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Neuroanatomical correlates of psychosis in temporal lobe epilepsy: voxel-based morphometry study

Published online by Cambridge University Press:  02 January 2018

Frederick Sundram*
Affiliation:
Department of Psychiatry, Royal College of Surgeons in Ireland and Beaumont Hospital, Dublin, Ireland, and Department of Forensic and Neurodevelopmental Science, Institute of Psychiatry, King's College London, UK
Mary Cannon
Affiliation:
Department of Psychiatry, Royal College of Surgeons in Ireland and Beaumont Hospital, Dublin, Ireland
Colin P. Doherty
Affiliation:
Department of Neurology, St James' Hospital, Dublin, Ireland
Gareth J. Barker
Affiliation:
Department of Neuroimaging, Centre for Neuroimaging Sciences, Institute of Psychiatry, King's College London, UK
Mary Fitzsimons
Affiliation:
Department of Neurophysics, Brain Morphometry Laboratory, Beaumont Hospital, Dublin, Ireland
Norman Delanty
Affiliation:
Department of Neurology, Beaumont Hospital, Dublin, Ireland
David Cotter
Affiliation:
Department of Psychiatry, Royal College of Surgeons in Ireland and Beaumont Hospital, Dublin, Ireland
*
Frederick Sundram, Department of Psychiatry, Education and Research Centre, Royal College of Surgeons in Ireland, Beaumont Hospital, Dublin 9, Ireland. Email: [email protected]
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Abstract

Background

Temporal lobe epilepsy is associated with a significant risk of psychosis but there are only limited studies investigating the underlying neurobiology.

Aims

To characterise neuroanatomical changes in temporal lobe epilepsy and comorbid psychosis.

Method

The study population comprised all individuals with temporal lobe epilepsy on the epilepsy database at the National Centre for Epilepsy and Epilepsy Neurosurgery in Ireland (Beaumont Hospital) between 2002 and 2006. Ten people with temporal lobe epilepsy with psychosis were matched for age, gender, handedness, epilepsy duration, seizure laterality, severity of epilepsy and anti-epileptic medication with ten comparison participants with temporal lobe epilepsy only. Participants received a magnetic resonance imaging scan and voxel-based morphometry analyses were applied to grey and white matter anatomy.

Results

Significant grey matter reduction was found bilaterally in those with temporal lobe epilepsy with psychosis in the temporal lobes in the inferior, middle and superior temporal gyri and fusiform gyri, and unilaterally in the left parahippocampal gyrus and hippocampus. Significant extra-temporal grey matter reduction was found bilaterally in the insula, cerebellum, caudate nuclei and in the right cingulum and left inferior parietal lobule. Significant white matter reduction in those with temporal lobe epilepsy with psychosis was found bilaterally in the hippocampus, parahippocampal/fusiform gyri, middle/inferior temporal gyri, cingulum, corpus callosum, posterior thalamic radiation, anterior limb of internal capsule and white matter fibres from the caudate nuclei, and unilaterally in the left lingual gyrus and right midbrain and superior temporal gyrus.

Conclusions

Significant grey and white matter deficits occur in temporal lobe epilepsy with psychosis. These encompass the medial temporal lobe structures but also extend to lateral temporal and extra-temporal regions. Some of these deficits overlap with those found in schizophrenia.

Type
Papers
Copyright
Copyright © Royal College of Psychiatrists, 2010 

Epilepsy is one of the most common and debilitating neurological disorders, with a prevalence of 5–10 per 1000 population. Reference MacDonald, Cockerell, Sander and Shorvon1 The lifetime risk of psychiatric disorder in temporal lobe epilepsy is estimated to be as high as 60%. Reference Swinkels, Kuyk, van Dyck and Spinhoven2 Specifically, temporal lobe epilepsy carries a substantial risk of psychosis at a prevalence rate of 2–7%, which is several times greater than that seen in the general population. Reference Kendler, Gallagher, Abelson and Kessler3Reference Torta and Keller7 Although temporal lobe epilepsy represents one of the highest known risk factors for the development of psychosis, very little is known about the neurobiology of temporal lobe epilepsy and associated psychosis.

The relationship between the temporal lobe and psychosis was first reported in 1963 by Slater and colleagues Reference Slater and Beard8 and some forms of temporal lobe epilepsy with psychosis have been noted to closely resemble schizophrenia. Reference Flor-Henry9 Temporal lobe epilepsy with psychosis has also been postulated to arise from abnormalities in fetal brain development, and to represent a model or ‘mock-up’ of schizophrenia. Reference Roberts, Done, Bruton and Crow10 It is recognised that these conditions possibly share common genetic or environmental causes, Reference Qin, Xu, Laursen, Vestergaard and Mortensen11 and recently the mean interval between the onset of epilepsy and that of psychosis has been reported to be approximately 14.4 years. Reference Adachi, Akanuma, Ito, Kato, Hara and Oana12

Temporal lobe epilepsy has been associated with a variety of environmental insults such as birth injury, febrile convulsions, head trauma or central nervous system infection and where associated with genetic vulnerability may lead to acquired changes in brain anatomy. Reference Lewis13 Up until the 1980s such changes in neuroanatomy were assessed through post-mortem neuropathological studies; however, with the advent of magnetic resonance imaging (MRI), most of such changes have been readily imaged in vivo and have been quantified using manual and computerised statistical methods. These methods provide an opportunity to improve our understanding of the pathogenesis of not only the psychosis associated with temporal lobe epilepsy but the causative mechanisms of psychosis in general.

