A STUDY OF ELECTROENCEPHALOGRAPHY IN PATIENTS ADMITTED AT A PSYCHIATRIC HOSPITAL

Document Type : Original Article

Authors

Neuropsychiatry Department, Faculty of Medicine, Benha University

Abstract

Background: Incidence of electroencephalography (EEG) changes rise in psychiatric patients due to psychiatric disorders itself and also due to psychotropic drugs with fugue symptoms between psychiatric disorders and neurological disorders.
Objective: Evaluation of the EEG changes in patients admitted at Ahmed Galal Military Psychiatric Hospital.
Patients and Methods:Two hundred and sixty adult male patients were studied by ICD psychometric assessment as symptom check list, socio – demographic assessment, semi – structural interview, and standard EEG.
Results: Twenty patients have EEG changes, while other remaining two hundred and forty patients showed no EEG changes.  From all patients having EEG changes, about 4.6 % (n=12) have grade I changes, and 3.1% (n=8) havinggrade II changes.
Conclusion: EEG changes can help in psychometric assessment.

Keywords


A STUDY OF ELECTROENCEPHALOGRAPHY IN PATIENTS ADMITTED AT A PSYCHIATRIC HOSPITAL

 

By

 

Mohammed Mostafa EL-Hammady, Khaled Sabry EL-Attar,

Shaimaa Mohammed Kasem and Emad Mahmoud Gebriel

 

Neuropsychiatry Department, Faculty of Medicine, Benha University

 

 

ABSTRACT

Background: Incidence of electroencephalography (EEG) changes rise in psychiatric patients due to psychiatric disorders itself and also due to psychotropic drugs with fugue symptoms between psychiatric disorders and neurological disorders.

Objective: Evaluation of the EEG changes in patients admitted at Ahmed Galal Military Psychiatric Hospital.

Patients and Methods:Two hundred and sixty adult male patients were studied by ICD psychometric assessment as symptom check list, socio – demographic assessment, semi – structural interview, and standard EEG.

Results: Twenty patients have EEG changes, while other remaining two hundred and forty patients showed no EEG changes.  From all patients having EEG changes, about 4.6 % (n=12) have grade I changes, and 3.1% (n=8) havinggrade II changes.

Conclusion: EEG changes can help in psychometric assessment.

Keywords:  Psychiatric disorders, Electroencephalography, Semistructural interview, Symptom check list, Psychotropic drugs.

 

  

 

INTRODUCTION

     Electroencephalography (EEG) is primarily of use in diagnosing epilepsy and other brain diseases, but there are other reasons why EEG is also an important diagnostic test in psychiatric practice (Herigstad, 2013). EEG could easily detect medications side effects as shown in EEG slowing due to the effect of clozapine (Wichniak et al., 2006).

     The aim of this study was to evaluate the EEG changes in patients admitted at Ahmed Galal Military Psychiatric Hospital by finding out the relation between certain diagnosis, psychotropic drugs and EEG changes.

PATIENTS AND METHODS

     This study was conducted at Ahmed Galal Military Psychiatric Hospital within the period from January to December 2015 on 260 patients. Those patients were subjected to full history, thorough clinical examination, routine laboratory investiga-tions, and ICD psychometric assessment by symptom check list, socio – demographic assessment, semi – structural interview, and standard EEG. The EEG degrees of abnormality were classified according to Tan et al. (2009).

Ethical consideration: An informed written consent was obtained from the hospitalized patient before participation. It included data about aim of the work, study design, site, time, subject, tool and confidentiality. An approval from Research Ethics Committee in Benha Faculty of Medicine was obtained.

Statistical analysis: The collected data were tabulated and analyzed using SPSS version 16 software (Spss Inc., Chicago, ILL Company). Categorical data were presented as number and percentages while quantitative data were expressed as mean ± standard deviation and range. Chi square test (X2), or Fisher's exact test (FET), were used to analyze categorical variables. Continuous variables were presented as mean and standard deviation using "Student t" test for analyzing them. Other suitable tests of significance were used if indicated according to the situation. The accepted level of significance in this work was stated at 0.05 (P<0.05 was considered significant).

RESULTS

      Out of the studied 260 patients, 20 patients from all studied patients had EEG changes. They have more than one disorder, i.e. twelve with depressive disorders, seven with border line persona-lity disorder, three with schizophrenia, two with brief psychotic disorder, two with substance abuse, two with mania, and one with generalized anxiety disorder (GAD), and one with schizoaffective, one with somatization disorder, one with conversion disorder.

