NIHR Biomedical Research Centre, South London and Maudsley NHS Foundation Trust, London, UK.
Department of Psychosis Studies, Institute of Psychiatry, Psychology and Neuroscience, King's College London, London, UK.
BMC Psychiatry. 2024 Aug 27;24(1):584. doi: 10.1186/s12888-024-06022-5.
Clozapine is the only recommended antipsychotic medication for individuals diagnosed with treatment-resistant schizophrenia. Unfortunately, its wider use is hindered by several possible adverse effects, some of which are rare but potentially life threatening. As such, there is a growing interest in studying clozapine use and safety in routinely collected healthcare data. However, previous attempts to characterise clozapine treatment have had low accuracy.
To develop a methodology for identifying clozapine treatment dates by combining several data sources and implement this on a large clinical database.
Non-identifiable electronic health records from a large mental health provider in London and a linked database from a national clozapine blood monitoring service were used to obtain information regarding patients' clozapine treatment status, blood tests and pharmacy dispensing records. A rule-based algorithm was developed to determine the dates of starting and stopping treatment based on these data, and more than 10% of the outcomes were validated by manual review of de-identified case note text.
A total of 3,212 possible clozapine treatment periods were identified, of which 425 (13.2%) were excluded due to insufficient data to verify clozapine administration. Of the 2,787 treatments remaining, 1,902 (68.2%) had an identified start-date. On evaluation, the algorithm identified treatments with 96.4% accuracy; start dates were 96.2% accurate within 15 days, and end dates were 85.1% accurate within 30 days.
The algorithm produced a reliable database of clozapine treatment periods. Beyond underpinning future observational clozapine studies, we envisage it will facilitate similar implementations on additional large clinical databases worldwide.
氯氮平是唯一被推荐用于治疗难治性精神分裂症的抗精神病药物。不幸的是,由于其可能产生多种不良反应,其中一些不良反应较为罕见但具有潜在生命威胁,导致其使用受限。因此,人们越来越关注在常规收集的医疗保健数据中研究氯氮平的使用和安全性。然而,之前尝试描述氯氮平治疗情况的准确性较低。
结合多个数据源开发一种识别氯氮平治疗日期的方法,并在大型临床数据库中实施该方法。
使用来自伦敦一家大型精神卫生服务机构的不可识别电子健康记录和来自全国氯氮平血液监测服务的相关数据库,获取有关患者氯氮平治疗状态、血液检测和药房配药记录的信息。基于这些数据制定了一种基于规则的算法,以确定开始和停止治疗的日期,并对超过 10%的结果进行了手动审查,以验证去标识病例记录文本。
共确定了 3212 个可能的氯氮平治疗期,其中 425 个(13.2%)因缺乏足够的数据来验证氯氮平给药而被排除。在剩余的 2787 种治疗中,有 1902 种(68.2%)确定了起始日期。经评估,该算法的识别准确率为 96.4%;起始日期在 15 天内的准确率为 96.2%,结束日期在 30 天内的准确率为 85.1%。
该算法生成了一个可靠的氯氮平治疗期数据库。除了为未来的观察性氯氮平研究提供支持外,我们还设想它将促进在全球其他大型临床数据库中进行类似的实施。