Antipsychotic medications have been associated with significant rates of cardiovascular adverse effects and instances of sudden unexplained death (Reference Ruschena, Mullen and BurgessRuschena et al, 1998; Reference Appleby, Thomas and FerrierAppleby et al, 2000). Retrospective studies conclude that cardiovascular mortality in psychiatric patients is higher than in the general population, especially in patients with schizophrenia treated with antipsychotic drugs (Reference Ruschena, Mullen and BurgessRuschena et al, 1998; Reference Chute, Grove and RajasekharaChute et al, 1999). Disturbances of electrical conduction, especially ventricular repolarisation, have been attributed to a variety of neuroleptic drugs. Most sudden deaths of cardiac origin are attributed to ventricular tachycardia and/or fibrillation, in which the autonomic nervous system (ANS) may play an important role. One reliable method for quantifying ANS activity is the analysis of heart rate variability (HRV) (Reference Akselrod, Gordon and UbelAkselrod et al, 1981). The aim of this study was to apply power spectral analysis of HRV as a tool to assess the potential arrythmogenic effects of a variety of antipsychotic medications, both classic and atypical.
METHOD
Subjects
Fifty-six patients who met DSM-IV (American Psychiatric Association, 1994) criteria for schizophrenia, as assessed by the Schedule for Affective Disorders and Schizophrenia (Reference Endicott and SpitzerEndicott & Spitzer, 1987), were recruited from the in-patient and out-patient treatment programmes at the Beer-Sheva Mental Health Center. None of the patients had a known history of cardiac abnormalities or any concomitant disease known to affect the autonomic nervous system. All patients were on neuroleptic monotherapy: 21 were treated with 300-700 mg/day clozapine, 18 with 5-10 mg/day haloperidol and 17 with 5-20 mg/day olanzapine.
Controls
It proved impossible both to recruit a sufficient number of untreated patients with schizophrenia, because these are rare in Israel today, and certainly to create an age— and gender-matched control group. We therefore used a healthy control group for comparison. The 53 healthy volunteers were matched for age, gender, smoking and time of day of electrocardiogram (ECG) recordings. None had any serious or disabling coexisting diseases. Controls had not taken any psychotropic or other medications known to alter autonomic activity for at least 4 weeks prior to the study.
The Helsinki Ethics Committee of the hospital approved the study. All participants gave their written consent after having received detailed information about the study.
Procedure
Electrocardiographic recordings were performed by connecting the subjects to a Holter monitor (Oxford 4-24) in a seated position at complete rest. After allowing 10 min for stabilisation, a 10-min ECG recording was made. Subjects were instructed to breathe normally and the respiratory rate was monitored by a strain-gauge-based respiration transducer, wrapped around the chest and abdomen halfway between the rib cage and navel.
Analysis of recordings
Electrocardiographic data were amplified, digitised (500 Hz, width pass=0.05-35 Hz) and stored using a personal-computer-based software system. QRS complexes were classified. Premature ventricular beats, electrical ‘noise’ or aberrant beats were rejected. The threshold for rejection was set at ±15% of the reference RR duration. The R-R intervals between normal QRS complexes were extracted and a regularly spaced time series was sampled at 2 Hz with the use of a low-pass filter. Finally, we transformed the time signal into a frequency signal by using a fast Fourier transform (Task Force, 1996).
Frequency domain analysis
Two frequency bands were calculated: the low-frequency (LF) band (0.04-0.15 Hz), which gives a measure of sympathetic activity with some influence from the parasympathetic nervous system; and the high-frequency (HF) band (0.15-0.40 Hz), which solely reflects parasympathetic activity. The area (ms2) under the curve was calculated for each frequency band. There is some disagreement over the low-frequency component. Some investigators regard it as a marker of sympathetic activity, whereas others consider it an index influenced by both sympathetic and vagal systems. To cancel out the influence of the parasympathetic activity on the low-frequency spectral power, the LF/HF ratio was calculated. This ratio provides a measure of the sympathovagal balance, where an increase in the LF/HF ratio reflects a predominance of sympathetic over parasympathetic activity. We calculated the total variability of the heart rate oscillations in the total power spectrum (0.01-0.4 Hz) as an expression of the overall variability. Because total power varies greatly between individual subjects, power was determined in both absolute units and as normalised values. The power in normalised units was calculated by dividing the absolute power of a given component (area under the component curve) by the total power minus the 0-0.04 Hz component.
An independent observer, who was ‘blind’ as to whether the data referred to a patient or a control subject, performed all ECG recordings.
Measurements of QT interval
The corrected QT interval was calculated by the method of Bazett (QTc=QT/(√RR)). The mean QT and the mean RR were used to calculate the mean QTc for each lead. Heart rate was derived from the mean of the RR intervals. The QT and RR intervals were measured manually with callipers by a single observer. The QT intervals were measured from the onset of the QRS complex to the end of the T wave. The end of the T wave was defined as the point of return to the isoelectric line.
