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Grey matter correlates of minor physical anomalies in the ÆSOP first-episode psychosis study

Published online by Cambridge University Press:  02 January 2018

K. Dean*
Affiliation:
Division of Psychological Medicine, Institute of Psychiatry, King's College London, UK
P. Fearon
Affiliation:
Division of Psychological Medicine, Institute of Psychiatry, King's College London, UK
K. Morgan
Affiliation:
Division of Psychological Medicine, Institute of Psychiatry, King's College London, UK
G. Hutchinson
Affiliation:
Department of Psychiatry, University of West Indies, Trinidad, Trinidad & Tobago
K. Orr
Affiliation:
Department of Psychiatry, Sir Charles Gairdner Hospital, Perth, Australia
X. Chitnis
Affiliation:
Department of Neurology, Institute of Psychiatry, King's College London
J. Suckling
Affiliation:
Department of Psychiatry, University of Cambridge, Addenbrooke's Hospital, Cambridge
R. Mallet
Affiliation:
Division of Psychological Medicine, Institute of Psychiatry, King's College London
J. Leff
Affiliation:
Division of Psychological Medicine, Institute of Psychiatry, King's College London
P. B. Jones
Affiliation:
Department of Psychiatry, University of Cambridge, Addenbrooke's Hospital, Cambridge
R. M. Murray
Affiliation:
Division of Psychological Medicine, Institute of Psychiatry, King's College London, UK
P. Dazzan
Affiliation:
Division of Psychological Medicine, Institute of Psychiatry, King's College London, UK
*
Dr Kimberlie Dean, Department of Forensic Mental Health Science, PO Box 23, Institute of Psychiatry, De Crespigny Park, London SE5 8AF, UK. Tel: +44(0)20 7848 0771; fax: +44 (0)20 7848 0754; email: k.dean@iop.kcl.ac.uk
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Abstract

Background

Minor physical anomalies are more prevalent among people with psychosis. This supports a neurodevelopmental aetiology for psychotic disorders, since these anomalies and the brain are both ectodermally derived. However, little is understood about the brain regions implicated in this association.

Aims

To examine the relationship between minor physical anomalies and grey matter structure in a sample of patients with first-episode psychosis.

Method

Sixty patients underwent assessment of minor physical anomalies with the Lane scale. High-resolution magnetic resonance images and voxel-based methods of image analysis were used to investigate brain structure in these patients.

Results

The total anomalies score was associated with a grey matter reduction in the prefrontal cortex and precuneus and with a grey matter excess in the basal ganglia, thalamus and lingual gyrus.

Conclusions

Minor physical anomalies in a sample of patients with first-episode psychosis are associated with regional grey matter changes. These regional changes may be important in the pathogenesis of psychotic disorder.

Type
Papers
Copyright
Copyright © Royal College of Psychiatrists, 2006 

Minor physical anomalies are subtle defects of the head, face, hands and feet resulting from ectodermal maldevelopment during early pregnancy. Patients with schizophrenia have an excess of such anomalies (Reference McGrath, van Os and HoyosMcGrath et al, 1995; Reference Ismail, Cantor-Graae and McNeilIsmail et al, 2000), supporting a neurodevelopmental facet to schizophrenia because the brain, too, has an ectodermal origin. Few studies have examined the neuroanatomical correlates of minor physical anomalies (Table 1). Most use only gross brain volumetric measures, so obscuring associations with subtle structural brain changes. These studies also rely on a scale not designed for assessment of physical anomalies in psychotic disorders but instead derived from a study of behaviour in young children (Reference Waldrop, Halverson and HellmuthWaldrop & Halverson, 1971). The Waldrop scale is also arguably limited by being restricted to only 18 items, lacking precise definitions, having low sensitivity and being subjective in nature (Reference Lane, Kinsella and MurphyLane et al, 1997).

