首页> 外文会议>Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Clinical Application of Multiple Vital Signs-Based Infection Screening System in a Mongolian Hospital: Optimization of Facial Temperature Measurement by Thermography at Various Ambient Temperature Conditions Using Linear Regression Analysis
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Clinical Application of Multiple Vital Signs-Based Infection Screening System in a Mongolian Hospital: Optimization of Facial Temperature Measurement by Thermography at Various Ambient Temperature Conditions Using Linear Regression Analysis

机译:基于多生命体征的感染筛查系统在蒙古医院的临床应用:使用线性回归分析在各种环境温度条件下通过热像仪测量面部温度的优化

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Fever is one significant sign of infection. Hence, infrared thermography systems are important for detecting infected suspects in public places. Reliable temperature measurements by thermography are influenced by several factors, including environmental conditions. This paper proposes a linear regression analysis-based facial temperature optimization method to improve the accuracy of multiple vital signs-based infection screening at various ambient temperatures. To obtain the relationship between ambient temperature and thermography measurements, 20 instances of axillary temperature, thermography measurements of facial temperature, and five different ambient temperature values at the time of measurement were used as a training set for a linear regression model. Temperatures from a total of 30 subjects were recalculated by the model. The screening system was evaluated using the temperature both before and after optimization to demonstrate the accuracy of the optimization method. A k-nearest neighbor algorithm was used to classify potentially infected patients from healthy subjects. Although the system has already been evaluated in restricted environmental conditions, this is the first time it was tested in Ulaanbaatar, Mongolia. The results show that the Pearson's correlation coefficient between optimum and axillary temperatures increased to r = 0.82. Paired t-tests revealed that the optimized temperature became statistically highly significant (p<;0.001) for differentiating potentially infected patients from healthy subjects. Finally, the system achieved a sensitivity score of 91% and a negative predictive value of 92%. These values are higher than those obtained without temperature optimization. The proposed optimization method is feasible and can notably improve screening performance.
机译:发烧是感染的重要标志。因此,红外热成像系统对于在公共场所检测被感染的犯罪嫌疑人很重要。通过热像仪进行可靠的温度测量受多种因素的影响,包括环境条件。本文提出了一种基于线性回归分析的面部温度优化方法,以提高在各种环境温度下基于多个生命体征的感染筛查的准确性。为了获得环境温度与热成像测量值之间的关系,将20种腋窝温度,面部温度的热成像测量值以及测量时的五个不同环境温度值用作线性回归模型的训练集。该模型重新计算了总共30位受试者的温度。使用优化前后的温度对筛选系统进行了评估,以证明优化方法的准确性。使用k近邻算法对健康受试者的潜在感染患者进行分类。尽管该系统已经在有限的环境条件下进行了评估,但这是它首次在蒙古乌兰巴托进行了测试。结果表明,最佳温度与腋窝温度之间的皮尔逊相关系数增加到r = 0.82。配对的t检验表明,优化温度在统计学上具有高度显着性(p <; 0.001),可用于将潜在感染的患者与健康受试者区分开。最终,该系统的灵敏度得分为91%,阴性预测值为92%。这些值高于没有温度优化的情况下获得的值。所提出的优化方法是可行的,并且可以显着提高筛选性能。

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