| Literature DB >> 30862937 |
H Le-Niculescu1, K Roseberry1, D F Levey1, J Rogers1, K Kosary1, S Prabha1, T Jones2, S Judd1, M A McCormick1, A R Wessel1, A Williams2, P L Phalen1, F Mamdani3, A Sequeira3, S M Kurian4, A B Niculescu5,6,7.
Abstract
The biological fingerprint of environmental adversity may be key to understanding health and disease, as it encompasses the damage induced as well as the compensatory reactions of the organism. Metabolic and hormonal changes may be an informative but incomplete window into the underlying biology. We endeavored to identify objective blood gene expression biomarkers for psychological stress, a subjective sensation with biological roots. To quantify the stress perception at a particular moment in time, we used a simple visual analog scale for life stress in psychiatric patients, a high-risk group. Then, using a stepwise discovery, prioritization, validation, and testing in independent cohort design, we were successful in identifying gene expression biomarkers that were predictive of high-stress states and of future psychiatric hospitalizations related to stress, more so when personalized by gender and diagnosis. One of the top biomarkers that survived discovery, prioritization, validation, and testing was FKBP5, a well-known gene involved in stress response, which serves as a de facto reassuring positive control. We also compared our biomarker findings with telomere length (TL), another well-established biological marker of psychological stress and show that newly identified predictive biomarkers such as NUB1, APOL3, MAD1L1, or NKTR are comparable or better state or trait predictors of stress than TL or FKBP5. Over half of the top predictive biomarkers for stress also had prior evidence of involvement in suicide, and the majority of them had evidence in other psychiatric disorders, providing a molecular underpinning for the effects of stress in those disorders. Some of the biomarkers are targets of existing drugs, of potential utility in patient stratification, and pharmacogenomics approaches. Based on our studies and analyses, the biomarkers with the best overall convergent functional evidence (CFE) for involvement in stress were FKBP5, DDX6, B2M, LAIR1, RTN4, and NUB1. Moreover, the biomarker gene expression signatures yielded leads for possible new drug candidates and natural compounds upon bioinformatics drug repurposing analyses, such as calcium folinate and betulin. Our work may lead to improved diagnosis and treatment for stress disorders such as PTSD, that result in decreased quality of life and adverse outcomes, including addictions, violence, and suicide.Entities:
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Year: 2019 PMID: 30862937 PMCID: PMC7192849 DOI: 10.1038/s41380-019-0370-z
Source DB: PubMed Journal: Mol Psychiatry ISSN: 1359-4184 Impact factor: 15.992
Fig. 1Steps 1–3: Discovery, prioritization and validation. a Cohorts used in study, depicting flow of discovery, prioritization, and validation of biomarkers from each step. b Discovery cohort longitudinal within-subject analysis. Phchp### is study ID for each subject. V# denotes visit number. c Discovery of possible subtypes of stress based on High Stress visits in the discovery cohort. Subjects were clustered using measures of mood and anxiety (from Simplified Affective State Scale (SASS)) [7], as well as psychosis (PANNS Positive). d Differential gene expression in the Discovery cohort—number of genes identified with differential expression (DE) and absent–present (AP) methods with an internal score of ≥2. Red—increased in expression in High Stress, blue—decreased in expression in High Stress. At