Cargando…

300 Improving the diagnosis and classification of facial pain conditions with MRI-based features

OBJECTIVES/GOALS: Trigeminal Neuralgia (TN) is a debilitating neuropathic condition characterized by electric-shock-like pain attacks. TN is considered a clinical diagnosis, and few proposed objective markers exist. This work studies the ability of advanced MRI techniques to diagnose and classify TN...

Descripción completa

Detalles Bibliográficos
Autores principales: Mulford, Kellen, Moen, Sean, Grande, Andrew W., Nixdorf, Donald R., Van de Moortele, Pierre-Francois
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cambridge University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9209086/
http://dx.doi.org/10.1017/cts.2022.165
_version_ 1784729861760221184
author Mulford, Kellen
Moen, Sean
Grande, Andrew W.
Nixdorf, Donald R.
Van de Moortele, Pierre-Francois
author_facet Mulford, Kellen
Moen, Sean
Grande, Andrew W.
Nixdorf, Donald R.
Van de Moortele, Pierre-Francois
author_sort Mulford, Kellen
collection PubMed
description OBJECTIVES/GOALS: Trigeminal Neuralgia (TN) is a debilitating neuropathic condition characterized by electric-shock-like pain attacks. TN is considered a clinical diagnosis, and few proposed objective markers exist. This work studies the ability of advanced MRI techniques to diagnose and classify TN. METHODS/STUDY POPULATION: Anatomical MRI data from patients undergoing radiosurgery to treat TN was collected. A custom deep-learning UNet algorithm was trained to segment trigeminal nerves from the pons to the anterior wall of Meckels cave using segments drawn by an expert in neuroanatomy. 108 radiomics features related to nerve shape, voxel intensity, and image texture were extracted from the segmented nerves. A 2 layer neural network was trained to distinguish TN affected nerves from the pain-free contralateral nerves. Feature selection was performed within a cross-validation scheme to prevent model overfitting. Mean model performance over the validation sets was used to estimate model generalizability. RESULTS/ANTICIPATED RESULTS: 134 patients and 268 nerves were included. The average number of years with TN was 8. The average validation set accuracy was 78% [range: 75-80%]. The average validation set sensitivity and specificity were 0.82 [range: 0.79-0.84] and 0.76 [range: 0.70-0.79]. 34% of patients had undergone a prior invasive procedure to treat their TN. To evaluate whether the model detected signal changes relating to the previous treatment, those patients were excluded and the model was retrained on the surgically naive patients. Model performance in a reduced cohort of patients was similar to the model trained on all the patients, with accuracy of 77% [range: 73-82%]. DISCUSSION/SIGNIFICANCE: This study suggests that radiomics features calculated from MRIs of trigeminal nerves correlate with anatomical changes in TN affected nerves. This technique will need to be verified in a larger, more heterogeneous cohort of TN patients with a range of MRI acquisition parameters.
format Online
Article
Text
id pubmed-9209086
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Cambridge University Press
record_format MEDLINE/PubMed
spelling pubmed-92090862022-07-01 300 Improving the diagnosis and classification of facial pain conditions with MRI-based features Mulford, Kellen Moen, Sean Grande, Andrew W. Nixdorf, Donald R. Van de Moortele, Pierre-Francois J Clin Transl Sci Valued Approaches OBJECTIVES/GOALS: Trigeminal Neuralgia (TN) is a debilitating neuropathic condition characterized by electric-shock-like pain attacks. TN is considered a clinical diagnosis, and few proposed objective markers exist. This work studies the ability of advanced MRI techniques to diagnose and classify TN. METHODS/STUDY POPULATION: Anatomical MRI data from patients undergoing radiosurgery to treat TN was collected. A custom deep-learning UNet algorithm was trained to segment trigeminal nerves from the pons to the anterior wall of Meckels cave using segments drawn by an expert in neuroanatomy. 108 radiomics features related to nerve shape, voxel intensity, and image texture were extracted from the segmented nerves. A 2 layer neural network was trained to distinguish TN affected nerves from the pain-free contralateral nerves. Feature selection was performed within a cross-validation scheme to prevent model overfitting. Mean model performance over the validation sets was used to estimate model generalizability. RESULTS/ANTICIPATED RESULTS: 134 patients and 268 nerves were included. The average number of years with TN was 8. The average validation set accuracy was 78% [range: 75-80%]. The average validation set sensitivity and specificity were 0.82 [range: 0.79-0.84] and 0.76 [range: 0.70-0.79]. 34% of patients had undergone a prior invasive procedure to treat their TN. To evaluate whether the model detected signal changes relating to the previous treatment, those patients were excluded and the model was retrained on the surgically naive patients. Model performance in a reduced cohort of patients was similar to the model trained on all the patients, with accuracy of 77% [range: 73-82%]. DISCUSSION/SIGNIFICANCE: This study suggests that radiomics features calculated from MRIs of trigeminal nerves correlate with anatomical changes in TN affected nerves. This technique will need to be verified in a larger, more heterogeneous cohort of TN patients with a range of MRI acquisition parameters. Cambridge University Press 2022-04-19 /pmc/articles/PMC9209086/ http://dx.doi.org/10.1017/cts.2022.165 Text en © The Association for Clinical and Translational Science 2022 https://creativecommons.org/licenses/by-nc-nd/4.0/This is an Open Access article, distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivatives licence (https://creativecommons.org/licenses/by-nc-nd/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is unaltered and is properly cited. The written permission of Cambridge University Press must be obtained for commercial re-use or in order to create a derivative work.
spellingShingle Valued Approaches
Mulford, Kellen
Moen, Sean
Grande, Andrew W.
Nixdorf, Donald R.
Van de Moortele, Pierre-Francois
300 Improving the diagnosis and classification of facial pain conditions with MRI-based features
title 300 Improving the diagnosis and classification of facial pain conditions with MRI-based features
title_full 300 Improving the diagnosis and classification of facial pain conditions with MRI-based features
title_fullStr 300 Improving the diagnosis and classification of facial pain conditions with MRI-based features
title_full_unstemmed 300 Improving the diagnosis and classification of facial pain conditions with MRI-based features
title_short 300 Improving the diagnosis and classification of facial pain conditions with MRI-based features
title_sort 300 improving the diagnosis and classification of facial pain conditions with mri-based features
topic Valued Approaches
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9209086/
http://dx.doi.org/10.1017/cts.2022.165
work_keys_str_mv AT mulfordkellen 300improvingthediagnosisandclassificationoffacialpainconditionswithmribasedfeatures
AT moensean 300improvingthediagnosisandclassificationoffacialpainconditionswithmribasedfeatures
AT grandeandreww 300improvingthediagnosisandclassificationoffacialpainconditionswithmribasedfeatures
AT nixdorfdonaldr 300improvingthediagnosisandclassificationoffacialpainconditionswithmribasedfeatures
AT vandemoortelepierrefrancois 300improvingthediagnosisandclassificationoffacialpainconditionswithmribasedfeatures