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Whole-Slide Imaging Digital Pathology as a Platform for Teleconsultation: A Pilot Study Using Paired Subspecialist Correlations
168
Zitationen
25
Autoren
2009
Jahr
Abstract
CONTEXT: -Whole-slide imaging technology offers promise for rapid, Internet-based telepathology consultations between institutions. Before implementation, technical issues, pathologist adaptability, and morphologic pitfalls must be well characterized. OBJECTIVE: -To determine whether interpretation of whole-slide images differed from glass-slide interpretation in difficult surgical pathology cases. DESIGN: -Diagnostically challenging pathology slides from a variety of anatomic sites from an outside laboratory were scanned into whole digital format. Digital and glass slides were independently diagnosed by 2 subspecialty pathologists. Reference, digital, and glass-slide interpretations were compared. Operator comments on technical issues were gathered. RESULTS: -Fifty-three case pairs were analyzed. There was agreement among digital, glass, and reference diagnoses in 45 cases (85%) and between digital and glass diagnoses in 48 (91%) cases. There were 5 digital cases (9%) discordant with both reference and glass diagnoses. Further review of each of these cases indicated an incorrect digital whole-slide interpretation. Neoplastic cases showed better correlation (93%) than did cases of nonneoplastic disease (88%). Comments on discordant cases related to digital whole technology focused on issues such as fine resolution and navigating ability at high magnification. CONCLUSIONS: -Overall concordance between digital whole-slide and standard glass-slide interpretations was good at 91%. Adjustments in technology, case selection, and technology familiarization should improve performance, making digital whole-slide review feasible for broader telepathology subspecialty consultation applications.
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Autoren
- David C. Wilbur
- Kalil Madi
- Robert B. Colvin
- Lyn M. Duncan
- William C. Faquin
- Judith A. Ferry
- Matthew P. Frosch
- Stuart L. Houser
- Richard L. Kradin
- Gregory Y. Lauwers
- David N. Louis
- Eugene J. Mark
- Mari Mino–Kenudson
- Joseph Misdraji
- Gunnlauger P. Nielsen
- Martha B. Pitman
- Andrew E. Rosenberg
- R. Neal Smith
- Aliyah R. Sohani
- James R. Stone
- Rosemary Tambouret
- Chin‐Lee Wu
- Robert H. Young
- Artur Zembowicz
- Wolfgang Klietmann