Abstract
Early life stress (ELS) increases risk for psychiatric illness, including alcohol use disorder (AUD). Researchers have hypothesized that individuals with and without a history of ELS who have the same primary DSM-5 diagnosis are clinically and biologically distinct. While there is strong support for this hypothesis in the context of mood disorders, the hypothesis remains largely untested in the context of AUD. This study investigated the impact of ELS on the neuroclinical phenomenology and inflammatory profile of individuals with AUD. Treatment-seeking adults with AUD (N = 163) completed the Adverse Childhood Experiences (ACE) Questionnaire and phenotypic battery as part of a pharmacotherapy trial for AUD (NCT03594435). Participants were classified as having “no-ELS,” (ACE = 0) “moderate-ELS,” (ACE = 1, 2 or 3) or “high-ELS” (ACE = 4 + ). The Addictions Neuroclinical Assessment domains incentive salience and negative emotionality were derived and used to assess the neuroclinical phenomenology of AUD. We tested (1) cumulative ELS as a predictor of ANA domains and (2) ELS group differences in ANA domains. A subset of participants (N = 98) provided blood samples for a biomarker of peripheral inflammation (C-reactive protein; CRP); analyses were repeated with CRP as the outcome variable. Greater ELS predicted higher negative emotionality and elevated CRP, but not incentive salience. The high-ELS group exhibited greater negative emotionality compared with the no-ELS and moderate-ELS groups, with no difference between the latter two groups. The high-ELS group exhibited elevated CRP compared with the no/moderate-ELS group. Findings suggest that high-ELS exposure is associated with a unique AUD neuroclinical presentation marked by greater negative emotionality, and inflammatory profile characterized by elevated peripheral CRP.
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Introduction
Early life stress (ELS)—defined as exposure to early life psychological stress (i.e., household dysfunction) and trauma (abuse, neglect))—increases risk for a wide range of psychiatric disorders, including alcohol use disorders (AUD) [1,2,3]. The effects of ELS extend beyond risk of AUD [4]; ELS is associated with a worse AUD illness course [5], including earlier age of onset, higher rates of co-occurring psychiatric illness, and diminished treatment response [6, 7]. This pattern mirrors observations in other DSM-5 psychiatric disorders, such as mood, psychotic, personality, and other substance use disorders (SUDs), where individuals with a history of ELS tend to exhibit more severe clinical course and poorer treatment outcomes than diagnostic controls without history of ELS [8]. Furthermore, a growing literature, though largely focused on mood disorders, suggests that biological alterations that distinguish individuals with psychiatric illness from clinically healthy controls are restricted to, or more robust in, the subset of patients with a history of ELS [9,10,11]. These compelling findings have led researchers to hypothesize that individuals with and without a history of ELS and the same primary DSM-5 diagnosis are clinically and biologically distinct [11,12,13]. ELS is highly prevalent among individuals with AUD [5], yet, this hypothesis remains largely untested in the context of AUD. Specifically, it is unclear as to whether individuals with AUD and a history of ELS differ in their clinical phenomenology and underlying biology from diagnostic controls without ELS history. Clarifying these distinctions can advance our understanding of AUD etiology and help facilitate the development of treatment strategies tailored to individuals with ELS history [12].
Recently, the addiction field has developed a trans-diagnostic, neuroscience-based framework, the Addictions Neuroclinical Assessment (ANA), to help explain heterogeneity in AUD and other SUDs [14, 15]. The ANA encompasses three functional domains—incentive salience, negative emotionality, and executive function—that reflect neuropsychological dysfunction common in addiction [16, 17]. The incentive salience domain captures the motivated “wanting” of alcohol; the negative emotionality domain captures depression, anxiety and negative affective consequences and drivers of drinking; and the executive function domain captures processes related to cross-temporal organization of behavior. Using this framework, Kwako and colleagues (2019) found that childhood trauma, as measured by the Childhood Trauma Questionnaire (CTQ), predicted severity of each functional domain [16]. These findings support childhood trauma as a risk factor for severity of neuroclinical dysfunction associated with AUD. However, this study’s sample encompassed individuals across the alcohol use spectrum, from those without AUD to those with current AUD. Consequently, there is a need for further investigation within clinical samples comprised of individuals with current AUD, particularly those that are treatment-seeking, since prior work has identified sociodemographic and phenotypic differences between treatment-seeking and non-treatment-seeking participants [18,19,20].
