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Understanding and predicting suicidality using a combined genomic and clinical risk assessment approach

Worldwide, one person dies every 40 seconds by suicide, a potentially preventable tragedy. A limiting step in our ability to intervene is the lack of objective, reliable predictors. We have previously provided proof of principle for the use of blood gene expression biomarkers to predict future hospi...

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Autores principales: Niculescu, A B, Levey, D F, Phalen, P L, Le-Niculescu, H, Dainton, H D, Jain, N, Belanger, E, James, A, George, S, Weber, H, Graham, D L, Schweitzer, R, Ladd, T B, Learman, R, Niculescu, E M, Vanipenta, N P, Khan, F N, Mullen, J, Shankar, G, Cook, S, Humbert, C, Ballew, A, Yard, M, Gelbart, T, Shekhar, A, Schork, N J, Kurian, S M, Sandusky, G E, Salomon, D R
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4759104/
https://www.ncbi.nlm.nih.gov/pubmed/26283638
http://dx.doi.org/10.1038/mp.2015.112
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author Niculescu, A B
Levey, D F
Phalen, P L
Le-Niculescu, H
Dainton, H D
Jain, N
Belanger, E
James, A
George, S
Weber, H
Graham, D L
Schweitzer, R
Ladd, T B
Learman, R
Niculescu, E M
Vanipenta, N P
Khan, F N
Mullen, J
Shankar, G
Cook, S
Humbert, C
Ballew, A
Yard, M
Gelbart, T
Shekhar, A
Schork, N J
Kurian, S M
Sandusky, G E
Salomon, D R
author_facet Niculescu, A B
Levey, D F
Phalen, P L
Le-Niculescu, H
Dainton, H D
Jain, N
Belanger, E
James, A
George, S
Weber, H
Graham, D L
Schweitzer, R
Ladd, T B
Learman, R
Niculescu, E M
Vanipenta, N P
Khan, F N
Mullen, J
Shankar, G
Cook, S
Humbert, C
Ballew, A
Yard, M
Gelbart, T
Shekhar, A
Schork, N J
Kurian, S M
Sandusky, G E
Salomon, D R
author_sort Niculescu, A B
collection PubMed
description Worldwide, one person dies every 40 seconds by suicide, a potentially preventable tragedy. A limiting step in our ability to intervene is the lack of objective, reliable predictors. We have previously provided proof of principle for the use of blood gene expression biomarkers to predict future hospitalizations due to suicidality, in male bipolar disorder participants. We now generalize the discovery, prioritization, validation, and testing of such markers across major psychiatric disorders (bipolar disorder, major depressive disorder, schizoaffective disorder, and schizophrenia) in male participants, to understand commonalities and differences. We used a powerful within-participant discovery approach to identify genes that change in expression between no suicidal ideation and high suicidal ideation states (n=37 participants out of a cohort of 217 psychiatric participants followed longitudinally). We then used a convergent functional genomics (CFG) approach with existing prior evidence in the field to prioritize the candidate biomarkers identified in the discovery step. Next, we validated the top biomarkers from the prioritization step for relevance to suicidal behavior, in a demographically matched cohort of suicide completers from the coroner's office (n=26). The biomarkers for suicidal ideation only are enriched for genes involved in neuronal connectivity and schizophrenia, the biomarkers also validated for suicidal behavior are enriched for genes involved in neuronal activity and mood. The 76 biomarkers that survived Bonferroni correction after validation for suicidal behavior map to biological pathways involved in immune and inflammatory response, mTOR signaling and growth factor regulation. mTOR signaling is necessary for the effects of the rapid-acting antidepressant agent ketamine, providing a novel biological rationale for its possible use in treating acute suicidality. Similarly, MAOB, a target of antidepressant inhibitors, was one of the increased biomarkers for suicidality. We also identified other potential therapeutic targets or biomarkers for drugs known to mitigate suicidality, such as omega-3 fatty acids, lithium and clozapine. Overall, 14% of the top candidate biomarkers also had evidence for involvement in psychological stress response, and 19% for involvement in programmed cell death/cellular suicide (apoptosis). It may be that in the face of adversity (stress), death mechanisms are turned on at a cellular (apoptosis) and organismal level. Finally, we tested the top increased and decreased biomarkers from the discovery for suicidal ideation (CADM1, CLIP4, DTNA, KIF2C), prioritization with CFG for prior evidence (SAT1, SKA2, SLC4A4), and validation for behavior in suicide completers (IL6, MBP, JUN, KLHDC3) steps in a completely independent test cohort of psychiatric participants for prediction