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Examining differences in brain metabolism associated with childhood maltreatment and suicidal attempts in euthymic patients with bipolar disorder: a PET and machine learning study

Abstract

Objective:

Childhood maltreatment (CM) is a significant risk factor for the development and severity of bipolar disorder (BD) with increased risk of suicide attempts (SA). This study evaluated whether a machine learning algorithm could be trained to predict if a patient with BD has a history of CM or previous SA based on brain metabolism measured by positron emission tomography.

Methods:

Thirty-six euthymic patients diagnosed with BD type I, with and without a history of CM were assessed using the Childhood Trauma Questionnaire. Suicide attempts were assessed through the Mini International Neuropsychiatric Interview (MINI-Plus) and a semi-structured interview. Resting-state positron emission tomography with 18F-fluorodeoxyglucose was conducted, electing only grey matter voxels through the Statistical Parametric Mapping toolbox. Imaging analysis was performed using a supervised machine learning approach following Gaussian Process Classification.

Results:

Patients were divided into 18 participants with a history of CM and 18 participants without it, along with 18 individuals with previous SA and 18 individuals without such history. The predictions for CM and SA were not significant (accuracy = 41.67%; p = 0.879).

Conclusion:

Further investigation is needed to improve the accuracy of machine learning, as its predictive qualities could potentially be highly useful in determining histories and possible outcomes of high-risk psychiatric patients.

Bipolar disorder; childhood maltreatment; suicide attempt; 18F-FDG; positron emission tomography; machine learning


Introduction

Childhood maltreatment (CM) is a significant risk factor for the development and severity of bipolar disorder (BD) with increased risk of suicide attempts (SA).11. Fisher HL, Hosang GM. Childhood maltreatment and bipolar disorder: a critical review of the evidence. Mind Brain J Psychiatry. 2010;1:75-85.

2. Daruy-Filho L, Brietzke E, Lafer B, Grassi-Oliveira R. Childhood maltreatment and clinical outcomes of bipolar disorder. Acta Psychiatr Scand. 2011;124:427-34.

3. Duarte DG, Neves MC, Albuquerque MR, Neves FS, Corrêa H. Sexual abuse and suicide attempt in bipolar type I patients. Rev Bras Psiquiatr. 2015;37:180-2.
-44. Aas M, Henry C, Andreassen OA, Bellivier F, Melle I, Etain B. The role of childhood trauma in bipolar disorders. Int J Bipolar Disord. 2016;4:2. Identifying risk of suicide in patients with BD is of critical importance because the SA rate in patients with BD is approximately 10-20 times higher than in the general population.22. Daruy-Filho L, Brietzke E, Lafer B, Grassi-Oliveira R. Childhood maltreatment and clinical outcomes of bipolar disorder. Acta Psychiatr Scand. 2011;124:427-34. Patients with BD who experienced CM may be at an even higher risk of suicide. When compared to patients with BD who did not experience CM, those who were maltreated are 1.5 to 3.4 times as likely to attempt suicide, depending on the type of CM experienced.55. Garno JL, Goldberg JF, Ramirez PM, Ritzler BA. Impact of childhood abuse on the clinical course of bipolar disorder. Br J Psychiatry. 2005;186:121-5.

Despite the prevalence of SA in patients with a history of CM, evidence suggests that healthcare professionals often fail to identify cases of CM. A recent review found that less than one-third (28%) of CM cases had been documented in the patients’ medical records.66. Read J, Harper D, Tucker I, Kennedy A. Do adult mental health services identify child abuse and neglect? A systematic review. Int J Ment Health Nurs. 2018;27:7-19. Assessment forms, a common method for assessing patient history, are also not effective at identifying CM. The abuse/neglect sections of assessment forms are left blank in up to 54.9% of the cases.77. Sampson M, Read J. Are mental health staff getting better at asking about abuse and neglect? Int J Ment Health Nurs. 2017;26:95-104. These findings indicate a need for more accurate and objective assessments of patient histories, especially in the case of CM, which puts patients at a greater risk of suicide. Accurate assessments of CM and SA can then help inform treatment plans and improve patient outcomes.