Inflammation has been identified as a putative biological mechanism linking ELS to alcohol use in adulthood [21]. ELS is associated with immune activation that persists throughout adulthood [22, 23], and preclinical models have suggested ELS “programs” the immune system in a way that leads to a proinflammatory state in adulthood [24,25,26]. Immune signaling is thought to play a critical role in the development and progression of AUD [27]. For example, elevated inflammation (i.e., C-reactive protein; CRP) has been associated with excessive alcohol consumption, alcohol-seeking behavior, and withdrawal [28]. In a recent study, Battista and colleagues (2023) found that the Early Life Stress Questionnaire (ELSQ)—a measure that captures both stressful environmental conditions (i.e., household dysfunction) and trauma—but not the CTQ—a measure that only captures trauma—predicted elevated peripheral CRP levels in adulthood [21]. Furthermore, CRP partially mediated the link between ELS and adult alcohol use. These results support the hypothesis that ELS portends risk for heavy alcohol use in adulthood via inflammatory processes, and highlight the need to consider early life stressors extending beyond trauma (i.e., household dysfunction). There is a growing literature suggesting individuals with a history of ELS show immune system alterations not discernible in diagnostic controls with no ELS history [8, 10, 12]. This literature, however, has predominately focused on mood disorders, and it is unclear if inflammatory processes in AUD vary as a function of ELS history.
The present study investigated the impact of ELS on the neuroclinical phenomenology and inflammatory profile of treatment-seeking individuals with AUD. Participants completed the Adverse Childhood Experiences (ACE) Questionnaire and phenotypic battery as part of a pharmacotherapy trial for AUD in the UCLA Addictions Laboratory (NCT03594435) [29]. A subset of participants provided blood samples for a biomarker of peripheral inflammation. We measured AUD neuroclinical presentation using the ANA domains negative emotionality and incentive salience, and peripheral inflammation through circulating levels of CRP. We focused on CRP because (1) Battista and colleagues (2023) found that CRP levels mediated the association between ELS and adult alcohol use [21]; (2) CRP is widely used in clinical practice as a marker of inflammation [30, 31] (i.e., the American Heart Association identified CRP levels greater than 3 mg/L as high-risk for cardiovascular events [32]); and (3) CRP is a well-validated, accessible, and remains highly stable in long-term serum and plasma storage [33,34,35,36]. Our first objective was to confirm prior work [16, 21] by examining if cumulative ELS (total ACE score) exposure predicts ANA domain severity and inflammation, and extend this finding to treatment-seeking individuals with AUD. Our next objective was to test whether individuals with AUD and a history of ELS differ in their neuroclinical phenomenology and underlying biology from diagnostic controls without ELS history. We categorized participants into “no-ELS,” “moderate-ELS,” or “high-ELS” groups and compared them on neuroclinical (ANA domain) variables. We predicted individuals with moderate-ELS and high-ELS would exhibit greater negative emotionality and incentive salience compared to those with no-ELS. Furthermore, we predicted there would be dose-dependent effects of ELS such that individuals with high-ELS exposure would exhibit the greatest levels of negative emotionality and incentive salience, while individuals with no-ELS exposure would exhibit the lowest. For the inflammation analysis, we examined differences in CRP using dichotomous ELS groups (no/moderate-ELS versus high-ELS) due to a smaller sample size with CRP data. We predicted individuals with high-ELS would show elevated levels of CRP compared to those with no/moderate-ELS.
Methods
Data source and sample
This study is a secondary analysis of data collected from participants screened for a clinical pharmacotherapy study conducted in the UCLA Addictions laboratory (NCT03594435) examining ibudilast for the treatment of AUD [29]. All data utilized in this study was collected prior to participant randomization to medication/placebo; hence there was no medication/placebo effect in these analyses. Participants were recruited between July 2018 and January 2023 through social media and mass transit advertisements in the greater Los Angeles metropolitan area. The UCLA Institutional review board approved all study procedures. All participants provided written informed consent after receiving a full explanation of study procedures.
