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重症监护病房中 COVID-19 患者生命体征预测。

Vital Signs Prediction for COVID-19 Patients in ICU.

机构信息

E-MEDIA, STADIUS, Department of Electrical Engineering (ESAT), Campus Group T, KU Leuven, 3000 Leuven, Belgium.

Measure, Model & Manage Bioresponses (M3-BIORES), Department of Biosystems, KU Leuven, 3000 Leuven, Belgium.

出版信息

Sensors (Basel). 2021 Dec 5;21(23):8131. doi: 10.3390/s21238131.

Abstract

This study introduces machine learning predictive models to predict the future values of the monitored vital signs of COVID-19 ICU patients. The main vital sign predictors include heart rate, respiration rate, and oxygen saturation. We investigated the performances of the developed predictive models by considering different approaches. The first predictive model was developed by considering the following vital signs: heart rate, blood pressure (systolic, diastolic and mean arterial, pulse pressure), respiration rate, and oxygen saturation. Similar to the first approach, the second model was developed using the same vital signs, but it was trained and tested based on a leave-one-subject-out approach. The third predictive model was developed by considering three vital signs: heart rate (HR), respiration rate (RR), and oxygen saturation (SpO2). The fourth model was a leave-one-subject-out model for the three vital signs. Finally, the fifth predictive model was developed based on the same three vital signs, but with a five-minute observation rate, in contrast with the aforementioned four models, where the observation rate was hourly to bi-hourly. For the five models, the predicted measurements were those of the three upcoming observations (on average, three hours ahead). Based on the obtained results, we observed that by limiting the number of vital sign predictors (i.e., three vital signs), the prediction performance was still acceptable, with the average mean absolute percentage error (MAPE) being 12%,5%, and 21.4% for heart rate, oxygen saturation, and respiration rate, respectively. Moreover, increasing the observation rate could enhance the prediction performance to be, on average, 8%,4.8%, and 17.8% for heart rate, oxygen saturation, and respiration rate, respectively. It is envisioned that such models could be integrated with monitoring systems that could, using a limited number of vital signs, predict the health conditions of COVID-19 ICU patients in real-time.

摘要

本研究介绍了机器学习预测模型,以预测 COVID-19 ICU 患者监测生命体征的未来值。主要生命体征预测因子包括心率、呼吸率和血氧饱和度。我们通过考虑不同的方法来研究开发的预测模型的性能。第一个预测模型是通过考虑以下生命体征来开发的:心率、血压(收缩压、舒张压和平均动脉压、脉压)、呼吸率和血氧饱和度。与第一种方法类似,第二种模型使用相同的生命体征开发,但它是基于逐个受试者留一法进行训练和测试的。第三个预测模型是通过考虑三个生命体征来开发的:心率(HR)、呼吸率(RR)和血氧饱和度(SpO2)。第四个模型是三个生命体征的逐个受试者留一模型。最后,第五个预测模型是基于相同的三个生命体征开发的,但观察率为五分钟,而前四个模型的观察率为每小时或每两小时一次。对于五个模型,预测测量值是三个即将到来的观察值(平均提前三个小时)。根据获得的结果,我们观察到,通过限制生命体征预测因子的数量(即三个生命体征),预测性能仍然可以接受,平均心率、血氧饱和度和呼吸率的平均绝对百分比误差(MAPE)分别为 12%、5%和 21.4%。此外,增加观察率可以提高预测性能,平均心率、血氧饱和度和呼吸率的平均绝对百分比误差(MAPE)分别为 8%、4.8%和 17.8%。可以预见,这些模型可以与监测系统集成,使用有限的生命体征实时预测 COVID-19 ICU 患者的健康状况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8f63/8662454/4c7253ba345c/sensors-21-08131-g001.jpg

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