Functional neuroimaging markers are promising candidates for the identification of CM and SA in patients with BD. The association between CM and SA in patients with BD suggests an underlying neurophysiological substrate. Prior research has shown that patients with BD and a history of CM present distinct structural and functional features in the frontal and limbic regions of the brain.88. Turecki G, Ernst C, Jollant F, Labonté B, Mechawar N. The neurodevelopmental origins of suicidal behavior. Trends Neurosci. 2012;35:14-23.,99. Duarte DG, Neves MC, Albuquerque MR, Souza-Duran FL, Busatto G, Corrêa H. Gray matter brain volumes in childhood-maltreated patients with bipolar disorder type I: a voxel-based morphometric study. J Affect Disord. 2016;197:74-80. Frontolimbic networks have also been shown to be disrupted in patients with BD who have attempted suicide.1010. Malhi GS, Bargh DM, Kuiper S, Coulston CM, Das P. Modeling bipolar disorder suicidality. Bipolar Disord. 2013;15:559-74.,1111. Duarte DGG, Neves MCL, Albuquerque MR, Turecki G, Ding Y, Souza-Duran FL, et al. Structural brain abnormalities in patients with type I bipolar disorder and suicidal behavior. Psychiatry Res Neuroimaging. 2017;265:9-17.

Positron emission tomography with 18F-fluorodeoxyglucose (18F-FDG PET) is a functional tool that measures glucose metabolism, an indirect indicator of neuronal and synaptic activity.1212. Attwell D, Iadecola C. The neural basis of functional brain imaging signals. Trends Neurosci. 2002;25:621-5.,1313. Sokoloff L. Relationships among local functional activity, energy metabolism, and blood flow in the central nervous system. Fed Proc. 1981;40:2311-6. Previous resting-state positron emission tomography (PET) studies in patients with depression and BD types I and II have shown increased amygdala and ventral-striatal-limbic activity compared to healthy controls.1414. Drevets WC, Price JL, Bardgett ME, Reich T, Todd RD, Raichle ME. Glucose metabolism in the amygdala in depression: relationship to diagnostic subtype and plasma cortisol levels. Pharmacol Biochem Behav. 2002;71:431-47.

Despite recent advances in the field, there is an unmet need on the understanding of 18F-FDG PET changes related to suicidality and CM in patients with BD. In terms of functional neuroimaging studies on CM and/or SA in patients with BD, the literature using 18F-FDG PET is scant and primarily based on functional magnetic resonance imaging (MRI) in patients with depression.1010. Malhi GS, Bargh DM, Kuiper S, Coulston CM, Das P. Modeling bipolar disorder suicidality. Bipolar Disord. 2013;15:559-74.,1414. Drevets WC, Price JL, Bardgett ME, Reich T, Todd RD, Raichle ME. Glucose metabolism in the amygdala in depression: relationship to diagnostic subtype and plasma cortisol levels. Pharmacol Biochem Behav. 2002;71:431-47.

15. Oquendo MA, Placidi GP, Malone KM, Campbell C, Keilp J, Brodsky B, et al. Positron emission tomography of regional brain metabolic responses to a serotonergic challenge and lethality of suicide attempts in major depression. Arch Gen Psychiatry. 2003;60:14-22.

16. Houenou J, Frommberger J, Carde S, Glasbrenner M, Diener C, Leboyer M, et al. Neuroimaging-based markers of bipolar disorder: evidence from two meta-analyses. J Affect Disord. 2011;132:344-55.
-1717. Sublette ME, Milak MS, Galfalvy HC, Oquendo MA, Malone KM, Mann JJ. Regional brain glucose uptake distinguishes suicide attempters from non-attempters in major depression. Arch Suicide Res. 2013;17:434-47. 18F-FDG PET has been shown to detect different regional patterns of glucose metabolic rates in the prefrontal and ventromedial regions of the brain of suicide attempters and non-attempters diagnosed with major depressive disorder, suggesting that similar success could be achieved in patients with BD.1717. Sublette ME, Milak MS, Galfalvy HC, Oquendo MA, Malone KM, Mann JJ. Regional brain glucose uptake distinguishes suicide attempters from non-attempters in major depression. Arch Suicide Res. 2013;17:434-47.

