Open Access
Open access
volume 11 issue 1 publication number 227

Utilization of machine learning for identifying symptom severity military-related PTSD subtypes and their biological correlates

Carole Siegel 1, 2
Eugene M. Laska 1, 2
林子强 Lin Ziqiang 1
Mu Xu 1
Duna Abu-Amara 1
Michelle K. Jeffers 1
Meng Qian 1
Nicholas Milton 1, 2
Janine D. Flory 3, 4
Rasha Hammamieh 5
Bernie J. Daigle 6
Aarti Gautam 5
Kelsey R Dean 7, 8
Victor I. Reus 9
O. Wolkowitz 9
Synthia H. Mellon 10
Kerry Ressler 11
Rachel Yehuda 3, 4
Kai Wang 12
Leroy Hood 12
Francis J Doyle 8
Marti Jett 5
Charles R. Marmar 1
Publication typeJournal Article
Publication date2021-04-20
scimago Q1
wos Q1
SJR2.453
CiteScore11.5
Impact factor6.2
ISSN21583188
Cellular and Molecular Neuroscience
Psychiatry and Mental health
Biological Psychiatry
Abstract
We sought to find clinical subtypes of posttraumatic stress disorder (PTSD) in veterans 6–10 years post-trauma exposure based on current symptom assessments and to examine whether blood biomarkers could differentiate them. Samples were males deployed to Iraq and Afghanistan studied by the PTSD Systems Biology Consortium: a discovery sample of 74 PTSD cases and 71 healthy controls (HC), and a validation sample of 26 PTSD cases and 36 HC. A machine learning method, random forests (RF), in conjunction with a clustering method, partitioning around medoids, were used to identify subtypes derived from 16 self-report and clinician assessment scales, including the clinician-administered PTSD scale for DSM-IV (CAPS). Two subtypes were identified, designated S1 and S2, differing on mean current CAPS total scores: S2 = 75.6 (sd 14.6) and S1 = 54.3 (sd 6.6). S2 had greater symptom severity scores than both S1 and HC on all scale items. The mean first principal component score derived from clinical summary scales was three times higher in S2 than in S1. Distinct RFs were grown to classify S1 and S2 vs. HCs and vs. each other on multi-omic blood markers feature classes of current medical comorbidities, neurocognitive functioning, demographics, pre-military trauma, and psychiatric history. Among these classes, in each RF intergroup comparison of S1, S2, and HC, multi-omic biomarkers yielded the highest AUC-ROCs (0.819–0.922); other classes added little to further discrimination of the subtypes. Among the top five biomarkers in each of these RFs were methylation, micro RNA, and lactate markers, suggesting their biological role in symptom severity.
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GOST Copy
Siegel C. et al. Utilization of machine learning for identifying symptom severity military-related PTSD subtypes and their biological correlates // Translational Psychiatry. 2021. Vol. 11. No. 1. 227
GOST all authors (up to 50) Copy
Siegel C., Laska E. M., Lin Ziqiang 林., Xu M., Abu-Amara D., Jeffers M. K., Qian M., Milton N., Flory J. D., Hammamieh R., Daigle B. J., Gautam A., Dean K. R., Reus V. I., Wolkowitz O., Mellon S. H., Ressler K., Yehuda R., Wang K., Hood L., Doyle F. J., Jett M., Marmar C. R. Utilization of machine learning for identifying symptom severity military-related PTSD subtypes and their biological correlates // Translational Psychiatry. 2021. Vol. 11. No. 1. 227
RIS |
Cite this
RIS Copy
TY - JOUR
DO - 10.1038/s41398-021-01324-8
UR - https://doi.org/10.1038/s41398-021-01324-8
TI - Utilization of machine learning for identifying symptom severity military-related PTSD subtypes and their biological correlates
T2 - Translational Psychiatry
AU - Siegel, Carole
AU - Laska, Eugene M.
AU - Lin Ziqiang, 林子强
AU - Xu, Mu
AU - Abu-Amara, Duna
AU - Jeffers, Michelle K.
AU - Qian, Meng
AU - Milton, Nicholas
AU - Flory, Janine D.
AU - Hammamieh, Rasha
AU - Daigle, Bernie J.
AU - Gautam, Aarti
AU - Dean, Kelsey R
AU - Reus, Victor I.
AU - Wolkowitz, O.
AU - Mellon, Synthia H.
AU - Ressler, Kerry
AU - Yehuda, Rachel
AU - Wang, Kai
AU - Hood, Leroy
AU - Doyle, Francis J
AU - Jett, Marti
AU - Marmar, Charles R.
PY - 2021
DA - 2021/04/20
PB - Springer Nature
IS - 1
VL - 11
PMID - 33879773
SN - 2158-3188
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2021_Siegel,
author = {Carole Siegel and Eugene M. Laska and 林子强 Lin Ziqiang and Mu Xu and Duna Abu-Amara and Michelle K. Jeffers and Meng Qian and Nicholas Milton and Janine D. Flory and Rasha Hammamieh and Bernie J. Daigle and Aarti Gautam and Kelsey R Dean and Victor I. Reus and O. Wolkowitz and Synthia H. Mellon and Kerry Ressler and Rachel Yehuda and Kai Wang and Leroy Hood and Francis J Doyle and Marti Jett and Charles R. Marmar},
title = {Utilization of machine learning for identifying symptom severity military-related PTSD subtypes and their biological correlates},
journal = {Translational Psychiatry},
year = {2021},
volume = {11},
publisher = {Springer Nature},
month = {apr},
url = {https://doi.org/10.1038/s41398-021-01324-8},
number = {1},
pages = {227},
doi = {10.1038/s41398-021-01324-8}
}