红外热质量筛选中预测核心体温的回归模型

Chayabhan Limpabandhu , Frances Sophie Woodley Hooper , Rui Li , Zion Tse
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引用次数: 2

摘要

由于发烧是COVID-19最突出的症状之一,在世界各地实施发烧筛查已成为司空见惯的事情,以帮助减轻病毒的传播。非接触式温度筛查方法,如红外(IR)前额温度计和热像仪,通过最大限度地降低感染风险而受益。然而,红外温度测量可能不可靠地与实际核心体温相关。本研究提出了一个训练模型预测,使用红外测量的面部特征温度来预测核心体温,可与fda批准的产品相媲美。参考核心体温由市售温度监测系统测量。通过预测核心体温与参考核心体温的相关性,选择最优输入和训练模型。研究过程中对五种回归模型进行了检验。与参考温度相比,线性回归模型显示最小均方根误差(RSME)最小。太阳穴和鼻部感兴趣区域(ROI)被确定为最优输入。本研究提示,红外温度数据可为利用线性回归模型快速筛查COVID - 19潜在病例提供较为准确的核心体温预测。采用线性回归模型,非接触式测温可与SpotOn系统相比较,平均SD为±0.285°C, MAE为0.240°C。
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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Regression model for predicting core body temperature in infrared thermal mass screening

With fever being one of the most prominent symptoms of COVID-19, the implementation of fever screening has become commonplace around the world to help mitigate the spread of the virus. Non-contact methods of temperature screening, such as infrared (IR) forehead thermometers and thermal cameras, benefit by minimizing infection risk. However, the IR temperature measurements may not be reliably correlated with actual core body temperatures. This study proposed a trained model prediction using IR-measured facial feature temperatures to predict core body temperatures comparable to an FDA-approved product. The reference core body temperatures were measured by a commercially available temperature monitoring system. Optimal inputs and training models were selected by the correlation between predicted and reference core body temperature. Five regression models were tested during the study. The linear regression model showed the lowest minimum-root-mean-square error (RSME) compared with reference temperatures. The temple and nose region of interest (ROI) were identified as optimal inputs. This study suggests that IR temperature data could provide comparatively accurate core body temperature prediction for rapid mass screening of potential COVID cases using the linear regression model. Using linear regression modeling, the non-contact temperature measurement could be comparable to the SpotOn system with a mean SD of ± 0.285 °C and MAE of 0.240 °C.

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IPEM-translation
IPEM-translation Medicine and Dentistry (General)
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