Your browser doesn't support javascript.
loading
Performance quantification of clustering algorithms for false positive removal in fMRI by ROC curves
Peres, André Salles Cunha; Lemos, Tenysson Will de; Barros, Allan Kardec Duailibe; Baffa Filho, Oswaldo; Araújo, Dráulio Barraos de.
  • Peres, André Salles Cunha; Federal University of Rio Grande do Norte. Brain Institute. Natal. BR
  • Lemos, Tenysson Will de; Federal University of Rio Grande do Norte. Brain Institute. Natal. BR
  • Barros, Allan Kardec Duailibe; Federal University of Rio Grande do Norte. Brain Institute. Natal. BR
  • Baffa Filho, Oswaldo; Federal University of Rio Grande do Norte. Brain Institute. Natal. BR
  • Araújo, Dráulio Barraos de; Federal University of Rio Grande do Norte. Brain Institute. Natal. BR
Res. Biomed. Eng. (Online) ; 33(1): 31-41, Mar. 2017. graf
Article in English | LILACS | ID: biblio-842481
ABSTRACT
Abstract Introduction Functional magnetic resonance imaging (fMRI) is a non-invasive technique that allows the detection of specific cerebral functions in humans based on hemodynamic changes. The contrast changes are about 5%, making visual inspection impossible. Thus, statistic strategies are applied to infer which brain region is engaged in a task. However, the traditional methods like general linear model and cross-correlation utilize voxel-wise calculation, introducing a lot of false-positive data. So, in this work we tested post-processing cluster algorithms to diminish the false-positives. Methods In this study, three clustering algorithms (the hierarchical cluster, k-means and self-organizing maps) were tested and compared for false-positive removal in the post-processing of cross-correlation analyses. Results Our results showed that the hierarchical cluster presented the best performance to remove the false positives in fMRI, being 2.3 times more accurate than k-means, and 1.9 times more accurate than self-organizing maps. Conclusion The hierarchical cluster presented the best performance in false-positive removal because it uses the inconsistency coefficient threshold, while k-means and self-organizing maps utilize a priori cluster number (centroids and neurons number); thus, the hierarchical cluster avoids clustering scattered voxels, as the inconsistency coefficient threshold allows only the voxels to be clustered that are at a minimum distance to some cluster.


Full text: Available Index: LILACS (Americas) Language: English Journal: Res. Biomed. Eng. (Online) Journal subject: Engenharia Biom‚dica Year: 2017 Type: Article Affiliation country: Brazil Institution/Affiliation country: Federal University of Rio Grande do Norte/BR

Similar

MEDLINE

...
LILACS

LIS


Full text: Available Index: LILACS (Americas) Language: English Journal: Res. Biomed. Eng. (Online) Journal subject: Engenharia Biom‚dica Year: 2017 Type: Article Affiliation country: Brazil Institution/Affiliation country: Federal University of Rio Grande do Norte/BR