Table 1 Minor physical anomalies and brain imaging in schizophrenia

Reference Sample MPA scale Imaging Comments
Buckley et al (Reference Buckley, Moore and Long1994) 28 prevalent cases with schizophrenia; 20 staff volunteers Waldrop 1H–MRS of the left temporal and frontal lobes Minor physical anomalies of the head more prominent in cases with gross structural abnormalities (mainly of the ventricular system); MPAs of the head also associated with reduced frontal creatinine on MRS (similar results with total MPAs but less robust)
McGrath et al (Reference McGrath, van Os and Hoyos1995) 157 patients with psychosis taken from the Camberwell Collaborative Psychosis Study sample Waldrop Axial computed tomography Total lateral ventricular volume and maximum area of the third ventricle were not associated with MPAs
O'Callaghan et al (Reference O'Callaghan, Buckley and Madigan1995) 47 patients with prevalent schizophrenia; 24 controls Waldrop MRI Total MPA scores were unrelated to measures of ventricular volume; marked ventricular system abnormalities on MRI were found for 4 patients who also had high total MPA scores
McNeil et al (Reference McNeil, Cantor-Graae and Weinberger2000) 22 monozygotic twin pairs discordant for schizophrenia/schizoaffective disorder Waldrop MRI Signs of brain abnormality in the ill twin (small hippocampi, large ventricles) were not significantly related to MPAs
Muramatsu et al (Reference Muramatsu, Isono and Okajima2000) 74 in-patients with schizophrenia and 53 controls Waldrop Computed tomography Those with schizophrenia and high MPA scores had significantly smaller brain size than those with lower MPA scores
Hata et al (Reference Hata, Iida and Iwasaka2003) 27 patients with a diagnosis of schizophrenia made before the age of 18 years Waldrop MRI Positive correlation between ventricular brain ratio on MRI and MPA scores

MPA, minor physical anomaly; MRI, magnetic resonance imaging; MRS, magnetic resonance spectroscopy

We examined minor physical anomalies and cerebral grey matter in a sample of patients with first-episode psychosis, using high-resolution magnetic resonance imaging (MRI) and voxel-based image analysis to evaluate the entire brain for subtle differences at a subregional level, and a bespoke minor physical anomaly scale for schizophrenia which is procedurally exacting and defines the topography of anomalies previously reported in individuals with schizophrenia (Reference Lane, Kinsella and MurphyLane et al, 1997). We predicted associations between anomalies and grey matter volume in cortical and subcortical regions thought to be important in the pathogenesis of psychosis.

METHOD

Sample

Participants were recruited as part of the London arm of a large epidemiological study, the Aetiology and Ethnicity in Schizophrenia and Other Psychoses (ÆSOP) study, which investigated the incidence of schizophrenia in three English cities (Dazzan et al, Reference Dazzan, Morgan and Orr2004, Reference Dazzan, Morgan and Orr2005). As part of this study, we approached all individuals aged 16-65 years resident in a defined area of south London who consecutively presented for the first time to the local psychiatric services with a functional psychotic illness (ICD-10 codes F10-19, excluding coding F1x.0 for acute intoxication; F20-29 and F30-39, psychotic codings; World Health Organization, 1992) over a 3-year period. Exclusion criteria were:

  1. (a) a history of head trauma resulting in loss of consciousness for over 1 h;

  2. (b) the presence of a disease of the central nervous system;

  3. (c) poor fluency in English;

  4. (d) transient psychotic symptoms resulting from acute intoxication (as defined by ICD-10) following the administration of alcohol or other psychoactive substance.

Of the 191 persons who participated in the study, 127 were in contact with services long enough to complete the minor physical anomaly (MPA) assessment. Of these participants, 60 also had an MRI scan. In the light of potential participation bias in our study, we compared these individuals with those who did not undergo an MRI examination. The 60 participants were younger (mean age 27.1 years, s.d.=7.2, v. 35.3 years, s.d.=12.9, t-test P<0.001) and more likely to be White than African-Caribbean or African (χ2 P=0.013), but were otherwise comparable with those not participating in the MRI assessment in terms of gender, social class, diagnosis and total MPA score. We also recruited 43 neighbourhood control participants matched for age, gender and ethnicity. This control group was mainly used for the purpose of weighting the MPA scale (see below). Ethical approval for the study was granted by the ethics committee of the Institute of Psychiatry, and the participants gave written informed consent.

