Predicting pain relief: Use of pre-surgical trigeminal nerve diffusion metrics in trigeminal neuralgia
Autor: | Karen D. Davis, David Qixiang Chen, Mojgan Hodaie, Peter Shih-Ping Hung, Jidan Zhong |
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Rok vydání: | 2017 |
Předmět: |
Male
Treatment response prediction Pain relief lcsh:RC346-429 Neurosurgical Procedures 030218 nuclear medicine & medical imaging 0302 clinical medicine Trigeminal neuralgia Pons (MVD) microvascular decompression (GKRS) Gamma Knife radiosurgery (DTI) diffusion tensor imaging (TN) trigeminal neuralgia (MD) mean diffusivity Multi-tensor tractography Regular Article Middle Aged 3. Good health Peripheral Diffusion Tensor Imaging Treatment Outcome Neurology Anesthesia lcsh:R858-859.7 Female Radiology (ROI) region of interest Tractography Adult medicine.medical_specialty Cognitive Neuroscience (FSPGR) fast spoiled gradient-echo lcsh:Computer applications to medicine. Medical informatics (XST) eXtended Streamline Tractography 03 medical and health sciences Discriminant function analysis Image Interpretation Computer-Assisted Fractional anisotropy medicine Humans Radiology Nuclear Medicine and imaging Trigeminal Nerve lcsh:Neurology. Diseases of the nervous system Aged Trigeminal nerve Surgical outcome Chronic facial pain business.industry (RD) radial diffusivity Trigeminal Neuralgia medicine.disease (AD) axial diffusivity (FA) fractional anisotropy Neurology (clinical) (MR) magnetic resonance business 030217 neurology & neurosurgery Diffusion MRI |
Zdroj: | NeuroImage : Clinical NeuroImage: Clinical, Vol 15, Iss, Pp 710-718 (2017) |
ISSN: | 2213-1582 |
Popis: | Trigeminal neuralgia (TN) is a chronic neuropathic facial pain disorder that commonly responds to surgery. A proportion of patients, however, do not benefit and suffer ongoing pain. There are currently no imaging tools that permit the prediction of treatment response. To address this paucity, we used diffusion tensor imaging (DTI) to determine whether pre-surgical trigeminal nerve microstructural diffusivities can prognosticate response to TN treatment. In 31 TN patients and 16 healthy controls, multi-tensor tractography was used to extract DTI-derived metrics—axial (AD), radial (RD), mean diffusivity (MD), and fractional anisotropy (FA)—from the cisternal segment, root entry zone and pontine segment of trigeminal nerves for false discovery rate-corrected Student's t-tests. Ipsilateral diffusivities were bootstrap resampled to visualize group-level diffusivity thresholds of long-term response. To obtain an individual-level statistical classifier of surgical response, we conducted discriminant function analysis (DFA) with the type of surgery chosen alongside ipsilateral measurements and ipsilateral/contralateral ratios of AD and RD from all regions of interest as prediction variables. Abnormal diffusivity in the trigeminal pontine fibers, demonstrated by increased AD, highlighted non-responders (n = 14) compared to controls. Bootstrap resampling revealed three ipsilateral diffusivity thresholds of response—pontine AD, MD, cisternal FA—separating 85% of non-responders from responders. DFA produced an 83.9% (71.0% using leave-one-out-cross-validation) accurate prognosticator of response that successfully identified 12/14 non-responders. Our study demonstrates that pre-surgical DTI metrics can serve as a highly predictive, individualized tool to prognosticate surgical response. We further highlight abnormal pontine segment diffusivities as key features of treatment non-response and confirm the axiom that central pain does not commonly benefit from peripheral treatments. Highlights • Pre-surgical trigeminal diffusivities are highly predictive of individual response. • Diffusivities were measured in pons, root entry zone and trigeminal nerve cisterns. • Non-responders have unique pontine trigeminal nerve microstructural abnormalities. • Responders, instead, have cisternal trigeminal nerve microstructural abnormalities. • A highly successful individual-level prognosticator of surgical response was created. |
Databáze: | OpenAIRE |
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