Individuals with mental illness have markedly elevated rates of metabolic disturbance including obesity, diabetes and dyslipidaemia. Reference Cohn and Sernyak1 In particular, individuals with schizophrenia have a 20% shorter life expectancy than the population at large. Reference Marder, Essock, Miller, Buchanan, Casey and Davis2 They have an increased relative risk of premature death, dying at least 10 years earlier than age-matched individuals. Reference Brown3 This excess mortality has been largely attributed to ‘natural causes’ rather than suicide, Reference Brown3 but the health needs of people with schizophrenia who take antipsychotic medication are often not adequately addressed by clinicians, either in specialty mental health programmes or in primary care settings. Reference Marder, Essock, Miller, Buchanan, Casey and Davis2 The lack of consensus regarding which health parameters should be monitored has been a major obstacle to improving physical health monitoring, an issue that was addressed at the Mount Sinai Conference in New York. Reference Marder, Essock, Miller, Buchanan, Casey and Davis2
In the UK, an expert consensus meeting 4 described the association between schizophrenia, antipsychotics and diabetes, and drew up recommendations for screening and management. Subsequent local audits in rural areas Reference Tarrant5,Reference Feeney and Mooney6 have shown that out-patients are much less likely to have blood tests and physical health screening than in-patients (e.g. case vignette in the online supplement to this paper). A UK national audit Reference Barnes, Paton, Cavanagh, Hancock and Taylor7 of patients taking antipsychotics, under the care of 48 assertive outreach teams, found rates of screening for metabolic syndrome to be below those recommended; measurements of blood pressure, obesity, blood glucose and lipids were done in 26%, 17%, 28% and 22% of patients respectively. Although these patients are usually difficult to engage, they often receive intense input from assertive outreach teams. We therefore aimed to investigate physical monitoring in an out-patient context, where patients are less intensively supervised than in other settings with more resources such as in-patient services Reference Tarrant5,Reference Feeney and Mooney6 or assertive outreach teams. Reference Barnes, Paton, Cavanagh, Hancock and Taylor7
This study is based in a community mental health centre, serving a population of 70 000 inhabitants, in an inner city London borough. The area has a high index of social deprivation and a large ethnic minority population. Most of the patients are monitored in out-patients' clinics, with no care coordinator.
Method
The data collection was carried out retrospectively by inspecting the patients' clinical records. A form of systematic randomisation was achieved by selecting every fourth file in alphabetical order, until 25% of the case-load had been selected, in the first audit. The selection of cases for the second audit followed the same method until an adequately sized matching sample was obtained. Only patients taking regular antipsychotics were included, excluding those on clozapine as they receive care through a specialist clinic where performance against standard is expected to be 100%. A data collection tool was used to gather information on patient basic demographic data, diagnosis, antipsychotic medication, and baseline and continuation blood tests.
The standards were set by consensus by six local psychiatrists, using the recommendations of the American Diabetes Association 8 and the Maudsley Prescribing Guidelines 2003 Reference Taylor, Paton and Kerwin9 and 2005. Reference Taylor, Paton and Kerwin10 It was agreed that all the patients prescribed antipsychotics should have a full blood count, urea and electrolytes, liver function tests, thyroid function tests, serum glucose and/or glycosylated haemoglobin (Hb1Ac), serum prolactin, blood pressure and weight monitored at baseline and then again every 6 months.
The intervention included the presentation of data locally, three meetings with local consultants and two brief educational talks to junior doctors. A simple local adaptation of clinical guidelines was devised, and a monitoring tool was implemented (see online supplement). This tool was a simple A4 page filed in the patients' records, which was intended both as a prompt to doctors regarding their patients' need for the physical monitoring and as an instrument to facilitate later data collection.
Following this intervention, a re-audit was conducted in May 2006 to examine any change in practice. The data were again collected retrospectively over the previous year (May 2005 to May 2006) and analysed using SPSS version 15 for Windows. Pearson χ2-test of independence was used to compare categorical variables. When more than 20% of cells had an expected value of less than 5, a Fisher's exact test (two-sided) was performed; P were corrected using the Bonferroni method to adjust for multiple comparisons.
