Center for Behavioral Genomics, Department of Psychiatry, University of California, San Diego and Veterans Medical Research Foundation, San Diego, California
Harvard Medical School Department of Psychiatry and Harvard Institute of Psychiatric Epidemiology and Genetics, Boston, Massachusetts
Medical Genetics Research Program and Department of Psychiatry and Behavioral Sciences, SUNY Upstate Medical University, Syracuse, New York
Harvard Medical School Department of Psychiatry and Harvard Institute of Psychiatric Epidemiology and Genetics, Boston, Massachusetts
Center for Behavioral Genomics, Department of Psychiatry, University of California, San Diego and Veterans Affairs San Diego Healthcare System, San Diego, California and Harvard Institute of Psychiatric Epidemiology and Genetics, Boston, Massachusetts, USA
Correspondence: Stephen J. Glatt, Center for Behavioral Genomics, Department of Psychiatry, University of California, San Diego, 9500 Gilman Drive, La Jolla, CA 920923, USA. Email: sglatt{at}ucsd.edu
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Aims To identify aspects of personality, psychopathology and social development that differentiate high-risk and control individuals.
Method Adolescent and young-adult first-degree relatives (n=35) of people with schizophrenia or schizoaffective disorder and a control group (n=55) were compared on 36 measures at baseline of a longitudinal study. Measures differentiating high-risk and control participants were related to four genetic loading indices.
Results High-risk participants older than 17 years showed more physical anhedonia, less positive involvement with peers and more problems with peers, siblings and the opposite gender. Older high-risk individuals also were less cooperative, less self-directed and less reward-dependent. Problems with peers and the opposite gender, as well as reward dependence, were related linearly to genetic loading.
Conclusions Alterations in personality traits and social development are present in high-risk individuals, and may be markers for genetic liability toward the illness.
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Deficiencies in several areas of functioning, including academic, behavioural, cognitive and social domains, have consistently been observed in the existing studies of high-risk individuals (for extended reviews, see Asarnow, 1988; Stone et al, 2005). Some of the most commonly reported deficits include poorer social functioning, more restricted interests (Small, 1990; Dworkin et al, 1993), lower social competence (especially in peer relationships and hobbies/interests) and greater affective flattening (Auerbach et al, 1993). In this context, the Harvard Adolescent High Risk Study of Schizophrenia was established to replicate these findings in children and adolescents at high genetic risk of schizophrenia, as well as to evaluate other aspects of personality, psychopathology, social functioning, neuropsychology and neurobiology (Seidman et al, 2006b) in this population. In this paper we compare dimensions of psychopathology, personality traits and social development observed at baseline among the adolescent and young adult children and siblings of patients with schizophrenia and control participants enrolled in this longitudinal study. Once putative schizophrenia precursors and predictors have been identified, replicated and refined, they must be evaluated for their potential as vulnerability markers or endophenotypes of the illness that may be useful for future genetic studies. Towards that end we also examined markers that most strongly discriminated between control and high-risk participants in relation to various established and novel indices of genetic loading for schizophrenia.
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Exclusion criteria were any lifetime diagnosis of psychotic illness, substance dependence or neurological disease, a history of head injury or medical illness with documented cognitive sequelae, sensory impairments, current psychotropic medication use or a full-scale IQ less than 70. Candidates for the control group were also excluded if any of their first- or second-degree biological relatives had a history of a psychotic disorder. The full-scale IQ of participants 17 years of age or older was determined using the Wechsler Adult Intelligence Scale, version III (Wechsler, 1997), and the IQ of younger participants was determined with the Wechsler Intelligence Scale for Children, version III (Wechsler, 1991). No one was excluded from the sample based on the IQ criterion. Participants aged 18 years and older gave informed consent, whereas participants less than 18 years old gave assent in conjunction with informed consent provided by their parents. All participants received an honorarium. The study was approved by the human subject research committees of all academic and recruitment sites.
