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Automated white matter fiber tract identification in patients with brain tumors

Authors :
Lauren J. O'Donnell
Laura Rigolo
Walid Ibn Essayed
Carl-Fredrik Westin
Fan Zhang
Angela Albi
Isaiah Norton
Prashin Unadkat
William M. Wells
Pelin Aksit Ciris
Alexandra J. Golby
Antonio Meola
Yogesh Rathi
Yannick Suter
Pegah Kahali
Olutayo Olubiyi
Source :
NeuroImage : Clinical, NeuroImage: Clinical, Vol 13, Iss C, Pp 138-153 (2017)
Publication Year :
2016

Abstract

We propose a method for the automated identification of key white matter fiber tracts for neurosurgical planning, and we apply the method in a retrospective study of 18 consecutive neurosurgical patients with brain tumors. Our method is designed to be relatively robust to challenges in neurosurgical tractography, which include peritumoral edema, displacement, and mass effect caused by mass lesions. The proposed method has two parts. First, we learn a data-driven white matter parcellation or fiber cluster atlas using groupwise registration and spectral clustering of multi-fiber tractography from healthy controls. Key fiber tract clusters are identified in the atlas. Next, patient-specific fiber tracts are automatically identified using tractography-based registration to the atlas and spectral embedding of patient tractography. Results indicate good generalization of the data-driven atlas to patients: 80% of the 800 fiber clusters were identified in all 18 patients, and 94% of the 800 fiber clusters were found in 16 or more of the 18 patients. Automated subject-specific tract identification was evaluated by quantitative comparison to subject-specific motor and language functional MRI, focusing on the arcuate fasciculus (language) and corticospinal tracts (motor), which were identified in all patients. Results indicate good colocalization: 89 of 95, or 94%, of patient-specific language and motor activations were intersected by the corresponding identified tract. All patient-specific activations were within 3mm of the corresponding language or motor tract. Overall, our results indicate the potential of an automated method for identifying fiber tracts of interest for neurosurgical planning, even in patients with mass lesions.<br />Highlights • Spectral clustering machine learning approach for white matter tract identification • Data-driven white matter parcellation learned from healthy subjects tractography • White matter parcellation applied to 18 consecutive patients with brain tumors • Arcuate fasciculus and corticospinal tracts identified in all patients • All tracts within 3 mm of corresponding patient-specific functional activations

Details

ISSN :
22131582
Volume :
13
Database :
OpenAIRE
Journal :
NeuroImage. Clinical
Accession number :
edsair.doi.dedup.....f15dceaef1d6ddd6b7e3d6d7e4c0bbcb