3.8 Proceedings Paper

Non-fever COVID-19 Detection by Infrared Imaging

出版社

SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-031-19660-7_6

关键词

Infrared imaging; Artificial intelligence; Convolutional neural network; Thermography

资金

  1. Brazilian National Council of Scientific and Technological Development, CNPq [313646/2020-1]
  2. cooperation of the HCFMUSP, Brazil

向作者/读者索取更多资源

This study proposed an infrared image-based method for screening febrile and non-febrile people with the aim to meet the society's needs for effective COVID-19 screening. By using a convolutional neural network, the algorithm developed could identify COVID-19 infected individuals who did not show a fever. The method has been proven to be a valuable tool in screening and has potential applications in air travel and public places.
This study proposed an infrared image-based method for febrile and non-febrile people screening to comply with the society needs for alternative, quick response, and effective methods for COVID-19 contagious people screening. The methodology consisted of: (i) Developing a method based on the face infrared imaging for early COVID-19 detection in people with and without fever; (ii) Recruiting 1206 emergency room (ER) patients to develop an algorithm for general application of the method, and (iii) Testing the method and algorithm effectiveness in 2558 cases (RTqPCR tested for COVID-19) from 227,261 workers evaluations in five different countries. Artificial intelligence was used with a convolutional neural network (CNN) to develop the algorithm that took face infrared images as input and classified the tested individuals into three groups: fever (high risk), non-febrile (medium risk), and without fever (low risk). The results showed that suspicious and confirmed COVID-19 (+) cases characterized by temperatures below the 37.5 degrees C fever threshold were identified. Also, average forehead and eye temperatures greater than 37.5 C were not enough to detect fever similarly to the proposed CNN algorithm. Most RT-qPCR confirmed COVID-19 (+) cases found in the 2558 cases sample (17 cases/89.5%) belonged to the CNN selected non-febrile COVID group. The COVID-19 (+) main risk factor was to be in the non-febrile medium-risk group, compared with age, diabetes, high blood pressure, smoking and others. In sum, the proposed method was shown to be a potentially important new tool for COVID-19 (+) people screening for air travel and public places in general.

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