Participants were initially screened via telephone interview. Following telephone screening, eligible participants were invited for an in-person screening assessment. For the analyses reported here, inclusion criteria included: (1) between ages 18–65; (2) current (past 12-months) DSM-5 diagnosis of current mild, moderate, or severe AUD; and (3) treatment-seeking for AUD. Exclusion criteria included: (1) positive urine screen for narcotics, amphetamines, or sedative hypnotics; and (2) pregnancy, nursing, or refusal to use reliable method of birth control (if female). Participants were required to have a breath alcohol concentration of 0.00 g/dl at the beginning of the study visit. Participants with co-occurring mood disorders were included in this analysis because 1) ELS is associated with increased risk for co-occurring mood disorders and SUDs [5], and 2) individuals with AUD have higher rates of mood disorders compared with the general population [37]. Therefore, excluding individuals with this comorbidity could limit generalizability of findings. Of the 168 individuals who completed full screening procedures, 4 were excluded due to absence of a current AUD diagnosis and 1 was excluded due to a positive urine screen for narcotics/amphetamines/sedative hypnotics. The final sample for this study included 163 participants. A subset of participants provided blood samples to measure peripheral CRP levels. Additional exclusion criteria for these participants included: (1) a medical condition that may interfere with safe study participation; (2) attempted suicide in the past 3 years and/or serious suicidal intention/plan in past year; (3) currently on prescription medication that contraindicates use of ibudilast; (4) currently taking medications for AUD or psychotropic medications, except for stable antidepressants (stable dose ≥4 weeks); and (5) AST, ALT, and GGT levels ≥3 times the normal limit. Additionally, participants were required to have (1) a breath alcohol concentration of 0.00 g/dl; (2) Clinical Institute Withdrawal Assessment for Alcohol Withdrawal (CIWA-Ar) [38] score <10; and (3) no active COVID or sickness symptom (i.e., fever) at the beginning of their blood draw visit. The final sample for the CRP analysis included 98 participants. Additional study details are previously described [29].
Assessments
Participants completed a phenotypic battery that included sociodemographic, clinical, and alcohol/drug use measures (detailed in Table 1). The Structured Clinical Interview for DSM-5 (SCID-5) [39] was used to diagnose AUD, other SUDs, and major depressive disorder (MDD), and to assess for lifetime manic episode and lifetime psychotic symptoms. The Timeline Follow-back Interview (TLFB) [40] was used to measure alcohol and cannabis use over the past 30-days. Using the TLFB, we calculated three indices of past 30-day drinking: total drinks, total drinking days, and drinks per drinking day. We also determined past 30-day cannabis users (yes/no) and number of cannabis use days. The Fagerstrom Test for Nicotine Dependence (FTND) [41] was used to assess cigarette smoking.
Indicators of Addictions Neuroclinical Assessment domains
Indicators were selected based on prior studies validating the ANA domains incentive salience and negative emotionality [42,43,44]. Specifically, these indicators included items assessing perception of urges to drink [Penn Alcohol Craving Scale (PACS) [45] total score and Alcohol Dependence Scale (ADS) [46] item #18: “Do you almost constantly think about drinking alcohol?” and item #25:“After taking one or two drinks, can you usually stop?”] and negative affect and associated consequences [Beck Depression Inventory (BDI-II) [47] total score, Beck Anxiety Inventory (BAI) [48] total score, and Alcohol Use Disorder Identification Test (AUDIT) [49] item #7: “How often during the last year have you had a feeling of guilt or remorse after drinking?”]. The phenotypic battery collected in this study did not include measures that could be used as indicators of the executive function domain on the ANA.
Early life stress
ELS was measured using the ACE Questionnaire, which was developed based on the original ACE study [2]. This 10-item “yes”/”no” self-report questionnaire retrospectively assesses childhood abuse, neglect, and household dysfunction. “Yes” items were coded as 1 and “no” items were coded as 0. Prior work has suggested that cumulative number of ACEs is a stronger predictor of adult AUD than any specific ACE alone [4, 50]. Therefore, a total ACE score was calculated to index cumulative ELS (range 0–10), with higher scores indicating greater ELS. Participants were then classified into three ELS groups based on total ACE score. ACE score of 0 was were categorized as “no-ELS”; scores of 1, 2, or 3 were categorized as “moderate-ELS”; and scores of 4 or more (4 + ) were categorized as “high-ELS”. Individuals with 1, 2, or 3 ACEs were combined into a single group and individuals with 4+ ACEs into a single group based on work showing that 4+ ACEs is the “de facto threshold” for defining “high risk” status for a wide range of adverse health outcomes [51].