Machine learning (ML) algorithms have shown previous success in neuroimaging studies of psychiatric populations. A recent review found that various ML models used to identify patients with BD, as opposed to other disorders such as major depressive disorder, had accuracy levels between 64% and 98%.1818. Jan Z, Ai-Ansari N, Mousa O, Abd-Alrazaq A, Ahmed A, Alam T, et al. The role of machine learning in diagnosing bipolar disorder: scoping review. J Med Internet Res. 2021;23:e29749. However, most of the included studies used MRI data. Another study used ML along with MRI data to identify 13 gray matter regions that could be associated with childhood trauma.1919. Clausen AN, Aupperle RL, Yeh HW, Waller D, Payne J, Kuplicki R, et al. Machine learning analysis of the relationships between gray matter volume and childhood trauma in a transdiagnostic community-based sample. Biol Psychiatry Cogn Neurosci Neuroimaging. 2019;4:734-42. It is unknown whether this success will be reproduced when using 18F-FDG PET images.

The current study aimed to evaluate whether a ML algorithm based on Gaussian processes could be trained to predict if a patient with BD had a history of CM or previous SA. Our hypothesis was that distinctive patterns of brain metabolism identified by the algorithm could predict previous CM and SA.

Materials and methods

Participants

This study included 36 right-handed patients aged between 18 and 65 years and diagnosed with BD type I (BD-I) (14 men and 22 women). Mean age was 41.6 years (SD = 12.0). Participants were recruited at Núcleo de Transtornos Afetivos (a tertiary service specialized in affective disorders) of Universidade Federal de Minas Gerais, Belo Horizonte, MG, Brazil. None of the participants received any financial incentives. All enrolled individuals gave informed consent, and all procedures were approved by the local ethics committee (COEP-UFMG). The exclusion criteria were: [1] presence of active tobacco, alcohol, and drug use disorders in the past 12 months, [2] serious medical conditions that adversely affected the central nervous system, [3] current neurological disorders, and [4] lifetime history of head injuries.

Psychiatric evaluation

The assessment protocol has been fully detailed in previous studies.99. Duarte DG, Neves MC, Albuquerque MR, Souza-Duran FL, Busatto G, Corrêa H. Gray matter brain volumes in childhood-maltreated patients with bipolar disorder type I: a voxel-based morphometric study. J Affect Disord. 2016;197:74-80.,1111. Duarte DGG, Neves MCL, Albuquerque MR, Turecki G, Ding Y, Souza-Duran FL, et al. Structural brain abnormalities in patients with type I bipolar disorder and suicidal behavior. Psychiatry Res Neuroimaging. 2017;265:9-17. Briefly, diagnosis was established using a structured diagnostic interview (Mini International Neuropsychiatric Interview [MINI-Plus]) based on DSM-IV-TR. The sample only included patients with BD-I in euthymia, defined by scores under 8 in the Young Mania Rating Scale and the 21-item version of the Hamilton Depression Rating Scale. CM was categorically assessed using the Childhood Trauma Questionnaire (CTQ)2020. Grassi-Oliveira R, Stein LM, Pezzi JC. [Translation and content validation of the Childhood Trauma Questionnaire into Portuguese language]. Rev Saude Publica. 2006;40:249-55.; lifetime suicide history was verified using a semi-structured interview, the MINI-Plus section for suicide, and by reviewing medical records. All participants were under psychiatric treatment and on medication.