of suicidal ideation (n=108), and in a future follow-up cohort of psychiatric participants (n=157) for prediction of psychiatric hospitalizations due to suicidality. The best individual biomarker across psychiatric diagnoses for predicting suicidal ideation was SLC4A4, with a receiver operating characteristic (ROC) area under the curve (AUC) of 72%. For bipolar disorder in particular, SLC4A4 predicted suicidal ideation with an AUC of 93%, and future hospitalizations with an AUC of 70%. SLC4A4 is involved in brain extracellular space pH regulation. Brain pH has been implicated in the pathophysiology of acute panic attacks. We also describe two new clinical information apps, one for affective state (simplified affective state scale, SASS) and one for suicide risk factors (Convergent Functional Information for Suicide, CFI-S), and how well they predict suicidal ideation across psychiatric diagnoses (AUC of 85% for SASS, AUC of 89% for CFI-S). We hypothesized a priori, based on our previous work, that the integration of the top biomarkers and the clinical information into a universal predictive measure (UP-Suicide) would show broad-spectrum predictive ability across psychiatric diagnoses. Indeed, the UP-Suicide was able to predict suicidal ideation across psychiatric diagnoses with an AUC of 92%. For bipolar disorder, it predicted suicidal ideation with an AUC of 98%, and future hospitalizations with an AUC of 94%. Of note, both types of tests we developed (blood biomarkers and clinical information apps) do not require asking the individual assessed if they have thoughts of suicide, as individuals who are truly suicidal often do not share that information with clinicians. We propose that the widespread use of such risk prediction tests as part of routine or targeted healthcare assessments will lead to early disease interception followed by preventive lifestyle modifications and proactive treatment.
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spelling pubmed-47591042016-03-04 Understanding and predicting suicidality using a combined genomic and clinical risk assessment approach Niculescu, A B Levey, D F Phalen, P L Le-Niculescu, H Dainton, H D Jain, N Belanger, E James, A George, S Weber, H Graham, D L Schweitzer, R Ladd, T B Learman, R Niculescu, E M Vanipenta, N P Khan, F N Mullen, J Shankar, G Cook, S Humbert, C Ballew, A Yard, M Gelbart, T Shekhar, A Schork, N J Kurian, S M Sandusky, G E Salomon, D R Mol Psychiatry Immediate Communication Worldwide, one person dies every 40 seconds by suicide, a potentially preventable tragedy. A limiting step in our ability to intervene is the lack of objective, reliable predictors. We have previously provided proof of principle for the use of blood gene expression biomarkers to predict future hospitalizations due to suicidality, in male bipolar disorder participants. We now generalize the discovery, prioritization, validation, and testing of such markers across major psychiatric disorders (bipolar disorder, major depressive disorder, schizoaffective disorder, and schizophrenia) in male participants, to understand commonalities and differences. We used a powerful within-participant discovery approach to identify genes that change in expression between no suicidal ideation and high suicidal ideation states (n=37 participants out of a cohort of 217 psychiatric participants followed longitudinally). We then used a convergent functional genomics (CFG) approach with existing prior evidence in the field to prioritize the candidate biomarkers identified in the discovery step. Next, we validated the top biomarkers from the prioritization step for relevance to suicidal behavior, in a demographically matched cohort of suicide completers from the coroner's office (n=26). The biomarkers for suicidal ideation only are enriched for genes involved in neuronal connectivity and schizophrenia, the biomarkers also validated for suicidal behavior are enriched for genes involved in neuronal activity and mood. The 76 biomarkers that survived Bonferroni correction after validation for suicidal behavior map to biological pathways involved in immune and inflammatory response, mTOR signaling and growth factor regulation. mTOR signaling is necessary for the effects of the rapid-acting antidepressant agent ketamine, providing a novel biological rationale for its possible use in treating acute suicidality. Similarly, MAOB, a target of antidepressant inhibitors, was one of the increased biomarkers for suicidality. We also identified other potential therapeutic targets or biomarkers for drugs known to mitigate suicidality, such as omega-3 fatty acids, lithium and clozapine. Overall, 14% of the top candidate