C-reactive protein
A subset of participants (N = 98) provided blood samples, which were used to measure circulating levels of CRP. Blood samples were collected by venipuncture into EDTA tubes, placed on ice, centrifuged for acquisition of plasma, and stored at –80 °C for batch testing. CRP levels were determined utilizing the high-sensitivity Human CRP Quantikine ELISA (R&D Systems) according to the manufacturer’s protocol with a lower limit of detection of 0.2 mg/L, as previously described [52]. Samples were assayed in duplicate. The mean inter-assay CV was 5.7% and the mean instar-assay CV was 3.3%. For the small proportion (8%, n = 8) of samples with CRP levels below the limit of detection (0.2 mg/L), a value of 0.2 mg/L was assigned. Participants were asked to report if they experienced any sickness symptoms and/or received vaccinations within the two weeks preceding the blood draw.
Statistical analysis
Analyses were conducted using IBM SPSS Statistical Software Version 28.
Principal components analysis of Addictions Neuroclinical Assessment domains
Principal components analysis (PCA) was used to test a two-component model of incentive salience and negative emotionality. Analyses were conducted using a varimax rotation. Variables loading ≥0.45 were considered to load on a particular component. Components that had Eigenvalues >1, in combination with scree tests, were considered meaningful. A PCA solution was considered unsatisfactory if it included a component composed of less than three measures. Weighted component scores were then computed for each participant from the PCA to indicate their standing on each component.
Early life stress as a predictor of Addiction Neuroclinical Assessment domains and C-reactive protein
We used multiple linear regression to test if cumulative ELS predicted scores on derived incentive salience and negative emotionality component scores (dependent variables, modeled separately). Regression models included total ELS score (continuous), biological sex, age, cigarette smoking status (not smoker/occasional smoker/daily smoker), and THC toxicology screen (negative/positive). A parallel model was used to test if ELS predicted CRP levels (dependent variable). CRP values were non-normally distributed (skewness=4.9, kurtosis=26.9), and therefore were logarithmically transformed. Body mass index (BMI), endorsement of sickness symptoms and/or vaccination(s) in two weeks prior to blood draw (no/yes), and current use of anti-inflammatory medications (no/yes) were also included in the model. Significant results (p < 0.05) are reported below.
Early life stress group differences
We used univariate ANOVA to examine between-group differences in continuous sociodemographic, clinical, and alcohol/drug use variables. We used Chi-square or Fisher’s exact tests, as appropriate, to examine between-group differences in categorical variables.
We used univariate ANOVA to evaluate group differences in scores on the derived incentive salience and negative emotionality components. Group was the between-subject categorical independent variable and each ANA component was the dependent variable (modeled separately). Following a significant effect of ELS, between-group differences were evaluated using Least Significant Difference. Also following a significant effect of ELS group, models were repeated including variables identified as significant predictors in the multiple linear regression model as covariates. Parallel procedures were used to evaluate group differences in peripheral CRP (logarithmically transformed; dependent variable). Significant results (p < 0.05) are reported below.
Results
PCA analysis of Addictions Neuroclinical Assessment domains
A PCA was conducted using the indicator variables described above. The scree plot suggested two components (supplemental Fig. 1). Supplemental Table 1 details the pattern matrix providing the component loadings and reflecting the correlation coefficients between each variable and each rotated component. The first component accounted for 40.3% of the variance, had an Eigenvalue of 2.4, and was composed of the PACs total score, ADS item #25, and ADS item #18. We considered this component to parallel the incentive salience domain in the ANA. Two participants had incomplete data for these measures and therefore did not have an incentive salience domain score. The second component accounted for 17.7% of the variance, had an Eigenvalue of 1.1, and was composed of the BDI total score, BAI total score, and AUDIT item #7. We considered this component to parallel the negative emotionality domain in the ANA. Descriptive statistics on indicator variables are described in supplemental Table 2.
Multiple linear regression testing early life stress as a predictor of Addictions Neuroclinical Assessment domains and C-reactive protein
Table 2 details results of the multiple linear regression models. Greater cumulative ELS (p = 0.001) and younger age (p = 0.03) predicted higher negative emotionality scores. Cumulative ELS did not predict incentive salience scores (p = 0.3), but smoking status predicted incentive salience (p = 0.004) such that non-smokers had the lowest scores. Greater cumulative ELS (p = 0.03) and higher BMI (p < 0.001) predicted higher CRP. Eight participants in the CRP analysis endorsed past two-week sickness symptoms or vaccination; therefore, we conducted a sensitivity analysis excluding these participants. When doing so, ELS remained a significant predictor of CRP (p = 0.006).