Image acquisition

Resting-state brain 18F-FDG PET/computed tomography (CT) images of patients were acquired in a GE Discovery 690 (GE Healthcare, Milwaukee, United States) PET/CT scanner. The participants had fasted for at least six hours before the assessment. After an intravenous bolus injection of 5.18 MBq/kg of 18F-FDG, the participants rested for 50 minutes in a quiet and dark room with minimum stimuli. PET brain images were subsequently acquired, with an acquisition time of 10 minutes, and were reconstructed in a 192x192x47 matrix using the Ordered Subsets Expectation Maximization (OSEM) algorithm with two iterations and 20 subsets. Attenuation correction was performed on the CT images.

Image processing

Before analysis, each PET image was spatially processed using the Statistical Parametric Mapping toolbox (SPM8, Wellcome Trust Centre for Neuroimaging, 2008), implemented within Matlab 7.12.0 (MathWorks, Natick, MA, United States). Images were manually reoriented, spatially normalized onto a custom 18F-FDG PET template in MNI space, smoothed with a 12 mm FWHM Gaussian kernel, and each voxel value was scaled by the global mean to account for differences in global signal between participants.2121. Friston KJ, Frith CD, Liddle PF, Dolan RJ, Lammertsma AA, Frackowiak RS. The relationship between global and local changes in PET scans. J Cereb Blood Flow Metab. 1990;10:458-66. To investigate neuronal and synaptic activity, a custom mask was used to select only grey matter voxels from the image, resulting in a sample of 158,899 voxels. The information extracted from each 18F-FDG PET scan was thus a single 158,899 × 1 data vector that represented each patients’ grey matter metabolism.

Data analysis

Imaging analysis was performed using a supervised ML approach. In general terms, supervised ML works by creating a model using matched input-output pairs (i.e., “learning” from data) and then applying this model to predict the output for new “unseen” inputs. By iteratively training and testing the model on different data subsets (cross-validation), it is possible to measure how well the model generalizes to new data (the primary outcome measure of ML). Cross-validation also reduces overfitting, which occurs when the algorithm starts “memorizing” training data instead of “learning” how to generalize from a trend.2222. Dietterich T. Overfitting and undercomputing in machine learning. ACM Comput Surv. 1995;27:326-7. ML is a multivariate approach at the single-subject level and therefore differs from Statistical Parametric Mapping, which is a mass univariate approach.2323. Friston KJ. Statistical parametric mapping: the analysis of functional brain images. Amsterdam: Elsevier/Academic Press; 2007. ML is especially useful when dealing with a high number of predictor variables, such as the tens of thousands of voxels in a PET image, in association with a much lower number of samples. Furthermore, it considers the distributed pattern of effects across the whole brain, accounting for correlations and complex interactions between metabolic activities at different brain regions.2424. Doyle OM, Mehta MA, Brammer MJ. The role of machine learning in neuroimaging for drug discovery and development. Psychopharmacology (Berl). 2015;232:4179-89.

Gaussian Process Classification (GPC)2525. Rasmussen CE, Williams CKI. Gaussian processes for machine learning. Adaptive computation and machine learning. Cambridge: MIT Press; 2006. was chosen as the ML method in this study because the output variable of interest was a group label. It then provided a principled, practical, and probabilistic approach in kernel machines, which are a class of algorithms for pattern analysis whose best-known member is the support vector machine (SVM). This approach has the advantage of creating maps of the most relevant features for prediction and has a few methods for feature selection based on Gaussian process regression.2525. Rasmussen CE, Williams CKI. Gaussian processes for machine learning. Adaptive computation and machine learning. Cambridge: MIT Press; 2006. This study used the GPC implementation available within the kernlab R library.2626. Karatzoglou A, Smola A, Hornik K, Zeileis A. kernlab – An S4 Package for Kernel Methods in R. J Stat Softw. 2004;11:1-20.

