Cargando…
Modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders
BACKGROUND: Diagnostic classification of central vs. peripheral etiologies in acute vestibular disorders remains a challenge in the emergency setting. Novel machine-learning methods may help to support diagnostic decisions. In the current study, we tested the performance of standard and machine-lear...
Autores principales: | , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Springer Berlin Heidelberg
2020
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7718180/ https://www.ncbi.nlm.nih.gov/pubmed/32529578 http://dx.doi.org/10.1007/s00415-020-09931-z |
_version_ | 1783619459483697152 |
---|---|
author | Ahmadi, Seyed-Ahmad Vivar, Gerome Navab, Nassir Möhwald, Ken Maier, Andreas Hadzhikolev, Hristo Brandt, Thomas Grill, Eva Dieterich, Marianne Jahn, Klaus Zwergal, Andreas |
author_facet | Ahmadi, Seyed-Ahmad Vivar, Gerome Navab, Nassir Möhwald, Ken Maier, Andreas Hadzhikolev, Hristo Brandt, Thomas Grill, Eva Dieterich, Marianne Jahn, Klaus Zwergal, Andreas |
author_sort | Ahmadi, Seyed-Ahmad |
collection | PubMed |
description | BACKGROUND: Diagnostic classification of central vs. peripheral etiologies in acute vestibular disorders remains a challenge in the emergency setting. Novel machine-learning methods may help to support diagnostic decisions. In the current study, we tested the performance of standard and machine-learning approaches in the classification of consecutive patients with acute central or peripheral vestibular disorders. METHODS: 40 Patients with vestibular stroke (19 with and 21 without acute vestibular syndrome (AVS), defined by the presence of spontaneous nystagmus) and 68 patients with peripheral AVS due to vestibular neuritis were recruited in the emergency department, in the context of the prospective EMVERT trial (EMergency VERTigo). All patients received a standardized neuro-otological examination including videooculography and posturography in the acute symptomatic stage and an MRI within 7 days after symptom onset. Diagnostic performance of state-of-the-art scores, such as HINTS (Head Impulse, gaze-evoked Nystagmus, Test of Skew) and ABCD(2) (Age, Blood, Clinical features, Duration, Diabetes), for the differentiation of vestibular stroke vs. peripheral AVS was compared to various machine-learning approaches: (i) linear logistic regression (LR), (ii) non-linear random forest (RF), (iii) artificial neural network, and (iv) geometric deep learning (Single/MultiGMC). A prospective classification was simulated by ten-fold cross-validation. We analyzed whether machine-estimated feature importances correlate with clinical experience. RESULTS: Machine-learning methods (e.g., MultiGMC) outperform univariate scores, such as HINTS or ABCD(2), for differentiation of all vestibular strokes vs. peripheral AVS (MultiGMC area-under-the-curve (AUC): 0.96 vs. HINTS/ABCD(2) AUC: 0.71/0.58). HINTS performed similarly to MultiGMC for vestibular stroke with AVS (AUC: 0.86), but more poorly for vestibular stroke without AVS (AUC: 0.54). Machine-learning models learn to put different weights on particular features, each of which is relevant from a clinical viewpoint. Established non-linear machine-learning methods like RF and linear methods like LR are less powerful classification models (AUC: 0.89 vs. 0.62). CONCLUSIONS: Established clinical scores (such as HINTS) provide a valuable baseline assessment for stroke detection in acute vestibular syndromes. In addition, machine-learning methods may have the potential to increase sensitivity and selectivity in the establishment of a correct diagnosis. |
format | Online Article Text |
id | pubmed-7718180 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Springer Berlin Heidelberg |
record_format | MEDLINE/PubMed |
spelling | pubmed-77181802020-12-11 Modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders Ahmadi, Seyed-Ahmad Vivar, Gerome Navab, Nassir Möhwald, Ken Maier, Andreas Hadzhikolev, Hristo Brandt, Thomas Grill, Eva Dieterich, Marianne Jahn, Klaus Zwergal, Andreas J Neurol Original Communication BACKGROUND: Diagnostic classification of central vs. peripheral etiologies in acute vestibular disorders remains a challenge in the emergency setting. Novel machine-learning methods may help to support diagnostic decisions. In the current study, we tested the performance of standard and machine-learning approaches in the classification of consecutive patients with acute central or peripheral vestibular disorders. METHODS: 40 Patients with vestibular stroke (19 with and 21 without acute vestibular syndrome (AVS), defined by the presence of spontaneous nystagmus) and 68 patients with peripheral AVS due to vestibular neuritis were recruited in the emergency department, in the context of the prospective EMVERT trial (EMergency VERTigo). All patients received a standardized neuro-otological examination including videooculography and posturography in the acute symptomatic stage and an MRI within 7 days after symptom onset. Diagnostic performance of state-of-the-art scores, such as HINTS (Head Impulse, gaze-evoked Nystagmus, Test of Skew) and ABCD(2) (Age, Blood, Clinical features, Duration, Diabetes), for the differentiation of vestibular stroke vs. peripheral AVS was compared to various machine-learning approaches: (i) linear logistic regression (LR), (ii) non-linear random forest (RF), (iii) artificial neural network, and (iv) geometric deep learning (Single/MultiGMC). A prospective classification was simulated by ten-fold cross-validation. We analyzed whether machine-estimated feature importances correlate with clinical experience. RESULTS: Machine-learning methods (e.g., MultiGMC) outperform univariate scores, such as HINTS or ABCD(2), for differentiation of all vestibular strokes vs. peripheral AVS (MultiGMC area-under-the-curve (AUC): 0.96 vs. HINTS/ABCD(2) AUC: 0.71/0.58). HINTS performed similarly to MultiGMC for vestibular stroke with AVS (AUC: 0.86), but more poorly for vestibular stroke without AVS (AUC: 0.54). Machine-learning models learn to put different weights on particular features, each of which is relevant from a clinical viewpoint. Established non-linear machine-learning methods like RF and linear methods like LR are less powerful classification models (AUC: 0.89 vs. 0.62). CONCLUSIONS: Established clinical scores (such as HINTS) provide a valuable baseline assessment for stroke detection in acute vestibular syndromes. In addition, machine-learning methods may have the potential to increase sensitivity and selectivity in the establishment of a correct diagnosis. Springer Berlin Heidelberg 2020-06-11 2020 /pmc/articles/PMC7718180/ /pubmed/32529578 http://dx.doi.org/10.1007/s00415-020-09931-z Text en © The Author(s) 2020 Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. |
spellingShingle | Original Communication Ahmadi, Seyed-Ahmad Vivar, Gerome Navab, Nassir Möhwald, Ken Maier, Andreas Hadzhikolev, Hristo Brandt, Thomas Grill, Eva Dieterich, Marianne Jahn, Klaus Zwergal, Andreas Modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders |
title | Modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders |
title_full | Modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders |
title_fullStr | Modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders |
title_full_unstemmed | Modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders |
title_short | Modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders |
title_sort | modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders |
topic | Original Communication |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7718180/ https://www.ncbi.nlm.nih.gov/pubmed/32529578 http://dx.doi.org/10.1007/s00415-020-09931-z |
work_keys_str_mv | AT ahmadiseyedahmad modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT vivargerome modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT navabnassir modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT mohwaldken modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT maierandreas modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT hadzhikolevhristo modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT brandtthomas modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT grilleva modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT dieterichmarianne modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT jahnklaus modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders AT zwergalandreas modernmachinelearningcansupportdiagnosticdifferentiationofcentralandperipheralacutevestibulardisorders |