Psychopathology, personality trait and social development assessments
Each participant was administered a battery of tests to assess
psychopathology, personality traits and indices of social development. This
battery consisted of the following seven tests:
A total of 36 summary items (Table 1) were selected from this test battery to serve as dependent measures. These 36 items were selected because they served either as an entry point for questionnaires with an opt-out format (e.g. positive history of delusions, positive history of alcohol use) or as the summary score for a group of related responses (e.g. total score on PAS, total score on a TCI/JTCI dimension).
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View this table: [in a new window] | Table 1 Psychopathology, personality traits and social development measures selected for analysis |
Statistical analyses
Demography
Continuously distributed demographic variables including age, education and
parental socio-economic status
(Hollingshead, 1975) were
compared between high-risk and control groups by t-tests for
independent samples; categorical demographic variables including gender,
ethnicity and age group were compared between the groups by
2
tests.
Multivariate data reduction and analyses
Principal components analysis with varimax rotation was performed to reduce
the number of psychopathology, personality trait and social development
variables to be considered in subsequent analyses. The number of factors
retained from the principal components analysis was based on interpretation of
the scree plot and a minimum eigenvalue of 2.0. Scores on the rotated factors
were modelled as the dependent measures in a multivariate analysis of
covariance (MANCOVA) with age group (age <17 years), risk group (high-risk
or control) and gender as well as the interactions of age and gender
with group as fixed predictors, and socio-economic status as a
continuous covariate. Age was dichotomised at 17 years since this was the
threshold age for determining if a participant would be administered the JTCI
(<17 years old) or TCI (<17 years old); this approach is also consistent
with that adopted for our prior analyses of cognitive functioning in this
sample, which revealed a distinctive pattern of worse performance only in the
subset of high-risk participants aged 17 years or over
(Seidman et al,
2006a).
Univariate data analyses
Factors for which a significant risk-group difference was detected
(high-risk v. control) were subsequently decomposed into their
constituent items. Risk-group differences on these individual items were
examined by analyses of covariance (ANCOVAs) with risk group as a fixed
predictor, and age group, gender and socio-economic status (and their
interactions with group) included as additional fixed predictors/continuous
covariates if they significantly influenced the factor in the multivariate
model. The significance of these post hoc analyses was determined by
applying a family-wise correction for multiple testing using Simes
method (Simes, 1986), which is
a false discovery rate adjustment technique.
Genetic loading
Individual dependent measures that were found to be related to the genetic
risk for schizophrenia (i.e. they were influenced by a main effect and/or
interaction of risk group in univariate analyses) were examined in relation to
various indices of genetic loading for the illness as a preliminary screen of
their potential utility as phenotypes for genetic studies. There is no gold
standard for quantifying genetic loading for a trait; therefore, we defined
this parameter in a variety of ways (using three accepted methods and one
novel method of our own design) and contrasted the results obtained with each
method. In general, each method provides some index of how dense the
individuals pedigree was with schizophrenia risk genes, using
diagnosable schizophrenic illness as a proxy. All genetic loading indices were
determined when considering individuals with either schizophrenia or
schizoaffective disorder, depressive type, as affected. For each method, the
numbers of affected and total members in the pedigree were provided by a
family reporter, generally an adult relative of both the schizophrenia proband
and the related high-risk participant.
The most basic quantification scheme implemented was the simplex/multiplex method of Faraone et al (2000), in which each individuals family was identified as simplex when the proband was the only affected member of the pedigree or as multiplex when the proband and at least one other first-degree relative were affected. The remaining quantification schemes were more complex and yielded continuously distributed measures of genetic loading. For example, genetic loading was also quantified using published estimates (Faraone et al, 1999) to determine each individuals relative risk of schizophrenia given the number and degree of his or her biological relationships to affected members of the pedigree (the relative risk method). A similar method (Lawrie et al, 2001) accounting for the prevalence and heritability of the disorder was also employed (the genetic liability method). These two methods assume that the traits under study map one-to-one on the risk genes for schizophrenia and thus show the same patterns of transmission and inheritance as the full disorder.
