Machine Learning Analysis of Blood microRNA Data in Major Depression: A Case-Control Study for Biomarker Discovery.
Affect
/ drug effects
Antidepressive Agents
/ therapeutic use
Biomarkers
/ blood
Case-Control Studies
Circulating MicroRNA
/ blood
Depressive Disorder, Major
/ blood
Humans
Predictive Value of Tests
RNA-Seq
Severity of Illness Index
Supervised Machine Learning
Treatment Outcome
Unsupervised Machine Learning
MicroRNA
diagnosis and treatment
machine learning
major depression
Journal
The international journal of neuropsychopharmacology
ISSN: 1469-5111
Titre abrégé: Int J Neuropsychopharmacol
Pays: England
ID NLM: 9815893
Informations de publication
Date de publication:
26 11 2020
26 11 2020
Historique:
received:
07
12
2019
revised:
14
04
2020
accepted:
26
04
2020
pubmed:
5
5
2020
medline:
22
9
2021
entrez:
5
5
2020
Statut:
ppublish
Résumé
There is a lack of reliable biomarkers for major depressive disorder (MDD) in clinical practice. However, several studies have shown an association between alterations in microRNA levels and MDD, albeit none of them has taken advantage of machine learning (ML). Supervised and unsupervised ML were applied to blood microRNA expression profiles from a MDD case-control dataset (n = 168) to distinguish between (1) case vs control status, (2) MDD severity levels defined based on the Montgomery-Asberg Depression Rating Scale, and (3) antidepressant responders vs nonresponders. MDD cases were distinguishable from healthy controls with an area-under-the receiver-operating characteristic curve (AUC) of 0.97 on testing data. High- vs low-severity cases were distinguishable with an AUC of 0.63. Unsupervised clustering of patients, before supervised ML analysis of each cluster for MDD severity, improved the performance of the classifiers (AUC of 0.70 for cluster 1 and 0.76 for cluster 2). Antidepressant responders could not be successfully separated from nonresponders, even after patient stratification by unsupervised clustering. However, permutation testing of the top microRNA, identified by the ML model trained to distinguish responders vs nonresponders in each of the 2 clusters, showed an association with antidepressant response. Each of these microRNA markers was only significant when comparing responders vs nonresponders of the corresponding cluster, but not using the heterogeneous unclustered patient set. Supervised and unsupervised ML analysis of microRNA may lead to robust biomarkers for monitoring clinical evolution and for more timely assessment of treatment in MDD patients.
Sections du résumé
BACKGROUND
There is a lack of reliable biomarkers for major depressive disorder (MDD) in clinical practice. However, several studies have shown an association between alterations in microRNA levels and MDD, albeit none of them has taken advantage of machine learning (ML).
METHOD
Supervised and unsupervised ML were applied to blood microRNA expression profiles from a MDD case-control dataset (n = 168) to distinguish between (1) case vs control status, (2) MDD severity levels defined based on the Montgomery-Asberg Depression Rating Scale, and (3) antidepressant responders vs nonresponders.
RESULTS
MDD cases were distinguishable from healthy controls with an area-under-the receiver-operating characteristic curve (AUC) of 0.97 on testing data. High- vs low-severity cases were distinguishable with an AUC of 0.63. Unsupervised clustering of patients, before supervised ML analysis of each cluster for MDD severity, improved the performance of the classifiers (AUC of 0.70 for cluster 1 and 0.76 for cluster 2). Antidepressant responders could not be successfully separated from nonresponders, even after patient stratification by unsupervised clustering. However, permutation testing of the top microRNA, identified by the ML model trained to distinguish responders vs nonresponders in each of the 2 clusters, showed an association with antidepressant response. Each of these microRNA markers was only significant when comparing responders vs nonresponders of the corresponding cluster, but not using the heterogeneous unclustered patient set.
CONCLUSIONS
Supervised and unsupervised ML analysis of microRNA may lead to robust biomarkers for monitoring clinical evolution and for more timely assessment of treatment in MDD patients.
Identifiants
pubmed: 32365192
pii: 5828985
doi: 10.1093/ijnp/pyaa029
pmc: PMC7689198
doi:
Substances chimiques
Antidepressive Agents
0
Biomarkers
0
Circulating MicroRNA
0
Types de publication
Journal Article
Research Support, Non-U.S. Gov't
Langues
eng
Sous-ensembles de citation
IM
Pagination
505-510Subventions
Organisme : CIHR
ID : FRN/MOP#111260
Pays : Canada
Organisme : CIHR
ID : FDN148374
Pays : Canada
Organisme : CIHR
ID : EGM141899
Pays : Canada
Informations de copyright
© The Author(s) 2020. Published by Oxford University Press on behalf of CINP.
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