Statistical analysis
To compare effects between groups, the variables were analysed by analysis of covariance (one-way ANCOVA), with age and smoking status as the covariates. Age was entered as a covariate because HRV decreases with increasing age (r=-0.81, r 2=0.66; P<0.01). Post hoc comparisons employed Scheffé's test. Because of the skewness of the data, logarithmic transformation was performed on the absolute units of the spectral components of the HRV before the statistical analysis.
RESULTS
Demographic data are presented in Table 1, and electrophysiological results in Table 2. Patients with schizophrenia taking clozapine had a significantly higher mean heart rate than those taking haloperidol or olanzapine or the control subjects (P=0.0002). As a group, the patients with schizophrenia showed a significantly higher mean heart rate than the matched controls (P=0.0017).
Patients treated with clozapine | Patients treated with haloperidol | Patients treated with olanzapine | Normal control group | |
---|---|---|---|---|
(n=21) | (n=18) | (n=17) | (n56) | |
I | II | III | V | |
Gender (n) | ||||
Female | 13 | 11 | 10 | 34 |
Age (years) | ||||
Mean (s.d.) | 32.8 (8.7) | 40.7(10.9) | 34.0(9.53) | 32.2(8.8) |
Range | 21-50 | 21-52 | 23-50 | 21-50 |
Smoking (n) | 16 | 11 | 12 | 39 |
DSM-IV diagnosis (n) | ||||
Schizoaffective disorder | 11 | 8 | 9 | |
Paranoid schizophrenia | 10 | 10 | 8 | |
Duration of illness (years) | ||||
Mean (s.d.) | 7.62(5.2) | 6.2(5.4) | 5.8(5.03) | |
Range | 2-20 | 1-18 | 1-16 | |
Treatment (mg/day) | ||||
Mean (s.d.) | 400(94.87) | 15.4(14.5) | 14.8(4.5) | |
Range | 200-600 | 5-60 | 7.5-20 |
Power spectral analysis1 | Patients treated with clozapine | Patients treated with haloperidol | Patients treated with olanzapine | Normal control group | Scheffé post hoctest |
---|---|---|---|---|---|
(n=21) | (n=18) | (n=17) | (n=56) | ||
I | II | III | V | ||
Time domain | |||||
Mean R-R interval2 | 568.0 (14.4) | 715.8 (33.3) | 685.3 (23.9) | 961.5 (84.0) | I ≠ II, III, V |
Standard deviation3 | 23.79 (3.15) | 26.7 (2.6) | 26.1 (4.56) | 29.26 (6.5) | I ≠ II, III, V |
Variance4 | 583.56 (14.4) | 731.3 (33.25) | 700.9 (23.9) | 998.7 (44.7) | I ≠ II, III, V |
Absolute (log) power values of the frequency bands (ms2) | |||||
Low frequency (LF)5 | 3.58 (0.4) | 5.72 (0.4) | 5.98 (0.34) | 4.6 (1.35) | I ≠ II, III, V |
High frequency (HF)6 | 2.32 (0.44) | 5.56 (0.37) | 5.8 (3.6) | 4.6 (1.32) | I ≠ II, III, V |
Heart rate7(b.p.m.) | 107 (2.7) | 85.8 (3.89) | 89.05 (3.08) | 62 (12.4) | I ≠ II, III, V |
QT8 | 518.3 (11.5) | 475 (6.4) | 474.3 (8.02) | 345.2 (5.0) | |
QTc9 | 502.9 (12) | 517.8 (15.08) | 504.6 (7.0) | 370 (12.2) | |
QRS (ms)10 | 94.5 (18.5) | 92.2 (19.3) | 95.5 (14.3) | 92.1 (18.2) | NS |
PR (ms)11 | 150.2 (26.3) | 148.2 (24.2) | 152.1 (22.3) | 151.1 (20.4) | NS |
Frequency domain | |||||
Power | |||||
LF (%)12 | 74.2 (3.46) | 53.8 (2.75) | 54.1 (2.74) | 49.0 (1.5) | I ≠ II, III, V |
HF (%)13 | 25.8 (3.46) | 46.2 (2.75) | 45.9 (2.74) | 51.0 (1.5) | I ≠ II, III, V |
LF/HF (%)14(mean of individual ratios) | 5.9 (1.88) | 1.28 (0.18) | 1.32 (0.18) | 0.96 (0.03) | I ≠ V |
The patients treated with clozapine had significantly lower HRV than those treated with haloperidol or olanzapine or the matched control subjects (P=0.00017). The patient study population showed a significantly lower HRV than the matched controls (P=0.002). The clozapine-treated group had a significantly high low-frequency component compared with patients treated with olanzapine or haloperidol or the control group.
