The accuracy of hospital ICD-9-CM codes for determining Sickle Cell Disease genotype.

Journal of rare diseases research & treatment Pub Date : 2017-01-01 Epub Date: 2017-07-28
Angela B Snyder, Peter A Lane, Mei Zhou, Susan T Paulukonis, Mary M Hulihan
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Abstract

Sickle cell disease affects more than 100,000 individuals in the United States, among whom disease severity varies considerably. One factor that influences disease severity is the sickle cell disease genotype. For this reason, clinical prevention and treatment guidelines tend to differentiate between genotypes. However, previous research suggests caution when using a claimsbased determination of sickle cell disease genotype in healthcare quality studies. The objective of this study was to describe the extent of miscoding for the major sickle cell disease genotypes in hospital discharge data. Individuals with sickle cell disease were identified through newborn screening results or hemoglobinopathy specialty care centers, along with their sickle cell disease genotypes. These genotypes were compared to the diagnosis codes listed in hospital discharge data to assess the accuracy of the hospital codes in determining sickle cell disease genotype. Eighty-three percent (sickle cell anemia), 23% (Hemoglobin SC), and 31% (Hemoglobin Sβ+ thalassemia) of hospitalizations contained a diagnosis code that correctly reflected the individual's true sickle cell disease genotype. The accuracy of the sickle cell disease genotype coding was indeterminate in 11% (sickle cell anemia), 12% (Hemoglobin SC), and 7% (Hemoglobin Sβ+ thalassemia) and incorrect in 3% (sickle cell anemia), 61% (Hemoglobin SC), and 52% (Hemoglobin Sβ+ thalassemia) of the hospitalizations. The use of ICD-9-CM codes from hospital discharge data for determining specific sickle cell disease genotypes is problematic. Research based solely on these or other types of administrative data could lead to incorrect understanding of the disease.

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Abstract Image

医院ICD-9-CM编码测定镰状细胞病基因型的准确性
镰状细胞病在美国影响超过10万人,他们之间的疾病严重程度差异很大。影响疾病严重程度的一个因素是镰状细胞病的基因型。因此,临床预防和治疗指南倾向于区分基因型。然而,先前的研究表明,在医疗质量研究中使用基于声明的镰状细胞病基因型测定时要谨慎。本研究的目的是描述医院出院数据中主要镰状细胞病基因型的错误编码程度。通过新生儿筛查结果或血红蛋白病专科护理中心,以及他们的镰状细胞病基因型,确定患有镰状细胞病的个体。将这些基因型与医院出院资料中列出的诊断代码进行比较,以评估医院代码确定镰状细胞病基因型的准确性。83%(镰状细胞性贫血)、23%(血红蛋白SC)和31%(血红蛋白Sβ+地中海贫血)的住院治疗包含正确反映个体真实镰状细胞病基因型的诊断代码。镰状细胞病基因型编码的准确性在11%(镰状细胞性贫血)、12%(血红蛋白SC)和7%(血红蛋白Sβ+地中海贫血)中不确定,在3%(镰状细胞性贫血)、61%(血红蛋白SC)和52%(血红蛋白Sβ+地中海贫血)中不正确。使用来自医院出院数据的ICD-9-CM代码来确定特定的镰状细胞病基因型是有问题的。仅基于这些或其他类型的行政数据的研究可能导致对疾病的错误理解。
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