Clinical and physical assessments

We interviewed patients with the Schedules for Clinical Assessment in Neuropsychiatry (SCAN; World Health Organization, 1994). We made a diagnosis according to ICD-10 criteria by consensus in meetings involving senior clinicians (R.M.M. or J.L.) in which all clinical information was presented. A total symptom score was obtained by summing the SCAN individual symptom item scores as per Wing & Sturt's (Reference Wing and Sturt1978) procedure for the Present State Examination (PSE; Reference Wing, Cooper and SartoriusWing et al, 1974). The premorbid IQ was estimated with the National Adult Reading Test (NART; Reference Nelson and WillisonNelson & Willison, 1991). Ethnicity was self-ascribed by participants at interview, and duration of untreated illness was defined as the time between first psychotic symptom and presentation to services. Neurological soft signs were assessed using the Neurological Evaluation Scale (Reference Buchanan and HeinrichsBuchanan & Heinrichs, 1989). From clinical notes we calculated the duration of antipsychotic exposure in weeks and the daily antipsychotic doses at the time of anomaly assessment, converted into chlorpromazine equivalents (Reference BazireBazire, 1998; Reference Taylor, McConnell and McConnellTaylor et al, 1999; Reference Bezchlibnyk-Butler and JeffriesBezchlibnyk-Butler & Jeffries, 2000).

We assessed the participants' minor physical anomalies as soon as possible after initial presentation with an abridged version of the Lane scale (Reference Lane, Kinsella and MurphyLane et al, 1997), which contains 62 qualitative measures of the head and face. The scale includes an extensive assessment of facial symmetry and identifies a range of specific dysmorphic features such as the presence of epicanthic folds and cleft-like defects. Each individual dysmorphic feature included in the scale is operationalised as a categorical or ordinal score. All assessments for both cases and controls were performed by trained examiners. We conducted assessments of reliability between these examiners on a random subgroup of the sample and found agreement on scores for individual anomalies to be between 95% and 100%. In order to calculate an overall MPA score for each participant, weightings were derived from the control sample (n=43). As in previous studies using the Lane scale, the most common variant for each individual anomaly measure in the control sample was assigned a score of 0 (i.e. normal) and any other variant of the measure was assigned a score of 1 (reflecting the presence of an anomaly; Reference McGrath, El-Saadi and GrimMcGrath et al, 2002). We also examined the result of this weighting procedure for each anomaly to confirm its face validity. This definition of ‘anomaly’ for each individual measure was then applied to the patient group such that the most common variant of each measure in the control group was assigned a score of 0 when present among those in the patient group and any other variant was assigned a score of 1. A total MPA score for the patient group and the control group was then calculated by adding all the scores for individual anomaly measures (62 in total) on the scale. The theoretical maximum total MPA score is thus 62. We were then able to examine the relationship between brain structure on MRI and total MPA score among the 60 patients.

Statistical analysis

Analyses were performed using the Statistical Package for the Social Sciences, version 11.0 for Windows. Descriptive statistics were generated for both cases and controls. Associations between total MPA score and putative confounding factors (clinical and demographic) were assessed using t-tests and linear regression where appropriate. Linear regression was also employed to examine the relationship between total MPA score and MRI volumetric measures.

Structural image acquisition

Scans were acquired with a General Electric Signa 1.5 T system (GE Medical Systems, Milwaukee, Wisconsin, USA), at the Maudsley Hospital, London. Contiguous, interleaved proton-density and T 2-weighted images, each 3 mm thick, were acquired in the coronal plane, to provide whole brain coverage. A repetition time of 4000 ms and effective echo times of 20 ms and 85 ms were used with an eight-echo train length. The matrix size was 256×192, collected from a rectangular field-of-view of 22 cm×16.5 cm, giving an in-plane resolution of 0.859 mm. The total acquisition time was 10 min 12 s.

