论文标题
用于使用常规的物联网应用程序的机器学习传感器用于诊断Covid-19疾病的疾病
Machine Learning Sensors for Diagnosis of COVID-19 Disease Using Routine Blood Values for Internet of Things Application
论文作者
论文摘要
当由于物联网(IoT)而在日常生活中立即监视人体的各种参数时,医疗保健数字化需要有效的人类传感器应用。特别是,用于迅速诊断Covid-19的机器学习(ML)传感器是医疗保健和环境辅助生活(AAL)的物联网应用的重要选择。通过各种诊断测试和成像结果确定共同的19个感染状态是昂贵且耗时的。这项研究根据入院时测得的常规血值(RBV)提供了一种快速,可靠和成本效益的替代工具,用于诊断CoVID-19。该研究的数据集由总共5296例患者组成,具有相同数量的阴性和阳性Covid-19测试结果和51个常规血值。在这项研究中,13个流行的分类器机器学习模型和LogNNet神经网络模型被逐渐消失。在检测疾病的时间和准确性方面,最成功的分类器模型是基于直方图的梯度提升(HGB)(准确性:100%,时间:6.39 sec)。 HGB分类器确定了11个最重要的特征(LDL,胆固醇,HDL-C,MCHC,甘油三酸酯,淀粉酶,UA,LDH,CK-MB,ALP和MCH),以100%精度检测疾病。另外,讨论了这些特征在疾病诊断中的单,双重和三组合的重要性。我们建议在疾病诊断中使用这11个特征及其二元组合作为ML传感器的重要生物标志物,从而支持Arduino和Cloud IoT服务上的边缘计算。
Healthcare digitalization requires effective applications of human sensors, when various parameters of the human body are instantly monitored in everyday life due to the Internet of Things (IoT). In particular, machine learning (ML) sensors for the prompt diagnosis of COVID-19 are an important option for IoT application in healthcare and ambient assisted living (AAL). Determining a COVID-19 infected status with various diagnostic tests and imaging results is costly and time-consuming. This study provides a fast, reliable and cost-effective alternative tool for the diagnosis of COVID-19 based on the routine blood values (RBVs) measured at admission. The dataset of the study consists of a total of 5296 patients with the same number of negative and positive COVID-19 test results and 51 routine blood values. In this study, 13 popular classifier machine learning models and the LogNNet neural network model were exanimated. The most successful classifier model in terms of time and accuracy in the detection of the disease was the histogram-based gradient boosting (HGB) (accuracy: 100%, time: 6.39 sec). The HGB classifier identified the 11 most important features (LDL, cholesterol, HDL-C, MCHC, triglyceride, amylase, UA, LDH, CK-MB, ALP and MCH) to detect the disease with 100% accuracy. In addition, the importance of single, double and triple combinations of these features in the diagnosis of the disease was discussed. We propose to use these 11 features and their binary combinations as important biomarkers for ML sensors in the diagnosis of the disease, supporting edge computing on Arduino and cloud IoT service.