ABSTRACT

In this chapter, we review widely used statistical analysis frameworks for data defined along cortical and subcortical surfaces that have been developed in the last two decades. The cerebral cortex has the topology of a 2D highly convoluted sheet. For data obtained along curved non-Euclidean surfaces, traditional statistical analysis and smoothing techniques based on the Euclidean metric structure are inefficient. To increase the signal-to-noise ratio (SNR) and to boost the sensitivity of the analysis, it is necessary to smooth out noisy surface data. However, this requires smoothing data on curved cortical manifolds and assigning smoothing weights based on the geodesic distance along the surface. Thus, many cortical surface data analysis frameworks are differential geometric in nature (24). The smoothed surface

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data is then treated as smooth random fields and statistical inferences can be performed within Keith Worsley’s random field theory (123, 122).