We also derived a novel index of genetic loading, calculated as:
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The effect of each genetic loading index was evaluated separately for each dependent measure that was influenced by a significant main effect and/or interaction of risk group in univariate analyses. The genetic loading index was included as a continuous covariate (or as a fixed factor in the case of the simplex/multiplex method) replacing risk group in the ANCOVA model that had previously revealed the significant main effect or interaction of risk group on the selected dependent measure. In all analyses of genetic loading we conservatively addressed the non-independence of observations within families by adjusting variance estimates with Hubers formula (Schubert & McNeil, 2003), a theoretical bootstrap that produces accurate statistical tests for clustered data (due to multiple individuals from the same family being entered into the study and analyses). The method enters cluster scores (the sum of scores within families) instead of individual scores into the formula for the estimate of the variance using the linearisation method (Kish & Frankel, 1974; Binder, 1983).
Technical information
Demographic data were available for all participants, whereas data on each
dependent measure were available for 8090 participants. The high-risk
group was missing 4.8% of the data on these variables, whereas the control
group was missing 2.0% of these data. Participants with missing data were
removed from analyses by pairwise deletion. The type I error rate (
)
for all analyses was set at 0.05. Corrections for multiple testing and
variance adjustments for clustered data were conducted on a Windows-based
personal computer with StataSE software, version 8.0, and all other
statistical analyses were conducted on a Windows-based personal computer with
the Statistical Package for the Social Sciences (SPSS version 13.0).
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2(4)=3.70, P=0.449),
gender (
2(1)=0.04, P=0.847) and level of
education (t(88)=0.12, P=0.906). However,
high-risk participants were of significantly lower socio-economic status
(t(88)=3.38, P=0.001) and were significantly
older than the control group (t(88)=2.23,
P=0.028); consequently, a greater percentage of high-risk
participants compared with control participants fell into the older age group
when age was dichotomised at 17 years (
2(1)=7.49,
P=0.006). These results warranted the control of these factors and
covariates in subsequent statistical models. |
View this table: [in a new window] | Table 2 Sample demographics |
Multivariate data reduction and analyses
Principal components analysis of the 36 test items yielded a scree plot
that indicated the presence of three predominant factors, each of which had an
eigenvalue over 2.0. The three-factor solution explained 44.35% of the
variance among the 36 individual variables
(Table 3). The
conceptualisation of factor 1 as representing psychopathology is
straightforward, given its almost exclusive composition of symptom summary
items from the SCL90R. Factor 2 is a more heterogeneous factor
representing personality traits from the TCI/JTCI, alcohol and drug use
measures from the KSADSE, a social performance score from the
SAICA and summary scores from the MIS, PAS and RPAS. Many of these items
especially those with the highest loadings measure levels of
achievement, influence over or by others, and mastery of the self, a
characteristic referred to by Bakan
(1966) as agency
and so the term is adopted here. Factor 3 is also heterogeneous, comprising
items from the SAICA, KSADSE and TCI/JTCI; however, 8 of the 13
items loading primarily on this factor are indices of social performance and
dysfunction from the SAICA, with strong positive loadings from negative
performance items and strong negative loadings from positive performance
items, and this factor was therefore designated as social
difficulties. The multivariate profile of scores on these three factors
was significantly influenced by age group (F(3,62)=27.71,
P <0.001) and risk group (F(3,62)=5.20,
P=0.003) but not by socio-economic status
(F(3,61)=2.51, P=0.067) or gender
(F(3,60)=2.05, P=0.116). The interaction of risk
group and age group was also significant (F(3,62)=3.60,
P=0.018), but no other significant interaction was observed in the
multivariate model.
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View this table: [in a new window] | Table 3 Factor structure and loadings after principal components analysis and varimax rotation (only loadings greater than 0.300 on a secondary factor are shown) |
The significant main effect of age group observed in the multivariate model reflected two opposing main effects of age at the level of individual factor scores, wherein older participants scored significantly higher than younger ones on psychopathology (factor 1; F(1,64)=8.49, P=0.005), but significantly lower on agency (factor 2; F(1,64)=48.53, P <0.001). In contrast, the significant main effect of risk group observed in the multivariate model was driven by similar main effects of the variable on agency (F(1,64)=4.04, P=0.049) and social difficulties (F(1,64)=12.10, P=0.001), with high-risk participants scoring significantly higher than control participants on both factors. In addition to the main effect of risk group, social difficulties were also significantly influenced by the interaction of age group with risk group (F(1,64)=5.47, P=0.022). Decomposition of this interaction indicated that social difficulties remained relatively stable across age groups among the controls, whereas they increased dramatically with age group among high-risk participants (Fig. 1). As a consequence, a significant risk-group difference on factor 3 was observed between the older subsample of high-risk participants and control subjects (F(1,31)=12.72, P=0.001), but no risk-group difference was observed in the younger subsample (F(1,33)=1.18, P=0.285).