27. R Development Core Team. R: A Language and Environment for Statistical Computing. Vienna: R Foundation for Statistical Computing; 2013.
-2828. Williams CKI, Barber D. Bayesian classification with Gaussian processes. IEEE Trans Pattern Anal Mach Intell. 1998;20:1342-51. The kernel function was set to polynomial, and the initial noise variance and tolerance of termination criteria were both set to 0.001.

Two analyses were performed: whether GPC could classify patients with BD and a history of childhood trauma from patients with BD who did not have such a history; and whether GPC could classify patients with a history of SA from those who did not have such a history. Leave-one-out cross-validation (LOOCV) was performed to measure the methods of prediction accuracy because it is reliable (less biased), validated, and less computationally heavy.2929. Elisseeff A, Pontil M. Leave-one-out error and stability of learning algorithms with applications. J Mac Learn Res. 2002;6. This process involved removing one participant from each group and training the GPC algorithm on the remaining data. The obtained model was then used to predict the class of the removed participant. The process was repeated n times, where n is the number of individuals in each group. The results were arranged in a contingency table, and accuracy was calculated. If the GPC algorithm was able to accurately classify individuals into groups, this would suggest a distinct pattern of metabolic activity in the grey matter of patients with BD that differentiated the groups.

Additionally, descriptive statistics for sex and age were used to depict the characteristics of the sample. A Student’s t-test was carried out to assess age differences and a chi-square test was used to assess sex differences.

Results

A total of 36 patients with BD-I were examined in this study. Nine of them presented a history of CM and nine presented a history of SA. Nine participants presented both features, and nine participants had no history of CM or previous SA. Patients were divided in such a way that we were able to compare 18 individuals with a history of CM to 18 individuals without it, and 18 individuals with previous SA to 18 individuals without it.

Table 1 shows that there were no significant differences between groups regarding age, sex, years of study, comorbidities, total years of disease, and medication intake.

Table 1
Differences between groups with and without CM and SA

During the LOOCV, the ML algorithm was trained with the images of 36 individuals and their corresponding group labels and then predicted the labels of the removed pair based on their images. This was repeated 18 times so that all individuals had their labels predicted and predictions were compared to their actual labels in order to establish prediction accuracy. Regarding the prediction of childhood trauma history, the sensitivity and specificity of group trauma were 38.89% and 44.44%, respectively, and the accuracy was 41.67% (p = 0.879). Considering the prediction of previous SA, the sensitivity and specificity of the group with no SA were 44.44% and 38.89%, respectively; the accuracy was also 41.67% (p = 0.879). The classification of participants is shown in Figure 1.

Figure 1
Gaussian process classification between groups. A) CM vs. no CM; B) Previous SA vs. no previous SA. Classification into groups based on brain metabolism: A) classification among patients with BD and CM (blue) and those without CM (red); B) classification among patients with BD and SA (blue) and those without SA (red). CM = childhood maltreatment; SA = suicide attempts; BD = bipolar disorder.

Discussion

This study aimed to investigate whether functional changes in the rate of resting-state grey matter glucose metabolism could be linked to a previous history of CM and SA. An ML approach based on GPC was used due to its higher sensibility and its ability to detect small but consistent changes in glucose metabolism. Both analyses showed a low accuracy in differentiating groups. This finding infers that neither a history of CM nor previous SA seem to be related to consistent changes in the pattern of grey matter glucose metabolism in a magnitude that could be captured by the ML algorithm. Given that there was no statistical difference in the amount of medication taken by each group, psychiatric treatment does not seem to have influenced the results.