the discovery step, probesets are identified based on their score for tracking stress with a maximum of internal points of 6 (33% (2 pt), 50% (4 pt) and 80% (6 pt)). e Prioritization with Convergent Functional Genomics (CFG) for prior evidence of involvement in stress. In the prioritization step, probesets are converted to their associated genes using Affymetrix annotation and GeneCards. Genes are prioritized and scored using CFG for stress evidence with a maximum of 12 external points. Genes scoring at least 6 points out of a maximum possible of 18 total internal and external scores points are carried to the validation step. f Validation in an independent cohort of psychiatric patients with clinically severe trait stress and high-state stress. In the validation step, biomarkers are assessed for stepwise change from the discovery groups of subjects with Low Stress, to High Stress, to Clinically Severe Stress, using analysis of variance. N = number of testing visits. Two hundred and thirty-two biomarkers were nominally significant, NUB1 and ASCC1 were the most significant increased and decreased biomarkers, respectively, and 1130 biomarkers were stepwise changed
Aggregate demographics
| Cohorts | Number of subjects | Gender | Diagnosis | Ethnicity | Age at the time of visit, mean (SD) | |
|---|---|---|---|---|---|---|
| Discovery | ||||||
Discovery cohort (within-subject changes in life stress VAS) Low life stress VAS ≤ 33 to high life stress VAS ≥ 67 Concordance with 1 other item (health stress, financial stress, social stress) | 36 (with 91 visits) | Male = 28 Female = 8 | BP 14 (38) MDD 7 (15) PSYCH 1 (3) PTSD 6 (16) SZ 6 (14) SZA 2 (5) | EA = 25 AA = 10 Hispanic = 1 | All = 49.8022 (10.3754) Low stress = 50.31 High stress = 49.30 | |
| Validation | ||||||
| Independent validation cohort (clinically severe stress PCL-C ≥ 50; life stress VAS ≥ 67) | 48 (75 visits) | Male = 35 Female = 13 | MDD = 13 BP = 8 SZ = 2 SZA = 7 PTSD = 13 MOOD = 4 | EA = 37 AA = 10 | 48.96 (8.4) | Discovery vs. validation 0.56523437 |
| Testing | ||||||
| Independent testing cohort for predicting state (high stress state life stress VAS ≥ 67 at the time of assessment) | 122 (258 visits) | Male = 95 Female = 27 | BP = 53 MDD = 24 SZA = 15 SZ = 17 PTSD = 9 MOOD = 1 PSYCH = 3 | EA = 89 AA = 31 Mixed = 1 Hispanic = 1 | All = 45.5 (9.93) Others = 46.2 High Stress = 44.03 | High stress ( |
| Independent testing cohort for predicting trait (future hospitalizations with stress in the first year following assessment) | 162 (398 visits) | Male = 144 Female = 18 | BP = 50 MDD = 27 SZA = 32 SZ = 39 PTSD = 8 MOOD = 3 PSYCH = 8 | EA = 101 AA = 58 Mixed = 1 Hispanic = 2 | All = 50.4 (8.19) Others = 48.6 Hosp with stress = 47.9 | Hosp with stress ( |
| Independent testing cohort for predicting trait (future hospitalizations with stress in all years following assessment) | 186 (474 visits) | Male = 166 Female = 20 | BP = 56 MDD = 30 SZA = 47 SZ = 39 PTSD = 8 MOOD = 3 PSYCH = 3 | EA = 119 AA = 64 Mixed = 1 Hispanic = 2 | All = 50.45 (8.86) Others = 50.55 Hosp with Stress = 50.12 | Hosp with stress ( |
BP bipolar, MDD depression, MOOD mood nos., SZ schizophrenia, SZA schizoaffective, PSYCH psychosis nos., PCL-C PTSD Checklist—Civilian Version, PTSD post-traumatic stress disorder, VAS visual analog scale, EA European Americans, AA African Americans
Convergent Functional Evidence (CFE) for best predictive biomarkers for stress (from Fig. 2)
| Gene symbol/gene name | Probesets | Step 1 | Step 2 | Step 3 | Step 4 | Step 4 | Step 4 | Step 5 | Step 6 | CFE Polyevidence Score |
|---|---|---|---|---|---|---|---|---|---|---|