Structural image processing

The methods used for segmentation and registration of each fast spin echo data-set have been described in detail elsewhere (Reference Bullmore, Suckling and OvermeyerBullmore et al, 1999; Suckling et al, Reference Suckling, Brammer and Lingford-Hughes1999a ,Reference Suckling, Sigmundsson and Greenwood b ). Briefly, extracerebral tissues were initially removed, using an automated algorithm. Manual editing of the skull-stripped images was necessary only to remove brain-stem and cerebellum from the cerebral hemispheres and diencephalon. The probability of each intracerebral voxel belonging to each of four possible tissue classes (grey matter, white matter, cerebrospinal fluid or dura/vasculature) was then estimated with a modified fuzzy clustering algorithm (Reference Suckling, Brammer and Lingford-HughesSuckling et al, 1999a ). This type of segmentation assigns to each voxel a value in the range 0-1 indicating the fraction of the voxel represented by each tissue type (for example, a grey matter value of 0.7 means that 70% of the tissue represented by that voxel is grey matter).

A template image in the standard space of Talairach & Tournoux (Reference Talairach and Tournoux1988) was constructed using a landmark procedure with the AFNI program (Reference CoxCox, 1996) from six proton-density images acquired from six healthy individuals and then averaging these images. Maps of tissue distribution were then registered onto the template by first registering each proton density image using a 12-parameter affine registration, minimising the grey-level difference between images. This registration aligns all the images together, scaling them to the same gross dimensions. The derived mapping was then applied to the corresponding tissue maps.

At each voxel in standard space the total MPA score was regressed onto the estimated grey matter volume. The test statistic calculated was the regression coefficient divided by its standard deviation to generate an effect map. Permutation testing was used to assess statistical significance, and regional relationships were tested at the level of voxel clusters (Reference Bullmore, Suckling and OvermeyerBullmore et al, 1999; Reference Sigmundsson, Suckling and MaierSigmundsson et al, 2001). Given that structural brain changes are likely to extend over a number of contiguous voxels, test statistics that incorporate spatial information, such as three-dimensional cluster mass (the sum of suprathreshold voxel statistics), are generally more powerful than other possible test statistics, which are informed only by data at a single voxel. Initially, the effect map was thresholded at P<0.05 using a critical value obtained from a null distribution sample by recalculation of the test statistic after appropriate permutation of the MPA score, to simulate the conditions under the null hypothesis. Suprathreshold three-dimensional voxel cluster mass (sum of the test statistics within a cluster) was tested against the corresponding null distribution sampled by the equivalent processing of effect maps following permutation. We corrected the statistical threshold for cluster significance in all analyses so that the expected number of false positive clusters (P value times number of tests) was less than 1.

RESULTS

Socio-demographic and clinical characteristics of the sample and the global brain volumes of the patient group are shown in Table 2. The total MPA score for the 60 patients was normally distributed, with a mean of 14.58 and a standard deviation of 6.84. As expected, the control group had a much lower mean MPA score than the patient group (6.28, s.d.=2.75), with the difference being statistically significant (P<0.0001, t-test). Of the 62 anomalies included in the total score, abnormalities in the patient group were most commonly noted in relation to the mouth, ears and general facial symmetry. The most frequently noted anomalies included the following: abnormal plate shape (58%), attached earlobes (67% right, 60% left), abnormality of the anterior surface of the ear (37% right, 47% left), position of ear canals not level (30% right and left), paired facial structures not level (43%) and face asymmetrical (40%). Some anomalies were also noted in relation to eyebrows, eyes and nose with less frequency.

Table 2 Socio-demographic, clinical and gross brain morphological characteristics of the sample

Characteristic Patients (n=60) Controls (n=43)
Gender, n (%)
   Male 36 (60) 22 (51)
   Female 24 (40) 21 (49)
Diagnosis, n (%)
   Schizophrenia, schizoaffective disorder 31 (52)
   Other psychosis 29 (48)
Ethnicity, n (%)
   White British 24 (40) 20 (46)
   African–Caribbean 27 (45) 18 (42)
   Other 9 (15) 5 (12)
Age, years: mean (s.d.) 27.13 (7.24) 32.33 (10.57)
Education, years: mean (s.d.) 13.11 (2.52) 13.26 (2.74)
IQ: mean (s.d.) 99.29 (15.55) 107.92 (12.16)
Duration of untreated illness, weeks
   Mean (s.d.) 30.51 (59.18)
   Median 7.43
Total symptom score: mean (s.d.) 31.49 (17.25)
Total NES soft signs score: mean (s.d.) 8.56 (8.17) 4.62 (3.34)
Current antipsychotic dosage (chlorpromazine equivalents) mg: mean (s.d.) 168.58 (191.96)
Brain volumes, cm3: mean (s.d.)
   White matter 467.08 (48.59)
   Grey matter 572.28 (57.8)
   CSF 154.32 (29.32)
Total MPA score: mean (s.d.) 14.58 (6.84) 6.28 (2.75)