Prolonged QTc intervals were more common in treated patients than in controls although the PR and QRS intervals did not differ significantly. Prolonged QTc intervals were observed in 15 patients treated with clozapine (71.43%), 11 patients treated with olanzapine (64.7%) and 12 patients treated with haloperidol (66.67%).
A T-wave inversion was observed in fourteen patients treated with clozapine (66.6%), three patients treated with olanzapine (17.6%), three patients treated with haloperidol (16.6%) and in one subject from the control group (1.6%).
Spontaneous fluctuations in interbeat interval and power spectral analysis of HRV in treated patients and normal controls are presented in Fig. 1.
There were no significant changes in the respiratory rate (range 13-17 cycles/min) in any of the subjects. This implies that any significant differences in the high-frequency component can be attributed to non-respiratory effects on parasympathetic tone.
DISCUSSION
Antipsychotic medication and sudden death
Common adverse effects of antipsychotic medication include those related to direct or indirect central or peripheral effects on various neurotransmitter and neurohormonal systems (Reference LaderLader, 1999). In general, psychotic disorders are related to higher rates of death, not all of which can be related causally to medications, including suicide (Reference Chute, Grove and RajasekharaChute et al, 1999). Antipsychotic medications have been associated with clinically significant cardiovascular adverse effects and instances of sudden death. Controversy continues to surround the issue of sudden death in patients with schizophrenia (Anon., 1966), although numerous reports of sudden deaths of patients on antipsychotic medication exist and many authors relate the phenomenon to medications (Reference Ruschena, Mullen and BurgessRuschena et al, 1998; Reference Chute, Grove and RajasekharaChute et al, 1999).
The possible association between sudden death and antipsychotic pharmacotherapy has been reviewed most extensively by a task force of the American Psychiatric Association, whose disappointingly vague conclusion is that: “the role played by the drug in a given individual is difficult, if not impossible, to determine” (Task Force, 1988). Despite the inconclusive results of the task force, the possibility of arrythmogenic properties of antipsychotic drugs cannot be excluded.
Association of autonomic dysfunction and clozapine
The results of this study provide evidence that power spectral analysis of HRV may be of value in assessing the effects of medications on the physiological parameters of patients. Patients with schizophrenia under prolonged clozapine therapy exhibited marked differences in ANS functioning compared with those treated with haloperidol or olanzapine, as shown by increased heart rate and low-frequency components and lower HRV and high-frequency components. This reflects a basal autonomic dysfunction with increased sympathetic and decreased parasympathetic tone. Our findings are in complete agreement with those of Zahn & Pickar (Reference Zahn and Pickar1993) and Rechlin et al (Reference Rechlin, Beck and Weis1998), who demonstrated normal HRV in unmedicated patients with schizophrenia and a dose-related effect of clozapine on HRV. We thus attribute these findings to clozapine and not to the disease.
The difference between the effects of clozapine, olanzapine and haloperidol on HRV is very interesting. On the one hand, haloperidol is known to be relatively free of clinically significant effects on receptors for neurotransmitters other than dopamine (except for a low affinity for α 2— and 5-HT2a-receptors), whereas both clozapine and olanzapine have more wide-ranging receptor affinity profiles of clinical significance (Reference Shiloh, Nutt and WeizmanShiloh et al, 1999). On the other hand, the findings of this study show a greater in vivo similarity between the HRV effects (i.e. clinical ANS effects) of olanzapine and haloperidol than those of clozapine. This clinical finding is difficult to explain in terms of a simple neurotransmitter/receptor paradigm and is probably the net result of complex interactions between peripheral and central mechanisms (Reference JacobsJacobs, 1987).
Antipsychotics and QT interval
Some of the effects of antipsychotic medications appear to be direct and local. A high prevalence of QTc prolongation was found in all our treated patients compared with controls, a finding consistent with the trend of the findings in other clinical reports (Reference BarnettBarnett, 1996; Reference Reilly, Ayis and FerrierReilly et al, 2000). The high prevalence of QTc prolongation is in keeping with the trend of the findings reported by Reilly et al (Reference Reilly, Ayis and Ferrier2000), although the proportion of patients with QTc prolongation is far greater in our study. Preclinical (animal) studies also support this trend (Reference Drici, Wang and LiuDrici et al, 1998). The PR and QRS intervals did not differ significantly. This probably suggests that neuroleptics affect cardiac repolarisation rather than conduction, owing to their sodium/potassium as well as calcium-ion-channel blocking actions. Drugs that significantly prolong the QT interval may have the potential to trigger complex forms of polymorphic ventricular arrhythmias (e.g. torsade de points), which can lead to sudden death.
