital for increasing diagnosticians' accuracy and performance, improving patient outcomes, and reducing diagnostician burnout. Medical image perception remains substantially understudied. In September 2019, the National Cancer Institute convened a multidisciplinary panel of radiologists and pathologists together with researchers working in medical image perception and adjacent fields of cognition and perception for the "Cognition and Medical Image Perception Think Tank." The Think Tank's key objectives were to identify critical unsolved problems related to visual perception in pathology and radiology from the perspective of diagnosticians, discuss how these clinically relevant questions could be addressed through cognitive and perception research, identify barriers and solutions for transdisciplinary collaborations, define ways to elevate the profile of cognition and perception research within the medical image community, determine the greatest needs to advance medical image perception, and outline future goals and strategies to evaluate progress. The Think Tank emphasized diagnosticians' perspectives as the crucial starting point for medical image perception research, with diagnosticians describing their interpretation process and identifying perceptual and cognitive problems that arise. This article reports the deliberations of the Think Tank participants to address these objectives and highlight opportunities to expand research on medical image perception.
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Autoren
- Melissa Treviño
- George Birdsong
- Ann Carrigan
- Peter L. Choyke
- Trafton Drew
- Miguel P. Eckstein
- Anna T. Fernandez
- Brandon D. Gallas
- Maryellen L. Giger
- Stephen M. Hewitt
- Todd S. Horowitz
- Yuhong Jiang
- Bonnie Kudrick
- Susana Martínez‐Conde
- Stephen R. Mitroff
- Linda Nebeling
- Joseph Saltz
- F. W. Samuelson
- Steven E. Seltzer
- Behrouz Shabestari
- Lalitha Shankar
- Eliot L. Siegel
- Mike Tilkin
- Jennifer S. Trueblood
- Alison L. Van Dyke
- Aradhana M. Venkatesan
- David Whitney
- Jeremy M. Wolfe
Institutionen
- National Cancer Institute(US)
- National Center for Complementary and Integrative Health(US)
- Emory University(US)
- Macquarie University(AU)
- University of Utah(US)
- University of California, Santa Barbara(US)
- Booz Allen Hamilton (United States)(US)
- United States Food and Drug Administration(US)
- University of Chicago(US)
- University of Minnesota(US)
- Transportation Security Administration
- SUNY Downstate Health Sciences University(US)
- George Washington University(US)
- Stony Brook University(US)
- Brigham and Women's Hospital(US)
- Harvard University(US)
- National Institute of Biomedical Imaging and Bioengineering(US)
- University of Maryland, Baltimore(US)
- American College of Radiology(US)
- Vanderbilt University(US)
- The University of Texas MD Anderson Cancer Center(US)
- University of California, Berkeley(US)