biomarkers also had evidence for involvement in psychological stress response, and 19% for involvement in programmed cell death/cellular suicide (apoptosis). It may be that in the face of adversity (stress), death mechanisms are turned on at a cellular (apoptosis) and organismal level. Finally, we tested the top increased and decreased biomarkers from the discovery for suicidal ideation (CADM1, CLIP4, DTNA, KIF2C), prioritization with CFG for prior evidence (SAT1, SKA2, SLC4A4), and validation for behavior in suicide completers (IL6, MBP, JUN, KLHDC3) steps in a completely independent test cohort of psychiatric participants for prediction of suicidal ideation (n=108), and in a future follow-up cohort of psychiatric participants (n=157) for prediction of psychiatric hospitalizations due to suicidality. The best individual biomarker across psychiatric diagnoses for predicting suicidal ideation was SLC4A4, with a receiver operating characteristic (ROC) area under the curve (AUC) of 72%. For bipolar disorder in particular, SLC4A4 predicted suicidal ideation with an AUC of 93%, and future hospitalizations with an AUC of 70%. SLC4A4 is involved in brain extracellular space pH regulation. Brain pH has been implicated in the pathophysiology of acute panic attacks. We also describe two new clinical information apps, one for affective state (simplified affective state scale, SASS) and one for suicide risk factors (Convergent Functional Information for Suicide, CFI-S), and how well they predict suicidal ideation across psychiatric diagnoses (AUC of 85% for SASS, AUC of 89% for CFI-S). We hypothesized a priori, based on our previous work, that the integration of the top biomarkers and the clinical information into a universal predictive measure (UP-Suicide) would show broad-spectrum predictive ability across psychiatric diagnoses. Indeed, the UP-Suicide was able to predict suicidal ideation across psychiatric diagnoses with an AUC of 92%. For bipolar disorder, it predicted suicidal ideation with an AUC of 98%, and future hospitalizations with an AUC of 94%. Of note, both types of tests we developed (blood biomarkers and clinical information apps) do not require asking the individual assessed if they have thoughts of suicide, as individuals who are truly suicidal often do not share that information with clinicians. We propose that the widespread use of such risk prediction tests as part of routine or targeted healthcare assessments will lead to early disease interception followed by preventive lifestyle modifications and proactive treatment. Nature Publishing Group 2015-11 2015-08-18 /pmc/articles/PMC4759104/ /pubmed/26283638 http://dx.doi.org/10.1038/mp.2015.112 Text en Copyright © 2015 Macmillan Publishers Limited http://creativecommons.org/licenses/by-nc-nd/4.0/ This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivs 4.0 International License. The images or other third party material in this article are included in the article's Creative Commons license, unless indicated otherwise in the credit line; if the material is not included under the Creative Commons license, users will need to obtain permission from the license holder to reproduce the material. To view a copy of this license, visit http://creativecommons.org/licenses/by-nc-nd/4.0/
spellingShingle Immediate Communication
Niculescu, A B
Levey, D F
Phalen, P L
Le-Niculescu, H
Dainton, H D
Jain, N
Belanger, E
James, A
George, S
Weber, H
Graham, D L
Schweitzer, R
Ladd, T B
Learman, R
Niculescu, E M
Vanipenta, N P
Khan, F N
Mullen, J
Shankar, G
Cook, S
Humbert, C
Ballew, A
Yard, M
Gelbart, T
Shekhar, A
Schork, N J
Kurian, S M
Sandusky, G E
Salomon, D R
Understanding and predicting suicidality using a combined genomic and clinical risk assessment approach
title Understanding and predicting suicidality using a combined genomic and clinical risk assessment approach
title_full Understanding and predicting suicidality using a combined genomic and clinical risk assessment approach
title_fullStr Understanding and predicting suicidality using a combined genomic and clinical risk assessment approach
title_full_unstemmed Understanding and predicting suicidality using a combined genomic and clinical risk assessment approach
title_short Understanding and predicting suicidality using a combined genomic and clinical risk assessment approach
title_sort understanding and predicting suicidality using a combined genomic and clinical risk assessment approach
topic Immediate Communication
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4759104/
https://www.ncbi.nlm.nih.gov/pubmed/26283638
http://dx.doi.org/10.1038/mp.2015.112
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