So far, there have only been a limited number of MRI studies that have assessed regional volumetric differences in people with temporal lobe epilepsy and psychosis specifically. Three previous studies used manual region of interest (ROI) volumetry to compare participants with temporal lobe epilepsy only versus those with temporal lobe epilepsy with psychosis. Findings have included reduction of volume in the temporal, frontal and parietal lobes and superior temporal gyrus and left hippocampus grey matter volumes and also bilateral amygdala enlargement. Reference Marsh, Sullivan, Morrell, Lim and Pfefferbaum14Reference Marchetti, Azevedo, de Campos Bottino, Kurcgant, de Fatima Horvath Marques and Marie16 Overall, however, the findings from manual ROI studies have not been consistent. A more recent study attempted to overcome the difficulties of reproducibility introduced by manual volumetry by using automated whole brain voxel-based morphometry (VBM). This study limited the assessment to grey matter and observed no cortical differences between groups. Reference Rusch, Tebartz van Elst, Baeumer, Ebert and Trimble17 As this was not consistent with neuroimaging findings in schizophrenia, Reference Wright, Rabe-Hesketh, Woodruff, David, Murray and Bullmore18,Reference Gur, Keshavan and Lawrie19 the authors suggested that temporal lobe epilepsy with psychosis may be a distinct entity to schizophrenia.

As reports thus far have inconsistently reported neuropathology in several brain regions and the application of ROI volumetry to investigate structural abnormalities in people with temporal lobe epilepsy is difficult to reproduce and time consuming, Reference Keller, Mackay, Barrick, Wieshmann, Howard and Roberts20 we undertook the first VBM study of temporal lobe epilepsy with psychosis using unbiased, automated, quantitative voxel-based techniques to encompass both grey and white matter measures at a whole brain level. As this is the first study of its kind, the VBM approach was considered the most appropriate because it allows a hypothesis-free survey of the entire brain. This may subsequently permit hypotheses generation and areas to be investigated in future projects or the further application of advanced neuroimaging techniques.

Given the previous findings using manual volumetry, in the current study we hypothesised that individuals with temporal lobe epilepsy with psychosis when compared to those with temporal lobe epilepsy without psychiatric disorder would demonstrate: reduction in total brain and grey and white matter content; grey and white matter reduction in the temporal lobe; and structural differences that overlap with those found in schizophrenia.

Method

Study population

Our study was carried out at the National Centre for Epilepsy and Epilepsy Neurosurgery, Beaumont Hospital, Dublin, Ireland. We used a retrospective approach to identify people with temporal lobe epilepsy and ethics approval was provided by the Beaumont Hospital Medical Research Ethics Committee (reference number: 04/55).

Our study population included all individuals on our hospital's research and clinical epilepsy database. The database represents ongoing efforts to develop a register of patients with epilepsy within Ireland (more details available at www.epilepsyprogramme.ie). We assessed individuals on the database attending the in-patient and out-patient neurology service at Beaumont Hospital between 2002 and 2006 (n = 860). As our centre has an epilepsy surgery programme where appropriate candidates receive presurgical evaluation, the epilepsy population under study represents a combination of medically managed and those with medically intractable or surgically remediable epilepsies.

Two epileptologists (C.P.D. and N.D.) examined a combination of seizure semiology, electroencephalogram (EEG), video-EEG telemetry and neuroimaging data. A diagnosis of epilepsy was based on the International League Against Epilepsy classification system, 21 and our study participants had already been examined in prior studies Reference Ronan, Doherty, Delanty, Thornton and Fitzsimons22Reference Ronan, Murphy, Delanty, Doherty, Maguire and Scanlon24 and had consented to further assessment. The neurology service routinely refers people with epilepsy and suspected psychiatric disorder for neuropsychiatric assessment and these assessments are comprehensive, documented in detail and include diagnoses/neuropsychiatric formulation based on the ICD–10 classification system. 25

Exclusion criteria for participation were a clinically detectable medical disorder known to affect gross brain structure (e.g. tumour, haemorrhage), pervasive developmental disorders (e.g. autism-spectrum disorder), individuals with an extratemporal epileptic focus, generalised or unclassified seizures, an IQ<70 on WAIS–R, Reference Wechsler26 age <18 years, previous neurosurgery, non-right-handedness and individuals with contraindications to MRI scanning or no suitable MRI scan. As the software on our MRI scanner was upgraded in 2002, people scanned prior to this date were excluded to ensure homogeneity of scan parameters.

Participants with temporal lobe epilepsy with psychosis

The clinical syndrome we were interested in was defined as complex partial seizures with clinical findings and investigations (EEG and MRI) compatible with temporal lobe epilepsy. Further, the presence of delusions and/or hallucinations resulting in an ICD–10 diagnosis for psychosis was essential. Acute confusional states or depressive symptomatology alone were not deemed sufficient. Individuals with a drug-induced psychosis or episodes of psychosis provoked by excessive alcohol consumption or those representing complex partial status were also excluded.

Of the 860 individuals with epilepsy identified on the database, 280 had a diagnosis of temporal lobe epilepsy of whom 26 had been diagnosed with psychosis by the neuropsychiatric service. However, of these 26 with temporal lobe epilepsy with psychosis, 7 had previous neurosurgery for medically intractable seizures, 2 had an existing tumour, 1 was left-handed, 4 had an MRI scan at another institution either in Ireland or abroad and 2 had incomplete MRI scans. Consequently, ten individuals with temporal lobe epilepsy with psychosis (the epilepsy+psychosis group) were considered suitable for participation in our study (Fig.1).

