Statistical segmentation of fMRI activations using contextual clustering

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Abstract

A central problem in the analysis of functional magnetic resonance imaging (fMRI) data is the reliable detection and segmentationof activated areas. Often this goal is achieved by computing a statistical parametric map (SPM) and thresholding it. Cluster-size thresholds are also used. A new contextual segmentation method based on clustering is presented in this paper. If the SPM value of a voxel, adjusted with neighborhood information, differs from the expected non-activation value more than a specified decision value, the contextual clustering algorithm classifies the voxel to the activation class, otherwise to the non-activation class. The voxel-wise thresholding, cluster-size thresholding and contextual clustering are compared using fixed overall specificity. Generally, the contextual clustering detects activations with higher probability than the voxel-wise thresholding. Unlike cluster-size thresholding, contextual clusteringis able to detect extremely small area activations, too. Moreover, the results show that the contextual clustering has good segmentation accuracy, voxel-wise specificity and robustness against spatial autocorrelations in the noise term.

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APA

Salli, E., Visa, A., Aronen, H. J., Korvenoja, A., & Katila, T. (1999). Statistical segmentation of fMRI activations using contextual clustering. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 1679, pp. 481–489). Springer Verlag. https://doi.org/10.1007/10704282_52

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