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3 March 2011Computer-aided detection as a decision assistant in chest
radiography
Background. Contrary to what may be expected, finding abnormalities in complex images like pulmonary
nodules in chest radiographs is not dominated by time-consuming search strategies but by an almost immediate
global interpretation. This was already known in the nineteen-seventies from experiments with briefly flashed
chest radiographs. Later on, experiments with eye-trackers showed that abnormalities attracted the attention
quite fast but often without further reader actions. Prolonging one's search seldom leads to newly found abnormalities
and may even increase the chance of errors. The problem of reading chest radiographs is therefore
not dominated by finding the abnormalities, but by interpreting them. Hypothesis. This suggests that readers
could benefit from computer-aided detection (CAD) systems not so much by their ability to prompt potential
abnormalities, but more from their ability to 'interpret' the potential abnormalities. In this paper, this hypothesis
was investigated by an observer experiment. Experiment. In one condition, the traditional CAD condition,
the most suspicious CAD locations were shown to the subjects, without telling them the levels of suspiciousness
according to CAD. In the other condition, interactive CAD condition, levels of suspiciousness were given,
but only when readers requested them at specified locations. These two conditions focus on decreasing search
errors and decision errors, respectively. Results of reading without CAD were also recorded. Six subjects, all
non-radiologists, read 223 chest radiographs in both conditions. CAD results were obtained from the OnGuard
5.0 system developed by Riverain Medical (Miamisburg, Ohio). Results. The observer data were analyzed by
Location Response Operating Characteristic analysis (LROC). It was found that: 1) With the aid of CAD, the
performance is significantly better than without CAD; 2) The performance with interactive CAD is significantly
better than with traditional CAD at low false positive rates.
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Maurice R. M. Samulski, Peter R. Snoeren, Bram Platel, Bram van Ginneken, Laurens Hogeweg, Cornelia Schaefer-Prokop, Nico Karssemeijer, "Computer-aided detection as a decision assistant in chest radiography," Proc. SPIE 7966, Medical Imaging 2011: Image Perception, Observer Performance, and Technology Assessment, 796614 (3 March 2011); https://doi.org/10.1117/12.877968