Comparison group

Using the Beaumont Hospital research and clinical epilepsy database, each epilepsy+psychosis participant included in the study was then matched for age (s.d. = 5 years), gender, handedness, epilepsy duration, seizure laterality, severity of epilepsy and anti-epileptic medication with an individual with temporal lobe epilepsy but no psychosis who was attending the same neurology service. None of the comparison group (epilepsy-only group) had a lifetime history of prior psychosis and all were free of comorbid psychiatric disorder in the preceding year.

Chart review

Chart reviews were conducted for both the epilepsy + psychosis group and epilepsy-only group. The clinical assessments of the epilepsy + psychosis group completed by the specialised neuropsychiatry service were objectively assessed using the Operational Criteria Checklist for Psychotic Illness (OPCRIT). Reference McGuffin, Farmer and Harvey27 This was used as it offers a polydiagnostic classification system that yields operationally defined psychiatric diagnoses with good reliability. Reference Williams, Farmer, Ackenheil, Kaufmann and McGuffin28

Fig. 1 Summary of participant selection. MRI, magnetic resonance imaging.

All the epilepsy+psychosis group had to fulfil ICD–10 criteria for psychotic disorder that encompassed schizophrenia, persistent delusional disorder or other non-organic psychotic disorder; affective psychoses were excluded. With regard to timing of psychoses relative to seizure events, post-ictal psychoses were included where MRI and neuropsychiatric assessments were performed within a week of psychotic episodes, whereas inter-ictal psychoses were included where the same assessments were completed within a month of commencement of psychosis in the absence of antecedent seizure activity. Neither the epilepsy + psychosis group nor the epilepsy-only group had features of intellectual disability, non-epileptic seizures or history of poor adherence with their anti-epileptic medication. For a summary of participant characteristics see Tables 1 and 2.

Table 1 Characteristics of cohort: epilepsy+psychosis v. epilepsy-only group

Epilepsy+psychosis group (n = 10) Epilepsy-only group (n =10) P a
Age: years, mean (s.d.) 35 (5.2) 33 (6.1) 0.36
Male/female, n 7/3 7/3
Right-handed, n 10 10
Age at diagnosis of epilepsy, mean (s.d.) 12 (11.0) 16 (8.2) 0.41
Epilepsy duration: years, mean (s.d.) 23 (12.4) 17 (8.6) 0.20
Site of epileptic focus
    Right-sided 6 6
    Left-sided 4 4
Lesional v. non-lesional
    Mesial temporal sclerosis 6 (4 right and 2 left) 5 (4 right and 1 left)
    Non-lesional 4 5
Age at first psychotic event: years, mean (s.d.) 30 (5.6) N/A
Duration of epilepsy at time of first psychotic event: years, mean (s.d.) 18 (9.9) N/A

Table 2 Clinical characteristics and prescribed antipsychotic and anti-epileptic medication in epilepsy+psychosis group and anti-epileptic medication in matched epilepsy-only group

Timing of psychosis relative to seizure event Epilepsy clinical data Epilepsy+psychosis group anti-epileptic medication Matched epilepsy-only group anti-epileptic medication
Participant Antipsychotic medication Daily dosage Seizure frequency Aura CPS SG Refract
1 Inter-ictal Haloperidol 20 mg 1/week Y Y N N Levetiracetam Levetiracetam Oxcarbazepine Lamotrigine
2 Post-ictal Amisulpride 800 mg 1/month N Y N N Valproate Levetiracetam Valproate
3 Inter-ictal Risperidone 6 mg 1/week N Y N N Levetiracetam Phenytoin Valproate Levetiracetam Carbamazepine Topiramate
4 Inter-ictal Haloperidol 2 mg 2/day Y Y Y Y Carbamazepine Levetiracetam Gabapentin Carbamazepine
5 Post-ictal Olanzapine 5mg 1/day Y Y Y Y Levetiracetam Valproate Lamotrigine Levetiracetam Valproate Oxcarbazepine
6 Post-ictal Thioridazine/Olanzapine 400 mg/30 mg 1/day Y Y Y Y Oxcarbazepine Topiramate Oxcarbazepine Clobazam
7 Post-ictal Haloperidol/Olanzapine 5 mg/20 mg 1/2 weeks Y Y N N Carbamazepine Valproate Vigabatrin Carbamazepine
8 Post-ictal Olanzapine 20 mg 3–4/week Y Y Y Y Topiramate Oxcarbazepine Topiramate Carbamazepine Clobazam Phenobarbitone
9 Inter-ictal Olanzapine 20 mg 1/month Y Y N N Carbamazepine Valproate Carbamazepine Levetiracetam Vigabatrin
10 Inter-ictal Olanzapine 12.5 mg 2–3/week Y Y Y Y Carbamazepine Phenobarbitone Levetiracetam Carbamazepine Lamotrigine

MRI brain image acquisition

All participants had a volumetric spoiled gradient recalled (SPGR) acquisition in the steady-state MRI brain scan at Beaumont Hospital using a 1.5 T scanner (GE Signa Systems, Paris). Coronal thin-cut 1.5 mm slices were obtained via a three-dimensional (3D)-volume gradient echo-pulse sequence that was radio-frequency spoiled. A sagittal localiser was first acquired and the volume of interest was then arranged to include the whole brain. The 3D-SPGR sequence was acquired over a period of 14 min with the following MRI parameters: repetition time (TR) = 35 ms, echo time (TE) = 15 ms, readout bandwidth of 16 kHz and excitation flip angle of 35°. The data were collected with an in-plane image matrix of 256 × 256 pixels over a field of view (FOV) of 24 × 24 cm, leading to a voxel size of 0.09375 × 0.09375 cm. In total, 128 partitions were collected, of which 4 were discarded during reconstruction to minimise wraparound artefacts, resulting in a final 124 1.5 mm slices covering a field of view of 18.6 cm.