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Fig. 1 Social difficulties as a function of age and group. Values represent mean
(s.e.m.) scores on factor 3 (social difficulties). The interaction of age and
group was significant (F(1,64)=5.47, P=0.022).
*P=0.001 for comparison with control group of the same age.
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threshold
significance value for 11 comparisons=0.005).
Among social difficulties variables, high-risk participants
exhibited significantly less positive involvement with peers
(F(1,87)=10.18, P=0.002) and a correspondingly
greater frequency of problems with peers (F(1,85)=5.89,
P=0.017), siblings (F(1,79)=10.39,
P=0.002) and members of the opposite gender
(F(1,86)=4.48, P=0.037). After correcting for
multiple comparisons, the risk-group differences in level of positive
involvement with peers and frequency of problems with siblings remained
significant (corrected
threshold significance value for 13
comparisons=0.004).
Because a significant interaction of risk group and age group was observed
for social difficulties, we also performed a separate set of
univariate analyses on variables loading on this factor in the older and
younger subsamples of high-risk and control participants. The younger subgroup
of high-risk participants did not appear impaired on any measure relative to
controls; in fact, the younger high-risk participants exhibited significantly
more positive involvement with peers (F(1,42)=4.29,
P=0.044) and less problems with siblings
(F(1,37)=6.06, P=0.019) than similarly aged
control participants. However, neither of these differences remained
significant after correction for multiple testing (corrected
threshold
significance value for 13 comparisons=0.004).
As expected based on the significant risk group by age group interaction
for social difficulties, risk-group differences on variables
loading on this factor were even more pronounced in the older subsample than
in the full sample. Thus, despite the decreased power afforded by the smaller
sample size of older high-risk and control participants relative to the full
sample, more items were found to differ significantly between the two older
groups. For example, the older group of high-risk participants exhibited
significantly less positive involvement with peers
(F(1,43)=5.00, P=0.031) and significantly more
problems with peers (F(1,43)=12.66, P=0.001),
siblings (F(1,40)=4.69, P=0.036) and members of
the opposite gender (F(1,43)=7.47, P=0.009)
compared with similarly aged control participants. In addition, these
high-risk individuals exhibited significantly less reward dependence
(F(1,38)=4.67, P=0.037) than similarly aged
control participants. Of these comparisons, only the risk-group difference in
frequency of problems with peers remained significant after correction for
multiple testing (corrected
threshold significance value for 13
comparisons=0.004).
All significant differences observed between risk groups in this study are summarised along with corresponding effect size estimates in Table 4.
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View this table: [in a new window] | Table 4 Significant risk group differences |
Genetic loading
As described above, several individual variables within the
agency and social difficulties factors were found
to relate to the genetic predisposition toward schizophrenia as evidenced by
significant main effects of risk group and/or interactions of risk group with
other variables such as age group. Therefore, the extent to which these
putative vulnerability markers linearly related to genetic liability within
high-risk individuals was examined in a more quantitative manner. Of those
variables constituting the agency factor and showing a
significant relationship to risk group (physical anhedonia, cooperativeness
and self-directiveness), none was related to genetic loading using any of the
four quantification methods (all P >0.198). Of those variables
constituting the social difficulties factor and showing some
evidence of a significant relationship to risk group (positive involvement
with peers, problems with opposite gender, problems with peers, problems with
siblings and reward dependence), only reward dependence was influenced by
genetic loading quantified using the relative risk method
(F(1,20)=5.87, P=0.025). However, problems with
peers and problems with the opposite gender increased significantly with
genetic loading when using either the simplex/multiplex method (problems with
peers: F(1,20)=4.37, P=0.049; problems with
opposite gender: F(1,20)=12.32, P=0.002) or the
genetic liability method (problems with peers:
F(1,20)=4.40, P=0.049; problems with opposite
gender: F(1,20)=11.25, P=0.003). None of the five
variables on factor 3 was significantly related to genetic loading using the
allele-sharing method.