Early life stress group classifications and differences in sociodemographic, clinical, and alcohol/drug use characteristics
The no-ELS group included 22 participants (13.5%), the moderate-ELS group included 79 participants (48.5%), and the high-ELS group included 62 participants (38%). Table 3 displays cumulative number of ACEs; Fig. 1 reports number of participants with/without each. Groups did not significantly differ in sociodemographic, alcohol/drug use, and psychiatric variables (see Table 1).
Early life stress group differences in Addictions Neuroclinical Assessment domains: incentive salience and negative emotionality
There was a significant effect of ELS group on the negative emotionality domain (F = 6.5, p = 0.002, partial eta squared=0.08). The high-ELS group had significantly greater negative emotionality scores compared with both the no-ELS (p = 0.03) and moderate-ELS (p < 0.001) groups. The no-ELS and moderate-ELS groups did not differ on the negative emotionality domain (p = 0.8). Results remained significant (p = 0.02) when covarying age. There was a significant effect of age on negative emotionality (p = 0.02) such that younger age was associated with greater negative emotionality. There was no effect of ELS group on the incentive salience domain (F = 0.6, p = 0.5, partial eta squared = 0.008). Figure 2A illustrates results.
Early life stress group differences in C-reactive protein
Only nine participants in the no-ELS group provided blood samples for CRP data; therefore, the no-ELS and moderate-ELS groups were combined into a single group, “no/moderate-ELS” (N = 59). In support of combining these groups, the no-ELS and moderate-ELS groups did not differ in CRP levels (p = 0.1). There was a significant effect of ELS group on CRP levels (F = 5.5, p = 0.02, partial eta squared=0.05), such that the high-ELS group had significantly greater levels of CRP than the no/moderate-ELS group. Results remained significant (p = 0.03) when controlling for BMI. There was a significant effect of BMI (p < 0.001) such that higher BMI was associated with greater levels of CRP. Figure 2B illustrates results. As above, we conducted a sensitivity analysis excluding participants (n = 8) who endorsed past two-week sickness symptoms or vaccination. When doing so, there was still a significant effect of ELS group on CRP levels (F = 6.4, p = 0.01, partial eta squared = 0.07), such that the high-ELS group had significantly higher levels of CRP compared with the no/moderate-ELS group.
Discussion
This study investigated the impact of ELS on ANA domains and peripheral CRP in individuals with AUD. First, we confirmed prior work [16, 21], finding that cumulative ELS predicted higher negative emotionality and elevated peripheral CRP levels, and extended these findings to treatment-seeking individuals with AUD. Contrary to prior research [16], ELS did not predict incentive salience in this sample, suggesting a dissociation of the effects of ELS on AUD phenomenology. Next, we tested whether individuals with AUD and a history of ELS differ in their clinical presentation and underlying biology from diagnostic controls without ELS history. ELS was highly prevalent within our sample, with 86.5% of participants reporting at least 1 ACE. Consistent with our prediction, individuals with AUD and high-ELS exhibited greater negative emotionality compared to diagnostic controls with no-ELS and moderate-ELS. Contrary to our prediction, the no-ELS and moderate-ELS groups did not differ in terms of negative emotionality. There was no effect of ELS group on the incentive salience domain. Additionally, the high-ELS group presented with elevated CRP levels compared with the no/moderate-ELS group. The high-ELS group was comprised of participants reporting 4+ ACEs, which aligns with large-scale studies showing that 4+ ACEs marks the “de facto threshold” for defining “high risk” status for a wide range of adverse health outcomes [51]. Our results extend this work to suggest that 4+ ACEs also marks a threshold level of ELS associated with unique AUD neuroclinical characteristics, marked by greater negative emotionality, and inflammatory profile, characterized by higher peripheral CRP levels.