Some evidence explains the link between CM and suicidality mediated by epigenetic mechanisms,3030. Labonté B, Turecki G. Epigenetic effects of childhood adversity in the brain and suicide risk. In: Dwivedi Y, editor. The neurobiological basis of suicide. Boca Raton: CRC Press; 2012. p. 256-84. ultimately influencing phenotypes and generating disruptive ecophenotypes.3131. Teicher MH, Samson JA. Childhood maltreatment and psychopathology: a case for ecophenotypic variants as clinically and neurobiologically distinct subtypes. Am J Psychiatry. 2013;170:1114-33. The major challenge is to better understand the mechanisms behind the interaction between exposure to chronic maltreatment and gene expression, consequently affecting brain structure and functioning.3232. Dannlowski U, Stuhrmann A, Beutelmann V, Zwanzger P, Lenzen T, Grotegerd D, et al. Limbic scars: long-term consequences of childhood maltreatment revealed by functional and structural magnetic resonance imaging. Biol Psychiatry. 2012;71:286-93.,3333. Lutz PE, Turecki G. DNA methylation and childhood maltreatment: from animal models to human studies. Neuroscience. 2014;264:142-56. Some mechanisms involve the impairment of stress-response systems during early stages of child development, such as the hypothalamic-pituitary-adrenal axis, serotonin and catecholamine systems, and neurotrophic factors increasing the cellular allostatic load3434. Kapczinski F, Vieta E, Andreazza AC, Frey BN, Gomes FA, Tramontina J, et al. Allostatic load in bipolar disorder: implications for pathophysiology and treatment. Neurosci Biobehav Rev. 2008;32:675-92. and ultimately affecting neurodevelopment.3535. Danese A, McEwen BS. Adverse childhood experiences, allostasis, allostatic load, and age-related disease. Physiol Behav. 2012;106:29-39. It is uncertain whether these mechanisms have a neural signature in BD or are transdiagnostic, that is, have a common signature across psychiatric diagnoses.

Prior studies have found a structural alteration in the prefrontal cortex and thalamus related to CM and in the anterior cingulate cortex related to SA in patients with BD.1111. Duarte DGG, Neves MCL, Albuquerque MR, Turecki G, Ding Y, Souza-Duran FL, et al. Structural brain abnormalities in patients with type I bipolar disorder and suicidal behavior. Psychiatry Res Neuroimaging. 2017;265:9-17.,3636. Hozer F, Houenou J. Can neuroimaging disentangle bipolar disorder? J Affect Disord. 2016;195:199-214. A recent systematic review on neuroimaging studies of suicide behaviour3737. Domínguez-Baleón C, Gutiérrez-Mondragón LF, Campos-González AI, Rentería ME. Neuroimaging studies of suicidal Behavior and non-suicidal self-Injury in psychiatric patients: a systematic review. Front Psychiatry. 2018;9:500. and a study about CM9 also detailed similar findings.

The main limitations of the present study and explanations for our negative results rely on the small sample size and the dichotomous way of considering CM. The former reduces the power of the study; ML algorithms need a more substantial number of variables and sample size to better predict an outcome. The latter is based on current evidence suggesting that the total CTQ score should be evaluated as a continuous outcome rather than a dichotomous one. Five subscales can be used to delineate different impacts of specific forms of CM (emotional and physical neglect; sexual, physical, and emotional abuse); however, the total composite score has also shown a consistent effect on brain function in patients with BD and SA.

Given these results, it can be concluded that ML algorithms are currently unable to predict previous CM and SA using 18F-FDG PET images in small- to moderately sized samples. However, considering their success in other studies, ML algorithms have the potential to offer an alternative to clinician assessment and self-report forms, which have been shown to ignore many cases of CM. Future studies should focus on improving the accuracy of ML, as its application in patients with BD can help identify those at high risk of suicide and inform treatment plans. Approaches to this issue could include developing newer algorithms or identifying the optimal parameters for current models to maximize their effectiveness while being mindful of practical considerations.

Acknowledgments

This study was funded through grants from Instituto Nacional de Ciência e Tecnologia – Medicina Molecular (INCT-MM; FAPEMIG CBB-APQ-000075-09 and CNPq 573646/2008-2).

