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Recommendations and Extraction of Clinical Variables of Pediatric Multiple Sclerosis Using Common Data Elements

机译:普通数据元素的建议与提取儿科多发性硬化症的临床变量

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Purpose: The purpose of this article was to demonstrate the feasibility of using common data elements (CDEs) to search for information on the pediatric patient with multiple sclerosis (MS) and provide recommendations for future quality improvement and research in the use of CDEs for pediatric MS symptom management strategies Methods: The St. Louis Children's Hospital (SLCH), Washington University (WU) pediatrics data network was evaluated for use of CDEs identified from a database to identify variables in pediatric MS, including the key clinical features from the disease course of MS. The algorithms used were based on International Classification of Diseases, Ninth/Tenth Revision, codes and text keywords to identify pediatric patients with MS from a de-identified database. Data from a coordinating center of SLCH/WU pediatrics data network, which houses inpatient and outpatient records consisting of patients (N = 498 000), were identified, and detailed information regarding the clinical course of MS were located from the text of the medical records, including medications, presence of oligoclonal bands, year of diagnosis, and diagnosis code. Results: There were 466 pediatric patients with MS, with a few also having the comorbid diagnosis of anxiety and depression. Conclusions: St. Louis Children's Hospital/WU pediatrics data network is one of the largest databases in the United States of detailed data, with the ability to query and validate clinical data for research on MS. Nurses and other healthcare professionals working with pediatric MS patients will benefit from having common disease identifiers for quality improvement, research, and practice. The increased knowledge of big data from SLCH/WU pediatrics data network has the potential to provide information for intervention and decision-making that can be personalized to the pediatric MS patient.
机译:目的:本文的目的是展示使用普通数据元素(CDES)的可行性来搜索有多种硬化症(MS)的儿科患者的信息,并为未来的质量改进和使用CDES用于儿科的研究提供建议MS症状管理策略方法:圣路易斯儿童医院(SLCH),华盛顿大学(WU)儿科数据网络被评估使用从数据库中鉴定的CDES来识别儿科MS中的变量,包括来自疾病课程的关键临床特征女士。所使用的算法基于国际疾病,第九/第十修订,代码和文本关键字的国际分类,以识别来自DE-entedification数据库的MS的儿科患者。来自SLCH / WU儿科数据网络的协调中心的数据,其中确定了由患者(n = 498 000)组成的住院和门诊记录,以及关于MS临床过程的详细信息,从医疗记录的文本找到,包括药物,寡克隆带,诊断年份和诊断码。结果:有466名儿科患者MS,少数也具有焦虑和抑郁症的合并诊断。结论:圣路易斯儿童医院/吴儿童数据网络是美国最大的数据库之一,具有查询和验证对MS研究的临床数据的能力。护士和其他与儿科医生患者一起使用的医疗保健专业人员将受益于患有质量改进,研究和实践的常见疾病标识符。来自SLCH / WU儿科数据网络的大数据的增加具有潜力,可以提供可以个性化的干预和决策的信息。

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