The present study found that ELS is associated with the negative emotionality, but not incentive salience, domain in individuals with AUD. These results diverge from Kwako and colleagues’ (2019) findings, which found that childhood trauma predicts disruption across all three ANA domains (negative emotionality, incentive salience, and executive function). While Kwako and colleague’s findings suggest that ELS leads to a diverse range of outcomes, a phenomenon known as multifinality [16, 53], our results suggest a dissociation of the effects of ELS on AUD phenomenology. It is important to consider that Kwako and colleague’s study encompassed individuals across the alcohol use spectrum, ranging from those with no AUD to those with current AUD, whereas our study focused exclusively on treatment-seeking individuals with AUD. This distinction in sample composition is important, as it could suggest that ELS may predispose individuals to increased susceptibility to developing alcohol-related incentive salience, but that the presence of AUD may mask ELS-related differences in this domain. Additionally, Kwako and colleagues used the CTQ, and found that emotional abuse, but no other type of childhood trauma (physical/sexual abuse, emotional/physical neglect), predicted incentive salience. Given the current study used cumulative ACE score to measure ELS, it is possible we could not detect a specific effect of emotional abuse on incentive salience.
Negative emotionality, on the other hand, appears to be a distinctive ELS-related factor in the context of AUD. Our findings indicate that high, but not moderate, levels of ELS are associated with greater negative emotionality among individuals with AUD. This is in line with a large body of research showing ELS is predictive of negative affect in adulthood, and that greater number of ACEs are associated with more depressive symptoms in adulthood [54,55,56,57]. Indeed, ELS is associated with deficits in emotional regulation [58, 59], with a prospective study finding that individuals with SUD and childhood maltreatment exhibit decreased activity in emotional regulation brain regions during an emotional conflict task [60]. Furthermore, large-scale studies have shown that individuals with, compared to those without, a history of ELS are more likely to use alcohol to cope with negative affect [61,62,63]. Therefore, drinking to alleviate negative affect may be a common pathway leading to development and progression of AUD in individuals with ELS history [64, 65]. As such, studies testing whether individuals with high-ELS uniquely benefit from treatment approaches focused on alleviating negative affective processes are warranted [66]. This study did not assess the executive function ANA domain because the original parent study did not include relevant executive function assessments. Future studies are needed to replicate the current finding, which suggests a dissociation between the effects of ELS on AUD phenomenology, namely with a primary pathway of negative emotionality, as compared to incentive salience.
Studies have consistently found ELS is associated with elevated inflammation in adulthood [8, 22, 67,68,69]. A recent study identified elevated CRP as a putative mechanism linking ELS to alcohol use in adulthood [21]. The present study extends these findings to an AUD population, showing that ELS predicts peripheral CRP levels in treatment-seeking individuals with AUD. Furthermore, we found that individuals with high-ELS had significantly elevated CRP levels compared individuals with no/moderate-ELS. This is consistent with prior studies showing a stronger relationship between higher, compared with lower, ACE exposure and CRP [70], and that cumulative rather than singular stress exposure has a larger impact on inflammation [71,72,73]. Research, however, has also shown that having lower ELS exposure (1–2 ACEs) is still associated with elevated CRP [71, 72]. This study found no difference in CRP between the no- and moderate-ELS groups; however, as the no-ELS had only nine participants, this analysis was not sufficiently powered to test unique effects of moderate (versus no) ELS on CRP.
Excessive alcohol consumption has also been associated with elevated inflammatory markers, including CRP [27]. As ELS groups did not differ in their recent drinking, our results suggest that there could be an additive, or perhaps even interactive, effect of ELS and alcohol use on inflammation. Abstinent ( > 4 months) individuals with AUD, however, still exhibit higher CRP levels compared with controls without AUD [74]; therefore, case-control studies are needed to test this hypothesis. Additionally, this study focused only on CRP, and future studies should investigate additional markers of inflammation in order to gain better insight into the inflammatory correlates of ELS in AUD. Although our findings only indicate associations between ELS and CRP, they suggest that future studies investigating whether anti-inflammatory pharmacotherapies are uniquely beneficial in individuals with AUD and ELS history are warranted. Indeed, prior work has shown that pharmacological treatments with anti-inflammatory effects (i.e., infliximab, vortioxetine) are particularly effective in treating individuals with mood disorders and a history of ELS, as indicated by reduced depression and inflammation. Furthermore, our group has found that baseline CRP levels predict treatment response to a neuroimmune modulator in individuals with AUD (i.e., higher baseline CRP levels predicted better treatment response) [52]. Considering the elevated CRP levels observed among individuals AUD and ELS history in this study, it is the plausible that anti-inflammatory pharmacotherapies could offer unique benefits in treating AUD in individuals with ELS exposure [52].
