首页> 外文期刊>BMC Medical Research Methodology >The Ottawa SAH search algorithms: protocol for a multi- centre validation study of primary subarachnoid hemorrhage prediction models using health administrative data (the SAHepi prediction study protocol)
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The Ottawa SAH search algorithms: protocol for a multi- centre validation study of primary subarachnoid hemorrhage prediction models using health administrative data (the SAHepi prediction study protocol)

机译:渥太华SAH搜索算法:使用健康管理数据进行的主要蛛网膜下腔出血预测模型的多中心验证研究的协议(SAHepi预测研究协议)

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Conducting prospective epidemiological studies of hospitalized patients with rare diseases like primary subarachnoid hemorrhage (pSAH) are difficult due to time and budgetary constraints. Routinely collected administrative data could remove these barriers. We derived and validated 3 algorithms to identify hospitalized patients with a high probability of pSAH using administrative data. We aim to externally validate their performance in four hospitals across Canada. Eligible patients include those ≥18?years of age admitted to these centres from January 1, 2012 to December 31, 2013. We will include patients whose discharge abstracts contain predictive variables identified in the models (ICD-10-CA diagnostic codes I60** (subarachnoid hemorrhage), I61** (intracranial hemorrhage), 162** (other nontrauma intracranial hemorrhage), I67** (other cerebrovascular disease), S06** (intracranial injury), G97 (other postprocedural nervous system disorder) and CCI procedural codes 1JW51 (occlusion of intracranial vessels), 1JE51 (carotid artery inclusion), 3JW10 (intracranial vessel imaging), 3FY20 (CT scan (soft tissue of neck)), and 3OT20 (CT scan (abdominal cavity)). The algorithms will be applied to each patient and the diagnosis confirmed via chart review. We will assess each model’s sensitivity, specificity, negative and positive predictive value across the sites. Validating the Ottawa SAH Prediction Algorithms will provide a way to accurately identify large SAH cohorts, thereby furthering research and altering care.
机译:由于时间和预算的限制,很难对住院的患有罕见疾病如原发性蛛网膜下腔出血(pSAH)的患者进行前瞻性流行病学研究。常规收集的管理数据可以消除这些障碍。我们使用行政数据推导并验证了3种算法,以鉴定出pSAH可能性高的住院患者。我们旨在从外部验证其在加拿大四家医院的表现。符合条件的患者包括从2012年1月1日至2013年12月31日进入这些中心的年龄≥18岁的患者。我们将包括其出院摘要包含模型中确定的预测变量的患者(ICD-10-CA诊断代码I60 ** (蛛网膜下腔出血),I61 **(颅内出血),162 **(其他非创伤性颅内出血),I67 **(其他脑血管疾病),S06 **(颅内损伤),G97(其他手术后神经系统疾病)和CCI程序代码1JW51(颅内血管闭塞),1JE51(颈动脉内含物),3JW10(颅内血管成像),3FY20(CT扫描(颈部软组织))和3OT20(CT扫描(腹腔))。应用于每个患者并通过图表审查确认诊断。我们将评估每个模型在各个部位的敏感性,特异性,阴性和阳性预测值。验证渥太华SAH预测算法将提供一种方法来准确识别ge SAH队列,从而进一步开展研究并改变护理方式。

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