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Derivation and validation of in-hospital mortality prediction models in ischaemic stroke patients using administrative data.

机译:使用行政数据推导和验证缺血性中风患者的院内死亡率预测模型。

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Background: Stroke and other cerebrovascular diseases are a major cause of death and disability. Predicting in-hospital mortality in ischaemic stroke patients can help to identify high-risk patients and guide treatment approaches. Chart reviews provide important clinical information for mortality prediction, but are laborious and limiting in sample sizes. Administrative data allow for large-scale multi-institutional analyses but lack the necessary clinical information for outcome research. However, administrative claims data in Japan has seen the recent inclusion of patient consciousness and disability information, which may allow more accurate mortality prediction using administrative data alone. The aim of this study was to derive and validate models to predict in-hospital mortality in patients admitted for ischaemic stroke using administrative data. Methods: The sample consisted of 21,445 patients from 176 Japanese hospitals, who were randomly divided into derivation and validation subgroups. Multivariable logistic regression models were developed using 7- and 30-day and overall in-hospital mortality as dependent variables. Independent variables included patient age, sex, comorbidities upon admission, Japan Coma Scale (JCS) score, Barthel Index score, modified Rankin Scale (mRS) score, and admissions after hours and on weekends/public holidays. Models were developed in the derivation subgroup, and coefficients from these models were applied to the validation subgroup. Predictive ability was analysed using C-statistics; calibration was evaluated with Hosmer-Lemeshow χ(2) tests. Results: All three models showed predictive abilities similar or surpassing that of chart review-based models. The C-statistics were highest in the 7-day in-hospital mortality prediction model, at 0.906 and 0.901 in the derivation and validation subgroups, respectively. For the 30-day in-hospital mortality prediction models, the C-statistics for the derivation and validation subgroups were 0.893 and 0.872, respectively; in overall in-hospital mortality prediction these values were 0.883 and 0.876. Conclusions: In this study, we have derived and validated in-hospital mortality prediction models for three different time spans using a large population of ischaemic stroke patients in a multi-institutional analysis. The recent inclusion of JCS, Barthel Index, and mRS scores in Japanese administrative data has allowed the prediction of in-hospital mortality with accuracy comparable to that of chart review analyses. The models developed using administrative data had consistently high predictive abilities for all models in both the derivation and validation subgroups. These results have implications in the role of administrative data in future mortality prediction analyses.
机译:背景:中风和其他脑血管疾病是死亡和残疾的主要原因。预测缺血性中风患者的院内死亡率可以帮助识别高危患者并指导治疗方法。图表审查为死亡率预测提供重要的临床信息,但费力且样本量有限。行政数据允许进行大规模的多机构分析,但缺乏结果研究所需的临床信息。但是,日本的行政索赔数据最近包含了患者意识和残疾信息,这可能允许仅使用行政数据进行更准确的死亡率预测。这项研究的目的是使用管理数据来推导和验证模型,以预测缺血性卒中患者的院内死亡率。方法:样本包括来自日本176家医院的21,445名患者,这些患者被随机分为衍生和验证亚组。使用7天和30天以及院内总体死亡率作为因变量开发了多变量logistic回归模型。自变量包括患者年龄,性别,入院合并症,日本昏迷量表(JCS)评分,Barthel指数评分,改良的兰金量表(mRS)得分以及下班后和周末/公共假日的入院率。在派生子组中开发了模型,并将这些模型的系数应用于验证子组。使用C统计量分析预测能力;通过Hosmer-Lemeshowχ(2)测试评估校准。结果:这三个模型均显示出与基于图表审阅的模型相似或超越的预测能力。在7天住院死亡率预测模型中,C统计量最高,在衍生和验证子组中分别为0.906和0.901。对于30天住院死亡率预测模型,派生和验证亚组的C统计量分别为0.893和0.872;在总体院内死亡率预测中,这些值分别为0.883和0.876。结论:在这项研究中,我们使用大量的缺血性中风患者在多机构分析中得出并验证了三个不同时间段的院内死亡率预测模型。日本行政数据中最近纳入了JCS,Barthel指数和mRS评分,因此可以预测院内死亡率,其准确性与图表审查分析相当。使用管理数据开发的模型对于派生和验证子组中的所有模型均具有一致的高预测能力。这些结果暗示了行政数据在未来死亡率预测分析中的作用。

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