A predictive model of death from cerebrovascular diseases in intensive care units

IF 4.4 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Intelligent medicine Pub Date : 2023-11-01 DOI:10.1016/j.imed.2023.01.005
Mohammad Karimi Moridani , Seyed Kamaledin Setarehdan , Ali Motie Nasrabadi , Esmaeil Hajinasrollah
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引用次数: 1

Abstract

Objective

This study aimed to explore the mortality prediction of patients with cerebrovascular diseases in the intensive care unit (ICU) by examining the important signals during different periods of admission in the ICU, which is considered one of the new topics in the medical field. Several approaches have been proposed for prediction in this area. Each of these methods has been able to predict mortality somewhat, but many of these techniques require recording a large amount of data from the patients, where recording all data is not possible in most cases; at the same time, this study focused only on heart rate variability (HRV) and systolic and diastolic blood pressure.

Methods

The ICU data used for the challenge were extracted from the Multiparameter Intelligent Monitoring in Intensive Care II (MIMIC-II) Clinical Database. The proposed algorithm was evaluated using data from 88 cerebrovascular ICU patients, 48 men and 40 women, during their first 48 hours of ICU stay. The electrocardiogram (ECG) signals are related to lead II, and the sampling frequency is 125 Hz. The time of admission and time of death are labeled in all data. In this study, the mortality prediction in patients with cerebral ischemia is evaluated using the features extracted from the return map generated by the signal of HRV and blood pressure. To predict the patient's future condition, the combination of features extracted from the return mapping generated by the HRV signal, such as angle (α), area (A), and various parameters generated by systolic and diastolic blood pressure, including DBPMaxMin SBPSD have been used. Also, to select the best feature combination, the genetic algorithm (GA) and mutual information (MI) methods were used. Paired sample t-test statistical analysis was used to compare the results of two episodes (death and non-death episodes). The P-value for detecting the significance level was considered less than 0.005.

Results

The results indicate that the new approach presented in this paper can be compared with other methods or leads to better results. The best combination of features based on GA to achieve maximum predictive accuracy was m (mean), LMean, A, SBPSVMax, DBPMax-Min. The accuracy, specificity, and sensitivity based on the best features obtained from GA were 97.7%, 98.9%, and 95.4% for cerebral ischemia disease with a prediction horizon of 0.5–1 hour before death. The d-factor for the best feature combination based on the GA model is less than 1 (d-factor = 0.95). Also, the bracketed by 95 percent prediction uncertainty (95PPU) (%) was obtained at 98.6.

Conclusion

The combination of HRV and blood pressure signals might increase the accuracy of the prediction of the death episode and reduce the minimum hospitalization time of the patient with cerebrovascular diseases to determine the future status.

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重症监护病房脑血管死亡的预测模型
本研究旨在通过研究重症监护病房(ICU)患者入院不同时期的重要信号,探索重症监护病房(ICU)脑血管疾病患者的死亡率预测,这被认为是医学领域的新课题之一。在这一领域,已经提出了几种预测方法。这些方法中的每一种都能在一定程度上预测死亡率,但其中许多技术都需要记录患者的大量数据,而在大多数情况下不可能记录所有数据;同时,本研究只关注心率变异性(HRV)以及收缩压和舒张压。使用 88 名脑血管重症监护室患者(48 名男性和 40 名女性)在重症监护室住院 48 小时内的数据对所提出的算法进行了评估。心电图(ECG)信号与第二导联有关,采样频率为 125 Hz。所有数据都标注了入院时间和死亡时间。本研究利用从心率变异和血压信号生成的返回图中提取的特征,对脑缺血患者的死亡率预测进行评估。为了预测患者的未来状况,使用了从心率变异信号生成的回波图中提取的特征组合,如角度(α)、面积(A)以及由收缩压和舒张压生成的各种参数,包括 DBPMax-Min SBPSD。此外,为了选择最佳特征组合,还使用了遗传算法(GA)和互信息(MI)方法。采用配对样本 t 检验统计分析来比较两个事件(死亡和非死亡事件)的结果。结果表明,本文提出的新方法可与其他方法相媲美,或取得更好的结果。基于 GA 的最佳特征组合为 m(平均值)、LMean、A、SBPSVMax、DBPMax-Min,从而获得了最高预测准确率。在死亡前 0.5-1 小时的预测范围内,基于 GA 获得的最佳特征对脑缺血疾病的准确性、特异性和灵敏度分别为 97.7%、98.9% 和 95.4%。基于 GA 模型的最佳特征组合的 d 因子小于 1(d 因子 = 0.95)。结论结合心率变异和血压信号可提高死亡事件预测的准确性,缩短脑血管疾病患者确定未来状态的最短住院时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Intelligent medicine
Intelligent medicine Surgery, Radiology and Imaging, Artificial Intelligence, Biomedical Engineering
CiteScore
5.20
自引率
0.00%
发文量
19
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