Image analysis

Investigators were masked to participant group and each scan was checked for movement artefact and corruption prior to inclusion in the image-processing pipeline. In brief we used VBM that offers an unbiased and fully automated whole brain measurement technique that normalises all the images to the same stereotactic space and subsequently segments, modulates and smoothes images (as described in more detail below); a statistical analysis is finally performed on the smoothed images to localise and make inferences about group differences. Reference Ashburner and Friston29 Registration into standard space, segmentation, modulation and smoothing was performed using Statistical Parametric Mapping software (SPM5, Wellcome Department of Imaging Neurosciences, University College London, UK; www.fil.ion.ucl.ac.uk/spm/) within Matlab 7.0 (The MathWorks, Natick, Massachusetts, USA; www.mathworks.com/products/matlab/) run on UNIX and statistical analyses were applied in the Brain Activation and Morphological Mapping (BAMM; www-bmu.psychiatry.cam.ac.uk/BAMM/index.html) package.

With previous versions of SPM, a set of processing steps commonly known as ‘optimised VBM’ Reference Good, Johnsrude, Ashburner, Henson, Friston and Frackowiak30 was needed to ensure high-quality segmentations. However, the methodology was inherently circular as the registration required an initial tissue classification, and the tissue classification requires an initial registration. In SPM5 both components are integrated into a single model and it also includes correction of the effects of image intensity non-uniformity termed ‘the bias field’. Reference Ashburner and Friston31 Grey and white matter were extracted from the normalised images and ‘modulated’ to compensate for the effects of spatial normalisation. This is achieved by multiplying each voxel value by its relative volume before and after warping, in order to compensate for the fact that spatial normalisation expands/contracts some brain regions. Reference Ashburner and Friston31 After modulation, the total amount of grey (or white) matter is the same as in the original images. Good and colleagues note that ‘in effect, an analysis of modulated data tests for regional differences in the absolute amount (volume) of grey matter’. Reference Good, Johnsrude, Ashburner, Henson, Friston and Frackowiak30 The maps so produced are referred to as images of ‘grey (or white) matter volume’ to distinguish them from the images of ‘concentration’ or ‘density’ that result if the modulation stage is omitted. In this study, however, in order to avoid potential confusion with manual volumetry measures such as stereology, we refer to them as ‘maps of grey (or white) matter content’, or simply ‘grey (or white) matter maps’.

Scans need to be smoothed in order to reduce confounds as a result of individual variation in neuroanatomy. Smoothing the data in order to coerce it into the appropriate statistical distribution is also a prerequisite for some analytical approaches, but is not necessary for our non-parametric approach (see below). The degree of smoothing to apply is still a subject of much discussion as different smoothing levels result in varying results. We applied a smoothing filter (Gaussian, 8 mm full-width at half maximum) as the literature suggests that this would aid the detection of potentially widespread changes in the neocortex and changes in smaller subcortical structures, Reference Keller and Roberts32 between-participant anatomical matching and to improve the signal-to-noise ratio. Reference Ashburner and Friston29,Reference Mechelli, Friston, Frackowiak and Price33 Additionally, total global, grey matter and white matter volumes were extracted via SPM5 and between-group differences were compared using non-parametric Mann–Whitney U-tests. If these volumes were to significantly differ, they are then entered as covariates in between-group analyses. Similarly, characteristics such as epilepsy duration or age are entered as covariates in the analytical model should they significantly differ between groups.

Brain activation and morphological mapping

As structural brain changes are likely to extend over a number of contiguous voxels, test statistics incorporating spatial information such as 3D 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. Reference Bullmore, Suckling, Overmeyer, Rabe-Hesketh, Taylor and Brammer34 Given that no parametric distribution is known for cluster mass, permutation-based testing that is implemented in the BAMM package (a joint development of the Brain Mapping Unit, Department of Psychiatry, University of Cambridge and The Institute of Psychiatry, London, UK) was used to assess statistical significance at both the voxel and cluster levels. Reference Bullmore, Suckling, Overmeyer, Rabe-Hesketh, Taylor and Brammer34

Between-group differences in grey and white matter volume were estimated by fitting an analysis of covariance (ANCOVA) model at each intracerebral voxel in standard space where proportional volume for each tissue class (grey or white matter) was the dependent variable and group classification as the key predictor variable. Reference Shapleske, Rossell, Chitnis, Suckling, Simmons and Bullmore35 Instead of setting a single a priori P-value below which we regard findings as significant at the cluster level, we calculated, for a range of P-values, the number of clusters that would be expected by chance alone. We started by setting a relatively lenient P (P≤0.05) to detect voxels putatively demonstrating differences between groups; subsequently, we searched for spatial clusters of such voxels and tested the ‘mass’ of each cluster (the sum of suprathreshold voxel statistics it comprises) for significance.