Results
For the first audit, Reference Fisher11 we included 126 patients treated with antipsychotics (except clozapine) between May 2004 and April 2005. This sample was obtained from 867 records which were randomly chosen from the total of 3466 case notes available as described before. The mean age was 42.43 years, with a standard deviation of 13.09 years. The majority of the sample were males (75 patients, 59.5%), and predominantly White British (40 patients, 31.7%), followed by Black African British (26 patients, 20.6%). The main diagnosis was schizophrenia (56 patients, 44.4%). Only 9 patients (7.1%) were prescribed two antipsychotics in combination and the rest were on only one antipsychotic. Reference Fisher11
For the second audit, 3967 case records had to be individually reviewed to obtain a sample of 106 patients. The mean age was 42.46 years with a standard deviation of 11.86 years. Again, the majority were male (59 patients, 55.7%), White British (38 patients 35.8%), Black African British (23 patients, 21.7%), with a diagnosis of schizophrenia (54 patients, 50.9%) and on antipsychotic monotherapy (100 patients, 94.3%).
The two samples did not differ significantly in terms of age, gender, main ethnic categories, diagnosis, type and number of antipsychotics prescribed or route of administration. The monitoring of blood tests in each audit's cycle is compared in Table 1. Overall, there is a significant improvement (P<0.001) in the performance of each test, except for HbA1c and prolactin. A more detailed comparison of the results according to the type of prescribed antipsychotic is presented in Tables 2 and 3. The implementation of the monitoring tool was achieved in 48% of the re-audit sample.
First audit, N = 126 n (%) | Second audit, N = 106 n (%) | χ2-testa | P b | |
---|---|---|---|---|
Baseline tests | ||||
FBC | 51 (40.5) | 86 (81.1) | 39.352 | <0.001 |
U&E | 47 (37.3) | 80 (75.5) | 33.855 | <0.001 |
LFT | 49 (38.9) | 84 (79.2) | 38.327 | <0.001 |
TFT | 38 (30.4) | 76 (71.7) | 39.138 | <0.001 |
Glucose | 31 (24.6) | 77 (72.6) | 53.394 | <0.001 |
Lipids/cholesterol | 9 (7.1) | 56 (52.8) | 59.584 | <0.001 |
HbA1c | 4 (3.2) | 6 (5.7) | 0.862c | 0.353c |
Prolactin | 1 (0.8) | 0 (0) | 0.845c | 0.358c |
Continuation tests | ||||
FBC | 32 (25.4) | 51 (48.1) | 12.929 | <0.001 |
U&E | 30 (23.8) | 51 (48.1) | 14.964 | <0.001 |
LFT | 31 (24.6) | 51 (48.1) | 13.924 | <0.001 |
TFT | 27 (21.6) | 48 (45.3) | 14.673 | <0.001 |
Glucose | 25 (19.8) | 50 (47.2) | 19.653 | <0.001 |
Lipids/cholesterol | 12 (9.5) | 36 (34.0) | 20.953 | <0.001 |
HbA1c | 4 (3.2) | 6 (5.7) | 0.862c | 0.353c |
Prolactin | 0 (0) | 0 (0) | 0.0c | 0.0c |
Olanzapine | Risperidone | Other atypicalsa | ||||
---|---|---|---|---|---|---|
First audit, N = 43 n (%) | Second audit, N = 39, n (%) | First audit, N = 28 n (%) | Second audit, N = 23, n (%) | First audit, N = 7 n (%) | Second audit, N = 6, n (%) | |
Baseline | ||||||
FBC | 21 (48.8) | 31 (79.5) | 9 (32.1) | 20 (87.0) | 4 (57.1) | 5 (83.3) |
U&E | 19 (44.2) | 28 (71.8) | 8 (28.6) | 20 (87.0) | 4 (57.1) | 3 (50.0) |
LFT | 20 (46.5) | 29 (74.4) | 9 (32.1) | 21 (91.3) | 4 (57.1) | 5 (83.3) |
TFT | 15 (34.9) | 26 (66.7) | 3 (10.7) | 18 (78.3) | 3 (42.9) | 5 (83.3) |