This study’s findings should be interpreted within the context of its strengths and limitations. Notable strengths include a racially diverse sample and the utilization of the ANA, a robust neuroscience-based framework, to measure neuroclincal heterogeneity in AUD. Moreover, the objective of this study was to better understand the clinical and biological profiles of individuals with AUD and ELS history, with the goal of informing the development of treatments for this population. Therefore, a significant strength of this study lies in the exclusive focus on treatment-seeking individuals with AUD, as this population represent the primary recipients of AUD treatments. Additionally, the ELS groups did not differ in AUD severity, recent alcohol use, and other clinical characteristics, thereby reducing the likelihood that differences in negative emotionality and CRP levels in the high-ELS group are solely attributable to illness severity. Lastly, this study drew upon a robust literature [4, 51] to inform the classification of participants into ELS groups, thereby allowing us to gain a nuanced understanding of the dose effects of ELS in the context of AUD.
There are also several limitations of this study that must be considered. First, this study was cross-sectional, and therefore, cannot determine whether there is a causal association between ELS and disturbances in negative emotionality and CRP. Second, participants in this study were not recruited on the basis of ELS status, but rather as part of an AUD treatment study. Despite this limitation, the observed ACEs in this sample underscores the high prevalence of ELS among individual’s treatment-seeking for AUD. Third, while the ACE Questionnaire is a well-validated and widely implemented measure of ELS, there are some inherent limitations associated with the assessment [75]. Specifically, the ACE Questionnaire is a retrospective self-report that does not capture duration, chronicity, or severity of each ACE. Forth, this study did not, assess the executive function domain of the ANA due to the absence of relevant measures in the parent study. Fifth, while participants did not have any sickness symptoms on the day of their blood draw, no exclusions were made based on recent sickness symptoms or vaccination within the prior two weeks. To mitigate potential confounding effects, all CRP-related analyses controlled for recent sickness symptoms or vaccination(s), current use of anti-inflammatory medications, and other relevant biological variables. Additionally, effects of ELS remained significant when conducting a sensitivity analyses excluding all participants (n = 8) who reported past two-week sickness symptoms or vaccination. Sixth, the sample size of the no-ELS was relatively small. Consequently, participants with no-ELS and moderate-ELS were combined into a single group for the CRP analysis. While this improved our power to detect effects of high-ELS, it precluded our ability to examine effects of moderate-ELS on CRP. As a next step, we will require case-control studies prospectively assessing ELS to replicate these findings and test causal associations between ELS and disturbances in negative emotionality and CRP among individuals with AUD.
In conclusion, this study provides a nuanced understanding of the impact of ELS in AUD, suggesting that high-ELS (4+ ACEs) is associated with a greater negative emotionality and elevated CRP. ELS was not associated with incentive salience, thereby indicating a dissociation of the effects of ELS on AUD phenomenology. This study found support for the overarching hypothesis that individuals with and without a history of ELS and the same primary DSM-5 diagnosis are clinically and biologically distinct in the context of AUD [11, 12], and suggests that tailored treatments for this group, including neuroimmune modulators, are in need of investigation.
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Acknowledgements
We would like to thank study participants for volunteering their time and supporting this research.
Funding
Funding for this study was provided by the National Institute on Alcohol Abuse and Alcoholism (R01AA026190 and K24AA025704 to LAR; F32AA031425 to DEK; K01AA029712 to ENG) and the National Institute on Drug Abuse (T32DA024365 to DEK). The funders had no role in the study design, collection, analysis or interpretation of the data, writing the manuscript, or the decision to submit the paper for publication.
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Conceptualization: DEK, ENG, LAR; Data curation: DEK, AK; Formal analysis: DEK, SJN; Funding acquisition: LAR; Investigation: ENG, SJN, LAR; Methodology: DEK, ENG, SJN LAR; Project administration: LAR; Resources: LAR; Writing—original draft: DEK; Writing—review & editing: DEK, ENG, SJN, AK, LAR. All authors have contributed to and approved the final manuscript.
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Kirsch, D.E., Grodin, E.N., Nieto, S.J. et al. Early life stress is associated with greater negative emotionality and peripheral inflammation in alcohol use disorder. Neuropsychopharmacol. 49, 1719–1728 (2024). https://doi.org/10.1038/s41386-024-01877-4
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DOI: https://doi.org/10.1038/s41386-024-01877-4