CSF, cerebrospinal fluid; MPA, minor physical anomaly; NES, Neurological Evaluation Scale

Anomalies score and demographic and clinical characteristics

The mean total MPA score did not vary significantly by gender, diagnostic category within psychosis, ethnic group or type of medication prescribed (Table 3). Total MPA score was positively associated with total symptom score (P=0.05) but not significantly associated with age, duration of untreated psychosis, years of education, IQ, neurological soft signs score or current antipsychotic dosage.

Table 3 Association with total minor physical anomalies score among patients (n=60)

Mean total MPA score Regression coefficient P
Gender
   Male (n=36) 15.42
   Female (n=24) 13.33 0.25 (t=1.16)
Diagnosis
   Schizophrenia, schizoaffective disorder (n=31) 15.23 0.46 (t=0.75)
   Other psychosis (n=29) 13.90
Ethnicity
   White (n=24) 13.96
   African–Caribbean (n=27) 15.00 0.85 (F=0.16)
   Other (n=9) 15.00
Medication type
   Typical antipsychotic (n=16) 17.75
   Atypical antipsychotic (n=9) 13.22 0.20 (F=1.62)
   Mixed (n=15) 13.27
   No medication (n=20) 13.65
Age, years –0.07 0.62
Duration of untreated psychosis, weeks 0.19 0.15
Education, years 0.03 0.80
IQ –0.06 0.66
Total symptom score 0.26 0.05
Total NES soft signs score –0.19 0.16
Current antipsychotic dosage (chlorpromazine equivalents), mg 0.16 0.21
Brain volumes, cm3
   White matter 0.00 0.99
   Grey matter 0.01 0.93
   CSF –0.08 0.55

CSF, cerebrospinal fluid; MPA, minor physical anomalies; NES, Neurological Evaluation Scale

Relationship between anomalies and brain structure

With regard to global brain volume, there was no association between MPA score and total grey matter, white matter or cerebrospinal fluid volume. At a regional level, total MPA score was associated with three clusters of grey matter deficit and four clusters of grey matter excess (P≤0.002; Table 4, Fig. 1). The first grey matter deficit cluster was centred on the right superior and medial frontal gyri (Brodmann area 6); the second deficit was centred on the same region of the left frontal lobe and the third deficit was centred on the right precuneus extending on the right superiorly to the postcentral gyrus and paracentral lobule; this cluster also extended across the midline to involve similar regions in the left hemisphere and extended laterally into the left inferior parietal lobule.

Fig. 1 Brain changes and minor physical anomalies. Regions of tissue deficit in association with higher total score are shown in red; regions of tissue excess in association with higher total minor physical anomalies score are shown in blue. Results are displayed on an averaged grey- and white-matter map. The left side of the image corresponds to the right side of the brain. Numbers refer to the approximate y coordinates in the standard space of Talairach and Tournoux.

Table 4 Regional associations of grey matter with total minor physical anomalies score, P ≤ 0.002 (controlled for age)

Number of voxels in cluster Location of cluster centre x, y, z
Total MPA score associated with less grey matter
   R superior and medial frontal gyrus (BA 6) 427 7.4, 12.6, 52.9
   L superior and medial frontal gyrus (BA 6) 292 –6.0, 5.7, 58.5
   R precuneus with extension into the paracentral lobule, precentral and postcentral gyrus, and across to the L side 1035 0.1, –48.2, 54.4
Total MPA score associated with more grey matter
   L lentiform nucleus, putamen 839 –26.8, 6.0, 2.8
   R lentiform nucleus, putamen 1132 26.8, –0.3, 5.2
   L thalamus 448 –3.4, –17.3, 2.3
   R lingual gyrus (BA 18) 845 3.2, –80.5, –3.8

BA, Brodmann area; L, left; MPA, minor physical anomalies; R, right

Of the four clusters of grey matter excess (Table 4, Fig. 1), the first was centred on the left lentiform nucleus and the second on the same region of the right hemisphere. The third cluster was centred on the left thalamus and extended inferiorly into the pulvinar, and the fourth was centred on the right lingual gyrus (Brodmann area 18).