Glucose | 13 (30.2) | 29 (74.4) | 4 (14.3) | 18 (78.3) | 4 (57.1) | 3 (50.0) |
Lipids | 3 (7.0) | 19 (48.7) | 2 (7.1) | 13 (56.5) | 2 (28.6) | 2 (33.3) |
HbA1c | 1 (2.3) | 1 (2.6) | 0 (0) | 1 (4.3) | 0 (0) | 1 (16.7) |
Prolactin | 0 (0) | 0 (0) | 0 (0) | 0 (0) | 0 (0) | 0 (0) |
Continuation | ||||||
FBC | 8 (18.6) | 18 (46.2) | 7 (25.0) | 12 (52.2) | 4 (57.1) | 4 (66.7) |
U&E | 7 (16.3) | 18 (46.2) | 7 (25.0) | 12 (52.2) | 4 (57.1) | 3 (50.0) |
LFT | 9 (20.9) | 17 (43.6) | 7 (25.0) | 12 (52.2) | 4 (57.1) | 4 (66.7) |
TFT | 7 (16.3) | 16 (41.0) | 5 (17.9) | 12 (52.2) | 4 (57.1) | 4 (66.7) |
Glucose | 7 (16.3) | 17 (43.6) | 5 (17.9) | 12 (52.2) | 4 (57.1) | 3 (50.0) |
Lipids | 3 (7.0) | 11 (28.2) | 2 (7.1) | 9 (39.1) | 3 (42.9) | 2 (33.3) |
HbA1c | 2 (4.7) | 0 (0) | 0 (0) | 2 (8.7) | 0 (0) | 1 (16.7) |
Prolactin | 0 (0) | 0 (0) | 0 (0) | 0 (0) | 0 (0) | 0 (0) |
Clopixol | Depixol | Other typicalsa | ||||
---|---|---|---|---|---|---|
First audit, N = 11 n (%) | Second audit, N = 5, n (%) | First audit, N = 18 n (%) | Second audit, N = 13, n (%) | First audit, N = 28 n (%) | Second audit, N = 23, n (%) | |
Baseline | ||||||
FBC | 4 (36.4) | 3 (60.0) | 8 (44.4) | 10 (76.9) | 11 (39.3) | 19 (82.6) |
U&E | 3 (27.3) | 3 (60.0) | 8 (44.4) | 10 (76.9) | 11 (39.3) | 18 (78.3) |
LFT | 3 (27.3) | 3 (60.0) | 8 (44.4) | 10 (76.9) | 11 (39.3) | 18 (78.3) |
TFT | 4 (36.4) | 3 (60.0) | 7 (38.9) | 8 (61.5) | 11 (39.3) | 19 (82.6) |
Glucose | 3 (27.3) | 3 (60.0) | 6 (33.3) | 10 (76.9) | 5 (17.9) | 16 (69.6) |
Lipids | 1 (9.1) | 3 (60.0) | 0 (0) | 5 (38.5) | 2 (7.1) | 15 (65.2) |
HbA1c | 0 (0) | 0 (0) | 2 (11.1) | 1 (7.7) | 2 (7.1) | 2 (8.7) |
Prolactin | 1 (9.1) | 0 (0) | 0 (0) | 0 (0) | 0 (0) | 0 (0) |
Continuation | ||||||
FBC | 3 (27.3) | 1 (20.0) | 7 (38.9) | 6 (46.2) | 7 (25.0) | 13 (56.5) |
U&E | 3 (27.3) | 1 (20.0) | 7 (38.9) | 6 (46.2) | 5 (17.9) | 14 (60.9) |
LFT | 2 (18.2) | 1 (20.0) | 7 (38.9) | 6 (46.2) | 6 (21.4) | 14 (60.9) |
TFT | 3 (27.3) | 1 (20.0) | 6 (33.3) | 5 (38.5) | 5 (17.9) | 13 (56.5) |
Glucose | 4 (36.4) | 1 (20.0) | 4 (22.2) | 6 (46.2) | 5 (17.9) | 14 (60.9) |
Lipids | 1 (9.1) | 1 (20.0) | 2 (11.1) | 3 (23.1) | 3 (10.7) | 11 (47.8) |
HbA1c | 0 (0) | 0 (0) | 1 (5.6) | 1 (7.7) | 2 (7.1) | 2 (8.7) |
Prolactin | 0 (0) | 0 (0) | 0 (0) | 0 (0) | 0 (0) | 0 (0) |
Discussion
Overall performance against setting standards was initially poor; however, we managed to demonstrate a significant improvement following the re-audit for most of the tests. The only exceptions were prolactin and HbA1c levels, which may be explained by there being less clear recommendations in routine practice for these tests. In terms of the glycosylated haemoglobin, a random glucose level is regarded as a good screening test for diabetes, 8 whereas HbA1c may be more valuable for actual monitoring of established diabetes, which should be part of treatment within primary care or a specialist diabetes service. 4 With regard to prolactin, first-generation antipsychotics and risperidone are associated with hyperprolactinaemia, which may cause galactorrhoea, menstrual irregularities, sexual dysfunction and osteoporosis due to impairment in sex steroid production. Reference Marder, Essock, Miller, Buchanan, Casey and Davis2 Nevertheless, the recommendations from the Mount Sinai conference Reference Marder, Essock, Miller, Buchanan, Casey and Davis2 are that patients should have prolactin levels measured if clinically indicated (i.e. women presenting with breast milk secretion, changes in menstruation or libido, and men presenting with changes in libido, erectile and ejaculatory function or galactorrhoea).
