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Classifying migraine using PET compressive big data analytics of brain’s μ-opioid and D2/D3 dopamine neurotransmission

Introduction: Migraine is a common and debilitating pain disorder associated with dysfunction of the central nervous system. Advanced magnetic resonance imaging (MRI) studies have reported relevant pathophysiologic states in migraine. However, its molecular mechanistic processes are still poorly und...

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Autores principales: Marino, Simeone, Jassar, Hassan, Kim, Dajung J., Lim, Manyoel, Nascimento, Thiago D., Dinov, Ivo D., Koeppe, Robert A., DaSilva, Alexandre F.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10294712/
https://www.ncbi.nlm.nih.gov/pubmed/37383727
http://dx.doi.org/10.3389/fphar.2023.1173596
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author Marino, Simeone
Jassar, Hassan
Kim, Dajung J.
Lim, Manyoel
Nascimento, Thiago D.
Dinov, Ivo D.
Koeppe, Robert A.
DaSilva, Alexandre F.
author_facet Marino, Simeone
Jassar, Hassan
Kim, Dajung J.
Lim, Manyoel
Nascimento, Thiago D.
Dinov, Ivo D.
Koeppe, Robert A.
DaSilva, Alexandre F.
author_sort Marino, Simeone
collection PubMed
description Introduction: Migraine is a common and debilitating pain disorder associated with dysfunction of the central nervous system. Advanced magnetic resonance imaging (MRI) studies have reported relevant pathophysiologic states in migraine. However, its molecular mechanistic processes are still poorly understood in vivo. This study examined migraine patients with a novel machine learning (ML) method based on their central μ-opioid and dopamine D2/D3 profiles, the most critical neurotransmitters in the brain for pain perception and its cognitive-motivational interface. Methods: We employed compressive Big Data Analytics (CBDA) to identify migraineurs and healthy controls (HC) in a large positron emission tomography (PET) dataset. 198 PET volumes were obtained from 38 migraineurs and 23 HC during rest and thermal pain challenge. 61 subjects were scanned with the selective μ-opioid receptor (μOR) radiotracer [(11)C]Carfentanil, and 22 with the selective dopamine D2/D3 receptor (DOR) radiotracer [(11)C]Raclopride. PET scans were recast into a 1D array of 510,340 voxels with spatial and intensity filtering of non-displaceable binding potential (BP(ND)), representing the receptor availability level. We then performed data reduction and CBDA to power rank the predictive brain voxels. Results: CBDA classified migraineurs from HC with accuracy, sensitivity, and specificity above 90% for whole-brain and region-of-interest (ROI) analyses. The most predictive ROIs for μOR were the insula (anterior), thalamus (pulvinar, medial-dorsal, and ventral lateral/posterior nuclei), and the putamen. The latter, putamen (anterior), was also the most predictive for migraine regarding DOR D2/D3 BP(ND) levels. Discussion: CBDA of endogenous μ-opioid and D2/D3 dopamine dysfunctions in the brain can accurately identify a migraine patient based on their receptor availability across key sensory, motor, and motivational processing regions. Our ML-based findings in the migraineur’s brain neurotransmission partly explain the severe impact of migraine suffering and associated neuropsychiatric comorbidities.
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spelling pubmed-102947122023-06-28 Classifying migraine using PET compressive big data analytics of brain’s μ-opioid and D2/D3 dopamine neurotransmission Marino, Simeone Jassar, Hassan Kim, Dajung J. Lim, Manyoel Nascimento, Thiago D. Dinov, Ivo D. Koeppe, Robert A. DaSilva, Alexandre F. Front Pharmacol Pharmacology Introduction: Migraine is a common and debilitating pain disorder associated with dysfunction of the central nervous system. Advanced magnetic resonance imaging (MRI) studies have reported relevant pathophysiologic states in migraine. However, its molecular mechanistic processes are still poorly understood in vivo. This study examined migraine patients with a novel machine learning (ML) method based on their central μ-opioid and dopamine D2/D3 profiles, the most critical neurotransmitters in the brain for pain perception and its cognitive-motivational interface. Methods: We employed compressive Big Data Analytics (CBDA) to identify migraineurs and healthy controls (HC) in a large positron emission tomography (PET) dataset. 198 PET volumes were obtained from 38 migraineurs and 23 HC during rest and thermal pain challenge. 61 subjects were scanned with the selective μ-opioid receptor (μOR) radiotracer [(11)C]Carfentanil, and 22 with the selective dopamine D2/D3 receptor (DOR) radiotracer [(11)C]Raclopride. PET scans were recast into a 1D array of 510,340 voxels with spatial and intensity filtering of non-displaceable binding potential (BP(ND)), representing the receptor availability level. We then performed data reduction and CBDA to power rank the predictive brain voxels. Results: CBDA classified migraineurs from HC with accuracy, sensitivity, and specificity above 90% for whole-brain and region-of-interest (ROI) analyses. The most predictive ROIs for μOR were the insula (anterior), thalamus (pulvinar, medial-dorsal, and ventral lateral/posterior nuclei), and the putamen. The latter, putamen (anterior), was also the most predictive for migraine regarding DOR D2/D3 BP(ND) levels. Discussion: CBDA of endogenous μ-opioid and D2/D3 dopamine dysfunctions in the brain can accurately identify a migraine patient based on their receptor availability across key sensory, motor, and motivational processing regions. Our ML-based findings in the migraineur’s brain neurotransmission partly explain the severe impact of migraine suffering and associated neuropsychiatric comorbidities. Frontiers Media S.A. 2023-06-13 /pmc/articles/PMC10294712/ /pubmed/37383727 http://dx.doi.org/10.3389/fphar.2023.1173596 Text en Copyright © 2023 Marino, Jassar, Kim, Lim, Nascimento, Dinov, Koeppe and DaSilva. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Pharmacology
Marino, Simeone
Jassar, Hassan
Kim, Dajung J.
Lim, Manyoel
Nascimento, Thiago D.
Dinov, Ivo D.
Koeppe, Robert A.
DaSilva, Alexandre F.
Classifying migraine using PET compressive big data analytics of brain’s μ-opioid and D2/D3 dopamine neurotransmission
title Classifying migraine using PET compressive big data analytics of brain’s μ-opioid and D2/D3 dopamine neurotransmission
title_full Classifying migraine using PET compressive big data analytics of brain’s μ-opioid and D2/D3 dopamine neurotransmission
title_fullStr Classifying migraine using PET compressive big data analytics of brain’s μ-opioid and D2/D3 dopamine neurotransmission
title_full_unstemmed Classifying migraine using PET compressive big data analytics of brain’s μ-opioid and D2/D3 dopamine neurotransmission
title_short Classifying migraine using PET compressive big data analytics of brain’s μ-opioid and D2/D3 dopamine neurotransmission
title_sort classifying migraine using pet compressive big data analytics of brain’s μ-opioid and d2/d3 dopamine neurotransmission
topic Pharmacology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10294712/
https://www.ncbi.nlm.nih.gov/pubmed/37383727
http://dx.doi.org/10.3389/fphar.2023.1173596
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