We explored the potential role of antipsychotic medication in explaining the association between MPA and the volume of each of the individual clusters identified. We found that adjustment for current dosage, type or duration of antipsychotic treatment did not significantly alter any of the associations between total MPA score and cluster volume. Controlling additionally for the effect of total symptom score did not alter these findings, despite the significant relationship found between MPA score and symptoms.

DISCUSSION

In a sample of individuals with first-episode psychosis, we have shown that total MPA score is associated with a reduction of grey matter volume in the prefrontal cortex and precuneus, and with an excess of grey matter volume in the basal ganglia, thalamus and lingual gyrus.

The main strength of our study lies in the fact that it is the first examination of the relationship between minor physical anomalies and brain structure that moves beyond gross brain volume measures. Furthermore, we have employed a scale for the assessment of anomalies which was specifically designed for use in patients with psychosis, and have evaluated a sample drawn from a population-based first-episode group. As there are only a few previous studies linking brain imaging and minor physical anomalies, and all have used only global measures of brain structure, comparison between our results and earlier findings is limited. However, as in our study, most existing studies did not find any significant association between gross measures of total brain or ventricular volume and minor physical anomalies.

Study limitations

A potential limitation of this study is that we evaluated first-episode psychoses as a whole, without stratifying for diagnosis. However, the fact that we did not find any difference in mean total MPA score or cluster volume between diagnostic groups makes the possibility of diagnostic specificity less likely. Many previous studies have focused on schizophrenia, but our results suggest there might well be commonality between different psychosis subtypes in terms of neurodevelopmental processes. Also, our assessment of anomalies did not include any quantitative measures, some of which have been identified as important in those with psychosis (Reference McGrath, El-Saadi and GrimMcGrath et al, 2002). It may also be argued that addition of quantitative measures enhances the robustness of anomaly assessment, since such measures may be more objective than ratings of qualitative anomalies. This is particularly important given the potential bias that might arise from the difficulty inherent in masking the MPA assessor to patient status. However, it should be noted that the specific anomalies we found to be most prevalent (palatal abnormalities, deformities of the ears and asymmetries) are consistent with those reported in previous studies (Reference Lane, Kinsella and MurphyLane et al, 1997; Reference McGrath, El-Saadi and GrimMcGrath et al, 2002) and we achieved a high degree of interrater reliability (95-100%). In addition, masking in this particular study is arguably less important because the participants included in this analysis were all patients, and those assessing their anomalies were unaware of any MRI findings at the time of assessment. We employed an additive model of MPA scoring in which the presence of different anomalies contributed equally to the total MPA score, making no assumptions about the relative importance or severity of anomalies. Such a model may not accurately represent reality, but until more is known about the relationship between minor physical anomalies and neurodevelopmental abnormality a simple pragmatic approach seems preferable. Finally, an important limitation of this study is that we did not investigate the brain correlates of minor physical anomalies in a sample of healthy individuals. Our study has provided preliminary evidence of an association between such anomalies and particular brain areas; investigating this further in healthy individuals might identify which brain areas are specifically associated with anomalies, independently of an underlying pathogenic process and of use of psychotropic medications.