     The majority of psychiatric patients (96.5%) were in the aged group of 20-30years, and the most studied patients were from village 54.6 %.  Regarding educational level of psychiatric patients, 63.1% of them were educated till secondary school, 18.8 were Illiterate, 9.6 have only a primary school study, and 8.5 % were educated till college. Concerning the occupational state of psychiatric patients, 55 % of them were not working, and 45 % of them were still working, 10 % of the patients were married, and the other 90 % were single. The socio-economic status was more common in middle status (85 %).  27.3 % were non smokers, and the others have variable smoking packages.  Percentage of substance abuse was 8.1% especially for cannabinoid 0.2 % > opioids 1.9 % (Table 1).

 

 

 

Table (1): Socio-demographic characters of the studied patients.

Variables

No.  (N=260)

%

Age (ys)

20-30

251

96.5

> 30-40

5

1.9

>40

4

1.5

Residence

Town

91

35.0

Village

142

54.6

Urban village

27

10.4

Level of education

Illiterate

49

18.8

Primary school

25

9.6

Secondary school

164

63.1

College

22

8.5

Occupation

Not working

143

55.0

Farmer

19

7.3

Worker

38

14.6

Specialist (professional)

60

23.1

Source of income

His family

146

56.2

His work

114

43.8

Marital status

Single

234

90.0

Married

26

10.0

Family size

Mean ±SD, (range)

6.2±1.5 (2-11)

Handedness

Right

260

100.0

Socio-economic status

Low

30

11.5

Middle

221

85.0

High

9

3.5

Smoking

Non

71

27.3

Sporadic

134

51.5

One pack

45

17.3

2 packs

10

3.8

Drug abuse

No

239

91.9

Opioids

5

1.9

Cannabinoid

16

6.2

 

 

     The most common psychiatric disorder was depression (33.1% - n=86) from depressive disorder, 12 cases (14 %) have EEG changes, and 74 cases (86 %) have no EEG changes.

     Schizophrenia was 4.2 %( n=11), 3 cases (27.3%) have EEG changes, and 8 cases (72.7%) have no EEG changes.

       Border line personality disorders were 7 cases (13 %) having EEG changes, and brief psychosis (2 cases - 9.1%) having EEG changes, and substance abuse 2 cases (9.5%) having EEG changes, and mania (2 cases - 13.3%) having EEG changes, and GAD (1 cases - 10%) having EEG changes, and schizoaffective disorder (1 cases - 11.1%) having EEG changes, and conversion disorders (1 cases - 7.1%) having EEG changes, and somatization disorder (1 cases - 12.5%) having EEG changes.

      Acute stress reaction, obsessive compulsive disorder (OCD), schizoid personality disorder, post traumatic stress disorder (PTSD), malingering,dysthymia disorder, sleep disorders    (non organic), and panic disorder were all cases having no EEG changes.

     The least psychiatric disorders with EEG changes were 1 case for each of schizoaffective disorder, GAD, Somatization disorder and Conversion disorder.

      The highest psychiatric disorders with EEG changes were 12 cases for depression and 7 cases for borderline personality disorder (Table 2).


 

Table (2): Comparison of EEG changes presence in different psychiatric disorders of the studied patients.

Variables

 

 

No EEG changes (N=240)

EEG changes (N=20)

Total

(N=260)

P

No.

%

No

%

No.

%

Schizophrenia

No

232

93.2%

17

6.8%

249

100%

0.043

 

Yes

8

72.7%

3

27.3%

11

100%

Depression

N0

166

95.4%

8

4.6%

174

100%

0.008

 

Yes

74

86%

12

14%

86

100%

PTSD

No

225

91.8%

20

8.2%

245

100%

0.61

 

Yes

15

100%

0

0

15

100%

Substance abuse

No

221

92.5%

18

7.5%

239

100%

0.67

 

Yes

19

90.5%

2

9.5%

21

100%

GAD

No

231

92.4%

19

7.6%

250

100%

0.56

 

Yes

9

90 %

1

10%

10

100%

OCD

N0

235

92.2%

20

7.8%

255

100%

0.72

 

Yes

5

100%

0

0

5

100%

Borderline personality disorder

No

193

93.7%

13

6.3%

206

100%

0.15

 

Yes

47

87%

7

13%

54

100%

Schizoaffective disorder

No

232

92.4%

19

7.6%

251

100%

1.0

 