We then set the statistical threshold for cluster significance such that the expected number of false positive clusters arising by chance alone would be less than one over the whole imaging volume. As SPM was used initially for segmentation, BAMM yielded coordinates of clusters in Montreal Neurological Institute (MNI) space; MNI coordinates were subsequently converted to Talairach space via a non-linear transformation Reference Brett, Johnsrude and Owen36 (further details can be found at http://imaging.mrc-cbu.cam.ac.uk/imaging/MniTalairach) and interpreted with the aid of widely accepted atlases. Reference Talairach and Tournoux37

Our non-parametric or distribution-free hypothesis testing procedure allows us to use cluster-level statistics even if their distribution is non-Gaussian (even after smoothing); further, there is significant evidence in the literature that cluster-level statistics incorporating information about the spatial neighbourhood of each voxel may be more sensitive than voxel test statistics. Reference Shapleske, Rossell, Chitnis, Suckling, Simmons and Bullmore35,Reference Rabe-Hesketh, Bullmore and Brammer38,Reference Poline and Mazoyer39 As voxel-level statistics are associated with multiple comparisons and thus increased risk of type I error, cluster-level statistics reduce such error due to the performance of fewer comparisons of several orders of magnitude. Reference Shapleske, Rossell, Chitnis, Suckling, Simmons and Bullmore35 Finally, although variance of the data may differ with brain area, our clusters are evaluated over the whole brain and we also inspected the voxel-level maps, in order to check for any gross discrepancies between cluster and voxel level. More details can be found at www-bmu.psychiatry.cam.ac.uk/software/docs/xbamm/.

Results

Total tissue volumes

There were no significant differences in median total global, grey or white matter volumes between the groups at the P = 0.05 level, although there was an approximate reduction of 6, 5 and 7% respectively in these tissue classes in the epilepsy+psychosis group (Table 3).

Table 3 Median total volume of tissue classes in epilepsy+psychosis v. epilepsy-only group

Epilepsy+psychosis group, median (s.d.) Epilepsy-only group, median (s.d.) P a
Total brain volume, ml 1142.7 (133.8) 1212.1 (114.9) 0.07
Total grey matter volume, ml 687.5 (76.6) 722.6 (56.0) 0.08
Total white matter volume, ml 455.1 (59.5) 490.8 (67.6) 0.11

VBM of grey and white matter content

We found regional deficits affecting both grey and white matter but these changes were confined to the epilepsy+psychosis group. We found significant regional grey matter reduction unilaterally in the medial temporal lobe structures such as the left parahippocampal gyrus and hippocampus. Deficits also extended to the lateral temporal lobes encompassing the bilateral inferior, middle and superior temporal gyri and fusiform gyri. However, grey matter reduction was not limited to the temporal lobe structures but also extended to extratemporal regions. The most significant extratemporal deficits were distributed bilaterally and included the insula, cerebellum and caudate nuclei, and unilaterally in the right cingulum and left inferior parietal lobule (Fig. 2).

We also found significant regional white matter reduction in the epilepsy+psychosis group. Within the medial temporal lobe, these deficits were distributed bilaterally in the hippocampus and parahippocampal gyrus. White matter deficits were also found in the lateral temporal lobes bilaterally in the middle and inferior temporal gyri and fusiform gyri, whereas unilateral deficits were found in the right superior temporal gyrus. Reduction of white matter extended beyond the boundaries of the temporal lobes and bilaterally involved the cingulum, corpus callosum (genu, splenium and tapetum), anterior limb of internal capsule, posterior thalamic radiation and white matter fibres from the caudate nuclei, whereas unilateral deficits were found in the left lingual gyrus and right midbrain (Fig. 3). Tables 4 and 5 provide a summary of the anatomical locations of grey and white matter deficits.

Table 4 Significant grey matter deficits in epilepsy+psychosis group v. epilepsy-only groupa

Talairach and Tournoux coordinates
Cluster size: voxels, n x y z Region Hemisphere
1770
–25 –6 –33 Inferior temporal gyrus Left
–40 –65 –27 Posterior lobe of cerebellum Left
–21 –10 –20 Parahippocampal gyrus Left
–37 –34 –15 Fusiform gyrus Left
–39 –3 –13 Hippocampus Left
–56 –17 –9 Middle temporal gyrus Left
475
49 –13 –33 Inferior temporal gyrus Right
44 –30 –21 Fusiform gyrus Right
41 1 –14 Superior temporal gyrus Right
52 12 8 Superior temporal gyrus Right
354
2 2 –10 Anterior cingulum Right
1 –1 1 Caudate Right
–9 6 14 Caudate Left
597
–43 –16 10 Insula Left
–52 –33 24 Inferior parietal lobule Left
632
43 –12 –6 Insula Right
39 –19 19 Insula Right

Table 5 Significant white matter deficits in epilepsy+psychosis group v. epilepsy-only groupa

Talairach and Tournoux coordinates
Cluster size: voxels, n x y z Region Hemisphere
1733 –41 –8 –27 Fusiform gyrus Left
–36 –6 –23 Inferior temporal gyrus Left
–36 –8 –20 Parahippocampal gyrus Left
–36 –18 –13 Hippocampus Left
–44 –7 –10 Middle temporal gyrus Left
–29 –50 3 Lingual gyrus Left
–13 16 3 Anterior limb of internal capsule Left
–33 –43 6 Posterior thalamic radiation Left
–14 22 8 Genu of corpus callosum Left
–14 16 10 Caudate Left
–21 –41 17 Splenium of corpus callosum Left
–14 –15 27 Cingulum Left
1106
35 –4 –23 Inferior temporal gyrus Right
49 –24 –16 Fusiform gyrus Right
14 –15 –13 Midbrain Right
32 –16 –9 Hippocampus Right
31 –18 –6 Parahippocampal gyrus Right
41 –27 2 Posterior thalamic radiation Right
45 –27 5 Superior temporal gyrus Right
22 18 6 Anterior limb of internal capsule Right
21 20 14 Genu of corpus callosum Right
28 –36 20 Splenium of corpus callosum Right
18 –1 26 Cingulum Right