| Discovery in blood | External CFG evidence for involvement in stress | Validation in blood | Best significant prediction of high stress state | Best significant prediction of first-year Hosp with stress | Best Significant predictions of all future Hosp with stress | Other psychiatric and related disorders evidence—change in same direction as stress | Pharmacogenomics drugs that modulate the biomarker in opposite direction to stress | |||
| (Direction of change) method/score/% | Score | ANOVA | ROC AUC/ | ROC AUC/ | OR/OR | |||||
| 6 pts | 12 pts | 6 pts | 8 pts All; 6 pts Gender; 4 pts Gender/Dx | 8 pts All; 6 pts Gender; 4 pts Gender/Dx | 8 pts All; 6 pts Gender; 4 pts Gender/Dx | 3 pts | 3 pts | |||
TL Telomere Length Reference marker from literature | NA | NA | 7 | Aging Alcohol Depression Mania Psychosis | Omega-3 fatty acids Lithium Olanzapine Mianserin | 25 | ||||
FKBP5 FK506 Binding Protein 5 | 224856_at | (D) DE/4 53.8% | 12 | Alcohol Anxiety BP Depression MDD Pain Psychosis Unipolar Depression Suicide | Mood stabilizers | 40 | ||||
DDX6 DEAD-Box Helicase 6 | 1562836_at | (I) DE/6 83.8% (I) AP/6 90.2% | 9 | Not stepwise | Alcohol BP Other substances/addictions MDD Yohimbine Suicide | 36 | ||||
B2M Beta-2-Microglobulin | 232311_at | (I) DE/6 91.2% | 5 | Not stepwise | Alcohol Aging Autism Eating disorder MDD Depression Pain Suicide | Omega-3 fatty acids, 4’-iodo-4’-deoxydoxorubicin | 35 | |||
LAIR1 Leukocyte Associated Immunoglobulin Like Receptor 1 | 210644_s_at | (D) DE/6 86.2% | 4 | Suicide | 35 | |||||
RTN4 Reticulon 4 | 1556049_at | (I) DE/4 54.4% | 9 | Not stepwise | Alcohol BP Suicide Pain | Omega-3 fatty acids Valproate | 35 | |||
NUB1 Negative Regulator Of Ubiquitin Like Proteins 1 | 1560108_at (1560109_s_at) | (I) DE/4 61.8% | 8 | Autism Suicide | Antipsychotics | 34 | ||||
CIRBP Cold Inducible RNA Binding Protein | 200811_at | (D) DE/4 69.2% | 4 | Autism SZ | 33 | |||||
CYP2E1 Cytochrome P450 Family 2 Subfamily E Member 1 | 209976_s_at | (I) DE/2 44.1% | 6 | Alcohol SZ Suicide | 33 | |||||
MAD1L1 MAD1 Mitotic Arrest Deficient Like 1 | 204857_at | (D) DE/4 72.3% | 2 | Autism BP Cocaine SZ | 33 | |||||
OAS1 2’-5’-Oligoadenylate Synthetase 1 | 202869_at | (D) DE/4 56.9% | 9 | 1.15E-01/2 Stepwise | Alcohol Alzheimer’s Panic disorder MDD | Mood stabilizers | 33 | |||
OXA1L OXA1L, Mitochondrial Inner Membrane Protein | 208717_at | (D) DE/4 56.9% | 6 | Autism BP Suicide SZ | 33 | |||||
CCL4 C-C Motif Chemokine Ligand 4 | 204103_at | (D) DE/6 96.9% | 2 | Not stepwise | Alcohol Depression MDD SZ | 31 | ||||
DTNBP1 Dystrobrevin Binding Protein 1 | 223446_s_at | (D) DE/6 93.8% | 4 | Not stepwise | Autism Intellect Methamphetamine Psychosis SZ BP MDD Suicide | 31 | ||||
SPON2 Spondin 2 | 218638_s_at | (D) DE/6 93.8% | 2 | Not stepwise | Autism BP Panic disorder SZ | 31 | ||||
ANK2 Ankyrin 2 | 202921_s_at | (I) DE/4 52.9% | 2 | Autism Alcohol BP Longevity ASD Chronic fatigue syndrome MDD Suicide SZ | Antidepressants | 30 | ||||
LAIR2 Leukocyte Associated Immunoglobulin Like Receptor 2 | 207509_s_at | (D) DE/6 98.5% | 0 | Not stepwise | Suicide | Antidepressants | 30 | |||
SUMO1 Small Ubiquitin-Like Modifier 1 | 208762_at | (D) DE/4 56.3% | 9 | Not stepwise | Aging BP SZ | 30 | ||||
MKL2 MKL1/Myocardin Like 2 | 1562497_at | (I) AP/4 60.8% | 2 | Autism SZ | 29 | |||||
DMGDH Dimethylglycine Dehydrogenase | 231591_at | (I) DE/2 45.6% | 4 | Delusion Suicide | 27 | |||||
N4BP2L2 NEDD4 Binding Protein 2 Like 2 | 214388_at | (I) DE/4 69.1% | 4 | BP MDD SZ Suicide | 27 | |||||
PCDHB6 Protocadherin Beta 6 | 239443_at | (I) DE/2 38.2% | 6 | Suicide | 27 | |||||