References

  • 1
    Fisher HL, Hosang GM. Childhood maltreatment and bipolar disorder: a critical review of the evidence. Mind Brain J Psychiatry. 2010;1:75-85.
  • 2
    Daruy-Filho L, Brietzke E, Lafer B, Grassi-Oliveira R. Childhood maltreatment and clinical outcomes of bipolar disorder. Acta Psychiatr Scand. 2011;124:427-34.
  • 3
    Duarte DG, Neves MC, Albuquerque MR, Neves FS, Corrêa H. Sexual abuse and suicide attempt in bipolar type I patients. Rev Bras Psiquiatr. 2015;37:180-2.
  • 4
    Aas M, Henry C, Andreassen OA, Bellivier F, Melle I, Etain B. The role of childhood trauma in bipolar disorders. Int J Bipolar Disord. 2016;4:2.
  • 5
    Garno JL, Goldberg JF, Ramirez PM, Ritzler BA. Impact of childhood abuse on the clinical course of bipolar disorder. Br J Psychiatry. 2005;186:121-5.
  • 6
    Read J, Harper D, Tucker I, Kennedy A. Do adult mental health services identify child abuse and neglect? A systematic review. Int J Ment Health Nurs. 2018;27:7-19.
  • 7
    Sampson M, Read J. Are mental health staff getting better at asking about abuse and neglect? Int J Ment Health Nurs. 2017;26:95-104.
  • 8
    Turecki G, Ernst C, Jollant F, Labonté B, Mechawar N. The neurodevelopmental origins of suicidal behavior. Trends Neurosci. 2012;35:14-23.
  • 9
    Duarte DG, Neves MC, Albuquerque MR, Souza-Duran FL, Busatto G, Corrêa H. Gray matter brain volumes in childhood-maltreated patients with bipolar disorder type I: a voxel-based morphometric study. J Affect Disord. 2016;197:74-80.
  • 10
    Malhi GS, Bargh DM, Kuiper S, Coulston CM, Das P. Modeling bipolar disorder suicidality. Bipolar Disord. 2013;15:559-74.
  • 11
    Duarte DGG, Neves MCL, Albuquerque MR, Turecki G, Ding Y, Souza-Duran FL, et al. Structural brain abnormalities in patients with type I bipolar disorder and suicidal behavior. Psychiatry Res Neuroimaging. 2017;265:9-17.
  • 12
    Attwell D, Iadecola C. The neural basis of functional brain imaging signals. Trends Neurosci. 2002;25:621-5.
  • 13
    Sokoloff L. Relationships among local functional activity, energy metabolism, and blood flow in the central nervous system. Fed Proc. 1981;40:2311-6.
  • 14
    Drevets WC, Price JL, Bardgett ME, Reich T, Todd RD, Raichle ME. Glucose metabolism in the amygdala in depression: relationship to diagnostic subtype and plasma cortisol levels. Pharmacol Biochem Behav. 2002;71:431-47.
  • 15
    Oquendo MA, Placidi GP, Malone KM, Campbell C, Keilp J, Brodsky B, et al. Positron emission tomography of regional brain metabolic responses to a serotonergic challenge and lethality of suicide attempts in major depression. Arch Gen Psychiatry. 2003;60:14-22.
  • 16
    Houenou J, Frommberger J, Carde S, Glasbrenner M, Diener C, Leboyer M, et al. Neuroimaging-based markers of bipolar disorder: evidence from two meta-analyses. J Affect Disord. 2011;132:344-55.
  • 17
    Sublette ME, Milak MS, Galfalvy HC, Oquendo MA, Malone KM, Mann JJ. Regional brain glucose uptake distinguishes suicide attempters from non-attempters in major depression. Arch Suicide Res. 2013;17:434-47.
  • 18
    Jan Z, Ai-Ansari N, Mousa O, Abd-Alrazaq A, Ahmed A, Alam T, et al. The role of machine learning in diagnosing bipolar disorder: scoping review. J Med Internet Res. 2021;23:e29749.
  • 19