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Integration with prior high-risk studies
Our results replicate several observations reported in other cohorts of
individuals at high genetic risk of schizophrenia. As reviewed by Asarnow
(1988), some form of
personality trait or (more typically) social dysfunction has been observed in
all high-risk studies of schizophrenia in which such measures have been
evaluated. High-risk groups in the Edinburgh
(Lawrie et al, 2001;
Johnstone et al,
2005) and Helsinki (Niemi
et al, 2004) high-risk studies exhibited profound social
withdrawal or inhibition which also strongly predicted the subsequent
emergence of psychosis. The composite indices of social withdrawal and
inhibition used in those studies differ in level of detail from the discrete
items assessed with the SAICA in our study; however, higher scores on social
withdrawal and inhibition factors might closely relate to the reduction in
positive interactions with peers observed in our high-risk sample. High-risk
individuals in the New York High Risk Project also displayed social
impairments including elevated levels of problem behaviour at school and at
home (Moldin et al,
1990), which closely resembles the increased frequency of problems
with peers, siblings and members of the opposite gender identified in our
study. Importantly, these social impairments only emerged at mid-adolescence
in both the New York project (age 1516 years) and in our study (age 17
years or greater), suggesting a possible critical period for the emergence of
this particular deficit in relation to risk of subsequently developing
schizophrenia.
Personality differences between individuals at high genetic risk of schizophrenia and control group members have also been reported in other samples (Moldin et al, 1990; Bolinskey et al, 2001; Miller et al, 2002; Stone et al, 2005). Our results confirm that high-risk participants have different personality traits from those of control participants, and also identify the specific traits of cooperativeness, reward dependence and self-directiveness as particularly informative risk indicators. Our findings of greater physical anhedonia among high-risk individuals also have precedent among the existing high-risk studies. For example, people at high genetic risk of schizophrenia in the New York project showed increased levels of physical anhedonia, a feature not shared by those at genetic risk of affective disorders (Freedman et al, 1998). Interestingly, a path analysis of those data indicated that physical anhedonia mediated the relationship between genetic risk of schizophrenia and later social dysfunction. In light of this result, it will become critical to monitor the emergence of physical anhedonia and social dysfunction among our younger subsample of high-risk participants (<17 years) who as yet show no difference from control participants in these domains.
Extensions to prior high-risk studies
This study extends our understanding of people at high genetic risk in
several ways. First, whereas most prior work identified broad,
psychometrically defined constructs that differentiated high-risk and control
groups, we took this approach a step further by examining factors more closely
to identify the individual test items that drove group differences. Second,
the identification of risk-group differences restricted to a more narrowly
defined, older subgroup (
17 years) represents progress toward the goal of
identifying a critical period for the emergence of personality traits and
social dysfunction in individuals harbouring a strong genetic risk of
schizophrenia. The observation of these effects only in the older subgroup of
high-risk participants could merely reflect stochastic differences between the
older and younger cohorts. Alternatively, if these effects emerge subsequently
in our younger cohort, these might indicate faulty developmental processes or
the emergence of some developmentally triggered degenerative process.
Third, it is noteworthy that increased psychopathology observed among high-risk participants in other cohorts (e.g. Ott et al, 2002) was not apparent in our study. Although high-risk individuals in our study did have higher scores on factor 1 and on several individual SCL90R items within that factor, these differences dissipated when covariates such as age, gender and socio-economic status were included in the multivariate and univariate statistical models, thus underscoring the importance of recognising and controlling for potential confounds in casecontrol study designs such as this. Fourth and finally, we identified three traits (reduced reward dependence, and increased frequency of problems with peers and members of the opposite gender) that not only differentiated high-risk participants from controls but also showed a gradient of increasing impairment with genetic loading for schizophrenia within the high-risk group. Under the prevailing multifactorial polygenic model of the aetiology of schizophrenia, such traits might have a higher likelihood of reflecting genetic defects in families with one or more member with schizophrenia, and thus may prove to be among the most suitable for inclusion in composite alternate phenotypes of the disorder for use in future genetic studies.
