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Tytuł pozycji:

Machine phenotyping of cluster headache and its response to verapamil.

Tytuł:
Machine phenotyping of cluster headache and its response to verapamil.
Autorzy:
Tso AR; High-Dimensional Neurology Group, University College London Queen Square Institute of Neurology, London, UK.
Brudfors M; Wellcome Centre for Human Neuroimaging, University College London, London, UK.
Danno D; Headache and Facial Pain Group, University College London Queen Square Institute of Neurology, London, UK.
Grangeon L; Headache and Facial Pain Group, University College London Queen Square Institute of Neurology, London, UK.
Cheema S; Headache and Facial Pain Group, University College London Queen Square Institute of Neurology, London, UK.
Matharu M; Headache and Facial Pain Group, University College London Queen Square Institute of Neurology, London, UK.
Nachev P; High-Dimensional Neurology Group, University College London Queen Square Institute of Neurology, London, UK.
Źródło:
Brain : a journal of neurology [Brain] 2021 Mar 03; Vol. 144 (2), pp. 655-664.
Typ publikacji:
Journal Article; Research Support, Non-U.S. Gov't
Język:
English
Imprint Name(s):
Publication: Oxford : Oxford University Press
Original Publication: London.
MeSH Terms:
Brain/*pathology
Cluster Headache/*drug therapy
Cluster Headache/*pathology
Verapamil/*therapeutic use
Adult ; Aged ; Aged, 80 and over ; Brain/diagnostic imaging ; Cluster Headache/diagnostic imaging ; Female ; Humans ; Machine Learning ; Male ; Middle Aged ; Phenotype ; ROC Curve ; Treatment Outcome ; Young Adult
References:
Cephalalgia. 2006 Sep;26(9):1168-70. (PMID: 16919073)
Nat Rev Dis Primers. 2018 Mar 01;4:18006. (PMID: 29493566)
Lancet Psychiatry. 2016 Mar;3(3):243-50. (PMID: 26803397)
Pflugers Arch. 1995 Nov;431(1):10-9. (PMID: 8584405)
Neuron. 2018 Nov 21;100(4):977-993.e7. (PMID: 30473014)
Cephalalgia. 2017 Oct;37(11):1039-1050. (PMID: 27530226)
J Neurophysiol. 2011 Nov;106(5):2322-45. (PMID: 21795627)
Lancet Neurol. 2004 May;3(5):279-83. (PMID: 15099542)
Cereb Cortex. 2010 Apr;20(4):953-65. (PMID: 19684249)
IEEE Trans Pattern Anal Mach Intell. 2013 Aug;35(8):1798-828. (PMID: 23787338)
J Headache Pain. 2019 Sep 2;20(1):93. (PMID: 31477012)
Cephalalgia. 2018 Jan;38(1):1-211. (PMID: 29368949)
J Headache Pain. 2014 Nov 27;15:79. (PMID: 25430992)
Nat Med. 1999 Jul;5(7):836-8. (PMID: 10395332)
Neuroimage. 2017 Apr 15;150:112-118. (PMID: 28192274)
Front Neurol. 2018 Oct 26;9:908. (PMID: 30416482)
Brain Res. 1995 Oct 9;695(1):88-91. (PMID: 8574653)
Neurology. 2007 Aug 14;69(7):668-75. (PMID: 17698788)
J Physiol. 1979 Feb;287:1-14. (PMID: 430382)
Cell Rep. 2019 Dec 10;29(11):3367-3373.e4. (PMID: 31825821)
Cephalalgia. 2019 Sep;39(10):1298-1312. (PMID: 30917683)
Eur J Neurosci. 1992;4(4):302-317. (PMID: 12106357)
J Comp Neurol. 1990 Sep 1;299(1):106-22. (PMID: 1698835)
Neuroimage. 2005 Jul 1;26(3):839-51. (PMID: 15955494)
Grant Information:
213038/Z/18/Z United Kingdom WT_ Wellcome Trust
Contributed Indexing:
Keywords: brain imaging; cerebellum; cluster headache; representation learning; treatment outcome prediction
Substance Nomenclature:
CJ0O37KU29 (Verapamil)
Entry Date(s):
Date Created: 20201124 Date Completed: 20210419 Latest Revision: 20210419
Update Code:
20240105
PubMed Central ID:
PMC7940170
DOI:
10.1093/brain/awaa388
PMID:
33230532
Czasopismo naukowe
Cluster headache is characterized by recurrent, unilateral attacks of excruciating pain associated with ipsilateral cranial autonomic symptoms. Although a wide array of clinical, anatomical, physiological, and genetic data have informed multiple theories about the underlying pathophysiology, the lack of a comprehensive mechanistic understanding has inhibited, on the one hand, the development of new treatments and, on the other, the identification of features predictive of response to established ones. The first-line drug, verapamil, is found to be effective in only half of all patients, and after several weeks of dose escalation, rendering therapeutic selection both uncertain and slow. Here we use high-dimensional modelling of routinely acquired phenotypic and MRI data to quantify the predictability of verapamil responsiveness and to illuminate its neural dependants, across a cohort of 708 patients evaluated for cluster headache at the National Hospital for Neurology and Neurosurgery between 2007 and 2017. We derive a succinct latent representation of cluster headache from non-linear dimensionality reduction of structured clinical features, revealing novel phenotypic clusters. In a subset of patients, we show that individually predictive models based on gradient boosting machines can predict verapamil responsiveness from clinical (410 patients) and imaging (194 patients) features. Models combining clinical and imaging data establish the first benchmark for predicting verapamil responsiveness, with an area under the receiver operating characteristic curve of 0.689 on cross-validation (95% confidence interval: 0.651 to 0.710) and 0.621 on held-out data. In the imaged patients, voxel-based morphometry revealed a grey matter cluster in lobule VI of the cerebellum (-4, -66, -20) exhibiting enhanced grey matter concentrations in verapamil non-responders compared with responders (familywise error-corrected P = 0.008, 29 voxels). We propose a mechanism for the therapeutic effect of verapamil that draws on the neuroanatomy and neurochemistry of the identified region. Our results reveal previously unrecognized high-dimensional structure within the phenotypic landscape of cluster headache that enables prediction of treatment response with modest fidelity. An analogous approach applied to larger, globally representative datasets could facilitate data-driven redefinition of diagnostic criteria and stronger, more generalizable predictive models of treatment responsiveness.
(© The Author(s) (2020). Published by Oxford University Press on behalf of the Guarantors of Brain.)

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