Abstract
The identification of pathological atrophy in MRI scans requires specialized training, which is scarce outside dedicated centers. We sought to investigate the clinical usefulness of computer-generated representations of local grey matter (GM) loss or increased volume of cerebral fluids (CSF) as normalized deviations (z-scores) from healthy aging to either aid human visual readings or directly detect pathological atrophy.Two experienced neuroradiologists rated atrophy in 30 patients with Alzheimer's disease (AD), 30 patients with frontotemporal dementia (FTD), 30 with dementia due to Lewy-body disease (LBD) and 30 healthy controls (HC) on a three-point scale in 10 anatomical regions as reference gold standard. Seven raters, varying in their experience with MRI diagnostics rated all cases on the same scale once with and once without computer-generated volume deviation maps that were overlaid on anatomical slices. In addition, we investigated the predictive value of the computer generated deviation maps on their own for the detection of atrophy as identified by the gold standard raters.Inter and intra-rater agreements of the two gold standard raters were substantial (Cohen's kappa κ > 0.62). The intra-rater agreement of the other raters ranged from fair (κ = 0.37) to substantial (κ = 0.72) and improved on average by 0.13 (0.57 < κ < 0.87) when volume deviation maps were displayed. The seven other raters showed good agreement with the gold standard in regions including the hippocampus but agreement was substantially lower in e.g. the parietal cortex and did not improve with the display of atrophy scores. Rating speed increased over the course of the study and irrespective of the presentation of voxel-wise deviations.Automatically detected large deviations of local volume were consistently associated with gold standard atrophy reading as shown by an area under the receiver operator characteristic of up to 0.95 for the hippocampus region. When applying these test characteristics to prevalences typically found in a memory clinic, we observed a positive or negative predictive value close to or above 0.9 in the hippocampus for almost all of the expected cases. The volume deviation maps derived from CSF volume increase were generally better in detecting atrophy.Our study demonstrates an agreement of visual ratings among non-experts not further increased by displaying, region-specific deviations of volume. The high predictive value of computer generated local deviations independent from human interaction and the consistent advantages of CSF-over GM-based estimations should be considered in the development of diagnostic tools and indicate clinical utility well beyond aiding visual assessments.
Highlights
The accuracy of magnetic resonance imaging (MRI)-based diagnostics of neurodegenerative disorders depends on the level of expertise of the involved radiologists (Klöppel et al, 2008a)
The primary goal of Alzheimer's Disease Neuroimaging Initiative (ADNI) has been to test whether serial magnetic resonance imaging (MRI), positron emission tomography (PET), other biological markers, and clinical and neuropsychological assessment can be combined to measure the progression of mild cognitive impairment (MCI) and early Alzheimer's disease (AD)
We report receiver operator characteristics (ROC) curves as well as the positive predictive value (PPV), negative predictive value (NPV), sensitivity (SE) and specificity (SP) at the threshold corresponding to a maximum of the product of SE and SP
Summary
The accuracy of MRI-based diagnostics of neurodegenerative disorders depends on the level of expertise of the involved radiologists (Klöppel et al, 2008a). A recent study has shown that expert neuroradiologists can accurately identify a range of neurodegenerative disorders based on MRI, when the information from multiple rating scales is integrated (Harper et al, 2016). Research in the field of computer-assisted diagnosis had a strong focus on multivariate pattern recognition methods that have successfully identified a wide range of pathological conditions (Klöppel et al, 2012). The integration into the routine of a memory clinic remains challenging (Klöppel et al, 2015), their ability to separate different types of neurodegenerative diseases from one another as well as from healthy aging and to predict the conversion to dementia in individuals with mild cognitive impairment has first been shown a decade ago (Adaszewski et al, 2013; Cuingnet et al, 2011; Davatzikos et al, 2011; Davatzikos et al, 2008; Dukart et al, 2013; Fan et al, 2008; Heister et al, 2011; Klöppel et al, 2008b; Misra et al, 2009; Teipel et al, 2007; Vemuri et al, 2009; Vemuri et al, 2008a; Vemuri et al, 2008b)
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