We did not include in this audit other important physical parameters for detection of the metabolic syndrome, such as blood pressure, pulse, and weight or body mass index, and neither did we include electrocardiogram (ECG) monitoring.
Limitations
One of the limitations of the study was that perhaps insufficient time was allowed between the intervention and the data collection for the second audit cycle. Thus continuation tests were perhaps less likely to be done due to an insufficient time lapse. It is also possible that improvement in monitoring was not related to our intervention, but rather a result of increased awareness within the service, due to local policy, national guidelines, 12 or some other factor not accounted for. The restructuring of the trust was a significant obstacle for obtaining an adequate matching sample during the re-audit. Files were kept in two different locations, six community mental health teams were relocated and reformed into acute and long-term care, meaning that for the second audit, 3967 case records had to be individually reviewed to obtain a second sample of 106 patients. Another pitfall was the withdrawal of one consultant from their commitment to the audit implementation project.
Our suggestions for improving physical monitoring in psychiatric out-patient settings include the regular audit of current practice within the service, the incorporation of some prompting and monitoring tool within the clinical notes, adequate training of team members (especially doctors) as part of their educational programmes, adequate reporting systems and communication with primary care, and periodical reviews of an agreed protocol within the service, allowing for pharmacist and consultant involvement.
Key barriers to the implementation of physical health monitoring in psychiatric settings include unclear responsibilities, competing demands on limited resources, and liability issues. Reference Cohn and Sernyak1 There is a debate, for example, about whether responsibility lies within primary or secondary care, thus Cohn & Sernyak suggest that it is not necessary for psychiatrists actually to perform a specific task, even though they are responsible for ensuring that the task is clearly delegated. Reference Cohn and Sernyak1 Some prescribers may be also concerned about a lack of expertise in interpreting the results or an inadequate response to positive screenings. This concern is legitimate, and should be addressed through education and planning. The alternative - no monitoring - is clearly unacceptable.
Acknowledgements
We thank Carol Paton for invaluable advice on an earlier version of this article, and Dr Nandani Thavapalan, Dr Michael Cozzolino, Dr Saqib Latif, Dr Bogdan Banjac and Marian Reardon for all their help in the execution of the audits.
eLetters
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