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机器学习预测高收入国家和中低收入国家创伤性脑损伤患者住院死亡率。

Machine Learning for Predicting In-Hospital Mortality After Traumatic Brain Injury in Both High-Income and Low- and Middle-Income Countries.

机构信息

Division of Global Neurosurgery and Neurology, Duke University Medical Center, Durham, North Carolina, USA.

Department of Neurosurgery, Duke University Medical Center, Durham, North Carolina, USA.

出版信息

Neurosurgery. 2022 May 1;90(5):605-612. doi: 10.1227/neu.0000000000001898.

Abstract

BACKGROUND

Machine learning (ML) holds promise as a tool to guide clinical decision making by predicting in-hospital mortality for patients with traumatic brain injury (TBI). Previous models such as the international mission for prognosis and clinical trials in TBI (IMPACT) and the corticosteroid randomization after significant head injury (CRASH) prognosis calculators can potentially be improved with expanded clinical features and newer ML approaches.

OBJECTIVE

To develop ML models to predict in-hospital mortality for both the high-income country (HIC) and the low- and middle-income country (LMIC) settings.

METHODS

We used the Duke University Medical Center National Trauma Data Bank and Mulago National Referral Hospital (MNRH) registry to predict in-hospital mortality for the HIC and LMIC settings, respectively. Six ML models were built on each data set, and the best model was chosen through nested cross-validation. The CRASH and IMPACT models were externally validated on the MNRH database.

RESULTS

ML models built on National Trauma Data Bank (n = 5393, 84 predictors) demonstrated an area under the receiver operating curve (AUROC) of 0.91 (95% CI: 0.85-0.97) while models constructed on MNRH (n = 877, 31 predictors) demonstrated an AUROC of 0.89 (95% CI: 0.81-0.97). Direct comparison with CRASH and IMPACT models showed significant improvement of the proposed LMIC models regarding AUROC (P = .038).

CONCLUSION

We developed high-performing well-calibrated ML models for predicting in-hospital mortality for both the HIC and LMIC settings that have the potential to influence clinical management and traumatic brain injury patient trajectories.

摘要

背景

机器学习(ML)有望成为一种工具,通过预测创伤性脑损伤(TBI)患者的院内死亡率来指导临床决策。以前的模型,如国际创伤预后和临床试验(IMPACT)和皮质类固醇随机化后严重颅脑损伤(CRASH)预后计算器,可以通过扩展临床特征和更新的 ML 方法来改进。

目的

开发用于预测高收入国家(HIC)和低收入和中等收入国家(LMIC)环境中院内死亡率的 ML 模型。

方法

我们分别使用杜克大学医学中心国家创伤数据库和穆拉戈国家转诊医院(MNRH)登记处来预测 HIC 和 LMIC 环境中的院内死亡率。在每个数据集上构建了六个 ML 模型,并通过嵌套交叉验证选择了最佳模型。CRASH 和 IMPACT 模型在 MNRH 数据库上进行了外部验证。

结果

基于国家创伤数据库(n = 5393,84 个预测因素)构建的 ML 模型的接收者操作特征曲线下面积(AUROC)为 0.91(95%CI:0.85-0.97),而基于 MNRH(n = 877,31 个预测因素)构建的模型的 AUROC 为 0.89(95%CI:0.81-0.97)。与 CRASH 和 IMPACT 模型的直接比较表明,所提出的 LMIC 模型在 AUROC 方面有显著改善(P =.038)。

结论

我们为 HIC 和 LMIC 环境开发了高性能、校准良好的 ML 模型,用于预测院内死亡率,这些模型有可能影响临床管理和创伤性脑损伤患者的轨迹。

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