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一种在行政索赔数据中识别早产儿的算法。

An algorithm to identify preterm infants in administrative claims data.

机构信息

Department of Pharmaceutical Outcomes and Policy, College of Pharmacy, University of Florida, Gainesville, FL, USA.

出版信息

Pharmacoepidemiol Drug Saf. 2012 Jun;21(6):640-50. doi: 10.1002/pds.3264. Epub 2012 Apr 16.

Abstract

PURPOSE

To develop and validate an algorithm to identify preterm infants in the absence of birth certificates within Medicaid data.

METHODS

Medicaid fee-for-service claims data from Florida (FL) and Texas (TX) were linked to vital statistics data for infants who were continuously eligible during the first 3 months following birth or died within that period. Prematurity was defined as less than 34 weeks gestational age. Using FL as exploratory dataset and vital statistics birth data as gold standard, we developed a logistic regression model from diagnostic and procedure codes commonly associated with preterm care, creating a prematurity score for each infant. A score cutoff was selected that maximized sensitivity while maintaining a positive predictive value (PPV) ≥ 90%. Confirmatory analyses were conducted in the TX datasets.

RESULTS

The prevalence of prematurity was 5.2% (95%CI: 5.1-5.2) and 4.5% (95%CI: 4.4-4.6) in FL and TX, respectively. Using only gestational age International Classification of Disease version 9, Clinical Modification (ICD-9-CM) codes (765.20-765.27) associated with inpatient claims achieved sensitivity of 25.7% (FL) and 12.5% (TX), specificity of 99.9% (FL) and (TX), and PPV of 91.7% (FL) and 84.8% (TX). The model had excellent discriminatory validity with a c-statistic of 0.928 (95%CI: 0.925-0.931). The selected cutoff point achieved sensitivity of 52.6%, specificity of 99.8%, and PPV of 91.7% in FL. In TX, sensitivity was 46.8%, specificity was 99.9%, and PPV was 82.2%.

CONCLUSION

Identification of prematurity based on gestational age ICD-9-CM codes is not sensitive. The prematurity score has superior construct validity and allows more comprehensive identification of preterm infants in the absence of birth certificates.

摘要

目的

开发并验证一种算法,以便在医疗补助数据中识别没有出生证明的早产儿。

方法

将佛罗里达州(FL)和德克萨斯州(TX)的医疗补助服务收费数据与在出生后前 3 个月内持续符合条件或在此期间内死亡的婴儿的生命统计数据进行链接。早产定义为少于 34 周的胎龄。使用 FL 作为探索性数据集和生命统计出生数据作为金标准,我们从与早产儿护理相关的诊断和程序代码中开发了一个逻辑回归模型,为每个婴儿创建一个早产分数。选择一个分数截止值,在保持阳性预测值(PPV)≥90%的同时,最大限度地提高灵敏度。在 TX 数据集上进行了确认分析。

结果

早产的患病率分别为 5.2%(95%CI:5.1-5.2)和 4.5%(95%CI:4.4-4.6),在 FL 和 TX 中。仅使用国际疾病分类第 9 版的妊娠期 ICD-9-CM 代码(765.20-765.27)与住院索赔相关联,其灵敏度分别为 25.7%(FL)和 12.5%(TX),特异性分别为 99.9%(FL)和 99.9%(TX),PPV 分别为 91.7%(FL)和 84.8%(TX)。该模型具有出色的判别有效性,C 统计量为 0.928(95%CI:0.925-0.931)。在 FL 中,选择的截止点达到了 52.6%的灵敏度、99.8%的特异性和 91.7%的 PPV。在 TX 中,灵敏度为 46.8%,特异性为 99.9%,PPV 为 82.2%。

结论

基于妊娠期 ICD-9-CM 代码的早产识别不敏感。早产评分具有优越的结构有效性,并允许在没有出生证明的情况下更全面地识别早产儿。

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