Literature DB >> 27982771

Comparison of probabilistic and deterministic fiber tracking of cranial nerves.

Amir Zolal1, Stephan B Sobottka1, Dino Podlesek1, Jennifer Linn2, Bernhard Rieger1, Tareq A Juratli1, Gabriele Schackert1, Hagen H Kitzler2.   

Abstract

OBJECTIVE The depiction of cranial nerves (CNs) using diffusion tensor imaging (DTI) is of great interest in skull base tumor surgery and DTI used with deterministic tracking methods has been reported previously. However, there are still no good methods usable for the elimination of noise from the resulting depictions. The authors have hypothesized that probabilistic tracking could lead to more accurate results, because it more efficiently extracts information from the underlying data. Moreover, the authors have adapted a previously described technique for noise elimination using gradual threshold increases to probabilistic tracking. To evaluate the utility of this new approach, a comparison is provided with this work between the gradual threshold increase method in probabilistic and deterministic tracking of CNs. METHODS Both tracking methods were used to depict CNs II, III, V, and the VII+VIII bundle. Depiction of 240 CNs was attempted with each of the above methods in 30 healthy subjects, which were obtained from 2 public databases: the Kirby repository (KR) and Human Connectome Project (HCP). Elimination of erroneous fibers was attempted by gradually increasing the respective thresholds (fractional anisotropy [FA] and probabilistic index of connectivity [PICo]). The results were compared with predefined ground truth images based on corresponding anatomical scans. Two label overlap measures (false-positive error and Dice similarity coefficient) were used to evaluate the success of both methods in depicting the CN. Moreover, the differences between these parameters obtained from the KR and HCP (with higher angular resolution) databases were evaluated. Additionally, visualization of 10 CNs in 5 clinical cases was attempted with both methods and evaluated by comparing the depictions with intraoperative findings. RESULTS Maximum Dice similarity coefficients were significantly higher with probabilistic tracking (p < 0.001; Wilcoxon signed-rank test). The false-positive error of the last obtained depiction was also significantly lower in probabilistic than in deterministic tracking (p < 0.001). The HCP data yielded significantly better results in terms of the Dice coefficient in probabilistic tracking (p < 0.001, Mann-Whitney U-test) and in deterministic tracking (p = 0.02). The false-positive errors were smaller in HCP data in deterministic tracking (p < 0.001) and showed a strong trend toward significance in probabilistic tracking (p = 0.06). In the clinical cases, the probabilistic method visualized 7 of 10 attempted CNs accurately, compared with 3 correct depictions with deterministic tracking. CONCLUSIONS High angular resolution DTI scans are preferable for the DTI-based depiction of the cranial nerves. Probabilistic tracking with a gradual PICo threshold increase is more effective for this task than the previously described deterministic tracking with a gradual FA threshold increase and might represent a method that is useful for depicting cranial nerves with DTI since it eliminates the erroneous fibers without manual intervention.

Entities:  

Keywords:  CISS = constructive interference in steady state; CN = cranial nerve; DTI = diffusion tensor imaging; FA = fractional anisotropy; FLAIR = fluid attenuated inversion recovery; FMRIB = Oxford Centre for Functional MRI of the Brain; FSL = FMRIB software library; HCP = Human Connectome Project; KR = Kirby repository; MPRAGE = magnetization prepared rapid gradient-echo; PICo = probabilistic index of connectivity; RESOLVE = readout segmentation of long variable echo-trains; ROI = region of interest; cranial nerves; diffusion tensor imaging; functional neurosurgery; probabilistic tracking; skull base tumors

Mesh:

Year:  2016        PMID: 27982771     DOI: 10.3171/2016.8.JNS16363

Source DB:  PubMed          Journal:  J Neurosurg        ISSN: 0022-3085            Impact factor:   5.115


  6 in total

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Authors:  Virendra R Mishra; Karthik R Sreenivasan; Xiaowei Zhuang; Zhengshi Yang; Dietmar Cordes; Sarah J Banks; Charles Bernick
Journal:  Hum Brain Mapp       Date:  2019-08-12       Impact factor: 5.038

2.  Prediction of trigeminal nerve position based on the main feeding artery in petroclival meningioma.

Authors:  Kazuhide Adachi; Mituhiro Hasegawa; Yuichi Hirose
Journal:  Neurosurg Rev       Date:  2020-05-18       Impact factor: 3.042

Review 3.  Recent advances in MRI of the head and neck, skull base and cranial nerves: new and evolving sequences, analyses and clinical applications.

Authors:  Philip Touska; Steve E J Connor
Journal:  Br J Radiol       Date:  2019-09-24       Impact factor: 3.039

4.  Creation of a novel trigeminal tractography atlas for automated trigeminal nerve identification.

Authors:  Fan Zhang; Guoqiang Xie; Laura Leung; Michael A Mooney; Lorenz Epprecht; Isaiah Norton; Yogesh Rathi; Ron Kikinis; Ossama Al-Mefty; Nikos Makris; Alexandra J Golby; Lauren J O'Donnell
Journal:  Neuroimage       Date:  2020-06-20       Impact factor: 6.556

5.  Comparison of multiple tractography methods for reconstruction of the retinogeniculate visual pathway using diffusion MRI.

Authors:  Jianzhong He; Fan Zhang; Guoqiang Xie; Shun Yao; Yuanjing Feng; Dhiego C A Bastos; Yogesh Rathi; Nikos Makris; Ron Kikinis; Alexandra J Golby; Lauren J O'Donnell
Journal:  Hum Brain Mapp       Date:  2021-05-12       Impact factor: 5.399

6.  Automatic oculomotor nerve identification based on data-driven fiber clustering.

Authors:  Jiahao Huang; Mengjun Li; Qingrun Zeng; Lei Xie; Jianzhong He; Ge Chen; Jiantao Liang; Mingchu Li; Yuanjing Feng
Journal:  Hum Brain Mapp       Date:  2022-01-29       Impact factor: 5.038

  6 in total

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