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Automated Detection of Benzodiazepine Dosage in ICU Patients through a Computational Analysis of Electrocardiographic Data

机译:通过心电图数据的分析自动检测ICU患者中的苯二氮卓剂量

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摘要

To enable automated maintenance of patient sedation in an intensive care unit (ICU) setting, more robust, quantitative metrics of sedation depth must be developed. In this study, we demonstrated the feasibility of a fully computational system that leverages low-quality electrocardiography (ECG) from a single lead to detect the presence of benzodiazepine sedatives in a subject’s system. Starting with features commonly examined manually by cardiologists searching for evidence of poisonings, we generalized the extraction of these features to a fully automated process. We tested the predictive power of these features using nine subjects from an intensive care clinical database. Features were found to be significantly indicative of a binary relationship between dose and ECG morphology, but we were unable to find evidence of a predictable continuous relationship. Fitting this binary relationship to a classifier, we achieved a sensitivity of 89% and a specificity of 95%.
机译:为了能够在重症监护病房(ICU)设置中自动维护患者的镇静作用,必须开发出更强大的镇静深度定量指标。在这项研究中,我们展示了一个完全计算系统的可行性,该系统可以利用来自单根导线的低质量心电图(ECG)来检测受试者系统中是否存在苯二氮卓类镇静剂。从心脏病专家通常在寻找中毒证据时手动检查的功能开始,我们将这些功能的提取概括为一个全自动过程。我们使用来自重症监护临床数据库的九名受试者测试了这些功能的预测能力。发现特征明显表明剂量与ECG形态之间存在二元关系,但我们无法找到可预测的连续关系的证据。使这种二元关系适合分类器,我们获得了89%的灵敏度和95%的特异性。

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