SNCA Synuclein Alpha | 215811_at | (D) AP/2 37.5% | 11 | Not stepwise | Alcohol Aggression Alzheimer’s BP MDD Methamphetamine Parkinson Suicide SZ | Omega-3 fatty acids Mood stabilizers | 27 | |||
GJB2 Gap Junction Protein Beta 2 | 223278_at | (I) DE/2 48.5% | 6 | MDD | Antipsychotics | 26 | ||||
HIF1A Hypoxia Inducible Factor 1 Alpha Subunit | 238869_at | (I) DE/4 54.4% | 4 | Alcohol Autism BP MDD Longevity Pain SZ | EZN 2968 | 26 | ||||
PSD3 Pleckstrin And Sec7 Domain Containing 3 | 218613_at | (D) AP/6 100% | 2 | Not stepwise | Autism Alcohol ASD BP SZ MDD Methamphetamine Chronic fatigue syndrome Suicide | Antipsychotics | 26 | |||
STX11 Syntaxin 11 | 210190_at | (D) DE/2 49.2% | 4.5 | Antidepressants Mood stabilizers | 25.5 | |||||
APOL3 Apolipoprotein L3 | 221087_s_at | (D) AP/4 50% | 2 | ADHD Suicide SZ | 25 | |||||
ELMO2 Engulfment And Cell Motility 2 | 220363_s_at | (D) DE/4 60.0% (D) AP/4 54.7% | 2 | Suicide | 25 | |||||
UBE2E2 Ubiquitin Conjugating Enzyme E2 E2 | 225651_at | (D) DE/4 53.8% | 4 | Psychosis | 25 | |||||
FKBP5 FK506 Binding Protein 5 | 224840_at | (D) DE/2 41.5% | 12 | Not stepwise | Alcohol Anxiety BP Depression MDD Pain Psychosis Unipolar Depression Suicide | Mood stabilizers Psychotherapy | 24 | |||
HLA-DRB1 Major Histocompatibility Complex, Class II, DR Beta 1 | 209312_x_at | (D) DE/2 41.5% | 4 | Alcohol BP Longevity Alzheimer’s disease SZ Pain Panic Disorder | Apolizumab | 24 | ||||
LCP2 Lymphocyte Cytosolic Protein 2 | 244251_at | (D) DE/4 53.8% | 3 | MDD | 24 | |||||
LRRC59 Leucine Rich Repeat Containing 59 | 222231_s_at | (D) DE/4 61.5% | 2 | SZ | Valproate | 24 | ||||
FOXK2 Forkhead Box K2 | 220696_at | (I) DE/4 58.8% (I) AP/4 72.5% | 2 | Alcohol Autism Delusions Hallucinations Suicide | 23 | |||||
HLA-B Major Histocompatibility Complex, Class I, B | 211911_x_at | (D) DE/4 52.3% | 3 | 23 | ||||||
NKTR Natural Killer Cell Triggering Receptor | 243055_at | (I) DE/4 50% (I) AP/2 43.1% | 4 | Alcohol BP MDD Suicide SZ | 23 | |||||
PLEKHA5 Pleckstrin Homology Domain Containing A5 | 239559_at | (I) DE/2 35.3% | 4 | BP Suicide | 23 | |||||
C1orf123 Chromosome 1 Open Reading Frame 123 | 203197_s_at | (D) DE/4 72.3% | 2 | Suicide | 21 | |||||
UQCC1 Ubiquinol-Cytochrome C Reductase Complex Assembly Factor 1 | 217935_s_at | (D) DE/2 38.5% | 4 | BP Suicide | 21 | |||||
PCBP2 Poly(RC) Binding Protein 2 | 237374_at | (I) DE/2 35.3% | 4.5 | 2.83E-02/4 Nominal | BP Suicide | 17.5 | ||||
DCTN5 Dynactin Subunit 5 | 209231_s_at | (D) DE/6 90.8% | 2 | Not stepwise | BP Suicide | 15 | ||||
LOC105378349 Uncharacterized LOC105378349 | 241143_at | (D) AP/6 90.6% | 0 | Not stepwise | 14 |
After Step 4 Testing in independent cohorts for state and trait predictions. Telomere length (TL) was chosen as a literature based positive control/comparator. FKBP5 is the gene with the most consistent evidence across all steps in our work and a de facto positive control based on its extensive prior evidence in the field. NUB1 has two different probesets. For Step 4 Predictions, C—cross-sectional (using levels from one visit), L—longitudinal (using levels and slopes from multiple visits). In All, by Gender, and personalized by Gender and Diagnosis (Gender/Dx). Underlined—best predictor category as depicted in Fig. 2
(D)- decreased in expression in high stress; (I)-increased in high stress. DE differential expression, ANOVA analysis of variance, AP absent/present, NS non-stepwise in validation, M males, F females, MDD depression, BP bipolar, ROC AUC area under the receiver-operating characteristic curve, SZ schizophrenia, SZA schizoaffective, OR odds ratio, PSYCHOSIS schizophrenia and schizoaffective combined, PTSD post-traumatic stress disorder
