4.6 Article

Biodegradable Smart Face Masks for Machine Learning-Assisted Chronic Respiratory Disease Diagnosis

期刊

ACS SENSORS
卷 7, 期 10, 页码 3135-3143

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acssensors.2c01628

关键词

smart face mask; self-powered sensors; biodegradable; machine learning; chronic respiratory disease diagnosis

资金

  1. Science and Technology Development Fund, Macau SAR (FDCT) [0059/2021/AFJ, 0040/2021/A1]
  2. University of Macau [SRG2021-00001-FST, MYRG2022-00003-FST]

向作者/读者索取更多资源

This study proposes a smart face mask that can monitor and analyze respiratory signals, providing early warning for chronic respiratory diseases. The smart face mask is easily fabricated, comfortable to wear, and has stable output performance in real wearable conditions. It achieves a high accuracy of 95.5% in distinguishing healthy individuals from those with chronic respiratory diseases using a machine learning algorithm.
Utilizing smart face masks to monitor and analyze respiratory signals is a convenient and effective method to give an early warning for chronic respiratory diseases. In this work, a smart face mask is proposed with an air-permeable and biodegradable self-powered breath sensor as the key component. This smart face mask is easily fabricated, comfortable to use, eco-friendly, and has sensitive and stable output performances in real wearable conditions. To verify the practicability, we use smart face masks to record respiratory signals of patients with chronic respiratory diseases when the patients do not have obvious symptoms. With the assistance of the machine learning algorithm of the bagged decision tree, the accuracy for distinguishing the healthy group and three groups of chronic respiratory diseases (asthma, bronchitis, and chronic obstructive pulmonary disease) is up to 95.5%. These results indicate that the strategy of this work is feasible and may promote the development of wearable health monitoring systems.

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