Main findings

The areas highlighted by our regional analysis have previously been implicated in the pathogenesis of psychosis. The deficit clusters were located predominantly in the prefrontal cortex, an area known to have an important executive or modulatory role in behaviour and cognition (Reference Knight, Staines and SwickKnight et al, 1999). Deficits in these functions are characteristically found in psychosis (Reference Goldberg, Weinberger and BermanGoldberg et al, 1987) and a number of structural MRI studies have demonstrated a reduction in the volume of frontal lobes, particularly of the prefrontal region, in both chronic disorder and first-episode patient samples (Reference Chua and McKennaChua et al, 1995; Reference Gur, Cowell and LatshawGur et al, 2000; Reference Wright, Rabe-Hesketh and WoodruffWright et al, 2000; Reference Hirayasu, Tanaka and ShentonHirayasu et al, 2001). Consistent with these reports, we have already described in this same sample a reduction of frontal volume (precentral gyrus, inferior frontal gyrus) in association with difficulties in integrating information from multiple sensory modalities (Reference Dazzan, Morgan and OrrDazzan et al, 2004). These findings, and the association between high MPA score and reduced prefrontal volume reported here, suggest that abnormal neurodevelopment of the frontal lobe may be occurring prior to birth in a subgroup of patients with psychosis, and that this is reflected in functional deficits such as problems in executive functioning and sensory integration. Interestingly, in a post hoc analysis we found MPA total score to be significantly associated with the sensory integration subscore of the Neurological Evaluation Scale (P=0.006).

We also found an association between total MPA score and reduced grey matter volume of the precuneus extending into the paracentral lobule and the precentral and postcentral gyrus. The precuneus, located in the medial parietal cortex, has been reported to be activated during visuospatial tasks (Reference Corbetta, Miezin and ShulmanCorbetta et al, 1993; Reference Ghaem, Mellet and CrivelloGhaem et al, 1997) and language comprehension (Reference BinderBinder, 1997). Brain regions important for language and integration of stimuli may be particularly affected in schizophrenia (Reference Shenton, Dickey and FruminShenton et al, 2001). Our results may provide further support for this notion.

In addition to the grey matter deficits described, we found an association between total MPA score and an increased volume of grey matter in a number of subcortical structures such as the lentiform nucleus (part of the basal ganglia) and the thalamus. Interestingly, and in agreement with other studies (Chakos et al, Reference Chakos, Lieberman and Bilder1994, Reference Chakos, Lieberman and Alvir1995; Reference Keshavan, Bagwell and HaasKeshavan et al, 1994; Reference Gur, Maany and MozleyGur et al, 1998), we have previously found in this sample that basal ganglia and thalamus enlargement was associated with use of antipsychotic medication (Reference Dazzan, Morgan and OrrDazzan et al, 2005). Thus, in this study we explored the possibility that the increased volume of subcortical structures could be reflecting an effect of medication. Adjustment for medication dosage, type or duration did not alter the significance of any of the primary relationships between MPA score and cluster volumes. Although this would suggest that administration of antipsychotic medication cannot fully explain our findings, it is plausible that people with an excess of minor physical anomalies are more vulnerable to the effects of antipsychotics on subcortical structures. Also, our previous finding of a reduction of basal ganglia and thalamus volume in participants with more soft neurological abnormalities, independent of medication, suggest that these regions are areas of vulnerability for psychosis (Reference Dazzan, Morgan and OrrDazzan et al, 2004). However, it is important to consider that measures of medication exposure in non-randomised studies are likely to be intrinsically inaccurate. Therefore, it is possible that participants with an excess of minor physical anomalies, who were also experiencing more severe symptoms, were more likely to receive antipsychotic medication, and this was then reflected in their larger basal ganglia. This possibility is further supported by our finding that MPA score was associated with total symptom score, although controlling for total symptom score did not significantly alter the associations found between individual cluster volumes and MPA score.

Finally, we found a cluster of volume excess associated with total MPA score which was centred on the lingual gyrus, an area of visual association cortex particularly concerned with visual attention. The lingual gyrus has previously been reported to be abnormal in psychosis (Reference Franck, O'Leary and FlaumFranck et al, 2002; Reference Shapleske, Rossell and ChitnisShapleske et al, 2002) and our previous data on this sample also suggest an association between this area and an excess of sensory integrative deficits (Reference Dazzan, Morgan and OrrDazzan et al, 2004). Abnormalities in this region among those with an excess of minor physical anomalies may be reflected in the presence of perceptual symptoms, particularly if visual in nature. Although we did not look at specific symptoms in our study, we did find an association between MPA score and symptom severity.