Our findings imply that patients with schizophrenia taking clozapine have decreased parasympathetic activity, elevated sympathetic activity and prolonged QT intervals. Because decreased parasympathetic tone lowers the threshold for ventricular tachycardia (Reference Suttmann, Ditter and LandgrafSuttmann et al, 2000), it is possible, although as yet unproven, that the decreased high-frequency component may reflect the mechanism that underlies the increased rate of cardiovascular mortality in patients with schizophrenia.
Possible mechanisms by which neuroleptic medications cause malignant cardiac arrhythmias
The precise cellular mechanisms by which neuroleptic medications cause malignant cardiac arrhythmias are poorly understood. The triggering mechanism is thought to be the interruption of repolarisation early in phase 3 of the action potential by early after-depolarisations (Reference Drici, Wang and LiuDrici et al, 1998). Early after-depolarisations are induced by interventions that decrease repolarising (potassium) currents (antiarrhythmic drugs) and/or that increase inward currents carried by calcium or sodium (Reference January, Riddle and SalataJanuary et al, 1988; Reference Roden, Lazzara and RosenRoden et al, 1996). These changes may produce early after-depolarisations directly, or they may alter the trajectory of the antipsychotic to produce secondary changes in otherwise normal ion currents that then result in early after-depolarisations. These early after-depolarisations may reach a threshold amplitude and trigger ventricular arrhythmias (Reference ViskinViskin, 1999). Additionally, the QT prolongation, resulting from the blockade of one or more repolarising potassium channels (Reference ViskinViskin, 1999), may cause a surplus of potassium ions in the intracellular volume of the myocardium, enabling the genesis of early after-depolarisations. This phenomenon is seen in the ‘long-QT syndrome’, which is characterised by similar features and is associated with fatal arrhythmias, presumably secondary to the attainment of depolarisation threshold. Autonomic dysregulation also has been associated with arrhythmic effects in otherwise healthy individuals, as the result of sympathetic hyperactivity and/or parasympathetic hypoactivity. The emergence of torsade de pointes also may be facilitated by electrolyte disturbances (hypokalaemia, hyponatraemia, hypomagnesaemia), secondary to clinical or subclinical syndrome of inappropriate antidiuretic hormone secretion (SIADH), a rare toxic effect of neuroleptic medication. Independent risk factors, such as smoking, may contribute.
Clinical experience has shown that many patients with schizophrenia require long-term pharmacotherapy, and the reports of a possible association between antipsychotic drugs and sudden death cause concern for practitioners. Our present experience in applying power spectral analysis of HRV as an index of cardiac autonomic balance is rather encouraging. The method is non-invasive, relatively inexpensive, straightforward and uncomplicated to operate and provides a real-time dynamic assessment of sympathetic and parasympathetic tone, reflecting the interactions between the two. This study raises the question of potentially important prognostic implications of protracted autonomic dysfunction in medicated psychiatric patient populations, especially for cardiovascular morbidity and mortality. Diagnostic measurement of the ANS may improve identification of patients at high risk for sudden cardiac death. Measurement of heart rate and QT are far less specific than power spectral analysis of HRV. Heart rate is affected by too many non-specific factors and QT changes are near-universal effects of neuroleptic medication, whereas HRV clearly reflects ANS pathophysiology.
The results of this study raise the possibility that the cardiovascular effects of neuroleptics may, at least in part, be mediated by autonomic dysregulation, in addition to other simultaneous effects accounting for the cardiac cellular electrophysiological level. Prospective studies may identify electrocardiographic markers of cardiac damage in at-risk patients, which may be useful in screening for these important adverse outcomes.
Clinical Implications and Limitations
CLINICAL IMPLICATIONS
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• Power spectral analysis of heart rate variability (HRV) demonstrates an effect of antipsychotic medications on autonomic regulation, in addition to the cellular electrophysiological effects described elsewhere.
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• The study emphasised the usefulness and relatively simple application of power spectral analysis of HRV as a tool for research and possibly ‘bedside’ assessment of the autonomic and cardiovascular effects of medications, being simple, non-invasive and reliable.
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• Power spectral analysis of HRV demonstrated effects of antipsychotic medications not directly explicable on the basis of receptor affinity profiles and thus raises questions regarding mechanisms of action, which warrant further study.
LIMITATIONS
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• The study group was small as a result of inclusion requirements such as monotherapy and absence of associated diseases.
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• The findings relate to only three medications, because we sought to limit the study to patients on neuroleptic monotherapy, and must be extended to involve a broader range of medications.
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• The results thus must be regarded as preliminary, although of significant clinical importance in their possible implications, regarding the need to focus research efforts on the possible cardiovascular complications of neuroleptics.
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