Smith Michael G, Royer Julie, Mann Joshua R, McDermott Suzanne
Bureau of Maternal and Child HealthDivision of Research and PlanningSouth Carolina Department of Health and Environmental ControlColumbia, SCUnited States.
South Carolina Budget and Control BoardRevenue and Fiscal Affairs OfficeColumbia, SCUnited States.
JMIR Public Health Surveill. 2017 Jan 12;3(1):e2. doi: 10.2196/publichealth.6720.
Administrative records from insurance and hospital discharge data sources are important public health tools to conduct passive surveillance of disease in populations. Identifying rare but catastrophic conditions is a challenge since approaches for maximizing valid case detection are not firmly established.
The purpose of our study was to explore a number of algorithms in which International Classification of Diseases, Ninth Revision, Clinical Modification (ICD-9-CM) codes and other administrative variables could be used to identify cases of muscular dystrophy (MD).
We used active surveillance to identify possible cases of MD in medical practices in neurology, genetics, and orthopedics in 5 urban South Carolina counties and to identify the cases that had diagnostic support (ie, true cases). We then developed an algorithm to identify cases based on a combination of ICD-9-CM codes and administrative variables from a public (Medicaid) and private insurer claims-based system and a statewide hospital discharge dataset (passive surveillance). Cases of all types of MD and those with Duchenne or Becker MD (DBMD) that were common to both surveillance systems were examined to identify the most specific administrative variables for ascertainment of true cases.
Passive statewide surveillance identified 3235 possible cases with MD in the state, and active surveillance identified 2057 possible cases in 5 actively surveilled counties that included 2 large metropolitan areas where many people seek medical care. There were 537 common cases found in both the active and passive systems, and 260 (48.4%) were confirmed by active surveillance to be true cases. Of the 260 confirmed cases, 70 (26.9%) were recorded as DBMD.
Accuracy of finding a true case in a passive surveillance system was improved substantially when specific diagnosis codes, number of times a code was used, age of the patient, and specialty provider variables were used.
来自保险和医院出院数据源的行政记录是对人群疾病进行被动监测的重要公共卫生工具。识别罕见但灾难性的疾病是一项挑战,因为尚未牢固确立最大化有效病例检测的方法。
我们研究的目的是探索多种算法,其中国际疾病分类第九版临床修订本(ICD - 9 - CM)编码和其他行政变量可用于识别肌营养不良症(MD)病例。
我们采用主动监测来识别南卡罗来纳州5个城市县的神经科、遗传学和骨科医疗实践中可能的MD病例,并识别具有诊断支持的病例(即确诊病例)。然后,我们开发了一种算法,基于ICD - 9 - CM编码以及来自公共(医疗补助)和私人保险公司基于索赔的系统和全州医院出院数据集(被动监测)的行政变量组合来识别病例。对两个监测系统中常见的所有类型MD病例以及杜兴氏或贝克氏MD(DBMD)病例进行检查,以确定用于确诊病例的最具特异性的行政变量。
全州被动监测在该州识别出3235例可能的MD病例,主动监测在包括2个有许多人寻求医疗服务的大城市地区的5个主动监测县中识别出2057例可能病例。在主动和被动系统中发现了537例共同病例,其中260例(48.4%)经主动监测确认为确诊病例。在这260例确诊病例中,70例(26.9%)被记录为DBMD。
当使用特定诊断编码、编码使用次数、患者年龄和专科医生变量时,被动监测系统中确诊病例的准确性有了显著提高。