Abstract
Background: Presented is the method " Detection and Outline Error Estimates" (DOEE) for assessing rater agreement in the delineation of multiple sclerosis (MS) lesions. The DOEE method divides operator or rater assessment into two parts: 1) Detection Error (DE) -- rater agreement in detecting the same regions to mark, and 2) Outline Error (OE) -- agreement of the raters in outlining of the same lesion.Methods: DE, OE and Similarity Index (SI) values were calculated for two raters tested on a set of 17 fluid-attenuated inversion-recovery (FLAIR) images of patients with MS. DE, OE, and SI values were tested for dependence with mean total area (MTA) of the raters' Region of Interests (ROIs).Results: When correlated with MTA, neither DE (ρ = .056, p=.83) nor the ratio of OE to MTA (ρ = .23, p=.37), referred to as Outline Error Rate (OER), exhibited significant correlation. In contrast, SI is found to be strongly correlated with MTA (ρ = .75, p < .001). Furthermore, DE and OER values can be used to model the variation in SI with MTA.Conclusions: The DE and OER indices are proposed as a better method than SI for comparing rater agreement of ROIs, which also provide specific information for raters to improve their agreement.
| Original language | English |
|---|---|
| Article number | 17 |
| Journal | BMC Medical Imaging |
| Volume | 12 |
| DOIs | |
| State | Published - Jul 19 2012 |
Keywords
- Detection and outline error estimates
- Index
- Jaccard Index
- Kappa
- Lesion
- MRI
- Measure
- Metric
- Multiple sclerosis
- Operator agreement
- ROI
- Rater agreement
- Similarity index
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