Yes

8

88.9%

1

11.1%

9

100%

Malingering

No

204

91.1%

20

8.9%

224

100%

0.09

 

Yes

36

100%

0

0

36

100%

Somatization disorder

N0

233

92.5%

19

7.5%

252

100%

0.48

 

Yes

7

78.5%

1

12.5%

8

100%

Conversion disorder

No

227

92.3%

19

7.7%

246

100%

1.0

 

Yes

13

92.9%

1

7.1%

14

100%

Mania   

No

227

92.7%

18

7.3%

245

100%

0.32

 

Yes

13

86.7%

2

13.3%

15

100%

Dysthymia disorder

No

237

92.2%

20

7.8%

257

100%

1.0

 

Yes

3

100%

0

0

3

100%

Brief psychosis

N0

220

92.4%

18

7.6%

238

100%

1.0

 

Yes

20

90.9%

2

9.1%

22

100%

Histrionic personality disorder

No

236

92.2%

20

7.8%

256

100%

1.0

 

Yes

4

100%

0

0

4

100%

Adjustment disorder

N0

217

91.6%

20

8.4%

237

100%

0.23

 

Yes

23

100

0

0

23

100%

Schizoid personality disorder

No

238

92.2%

20

7.8%

258

100%

1.0

 

Yes

2

100%

0

0

2

100%

Antisocial personality disorder

No

227

91.9%

20

8.1%

247

100%

1.0

 

Yes

13

100%

0

0

13

100%

Avoidant personality disorder

N0

237

92.2%

20

7.8%

257

100%

1.0

 

Yes

3

100%

0

0

3

100%

Acute stress reaction

No

238

92.2%

20

7.8%

258

100%

1.0

 

Yes

2

100%

0

0

2

100%

Panic disorder

 

No

239

92.3%

20

7.7%

257

100%

1.0

 

Yes

3

100%

0

0

3

100%

Sleep disorder(non organic)

N0

237

92.2%

20

7.8%

257

100%

1.0

 

Yes

3

100%

0

0

3

100%

 

 

     The studied patients showed that about (n=3) have EEG changes not used any psychotropic drugs, and (n=1) had EEG changes usedonly antipsychotic drugs, and (n=6) had EEG changes used(SSRI),and (n=10) had EEG changes usedMixed drugs (Antipsychotic+ Antidepressant +Mood stabilizer).

     There was no statistical significant variation between psychotropic drugs and EEG changes (Table 3).


 

 

Table (3): Association between psychotropic drugs and EEG changes.

                                                                                     EEG

Psychotropic drugs                                                     

 

No

 

Yes

Non-Psychotropic drugs:

   Count

    %

58

3

95.1%

4.9%

Antipsychotic drugs:

    Count

     %

1

1

50.0%

50.0%

Tricyclic antidepressant (TCA) drugs:

     Count

      %

7

0

100.0%

.0%

Selective serotonin reuptake inhibitor(SSRI)

&Serotonin noradrenalin reuptake inhibitor (SNRI)

& Serotonin dopamine reuptake inhibitor (SDRI) drugs:

     Count

      %

110

6

94.8%

5.2%

Mixed drugs(Antipsychotic+ Antidepressant +Mood stabilizer):

     Count

      %

64

10

86.5%

13.5%

Total

     Count

240

20

      %

92.3%

7.7%

 

 

     The studied sample showed that only 7.7 % (n=20) have EEG changes, while the remaining   (n= 240, 92.3%) have no EEG changes. Only 4.6 % (n=12) have EEG changes of grade I, and 3.1 %( n=8) have EEG changes of grade II (Table 4).


 

Table (4): Prevalence of EEG changes among the studied patients.

Prevalence of EEG changes

No.

%

 

No EEG changes

240

92.3

 

EEG changes

20

7.7

Abnormal EEG grade I

12

4.6%

Abnormal EEG grade II

8

3.1%

Total

260

100.0


 

 

     There was a significant variation of for EEG changes among schizophrenic patients (P value 0.043).

     It was found that 11 cases of schizophrenia (4.2 %), only 3 cases have EEG changes (27.3 %), and 8 cases (72.7 %) have no EEG changes. Twelve patients (14 %) with depression have EEG changes, and those depressed patients have other psychiatric disorders with EEG changes   (Table 5).

 

 

Table (5): EEG changes among schizophrenic patients, and depressive disorder patients.