Clinical implications
This study identified several behaviours and psychological traits that
differ between individuals at high genetic risk of schizophrenia and the
control group. The easily observable nature of some deficits (e.g. problems
with peers, siblings and members of the opposite gender) may furnish them with
considerable utility in the clinical setting as early warning signs of
emergent psychosis among individuals with a positive family history of
schizophrenia. If these social difficulties in particular are found to predict
the eventual emergence of full schizophrenia-spectrum illness among the
high-risk individuals in our longitudinal study, they may serve as useful
targets for early intervention efforts as well, since these particular
behaviours may be easier than personality traits or physical anhedonia to
identify and alter. For the purposes of early identification and intervention
based on the presence of social difficulties, our findings also make clear
that the collection of accurate information regarding family history of
schizophrenia is critical for quantifying risk. Last, if the biological
foundations of these more elemental phenotypes can be understood, they may
provide insight into the pathological mechanisms underlying the manifestation
of full schizophrenia, its subtypes or other conditions in the schizophrenia
spectrum.
Limitations of the study
The results of this study must be considered in light of some limitations.
First, we implemented a conservative analytic strategy that began with data
reduction through principal components analysis, but the tests and variables
selected for inclusion were chosen a priori from a much larger panel.
Thus, inclusion of different tests or different variables from those tests in
the present analyses might have had major effects on the factor structure and
thus the pattern of significant group differences observed.
Second, the power of these analyses was not optimal for detecting small effect sizes. Thus, although the given sample sizes afforded more than 80% power to detect risk-group differences in excess of 0.4 standard deviations, smaller but nonetheless important effects would have had a low likelihood of detection in this sample. Continued ascertainment of both participant groups (but especially high-risk participants) should augment the power of this sample. Longitudinal follow-up of the existing samples will ultimately allow for the use of more powerful within-subject statistical modelling techniques, which should also facilitate the detection of smaller significant differences between risk groups.
Third, in addition to the limitations on inferential power imposed by the sample size, the analyses of genetic loading were also subject to an additional limitation: recall bias. Thus, all genetic loading quantification schemes used in this study relied upon how much of the pedigree was recalled and reported by the familys reporter, and how well the reporter recognised and recalled the pedigree members who were affected with a schizophrenic illness. Thus, if reporters underestimated or overestimated the number of affected individuals in their families, the genetic loading index of their related high-risk participant would be biased downwards or upwards respectively. If this recall variation differed systematically between reporters whose related high-risk participants performed well and those whose related high-risk participants performed poorly, an effect of genetic load might appear where none existed, or the converse. However, as not all individual variables within a factor showed an effect of genetic loading, these potential sources of bias may be either offset or have minimal practical importance.
Fourth, this was a family study wherein probands and participants had both genetic and environmental factors in common. Thus, the observed group differences and the effects of genetic loading may not reflect the effects of risk genes shared between high-risk individuals and patients with schizophrenia, but rather their exposure to common environmental factors that influenced the dependent measures.
Future directions
Children and siblings of people with schizophrenia are approximately ten
times more likely to develop schizophrenia or a related disorder than are
individuals in the general population. Consequently, these individuals require
careful monitoring. Even if they do not develop psychosis, our results suggest
that they are at high risk of social dysfunction and the expression of
abnormal personality traits, and thus of a lowered quality of life.
Longitudinal tracking of these individuals will allow us to specify more
definitively critical periods for the emergence of schizophrenia precursors
and to possibly shed light on developmental triggers for the illness, as well
as determine which measures are the best predictors of the transition to
schizophrenia, and which predict more stable deficits. In addition, these risk
markers can be combined with neuropsychological and neuroimaging abnormalities
observed in these same individuals (reported elsewhere) to develop more
powerful and flexible composite risk phenotypes. Future follow-up studies of
this sample will help us clarify psychopathological processes in
schizophrenia, develop accurate predictors of psychosis and identify treatment
targets for early intervention and prevention programmes.
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