Diffusion tensor fiber tracking with self-organizing feature maps

dc.contributorPh.D. Program in Biomedical Engineering.
dc.contributor.advisorÖzkan, Mehmed.
dc.contributor.authorGöksel, Dilek.
dc.date.accessioned2023-03-16T13:16:58Z
dc.date.available2023-03-16T13:16:58Z
dc.date.issued2013.
dc.description.abstractThe diffusion tensor imaging (DTI) is unique in its ability to estimate the white matter (WM) ber tracts in vivo noninvasively. The post-processing of DT images needs proper image analysis and visualization tools. However, accurate WM anatomical maps should be provided to clarify the multiple orientational ber paths within uncertainty regions. These regions with intersecting trajectories generate a critical tractography issue in DTI literature. WM ber tractography needs a standardization, a generally accepted ber tract atlas which is the main concern of the various research groups in the eld. In this thesis, the special class of arti cial neural networks (ANN) namely Kohonen's self organizing feature maps (SOFMs) is proposed for the analysis of DT images. This SOM based tractography approach called SOFMAT (Self- Organizing Feature Mapping Tractography) relies on unsupervised learning method for the mapping of high dimensional data into a 1D, 2D, or higher dimensional data space depending on the topological ordering constraint. The unsupervised approach enables SOFMAT to order the principal di usivity of the bers in the DTI into neural pathways. A major advantage of the topological maps produced by SOFMAT is that it retains the underlying structure of the input space, while the dimensionality of the input space is reduced. As a result, an arti cial neuronal map is obtained with weights encoding the stationary probability density function of the input pattern vectors. Building ber tracking maps based on the di usion tensor information which learn through self organization in a neurobiologically aspect is the aim of the study. SOFMAT has been tested to reveal uncertainties in ber tracking. A well known arti cial dataset called PISTE was used to access the capabilities of SOFMAT. After identifying an a ective con guration, SOFMAT was employed for human tractography.|Keywords : DTI, Tensor, Anisotropy, Fiber Tractography, Self-Organizing Maps.
dc.format.extent30 cm.
dc.format.pagesxii, 74 leaves ;
dc.identifier.otherBM 2013 G65 PhD
dc.identifier.urihttps://digitalarchive.library.bogazici.edu.tr/handle/123456789/19078
dc.publisherThesis (Ph.D.)-Bogazici University. Institute of Biomedical Engineering, 2013.
dc.relationIncludes appendices.
dc.relationIncludes appendices.
dc.subject.lcshDiffusion tensor imaging.
dc.subject.lcshTensor algebra.
dc.subject.lcshSelf-organizing maps.
dc.titleDiffusion tensor fiber tracking with self-organizing feature maps

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