利用电子健康记录数据预测中风后的认知障碍。

IF 6.3 2区 医学 Q1 CLINICAL NEUROLOGY International Journal of Stroke Pub Date : 2024-10-01 Epub Date: 2024-04-18 DOI:10.1177/17474930241246156
Jeffrey M Ashburner, Yuchiao Chang, Bianca Porneala, Sanjula D Singh, Nirupama Yechoor, Jonathan M Rosand, Daniel E Singer, Christopher D Anderson, Steven J Atlas
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引用次数: 0

摘要

背景:目的:利用易于从电子健康记录中获取的数据,开发并评估一个预测模型,以识别5年内卒中后认知障碍(PSCI)风险增加的患者:方法:队列研究,包括两个学术医疗中心的初级保健患者。患者年龄在 45 岁或以上,既往无中风或普遍存在认知障碍,在 2003-2016 年(开发/内部验证队列)或 2010-2022 年(外部验证队列)期间接受过初级保健就诊并发生过缺血性中风。从电子健康记录中确定了 PSCI 的预测因素。结果是中风后 3 个月开始的 5 年内发生的痴呆/认知障碍,使用 ICD-9/10 编码确定。在选择模型变量时,我们考虑了 PSCI 的潜在预测因子,并用模型推导样本的三分之二构建了 400 个引导样本。我们使用最小绝对收缩和选择算子(LASSO)惩罚法运行了 10 倍交叉验证的 Cox 比例危险模型。结果:分析包括开发队列(n=3,741)中的 332 例 PSCI 诊断病例,以及内部(n=1,925)和外部(n=2,237)验证队列中的 161 例和 128 例诊断病例。内部验证队列中预测 PSCI 的 c 统计量为 0.731(95% CI:0.694-0.768),外部验证队列中预测 PSCI 的 c 统计量为 0.724(95% CI:0.681-0.766)。根据开发队列中预测因子的贝塔系数进行风险评分,将患者分为低(0-7 分)、中(8-11 分)和高(12-35 分)风险组。在内部(高危,HR:6.2,95% CI:4.1-9.3;中危,HR:2.7,95% CI:1.8-4.1)和外部(高危,HR:6.1,95% CI:3.9-9.6;中危,HR:2.8,95% CI:1.9-4.3)验证队列中,不同风险类别的患者发生 PSCI 的危险比存在显著差异:结论:利用常规收集的数据可以准确预测五年的 PSCI 风险。模型输出结果可用于风险分层,并识别出 PSCI 风险增加的个体,以便采取预防措施。数据访问声明:Mass General Brigham 数据包含受保护的健康信息,不能公开共享。用于执行分析的数据处理脚本将在向通讯作者提出合理要求后提供给感兴趣的研究人员。
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Predicting post-stroke cognitive impairment using electronic health record data.

Background: Secondary prevention interventions to reduce post-stroke cognitive impairment (PSCI) can be aided by the early identification of high-risk individuals who would benefit from risk factor modification.

Aims: To develop and evaluate a predictive model to identify patients at increased risk of PSCI over 5 years using data easily accessible from electronic health records.

Methods: Cohort study that included primary care patients from two academic medical centers. Patients were aged 45 years or older, without prior stroke or prevalent cognitive impairment, with primary care visits and an incident ischemic stroke between 2003 and 2016 (development/internal validation cohort) or 2010 and 2022 (external validation cohort). Predictors of PSCI were ascertained from the electronic health record. The outcome was incident dementia/cognitive impairment within 5 years and beginning 3 months following stroke, ascertained using International Classification of Diseases, Ninth/Tenth Revision (ICD-9/10) codes. For model variable selection, we considered potential predictors of PSCI and constructed 400 bootstrap samples with two-thirds of the model derivation sample. We ran 10-fold cross-validated Cox proportional hazards models using a least absolute shrinkage and selection operator (LASSO) penalty. Variables selected in >25% of samples were included.

Results: The analysis included 332 incident diagnoses of PSCI in the development cohort (n = 3741), and 161 and 128 incident diagnoses in the internal (n = 1925) and external (n = 2237) validation cohorts, respectively. The C-statistic for predicting PSCI was 0.731 (95% confidence interval (CI): 0.694-0.768) in the internal validation cohort, and 0.724 (95% CI: 0.681-0.766) in the external validation cohort. A risk score based on the beta coefficients of predictors from the development cohort stratified patients into low (0-7 points), intermediate (8-11 points), and high (12-23 points) risk groups. The hazard ratios (HRs) for incident PSCI were significantly different by risk categories in internal (high, HR: 6.2, 95% CI: 4.1-9.3; Intermediate, HR: 2.7, 95% CI: 1.8-4.1) and external (high, HR: 6.1, 95% CI: 3.9-9.6; Intermediate, HR: 2.8, 95% CI: 1.9-4.3) validation cohorts.

Conclusion: Five-year risk of PSCI can be accurately predicted using routinely collected data. Model output can be used to risk stratify and identify individuals at increased risk for PSCI for preventive efforts.

Data access statement: Mass General Brigham data contain protected health information and cannot be shared publicly. The data processing scripts used to perform analyses will be made available to interested researchers upon reasonable request to the corresponding author.

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来源期刊
International Journal of Stroke
International Journal of Stroke 医学-外周血管病
CiteScore
13.90
自引率
6.00%
发文量
132
审稿时长
6-12 weeks
期刊介绍: The International Journal of Stroke is a welcome addition to the international stroke journal landscape in that it concentrates on the clinical aspects of stroke with basic science contributions in areas of clinical interest. Reviews of current topics are broadly based to encompass not only recent advances of global interest but also those which may be more important in certain regions and the journal regularly features items of news interest from all parts of the world. To facilitate the international nature of the journal, our Associate Editors from Europe, Asia, North America and South America coordinate segments of the journal.
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