    Clausen AN, Aupperle RL, Yeh HW, Waller D, Payne J, Kuplicki R, et al. Machine learning analysis of the relationships between gray matter volume and childhood trauma in a transdiagnostic community-based sample. Biol Psychiatry Cogn Neurosci Neuroimaging. 2019;4:734-42.
  • 20
    Grassi-Oliveira R, Stein LM, Pezzi JC. [Translation and content validation of the Childhood Trauma Questionnaire into Portuguese language]. Rev Saude Publica. 2006;40:249-55.
  • 21
    Friston KJ, Frith CD, Liddle PF, Dolan RJ, Lammertsma AA, Frackowiak RS. The relationship between global and local changes in PET scans. J Cereb Blood Flow Metab. 1990;10:458-66.
  • 22
    Dietterich T. Overfitting and undercomputing in machine learning. ACM Comput Surv. 1995;27:326-7.
  • 23
    Friston KJ. Statistical parametric mapping: the analysis of functional brain images. Amsterdam: Elsevier/Academic Press; 2007.
  • 24
    Doyle OM, Mehta MA, Brammer MJ. The role of machine learning in neuroimaging for drug discovery and development. Psychopharmacology (Berl). 2015;232:4179-89.
  • 25
    Rasmussen CE, Williams CKI. Gaussian processes for machine learning. Adaptive computation and machine learning. Cambridge: MIT Press; 2006.
  • 26
    Karatzoglou A, Smola A, Hornik K, Zeileis A. kernlab – An S4 Package for Kernel Methods in R. J Stat Softw. 2004;11:1-20.
  • 27
    R Development Core Team. R: A Language and Environment for Statistical Computing. Vienna: R Foundation for Statistical Computing; 2013.
  • 28
    Williams CKI, Barber D. Bayesian classification with Gaussian processes. IEEE Trans Pattern Anal Mach Intell. 1998;20:1342-51.
  • 29
    Elisseeff A, Pontil M. Leave-one-out error and stability of learning algorithms with applications. J Mac Learn Res. 2002;6.
  • 30
    Labonté B, Turecki G. Epigenetic effects of childhood adversity in the brain and suicide risk. In: Dwivedi Y, editor. The neurobiological basis of suicide. Boca Raton: CRC Press; 2012. p. 256-84.
  • 31
    Teicher MH, Samson JA. Childhood maltreatment and psychopathology: a case for ecophenotypic variants as clinically and neurobiologically distinct subtypes. Am J Psychiatry. 2013;170:1114-33.
  • 32
    Dannlowski U, Stuhrmann A, Beutelmann V, Zwanzger P, Lenzen T, Grotegerd D, et al. Limbic scars: long-term consequences of childhood maltreatment revealed by functional and structural magnetic resonance imaging. Biol Psychiatry. 2012;71:286-93.
  • 33
    Lutz PE, Turecki G. DNA methylation and childhood maltreatment: from animal models to human studies. Neuroscience. 2014;264:142-56.
  • 34
    Kapczinski F, Vieta E, Andreazza AC, Frey BN, Gomes FA, Tramontina J, et al. Allostatic load in bipolar disorder: implications for pathophysiology and treatment. Neurosci Biobehav Rev. 2008;32:675-92.
  • 35
    Danese A, McEwen BS. Adverse childhood experiences, allostasis, allostatic load, and age-related disease. Physiol Behav. 2012;106:29-39.
  • 36
    Hozer F, Houenou J. Can neuroimaging disentangle bipolar disorder? J Affect Disord. 2016;195:199-214.
  • 37
    Domínguez-Baleón C, Gutiérrez-Mondragón LF, Campos-González AI, Rentería ME. Neuroimaging studies of suicidal Behavior and non-suicidal self-Injury in psychiatric patients: a systematic review. Front Psychiatry. 2018;9:500.

Publication Dates

  • Publication in this collection
    12 May 2023
  • Date of issue
    Mar-Apr 2023

History

  • Received
    10 Aug 2022
  • Accepted
    14 Nov 2022
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