Institute of Psychiatry Psychology and Neuroscience, King's College London, London, UK
Institute of Psychiatry Psychology and Neuroscience, King's College London, London, UK.
BMJ Open. 2022 Aug 2;12(8):e057433. doi: 10.1136/bmjopen-2021-057433.
We aimed to apply natural language processing algorithms in routine healthcare records to identify reported somatic passivity (external control of sensations, actions and impulses) and thought interference symptoms (thought broadcasting, insertion, withdrawal), first-rank symptoms traditionally central to diagnosing schizophrenia, and determine associations with prognosis by analysing routine outcomes.
Four algorithms were developed on deidentified mental healthcare data and applied to ascertain recorded symptoms over the 3 months following first presentation to a mental healthcare provider in a cohort of patients with a primary schizophreniform disorder (ICD-10 F20-F29) diagnosis.
From the electronic health records of a large secondary mental healthcare provider in south London, 9323 patients were ascertained from 2007 to the data extraction date (25 February 2020).
The primary binary dependent variable for logistic regression analyses was any negative outcome (Mental Health Act section, >2 antipsychotics prescribed, >22 days spent in crisis care) over the subsequent 2 years.
Final adjusted models indicated significant associations of this composite outcome with baseline somatic passivity (prevalence 4.9%; adjusted OR 1.61, 95% CI 1.37 to 1.88), thought insertion (10.7%; 1.24, 95% CI 1.15 to 1.55) and thought withdrawal (4.9%; 1.36, 95% CI 1.10 to 1.69), but not independently with thought broadcast (10.3%; 1.05, 95% CI 0.91 to 1.22).
Symptoms traditionally central to the diagnosis of schizophrenia, but under-represented in current diagnostic frameworks, were thus identified as important predictors of short-term to medium-term prognosis in schizophreniform disorders.
我们旨在应用自然语言处理算法分析常规医疗记录,以识别报告的躯体被动感(感觉、动作和冲动的外部控制)和思维干扰症状(思维广播、插入、撤回),这些症状是传统上诊断精神分裂症的核心症状,通过分析常规结果确定与预后的关联。
在匿名的精神卫生保健数据上开发了四个算法,并将其应用于在一个首发精神分裂样障碍(ICD-10 F20-F29)患者队列中,确定首次就诊后 3 个月内记录的症状。
从伦敦南部一家大型二级精神保健机构的电子健康记录中,从 2007 年至数据提取日期(2020 年 2 月 25 日)确定了 9323 名患者。
逻辑回归分析的主要二进制因变量是随后 2 年内任何负面结果(精神卫生法第 20 章,处方超过 2 种抗精神病药物,危机护理超过 22 天)。
传统上与精神分裂症诊断相关的症状,但在当前诊断框架中代表性不足,因此被确定为精神分裂样障碍短期至中期预后的重要预测因素。