Possible aetiological mechanisms

Linking minor physical anomalies to structural brain abnormalities may help to define the temporal origin of the latter. Minor physical anomalies are known to arise in pregnancy and thus cerebral anomalies associated with the presence of an excess of such anomalies are likely also to have their origins during this antenatal period, therefore having a neurodevelopmental origin. Waddington et al (Reference Waddington, Lane and Larkin1999a ,Reference Waddington, Lane and Scully b ) have developed a model of cerebrocraniofacial dysmorphogenesis to explain the neurodevelopmental basis of schizophrenia. They argue that embryological development of midline craniofacial structures such as the palate occurs over weeks 9-10 to 14-15 of gestation, and that the important process occurring during this period is one of narrowing and elongation of the mid-face. Aetiological factors, whether environmental or genetic, acting during the first trimester may affect this process of midline development of both the face and the brain, with structures such as the medial temporal lobe, thalamus and midline anterior cortex (prefrontal to temporoparietal areas) being particularly impaired in their development as a result. Disruption of midline embryonic craniofacial growth was confirmed in a recent study conducted by the same group employing three-dimensional morphometric measurement (Reference Hennessy, Lane and KinsellaHennessy et al, 2004). This model is, at least in part, consistent with our findings, particularly regarding reduced volumes in the prefrontal cortex. Others have identified a range of potential environmental factors which might act during the first trimester of pregnancy, including maternal malnutrition (Reference Susser, Neugebauer and HoekSusser et al, 1996); influenza infection (Reference O'Callaghan, Sham and TakeiO'Callaghan et al, 1991; Reference Brown, Begg and GravensteinBrown et al, 2004); rubella infection (Reference Brown, Cohen and Harkavy-FriedmanBrown et al, 2001); cortisol exposure, such as might occur in association with maternal stress or depression (Reference Modi, Lewis and Al-NaqeebModi et al, 2001; Reference Diego, Field and Hernandez-ReifDiego et al, 2004); and obstetric complications, which although occurring later in pregnancy might be precipitated by dysmorphogenesis occurring much earlier (Reference Smith, Smith and McNaySmith et al, 1998). In addition, candidate genes involved in craniofacial development have been proposed (Reference Waddington, Lane and ScullyWaddington et al, 1999b ). Samples selected for their genetic liability to psychosis in the absence of disorder have been reported to have elevated rates of morphological abnormality compared with healthy controls (Reference Gourion, Goldberger and OlieGourion et al, 2004). However, the presence of minor physical anomalies in such high-risk groups may well reflect non-specific neurodevelopmental abnormality rather than being specifically linked to schizophrenia genes (Reference Lawrie, Byrne and MillerLawrie et al, 2001).

In conclusion, total MPA score is positively associated with reduced prefrontal volume and enlarged basal ganglia volumes in a sample of patients with first-episode psychosis. This provides further evidence to support the importance of risk operating during the antenatal period. The findings also point to particular brain regions in which abnormalities are likely to have been present prior to birth and which may well be important areas involved in the pathogenesis of psychosis. Further investigation, particularly in healthy control individuals, must be considered before conclusions can be drawn about the specificity of our findings for the pathogenesis of psychosis.

Acknowledgements

The Aetiology and Ethnicity in Schizophrenia and Other Psychoses (ÆSOP) study was funded by the Medical Research Council (UK). We thank the Stanley Medical Research Institute for their support. We thank Dr A. Lane (St John of God Hospital, Dublin) for advice regarding the use of her scale and the analysis of data derived from it. We wish to thank the ÆSOP researchers who helped with the data collection and the patients who took part in the study.

Footnotes

Declaration of interest

None.

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Figure 0

Table 1 Minor physical anomalies and brain imaging in schizophrenia

Figure 1

Table 2 Socio-demographic, clinical and gross brain morphological characteristics of the sample

Figure 2

Table 3 Association with total minor physical anomalies score among patients (n=60)

Figure 3

Fig. 1 Brain changes and minor physical anomalies. Regions of tissue deficit in association with higher total score are shown in red; regions of tissue excess in association with higher total minor physical anomalies score are shown in blue. Results are displayed on an averaged grey- and white-matter map. The left side of the image corresponds to the right side of the brain. Numbers refer to the approximate y coordinates in the standard space of Talairach and Tournoux.

Figure 4

Table 4 Regional associations of grey matter with total minor physical anomalies score, P ≤ 0.002 (controlled for age)

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