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A Comparative Evaluation of Cortical Thickness Measurement Techniques P.A. Bromiley, M.L.J. Scott, and N.A. Thacker Imaging Science and Biomedical Engineering University of Manchester. Introduction. The cerebral cortex: largest part of the brain highly convoluted 2D sheet of neuronal tissue
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A Comparative Evaluation of Cortical Thickness Measurement Techniques P.A. Bromiley, M.L.J. Scott, and N.A. ThackerImaging Science and Biomedical EngineeringUniversity of Manchester
Introduction • The cerebral cortex: • largest part of the brain • highly convoluted 2D sheet of neuronal tissue • laminar structure • min. thickness ~2mm (calcarine sulcus) • max. thickness ~4mm (precentral gyrus) • av. thickness ~3mm
Introduction • Volume measurements are well established • e.g. dementia, ageing • Thickness provides additional information • correlations with Alzheimer’s, Williams syndrome, schizophrenia, fetal alcohol syndrome…
Introduction • Free from region definition v t
v1 v2 Introduction • More robust to misregistration • volume error misregistration
Introduction • More robust to misregistration • median thickness error t / n
Introduction • Two approaches: • model based (e.g. ASP, McDonald et al. 2000) • fit deformable model to inner surface • expand to reach outer surface • measure distance between corresponding vertices • data-driven • use edge detection to find inner surface • find 3D normal • search along normal for another edge
The problem… • Partial volume effect may obscure outer surface (from McDonald et al. 2000)
Model Bias • Impose constraints the force spherical topology and force the models into thin sluci: • distance between vertices on inner and outer surfaces • surface self proximity • may introduce bias • takes ages to run
The TINA Cortical Thickness Algorithm • Scott et al., MIUA 2005 • find inner surface • search along 3D normal • process edges, dips found
AIM • Can data driven techniques be as accurate as model-based ones? • Can we find evidence of model bias?
Evaluation • 119 normal subjects, 52 male, age 19-86 (μ=70.3) • T1-weighted IR scans: suppresses inhomogeneity
Evaluation • Meta-studies: • youngest 13 compared to Kabani et al. manual and automatic (model based) • precentral gyrus thickness vs. age compared to 8 previous publications for all 119 subjects …if we can see aging, we can see disease
Comparison to Kabani et al. • From error propagation, expected error on an individual ~0.1mm • Mean differences • present study: –0.21 +/- 0.22 mm • Kabani et al.: 0.61 +/- 0.43 mm • => mostly group variability • No evidence of systematic error • Data-driven technique has ~2x lower random errors
Precentral Gyrus Study • Meta-study incorporating 635 subjects: Reference No. Age range (years) Algorithm type Kabani et al. (2001) 40 18-40 Model based Von Economo (1929) - 30-40 Manual measurement Sowell et al. (2004) 45 5-11 Intensity based Tosun et al. (2004) 105 59-84 Model based Fischl et al. (2005) 30 20-37 Model based Thompson et al. (2005) 40 18-48 Intensity based MacDonald et al. (2000) 150 18-40 Model based Salat et al. (2004) 106 18-93 Model based Present study 119 19-86 Intensity based
Precentral Gyrus Study • Colourmap representations • error estimation is not possible • bias from inflated/non-inflated representations • (from Fischl et. al., 2000)
Conclusions • Results from all other studies are consistent • random errors dominated by natural variation • Data-driven cortical thickness measurement • free from model bias • order of magnitude faster • at least as accurate …compared to model-based techniques • Bias may have been seen in the Salat et al. results? • don’t use prior measurement to make measurement