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首页> 外文期刊>BMC Medical Informatics and Decision Making >Accuracy of automatic syndromic classification of coded emergency department diagnoses in identifying mental health-related presentations for public health surveillance
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Accuracy of automatic syndromic classification of coded emergency department diagnoses in identifying mental health-related presentations for public health surveillance

机译:编码的急诊科诊断的自动症状自动分类在识别与公共卫生监视有关的精神卫生相关演示中的准确性

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Background Syndromic surveillance in emergency departments (EDs) may be used to deliver early warnings of increases in disease activity, to provide situational awareness during events of public health significance, to supplement other information on trends in acute disease and injury, and to support the development and monitoring of prevention or response strategies. Changes in mental health related ED presentations may be relevant to these goals, provided they can be identified accurately and efficiently. This study aimed to measure the accuracy of using diagnostic codes in electronic ED presentation records to identify mental health-related visits. Methods We selected a random sample of 500 records from a total of 1,815,588 ED electronic presentation records from 59 NSW public hospitals during 2010. ED diagnoses were recorded using any of ICD-9, ICD-10 or SNOMED CT classifications. Three clinicians, blinded to the automatically generated syndromic grouping and each other’s classification, reviewed the triage notes and classified each of the 500 visits as mental health-related or not. A “mental health problem presentation” for the purposes of this study was defined as any ED presentation where either a mental disorder or a mental health problem was the reason for the ED visit. The combined clinicians’ assessment of the records was used as reference standard to measure the sensitivity, specificity, and positive and negative predictive values of the automatic classification of coded emergency department diagnoses. Agreement between the reference standard and the automated coded classification was estimated using the Kappa statistic. Results Agreement between clinician’s classification and automated coded classification was substantial (Kappa =?0.73. 95% CI: 0.58 - 0.87). The automatic syndromic grouping of coded ED diagnoses for mental health-related visits was found to be moderately sensitive (68% 95% CI: 46%-84%) and highly specific at 99% (95% CI: 98%-99.7%) when compared with the reference standard in identifying mental health related ED visits. Positive predictive value was 81% (95% CI: 0.57 – 0.94) and negative predictive value was 98% (95% CI: 0.97-0.99). Conclusions Mental health presentations identified using diagnoses coded with various classifications in electronic ED presentation records offers sufficient accuracy for application in near real-time syndromic surveillance.
机译:背景技术急诊科(ED)的症状监测可用于提供疾病活动增加的预警,在具有公共卫生意义的事件中提供态势感知,补充有关急性疾病和伤害趋势的其他信息,并支持疾病的发展。以及监控预防或应对策略。与精神健康有关的ED演示文稿的变化可能与这些目标有关,只要可以准确,有效地识别它们即可。这项研究旨在衡量在电子ED演示记录中使用诊断代码来识别与精神健康相关的就诊的准确性。方法我们从2010年新南威尔士州59家公立医院的1,815,588份ED电子表述记录中随机选择了500条记录。采用ICD-9,ICD-10或SNOMED CT分类对ED诊断进行记录。三名临床医生对自动生成的症状分组和彼此的分类视而不见,对分诊记录进行了审查,并将500次就诊中的每一次都归类为与精神健康有关。就本研究而言,“精神健康问题陈述”被定义为任何以精神障碍或精神健康问题为原因的ED陈述。临床医生对记录的综合评估被用作参考标准,以测量对急诊科编码进行自动分类的敏感性,特异性以及阳性和阴性预测值。参考标准和自动编码分类之间的一致性是使用Kappa统计数据估算的。结果临床医生的分类与自动编码的分类之间的一致性很高(Kappa =?0.73。95%CI:0.58-0.87)。发现针对精神健康相关访视的编码ED诊断的自动症状分组具有中等敏感性(68%95%CI:46%-84%),高度敏感(99%)(95%CI:98%-99.7%)与参考标准进行比较,以确定与精神卫生有关的急诊就诊。阳性预测值为81%(95%CI:0.57 – 0.94),阴性预测值为98%(95%CI:0.97-0.99)。结论使用电子ED表现记录中各种分类编码的诊断确定的心理健康表现为在近实时症状监测中的应用提供了足够的准确性。

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