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Comment
. 2020 Jan 22;2(1):e190177.
doi: 10.1148/ryai.2019190177. eCollection 2020 Jan.

The Importance of Image Resolution in Building Deep Learning Models for Medical Imaging

Affiliations
Comment

The Importance of Image Resolution in Building Deep Learning Models for Medical Imaging

Paras Lakhani. Radiol Artif Intell. .
No abstract available

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Conflict of interest statement

Disclosures of Conflicts of Interest: P.L. disclosed no relevant relationships.

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Paras Lakhani, MD, serves as the clinical director of imaging informatics and associate professor of radiology in the department of radiology at Thomas Jefferson University Hospital, Philadelphia, Pa, where he runs an applied deep learning medical imaging laboratory. His clinical specialties include cardiothoracic and oncologic imaging. He serves on the Society of Imaging Informatics in Medicine Machine Intelligence Committee, Radiological Society of North America RadLex subcommittee, and the American College of Radiology Informatics Innovation Council and as an associate editor for Radiology: Artificial Intelligence.

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References

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