                                                     EEG

 

    Schizophrenia

No EEG changes

with EEG changes

Total

P

No

        Count

232

17

249

 

 

 

0.043

 

 

93.2%

6.8%

100.0%

Yes

        Count

8

3

11

 

72.7%

27.3%

100.0%

Total

        Count

240

20

260

 

 

92.3%

7.7%

100.0%

 

                                                     EEG

 

    Depression

No EEG changes

with EEG changes

Total

P

No            Count

 

166

8

174

 

 

 

0.008

95.4%

4.6%

100.0%

Yes           Count

 

74

12

86

86.0%

14.0%

100.0%

Total         Count

240

20

260

 

92.3%

7.7%

100.0%

 

               


DISCUSSION

     Electroencephalography is primarily of use in diagnosing epilepsy and other brain diseases, but there are many reasons why EEG is also an important diagnostic test in psychiatric practice because there is       co -morbidity between severe psychiatric disorder and epilepsy. EEG may also be useful in classification of mood disorders and treatment selection.

     Out of the studied 260 patients, about 7.7 % demonstrated EEG patterns of various forms. Twenty patients with different psychiatric diagnoses had abnormal EEG changes grading between grade I &grade II but grade III of epileptogenic focus was not demonstrated.

     As strongly suggested by numerous studies and the work of John and Gregory (2003) it is demonstrated that the most frequent reason for EEG request amongst psychiatric patients in their study was to exclude epilepsy. It has become evident that EEG abnormalities do existin psychiatric patients despite the presence of a diagnosis of epilepsy. The presence of abnormal EEG findings and its relevance in non epileptic psychiatric patients, adds to the controversy that exist regarding the use of EEG amongst psychiatric patients.

     In this study, although depression was the highest percentage of psychiatric disorder with EEG changes, these changes consisted mainly of diffuse slowness or slowness of the background grade I.  

     Fingelkurts et al. (2006) founded that considerable reorganization of the composition of brain oscillations in a broad frequency range: 0.5–30 Hz in major depression with maximal effect of depression in the posterior cortex of the brain.

     From the study, it was not clear which age group category demonstrated highest prevalence of EEG changes. Majority of the sample population belonged to the
20 - 30 year group category.

     Davidson et al. (2007) founded that frontal asymmetry in the alpha band in depressed patients that differs from healthy subjects. According to Davidson’s theory, it reflects left frontal hypoactivation in depression Henriques and Davidson (2007).

     Volf and Passynkova et al. (2002) documented an increase of slow-wave activity in the right hemisphere while Flor-Henry et al. (2004) reported an increase of beta power in the frontal region as well in posterior cortical areas.

Regarding schizophrenia from eleven patients (4.2%), only 3 cases had EEG changes (27.3 %) but there was a significant variation of for EEG changes among schizophrenic patients.

     Narayanan et al. (2013) reported that increased EEG frequency components E2 (delta) and E4 (theta) in schizophrenia, while Andreou et al. (2015) reported an increased gamma activity in left hemisphere sources localized in the infero-orbitofrontal, lateral, and medial temporal and inferior parietal areas. Interestingly, schizophrenia with low positive and disorganization symptoms showed higher gamma connectivity.

     Dejean et al. (2011)attributed it to dopamine, a key neurotransmitter in the pathophysiology of schizophrenia. As the action of dopamine receptor antagonists in suppressing the gamma activity in humans and in animal models, we could speculate that prolonged exposition to antipsycho-tics might account for the decreased gamma connectivity. Gonzalez-Burgos et al. (2012)stated that GABAergic interneuron with glutamate regulating effect through N-methyl-D-aspartate (NMDA) receptors have been postulated to be responsible for the dysfunction of gamma oscillations observed in schizophrenia.

     Van den Heuvel and Fornito (2014) concluded thatschizophrenia was hypothesized to result from a disrupted structural and functional connectivity within the brain. Hence, abnormalities of oscillatory gamma activity may reflect a core pathophysiological mechanism underlying cognitive disturbances and other symptoms of schizophrenia.This is further supported by evidence of the crucial role of a microcircuit involving parvalbumin-positive GABAergic inter-neuron and glutamatergic pyramidal cells for the generation of gamma oscilla-tions, which is disrupted in patients with schizophrenia and in pharmacological or genetic models of the illness.

     There was no statistical significant variation between psychiatric medications and EEG changes.

