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      Computer-aided diagnosis of renal obstruction: utility of log-linear modeling versus standard ROC and kappa analysis

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          Abstract

          Background

          The accuracy of computer-aided diagnosis (CAD) software is best evaluated by comparison to a gold standard which represents the true status of disease. In many settings, however, knowledge of the true status of disease is not possible and accuracy is evaluated against the interpretations of an expert panel. Common statistical approaches to evaluate accuracy include receiver operating characteristic (ROC) and kappa analysis but both of these methods have significant limitations and cannot answer the question of equivalence: Is the CAD performance equivalent to that of an expert? The goal of this study is to show the strength of log-linear analysis over standard ROC and kappa statistics in evaluating the accuracy of computer-aided diagnosis of renal obstruction compared to the diagnosis provided by expert readers.

          Methods

          Log-linear modeling was utilized to analyze a previously published database that used ROC and kappa statistics to compare diuresis renography scan interpretations (non-obstructed, equivocal, or obstructed) generated by a renal expert system (RENEX) in 185 kidneys (95 patients) with the independent and consensus scan interpretations of three experts who were blinded to clinical information and prospectively and independently graded each kidney as obstructed, equivocal, or non-obstructed.

          Results

          Log-linear modeling showed that RENEX and the expert consensus had beyond-chance agreement in both non-obstructed and obstructed readings (both p < 0.0001). Moreover, pairwise agreement between experts and pairwise agreement between each expert and RENEX were not significantly different ( p = 0.41, 0.95, 0.81 for the non-obstructed, equivocal, and obstructed categories, respectively). Similarly, the three-way agreement of the three experts and three-way agreement of two experts and RENEX was not significantly different for non-obstructed ( p = 0.79) and obstructed ( p = 0.49) categories.

          Conclusion

          Log-linear modeling showed that RENEX was equivalent to any expert in rating kidneys, particularly in the obstructed and non-obstructed categories. This conclusion, which could not be derived from the original ROC and kappa analysis, emphasizes and illustrates the role and importance of log-linear modeling in the absence of a gold standard. The log-linear analysis also provides additional evidence that RENEX has the potential to assist in the interpretation of diuresis renography studies.

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          Most cited references16

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          Ramifications of a population model forκ as a coefficient of reliability

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            The new era of medical imaging--progress and pitfalls.

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              Improvement of radiologists' characterization of mammographic masses by using computer-aided diagnosis: an ROC study.

              To evaluate the effects of computer-aided diagnosis (CAD) on radiologists' classification of malignant and benign masses seen on mammograms. The authors previously developed an automated computer program for estimation of the relative malignancy rating of masses. In the present study, the authors conducted observer performance experiments with receiver operating characteristic (ROC) methodology to evaluate the effects of computer estimates on radiologists' confidence ratings. Six radiologists assessed biopsy-proved masses with and without CAD. Two experiments, one with a single view and the other with two views, were conducted. The classification accuracy was quantified by using the area under the ROC curve, Az. For the reading of 238 images, the Az value for the computer classifier was 0.92. The radiologists' Az values ranged from 0.79 to 0.92 without CAD and improved to 0.87-0.96 with CAD. For the reading of a subset of 76 paired views, the radiologists' Az values ranged from 0.88 to 0.95 without CAD and improved to 0.93-0.97 with CAD. Improvements in the reading of the two sets of images were statistically significant (P = .022 and .007, respectively). An improved positive predictive value as a function of the false-negative fraction was predicted from the improved ROC curves. CAD may be useful for assisting radiologists in classification of masses and thereby potentially help reduce unnecessary biopsies.
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                Author and article information

                Journal
                EJNMMI Res
                EJNMMI Research
                Springer
                2191-219X
                2011
                20 June 2011
                : 1
                : 5
                Affiliations
                [1 ]Department of Biostatistics and Bioinformatics, Emory University School of Public Health, 1364 Clifton Road NE, Atlanta, GA 30322, USA
                [2 ]Department of Radiology and Imaging Sciences, Emory University School of Medicine, 1364 Clifton Road NE, Atlanta, GA 30322, USA
                Article
                2191-219X-1-5
                10.1186/2191-219X-1-5
                3175375
                21935501
                97d46774-1ad6-4449-bc30-2a9c8c9f0411
                Copyright ©2011 Manatunga et al; licensee Springer.

                This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

                History
                : 25 March 2011
                : 20 June 2011
                Categories
                Original Research

                Radiology & Imaging
                log-linear modeling,diuresis renography,renal obstruction
                Radiology & Imaging
                log-linear modeling, diuresis renography, renal obstruction

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