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DOI: 10.1148/radiol.2321032014
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(Radiology 2004;232:5-6.)
© RSNA, 2004


Editorial

On the Testing and Reporting of Computer-aided Detection Results for Lung Cancer Detection1

David Gur, ScD, Bin Zheng, PhD, Carl R. Fuhrman, MD and Lara Hardesty, MD

1 From the Department of Radiology, University of Pittsburgh and Magee-Womens Hospital, Imaging Research, Suite 4200, 300 Halket St, Pittsburgh, PA 15213-3180. Received December 11, 2003; accepted December 18. Address correspondence to D.G. (e-mail: gurd@upmc.edu).

Index terms: Cancer screening, 60.11, 60.1211, 60.1215 • Computers, diagnostic aid • Diagnostic radiology, observer performance • Editorials • Lung neoplasms, 60.30

There has been a great deal of interest in developing computer-aided detection (CAD) technology for early detection of lung cancer with both radiography and computed tomography (CT) (18). Studies focused on CAD alone or on the comparison of observer performance with and without CAD are reported with increasing frequency. There are many important issues to understand and consider in any evaluation of these efforts, and some of these issues are not easy to address. Two, however, can be.

First, the results of these studies are typically reported in terms of the sensitivity of the CAD scheme at a given false-positive cuing rate (eg, 80% sensitivity at two false-positive cues or marks per image or case). In these studies, sensitivity is relatively straightforward and easy to understand; the false-positive rate, however, is often reported in different units (eg, per image, lung, case, or examination), which makes it difficult to appreciate the absolute and relative performance levels of different CAD schemes (3,6,7). At times, even investigators at the same institution may be inconsistent in reporting results (4,5). This inconsistency in reporting is quite noticeable during presentations at national meetings, where, in a single session, several different units might be used for reporting false-positive rates (912).

To address this problem, we should all agree on one acceptable unit for reporting results. For example, we can agree to report the false-positive rate (number of false-positive cues or marks) per the entire CT lung scan instead of per image. Namely, the denominator is the full examination of the whole lung area as viewed and interpreted in a clinical screening environment. The advantages of this reporting method are that the meaning will be clear and that differences in imaging parameters such as section thickness will be inherently accounted for. Authors will have no need to explain why thinner or thicker sections result in different observations, as they would if the false-positive rate were reported per image or section.

The second issue is related to the cases used in these studies and is more difficult to address. Often, we do not know the outcome of these cases (at least, not at the time when imaging is performed); hence, we use an actionable indication as the target for CAD (12). Consensus by several radiologists is also frequently used to define positive cases with which to test CAD performance (5,6). Clearly, "actionable" and "consensus-based" are relative terms and represent subjective decisions, since what may be actionable to one radiologist in a specific environment may not be actionable to other radiologists in the same or different environments. Perhaps as important, it is not clear that what a radiologist considers actionable during the retrospective review of cases in a laboratory environment would be acted upon by the same radiologist in a clinical environment. Hence, our ability to compare results among studies, even in general terms, is substantially diminished. Despite the difficulty of obtaining the number of true-positive cases needed for CAD testing, it is important that we use, and report results based on, lung cancer cases that have been pathologically verified. Otherwise, we may unintentionally redefine the target of interest for the CAD scheme and the interpreter, and, ultimately, find many more actionable cases than there are or than we think there should be on the basis of the lung cancer incidence in a screening population or the ratio of positive to negative biopsy findings in an optimal practice environment.

In conclusion, we propose that all assessments of CAD schemes for lung cancer detection be based on cases in which imaging findings, particularly positive findings, have been pathologically verified, and that the results of CAD testing be reported in a standardized manner.

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Current status and future potential of computer-aided diagnosis in medical imaging
Br. J. Radiol., January 1, 2005; 78(suppl_1): S3 - s19.
[Abstract] [Full Text] [PDF]


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