**Significant after Bonferroni correction for the number of biomarkers tested for predictive ability
Fig. 2Best predictive biomarkers. From among top candidate biomarkers (n = 285) from Steps 1–3 (Discovery—39, Prioritization—21, Validation—232 bolded). Bar graph shows best predictive biomarkers in each group. *Nominally significant for predictions p < 0.05. **Bonferroni significant for the 285 biomarkers tested. Table underneath the figures displays the actual number of biomarkers for each group whose area under the receiver-operating characteristic curve p values (a, b) and Cox odds ratio p values (c) are at least nominally significant. Some gender and diagnosis groups are missing from the graph as they did not have any significant biomarkers. Cross-sectional is based on levels at one visit. Longitudinal is based on levels at multiple visits (integrates levels at most recent visit, maximum levels, slope into most recent visit, and maximum slope). Dividing lines represent the cutoffs for a test performing at chance levels (white) and at the same level as the best biomarkers for all subjects in cross-sectional (gray) and longitudinal (black) based predictions. All biomarkers perform better than chance. Biomarkers performed better when personalized by gender and diagnosis
Biological pathway analyses
| DAVID GO functional annotation biological processes | KEGG pathways | Ingenuity pathways (fold change) | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| A. Pathways | # | Term | Count | % | Term | Count | % | Top canonical pathways | Overlap | |||
| 220 Stress genes ( | 1 | Antigen processing and presentation of exogenous peptide antigen via MHC class I, TAP-dependent | 8 | 3.7 | 9.30E-06 | Antigen processing and presentation | 8 | 3.7 | 9.80E-05 | Antigen presentation pathway | 1.71E-06 | 15.8% 6/38 |
| 2 | Proteasome-mediated ubiquitin-dependent protein catabolic process | 12 | 5.6 | 3.10E-05 | Viral myocarditis | 7 | 3.3 | 1.50E-04 | Natural killer cell signaling | 2.67E-05 | 6.6% 8/122 | |
| 3 | Negative regulation of T cell proliferation | 6 | 2.8 | 7.10E-05 | Lysosome | 9 | 4.2 | 3.60E-04 | Autoimmune thyroid disease signaling | 1.02E-04 | 10.4% 5/48 | |
| 4 | Protein K48-linked ubiquitination | 6 | 2.8 | 2.30E-04 | Epstein–Barr virus infection | 11 | 5.1 | 1.20E-03 | Graft-vs.-host disease signaling | 1.02E-04 | 10.4% 5/48 | |
| 5 | Antigen processing and presentation of peptide antigen via MHC class I | 5 | 2.3 | 4.10E-04 | Graft-vs.-host disease | 5 | 2.3 | 1.70E-03 | Phagosome maturation | 1.02E-04 | 5.4% 8/148 | |
For validated biomarkers (n = 232 probesets, 220 genes)
New drug discovery/repurposing leads
| A. CMAP analysis with nominally validated biomarkers (22 increased and 118 decreased were present in HG-U133A array used by Connectivity Map) | ||
|---|---|---|
| Rank | cmap name | Score |
| 6100 | −1 | |
| 6099 | proguanil | −0.991 |
| 6098 | hydroxyachillin | −0.96 |
| 6097 | Prestwick-682 | −0.95 |
| 6096 | levopropoxyphene | −0.949 |
| 6095 | −0.943 | |
| 6094 | ozagrel | −0.941 |
| 6093 | streptozocin | −0.938 |
| 6092 | cyclopenthiazide | −0.934 |
| 6091 | metformin | −0.93 |
| 6090 | −0.925 | |
| 6089 | −0.924 | |
| 6088 | diphenhydramine | −0.921 |
Connectivity Map [66] (CMAP) analysis—drugs that have opposite gene expression profile effects to the signature of our validated genes (A), and out of them, those that are also significant predictive biomarkers (B–D). A score of −1 indicates the perfect opposite match, i.e., the best potential therapeutic to decrease stress. Bold—top candidates. Bold and italic—natural compounds of interest. Bold and underlined—compounds known to modulate stress, which serve as reassuring positive controls