Discussion

Main findings

Although Slater and colleagues Reference Slater and Beard8 observed the occurrence of schizophrenia-like psychoses in association with epilepsy some 50 years ago, very few MRI studies have been undertaken since then and even fewer have attempted to accurately quantify in vivo the brain changes seen in the psychoses related to temporal lobe epilepsy. In this study we conducted the first ever comparison (at a whole brain level) of grey and white matter tissue classes of a well-matched group of adults with temporal lobe epilepsy with psychosis versus those with temporal lobe epilepsy only, using unbiased automated voxel-based statistical methods. Each participant had a robust diagnosis of temporal lobe epilepsy based on clinical, neuroimaging and electrophysiological criteria. Further, individuals that had been clinically diagnosed with psychosis were then confirmed objectively via a validated polydiagnostic classification system and were subsequently matched with controls that had temporal lobe epilepsy only and were free from psychiatric disorder. The MRI scans were based on a standardised epilepsy brain imaging protocol to ensure homogeneity of scan parameters where the timing of MRI scan acquisition was close to the development of psychosis and therefore we explored the relationship between acute (rather than chronic) psychosis and potential brain changes. We found significant temporal and extratemporal lobe deficits among those with comorbid psychosis.

We found both grey and white matter regional deficits in temporal lobe epilepsy with psychosis compared with temporal lobe epilepsy only where deficits were mainly localised to the temporal lobe. For example, significant grey matter deficits were found in the medial temporal lobes in the left hippocampus and parahippocampal gyrus. These findings are compatible with the neuroanatomical and neuropsychological deficits described in schizophrenia. Reference Wright, Rabe-Hesketh, Woodruff, David, Murray and Bullmore18,Reference Pantelis, Velakoulis, McGorry, Wood, Suckling and Phillips40,Reference Seidman, Pantelis, Keshavan, Faraone, Goldstein and Horton41 However, we also found evidence of deficits bilaterally in the lateral temporal lobes and in extratemporal regions perhaps suggesting that the psychosis seen in temporal lobe epilepsy is the result of more widespread abnormalities.

Strengthening our argument that psychosis in temporal lobe epilepsy may be a more widely distributed disorder is the finding of grey matter deficits in the cingulum, insula and cerebellum; grey matter reduction in the insula and cingulum have been associated with psychosis Reference Shapleske, Rossell, Chitnis, Suckling, Simmons and Bullmore35,Reference Pantelis, Velakoulis, McGorry, Wood, Suckling and Phillips40 and the cerebellum is emerging as an organ not only involved in motor coordination but also in higher cortical functions. Abnormalities in the cerebellum have previously been postulated to result in a ‘cognitive dysmetria’ Reference Andreasen, Paradiso and O'Leary42 characterised by impairments in coordination of the perception, encoding, retrieval and prioritisation of experience and information and may arise from a defect in circuitry connecting the thalamus, frontal cortex and cerebellum. Although cerebellar grey matter deficits have been previously reported in people with temporal lobe epilepsy without comorbid psychiatric disorder, Reference Sandok, O'Brien, Jack and So43 given that there are reciprocal neural pathways between the hippocampus and cerebellum, the cerebellum in those with psychosis may perhaps be particularly vulnerable to excitotoxic damage as a result of its connectivity with a pathological hippocampus. Currently, cerebellar abnormalities are also recognised to contribute to the development of schizophrenia Reference Pantelis, Velakoulis, McGorry, Wood, Suckling and Phillips40,Reference Andreasen and Pierson44 and although we found evidence of grey matter reduction in the cerebellum, these were not specifically quantified and should be thus considered preliminary.

Pronounced white matter deficits were also found in our study in regions that included the corpus callosum, hippocampi, cingulum and parahippocampal gyri. Impaired intra- and inter-hemispheric connectivity has been suggested to play a major role in the development of schizophrenia Reference Shapleske, Rossell, Chitnis, Suckling, Simmons and Bullmore35,Reference Hoffman and McGlashan45 and currently there is strong evidence of widespread altered cortico–cortical and transcallosal connections between homologous brain regions in schizophrenia. Reference Brambilla and Tansella46 Abnormalities in such tracts may also contribute to the development of psychosis seen in temporal lobe epilepsy. Given our finding of greater white matter content deficits relative to grey matter in temporal lobe epilepsy with psychosis, assessment of white matter microstructure and connectivity should therefore be considered in future studies using a combination of VBM and advanced neuroimaging techniques such as diffusion tensor imaging as has been applied in other disorders where white matter is preferentially affected. Reference Sundram, Campbell, Azuma, Daly, Bloemen and Barker47

Fig. 2 Ascending transverse sections demonstrating regional grey matter reduction (blue) in participants with temporal lobe epilepsy with psychosis (image is flipped so left is right and right is left).

Findings from other studies

Although the left temporal lobe has been associated with temporal lobe epilepsy with psychosis in older reports, Reference Currie, Heathfield, Henson and Scott48 the literature is not entirely consistent. Reference Sachdev49 Suboptimal matching may have contributed to this inconsistency. Furthermore, the majority of studies have employed manual volumetric region of interest techniques for example hand-tracing or stereology that may not be easily reproducible. One such manual volumetry study that compared temporal lobe epilepsy, temporal lobe epilepsy with psychosis and schizophrenia with healthy controls via hand-tracing methods reported ventricular enlargement and smaller temporal, frontal and parietal lobes and superior temporal gyrus grey matter volumes in all groups with the most pronounced differences being found in the temporal lobe epilepsy with psychosis group. Reference Marsh, Sullivan, Morrell, Lim and Pfefferbaum14 Based on their findings, the authors concluded that cortical grey matter deficits in temporal lobe epilepsy with psychosis and schizophrenia predispose to chronic psychosis.