     Gross et al. (2006) reported that the symptoms of schizophrenia are caused by the dysfunction of multiple cortical and sub cortical brain structures; this may explain inconsistent and sometimes contradictory QEEG findings in these patients. Gross et al. (2006) studied EEG changes in schizophrenic patients during 18 weeks of CLO treatment, which showed a significant increase in theta power after three weeks of CLO treatment. Srivastava et al. (2006) concluded that EEG abnormalities were observed in 63.2% of patients. Both slowed wave and epileptiform activities were noted in 41.4% of patients. However, these EEG abnormalities are not associated with dose or duration of clozapine exposure.

     Hubl et al. (2001) reported that QEEG alterations after olanzapine administration were similar to EEG effects gained by other atypical antipsychotic drugs, such as clozapine. The increase of theta activity is comparable to the frequency distribution observed for thymoleptics or antipsycho-tics for which treatment-emergent somno-lence is commonly observed, whereas the decrease of beta activity observed after olanzapine administration is not charac-teristic for these drugs. There were no clear signs for an increased cerebral excitability.

     In contrast to this study, Hofer et al. (2007) reported that there is no significant relationship between EEG and clinical response.

     Boutroset al. (2011) documented thatonly clozapine has been adequately studied and has been found to bear a high risk of epileptic seizures. Clozapine induces a generalized slowing of EEG, which might be dose-dependent and epileptiform abnormalities. Olanzapine has been associated to generalized slowing, and occasional epileptiform activities, particularly with toxic effects, while risperidone and quetiapine seem to be associated with less frequent EEG abnormalities.

     There is a lot of promising research demonstrating that there are EEG measures which might predict treatment outcome. However, none of these baseline measures have achieved a level of research warranting its use in clinical practice.

     Furthermore, at this moment given the wealth of data there is a need for a theory or model which integrates these findings and can make better predictions on the use of EEG in predicting treatment outcome and explaining the relationship between such EEG predictors and the behavioral complaints in depression and schizo-phrenia.

CONCLUSION

     EEG is indicated in patients with psychiatric illness. The purpose of using EEG is to examine whether the patient may have epileptic or slow EEG activity. Epileptiform activity is a specific sign of epileptic etiology or co -morbidity. Slow EEG activity may be a non-specific sign of brain disease, which should generally prompt further assessment. Diagnostic EEG should be interpreted by a specialist in clinical neurophysiology. There are so many sources of error that must be identified and eliminated that any QEEG analysis should only be carried out as a supplement to a visual EEG interpretation. Pathological EEG findings will increase the indication for use of antiepileptic drugs compared with other psychotropic drugs, irrespective of the psychiatric core symptoms. 

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دراسة لنتائج رسم المخ الکهربائی فی المرضى المحتجزین فی مستشفى للأمراض النفسیة

 

محمد مصطفى الحمادی- خالد صبری العطار- شیماء محمد قاسم- عماد محمود جبریل

 

قسم أمراض المخ والأعصاب والطب النفسى- کلیة الطب- جامعة بنها

 

خلفیة البحث:  هناک حالات أکثرشیوعا فی  المرضى النفسیین تحدث لهم تغیرات فى رسم المخ الکهربائى ولیس عندهم أى أمراض عضویة أوأمراض أعصاب. ویرجع  ذلک  إما  لطبیعة المرض النفسى، أو لبعض الأدویة الخاصة بالأمراض النفسیة مع وجودغموض بین بعض الأعراض التى تتشابه وتتداخل بین الأمراض النفسیة وأمراض الأعصاب.

الهدف من البحث:  تقییم التغییرات التی تحدث فی رسم المخ الکهربائی المصاحب للمرضى المحتجزین بمستشفى أحمد جلال العسکری للطب النفسی.

مواد وطرق البحث:  تمت هذه الدراسة  على  260 مریض  من متوسطى العمرمن الذکور،وکل المرضى تعرضوا إلىقائمة إختبار الأعراض للتصنیف الطبى الدولى العاشر، وتقییم إجتماعى دیموغرافى، والمقابلة اللإکلینیکیة الموجزة، وعمل رسم مخ کهربائى.

النتائج:العینة المدروسة بها فقط عشرین مریضا (77%)  لدیهم تغییرات فى رسم المخ الکهربائى، بینما الباقى  لم یکن لدیهم تغییرات فی رسم المخ الکهربائى وأن4,6% منهم فقط  کان لدیهم تغییرات فی رسم المخ الکهربائى من الدرجة الأولى بینما کان 3,1%  لدیهم تغییرات فى رسم المخ الکهربائى من الدرجة الثانیة.

الإستنتاج: تغیرات رسم المخ الکهربائى من الممکن أن تساعد فى التقییم النفسى .  

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