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Published in: European Radiology 3/2010

01-03-2010 | Chest

Computer-aided detection (CAD) of lung nodules in CT scans: radiologist performance and reading time with incremental CAD assistance

Authors: Justus E. Roos, David Paik, David Olsen, Emily G. Liu, Lawrence C. Chow, Ann N. Leung, Robert Mindelzun, Kingshuk R. Choudhury, David P. Naidich, Sandy Napel, Geoffrey D. Rubin

Published in: European Radiology | Issue 3/2010

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Abstract

Objective

The diagnostic performance of radiologists using incremental CAD assistance for lung nodule detection on CT and their temporal variation in performance during CAD evaluation was assessed.

Methods

CAD was applied to 20 chest multidetector-row computed tomography (MDCT) scans containing 190 non-calcified ≥3-mm nodules. After free search, three radiologists independently evaluated a maximum of up to 50 CAD detections/patient. Multiple free-response ROC curves were generated for free search and successive CAD evaluation, by incrementally adding CAD detections one at a time to the radiologists’ performance.

Results

The sensitivity for free search was 53% (range, 44%–59%) at 1.15 false positives (FP)/patient and increased with CAD to 69% (range, 59–82%) at 1.45 FP/patient. CAD evaluation initially resulted in a sharp rise in sensitivity of 14% with a minimal increase in FP over a time period of 100 s, followed by flattening of the sensitivity increase to only 2%. This transition resulted from a greater prevalence of true positive (TP) versus FP detections at early CAD evaluation and not by a temporal change in readers’ performance. The time spent for TP (9.5 s ± 4.5 s) and false negative (FN) (8.4 s ± 6.7 s) detections was similar; FP decisions took two- to three-times longer (14.4 s ± 8.7 s) than true negative (TN) decisions (4.7 s ± 1.3 s).

Conclusions

When CAD output is ordered by CAD score, an initial period of rapid performance improvement slows significantly over time because of non-uniformity in the distribution of TP CAD output and not to a changing reader performance over time.
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Metadata
Title
Computer-aided detection (CAD) of lung nodules in CT scans: radiologist performance and reading time with incremental CAD assistance
Authors
Justus E. Roos
David Paik
David Olsen
Emily G. Liu
Lawrence C. Chow
Ann N. Leung
Robert Mindelzun
Kingshuk R. Choudhury
David P. Naidich
Sandy Napel
Geoffrey D. Rubin
Publication date
01-03-2010
Publisher
Springer-Verlag
Published in
European Radiology / Issue 3/2010
Print ISSN: 0938-7994
Electronic ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-009-1596-y

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