In another manual volumetry study, participants with temporal lobe epilepsy with psychosis were reported to have smaller total brain volumes than either individuals with temporal lobe epilepsy alone or healthy volunteers. No group differences were observed in hippocampal volumes, although bilateral amygdala enlargement of the order of 16–18% was reported in those with temporal lobe epilepsy with psychosis. Reference Tebartz Van Elst, Baeumer, Lemieux, Woermann, Koepp and Krishnamoorthy15 However, as some of the participants with temporal lobe epilepsy only were dysthymic, this may have confounded findings. Hippocampal volume deficit was found in a further manual volumetry study of temporal lobe epilepsy with psychosis relative to healthy controls where the left hippocampus was reported as significantly smaller than the right. Reference Marchetti, Azevedo, de Campos Bottino, Kurcgant, de Fatima Horvath Marques and Marie16

Overall, manual volumetry-based studies of temporal lobe epilepsy with psychosis have not reported consistent findings. Keller and colleagues Reference Keller, Mackay, Barrick, Wieshmann, Howard and Roberts20 argue that there are inherent difficulties with manual volumetry (for instance stereology) that may account for such inconsistent evidence. For example, there is subjectivity associated with point counting on MRIs and in judgement of boundaries of structures under investigation (e.g. delineation between hippocampus, white matter and cerebrospinal fluid). These differences in judgement may lead to differing volume estimates between raters. Additionally, the calibration of MRIs with settings such as image brightness may influence the perception of brain tissue contrasts. Despite the inconsistencies reported with manual volumetry, automated techniques have only been applied on a limited basis in temporal lobe epilepsy with psychosis.

Fig. 3 Ascending transverse sections demonstrating regional white matter reduction (blue) in participants with temporal lobe epilepsy with psychosis. (image is flipped so left is right and right is left).

In one such automated computerised statistical study, Reference Rusch, Tebartz van Elst, Baeumer, Ebert and Trimble17 the authors retrospectively explored cortical grey matter differences between 26 participants with temporal lobe epilepsy with psychosis, 24 with temporal lobe epilepsy only and 20 healthy comparisons. This was the same cohort as previously examined by Tebartz Van Elst and colleagues; Reference Tebartz Van Elst, Baeumer, Lemieux, Woermann, Koepp and Krishnamoorthy15 VBM based on SPM99 was used to assess for morphometric differences and no significant cortical grey matter differences between the temporal lobe epilepsy with psychosis and the temporal lobe epilepsy only groups were found. However, the temporal lobe epilepsy only group showed a significant increase in grey matter concentration in the right temporal lobe relative to healthy controls. The authors concluded that since they observed no differences between temporal lobe epilepsy with psychosis and the temporal lobe epilepsy only groups, and since cortical pathology is prominent in schizophrenia, Reference Wright, Rabe-Hesketh, Woodruff, David, Murray and Bullmore18 temporal lobe epilepsy with psychosis may represent a clinically distinct entity from schizophrenia.

In another VBM analysis, 20 people with temporal lobe epilepsy with psychosis were compared with 20 participants with temporal lobe epilepsy without psychosis where they were matched with respect to conventional MRI findings. Reference Flugel, Cercignani, Symms, Koepp and Foong50 Global and hippocampal volumes were assessed. No significant differences were found between those with and without psychosis but significant reductions of magnetisation transfer ratio (an index of signal loss derived from magnetisation transfer imaging) in the absence of atrophy was found in the left superior and middle temporal gyri in participants with psychosis.

Our finding of cortical grey matter abnormalities are in keeping with those of Flugel and colleagues Reference Flugel, Cercignani, Symms, Koepp and Foong50 but contrast with those of Rusch et al. Reference Rusch, Tebartz van Elst, Baeumer, Ebert and Trimble17 Although our sample size was smaller than that of Rusch et al (26 v. 10 with temporal lobe epilepsy with psychosis), the participants in our study were more tightly matched for psychiatric disorder and handedness. Furthermore, Rusch and colleagues utilised a neuroimaging protocol involving a brain template derived from healthy participants. Given that individual variability of brains in the study population is substantially increased by injury or disease, achieving satisfactory alignment across individual brains may have resulted in registration difficulties. Additionally, we report widespread grey and white matter changes not confined to the temporal lobes where our findings may contrast with previous automated statistical methods as our approach utilised instead unified segmentation that combined tissue classification, bias correction and non-linear warping within the same framework Reference Ashburner and Friston31 and our non-parametric or distribution-free hypothesis testing procedure permits us to use cluster-level statistics even if their distribution is non-Gaussian (even after smoothing).

Limitations

There are other methodological considerations and limitations to our study. We only used MRI data-sets from 2002 onwards so as to ensure homogeneity of scans while applying strict exclusion criteria for recruitment into the study; although this may have limited the number of participants and affected the power of our study, there are several other studies that have applied VBM in schizophrenia where significant differences in grey and white matter have been reported using similar sample sizes. Reference Sowell, Levitt, Thompson, Holmes, Blanton and Kornsand51,Reference Kubicki, Shenton, Salisbury, Hirayasu, Kasai and Kikinis52 Therefore it is unlikely that type I error fully accounts for our findings.

The clinical psychiatric diagnoses that were obtained through neuropsychiatric assessment were not achieved through formal structured clinical interviews but they contained comprehensive clinical information that could be retrospectively evaluated through OPCRIT. Future studies investigating temporal lobe epilepsy with psychosis may wish to consider a methodological design that prospectively examines individuals with temporal lobe epilepsy through structured clinical interviews, for example the Structured Clinical Interview for DSM–IV, Reference First, Gibbon, Spitzer, Williams and Benjamin53 and further, to utilise objective rating scales for psychosis, for example the Brief Psychiatric Rating Scale Reference Kay, Fiszbein and Opler54 or the Positive and Negative Syndrome Scale. Reference Overall and Gorham55 However, to recruit reasonable numbers prospectively would take many years; despite our retrospective recruitment, finding appropriate participants once exclusion criteria have been applied (surgery, tumours, etc.) left us with ten participants in a 4-year period; thus recruitment is a problem in the study of temporal lobe epilepsy with psychosis.

Moreover, in a recent study, although widespread neocortical abnormalities were found in both temporal lobe epilepsy with and without mesial sclerosis, the pattern of thinning in the former contrasted with the latter; which led the authors to suggest that these might constitute two distinct temporal lobe epilepsy syndromes. Reference Mueller, Laxer, Barakos, Cheong, Garcia and Weiner56 Future studies may wish to separately characterise the neurobiology of these disorders. Similarly, the assessment of post-ictal and inter-ictal forms of psychoses related to temporal lobe epilepsy should perhaps be investigated separately in future studies. However, when these factors are taken together, they may restrict further the overall number of study participants and given that it is not uncommon for the post-ictal form to progress to the inter-ictal variant, Reference Tarulli, Devinsky and Alper57 assessing both forms of psychoses in the same study represents a valid approach. Reference Rusch, Tebartz van Elst, Baeumer, Ebert and Trimble17

We did not include normal controls in the study as we were primarily interested in the brain changes in temporal lobe epilepsy associated specifically with psychosis rather than the effects of epilepsy. Further, the absence of a control group is because this was a study based on an epilepsy patient database and therefore no individuals without epilepsy were recruited. However, the lack of a healthy control group limits the extent to which we can interpret our findings in the context of the general population. The current literature would suggest that people with temporal lobe epilepsy will have some regional volume loss compared with healthy controls, usually ipsilaterally and predominantly in temporal lobe regions. Undoubtedly, the recruitment of healthy controls poses an ongoing need and future studies at our centre should involve a healthy comparator group so as to enable meaningful differentiation of brain changes across both healthy and disease groups.

Tissue loss commonly affects disease groups, and tissue gain is less likely (apart from for instance a developmental disorder that might be accounted for by ‘differential pruning’). In our study, however, clearly both groups are ‘disease groups’ with tissue loss most likely occurring in both. Even if the differences we are seeing are being driven by the non-psychosis group (i.e. grey matter increase), this still implies that these regions are somehow affected. It may also reflect that the psychosis group could be lacking a potential ‘neuroprotective response’ that is preventing the controls with temporal lobe epilepsy only from developing psychosis. Although this is one possibility, another is that SPM99 has been used in previous reports in temporal lobe epilepsy, whereas we have used SPM5 with better algorithms for tissue classification and bias correction. Indeed, Keller and colleagues Reference Keller, Mackay, Barrick, Wieshmann, Howard and Roberts20 suggest that the grey matter concentration excesses they found using SPM99 in their study reflects diminished grey–white matter demarcation, underlying white matter atrophy, or structural displacement as a result of cerebrospinal fluid expansion. This may also have accounted for an apparent increase in grey matter concentration in temporal lobe epilepsy relative to healthy controls in the report by Rusch and colleagues. Reference Rusch, Tebartz van Elst, Baeumer, Ebert and Trimble17

Implications

Overall, our study recruited a population of people with temporal lobe epilepsy with strong diagnostic validity (both neurological and psychiatric) and through VBM, permitted an unbiased computerised statistical analysis of grey and white matter measures. The findings show that participants with temporal lobe epilepsy with psychosis have marked cortical, subcortical and extratemporal grey and white matter deficits compared with those with temporal lobe epilepsy alone and thus provide support for the psychosis literature that also shows this pattern of change. Our study has provided evidence allowing specific hypotheses to be tested in future studies, although recruitment of suitable individuals to investigate may prove to be an issue. Owing to such difficulties, it is important to conduct ‘pilot’ work such as ours to determine very specific hypotheses before attempts are made to recruit even larger cohorts.

Acknowledgements

We thank all those who participated in this study. We are grateful to the radiographers at the Beaumont Hospital MRI scanner for their help at scanning sessions.

Footnotes

M.C. was funded by a Clinician Scientist Award (CSA/2004/1) from the Health Research Board (Ireland) and an Essel Foundation Independent Investigator award from NARSAD (USA).

Declaration of interest

C.P.D. is on the advisory boards for Eisai and UCB Pharma and has received educational funding from Janssen-Cilag. G.J.B. has received honoraria for lecturing for GE Healthcare.

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Figure 0

Fig. 1 Summary of participant selection. MRI, magnetic resonance imaging.

Figure 1

Table 1 Characteristics of cohort: epilepsy+psychosis v. epilepsy-only group

Figure 2

Table 2 Clinical characteristics and prescribed antipsychotic and anti-epileptic medication in epilepsy+psychosis group and anti-epileptic medication in matched epilepsy-only group

Figure 3

Table 3 Median total volume of tissue classes in epilepsy+psychosis v. epilepsy-only group

Figure 4

Table 4 Significant grey matter deficits in epilepsy+psychosis group v. epilepsy-only groupa

Figure 5

Table 5 Significant white matter deficits in epilepsy+psychosis group v. epilepsy-only groupa

Figure 6

Fig. 2 Ascending transverse sections demonstrating regional grey matter reduction (blue) in participants with temporal lobe epilepsy with psychosis (image is flipped so left is right and right is left).

Figure 7

Fig. 3 Ascending transverse sections demonstrating regional white matter reduction (blue) in participants with temporal lobe epilepsy with psychosis. (image is flipped so left is right and right is left).

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