波音游戏-波音娱乐城赌球打不开

CItyU researchers invent smart mask to track respiratory sounds for respiratory disease identification

ADVERTISEMENT

Wearing face masks has been recognised as one of the most effective ways to prevent the spread of COVID-19, even in its coming endemic phase. Apart from the conventional function of masks, the potential for smart masks to monitor human physiological signals is being increasingly explored. A research team led by the City University of Hong Kong (CityU) recently invented a smart mask, integrating an ultrathin nanocomposite sponge structure-based soundwave sensor, which is capable of detecting respiratory sounds of breathing, coughing and speaking.

CityU smart mask

Credit: Wiley Editing Services / DOI: 10.1002/advs.202203565

Wearing face masks has been recognised as one of the most effective ways to prevent the spread of COVID-19, even in its coming endemic phase. Apart from the conventional function of masks, the potential for smart masks to monitor human physiological signals is being increasingly explored. A research team led by the City University of Hong Kong (CityU) recently invented a smart mask, integrating an ultrathin nanocomposite sponge structure-based soundwave sensor, which is capable of detecting respiratory sounds of breathing, coughing and speaking.

Using machine-learning algorithms and a high sensitivity soundwave sensor operable across a wide bandwidth, the smart mask has opened new avenues for its application in the identification of respiratory diseases, as well as a voice interaction tool. This ultra-lightweight wearable technology also has the potential to improve personal and public health by enabling prolonged and systematic respiratory health monitoring in daily life.

A research team led by Professor Li Wenjung, Chair Professor in the Department of Mechanical Engineering (MNE), Professor Wang Jianping, Professor in the Department of Computer Science (CS), and Dr Yu Xinge, Associate Professor in the Department of Biomedical Engineering (BME) at CityU, recently developed this smart mask, which can detect and distinguish multiple respiratory actions. Professor Shen Jiangang’s team from the School of Chinese Medicine of The University of Hong Kong also made an important contribution to the project. The findings were published in Advanced Science under the title “Wide-bandwidth nanocomposite-sensor integrated smart mask for tracking multiphase respiratory activities”.

Importance of wearing masks even if COVID-19 becomes endemic

“Many countries now believe that COVID-19 will soon become endemic,” said Professor Li. “However, we must set aside optimism and be realistic about the likely levels of illness, disability and death associated with this disease in the coming years. It is important to remember that endemicity does not correspond to harmlessness.” He used malaria as an example to illustrate that even though it is currently considered endemic in 87 countries, in 2020, it infected an estimated 241 million people and caused 627,000 deaths, according to the World Health Organization. Thus, he suggested that people should continue to be cautious about COVID-19 and use available and proven measures, including masks, to control the spread of the virus.

“This smart mask utilises our self-developed, high-sensitivity, wide-bandwidth flexible sensor that can detect and record daily human respiratory activity, such as breathing, coughing and speaking for cloud data storage,” explained Professor Li.

The smart mask developed by the team has a sponge-like structure as thin as 400μm, fabricated with carbon nanotube and polydimethylsiloxane (CNT/PDMS) materials, using the team’s novel modified sacrificial-release technique. The ultra-thin, lightweight sensor can be practically integrated and work effectively with both rigid masks and deformable non-woven fabric masks.

Good performance in static and dynamic pressure

The research team recruited 31 people in order to collect their respiratory activity while they wore the smart mask. The findings showed that the acoustic wave sensor was highly sensitive in measuring both static and dynamic pressure. Besides performing well in the static pressure range of 27.9 Pa – 2.5 kPa, the sensor also responded?to high-frequency dynamic pressure generated by the human voice, i.e., sound harmonic acoustic energy up to 4000?Hz.? In addition, the sensor can sense air movement, including directional flow and vibration. These findings suggest that the sensor could be used to detect human respiratory activity by integrating it with a commercial polycarbonate mask. It also demonstrated that the smart mask could detect and differentiate three common respiratory functions: breathing, coughing and speaking.

“Advanced artificial intelligence technology enables the integrated mask to recognise different coughing and breathing patterns automatically, indicating its potential use to diagnose respiratory-related diseases in the future,” said Professor Wang. “Presently, researchers use commercial sensors to detect temperature changes and airflow to count the number of coughs, but they cannot capture important physiological information contained in the human voice, coughing and breathing. Our smart mask is sensitive to both subtle air pressure and high-frequency vibrations and can detect three phrases of coughing,” added Professor Li.

The team aims to eventually develop real-time diagnostics algorithms for applications such as pneumoconiosis symptom assessment. “As a potentially low-cost, daily smart wearable device, this new IoT smart mask will help personal and public health management of respiratory disease screening and diagnosis, especially in cities with a dense population, like Hong Kong,” said Dr Yu. The speech-detection ability of the smart mask can also help resolve the sound attenuation problem caused by wearing masks.

The first co-authors of the paper are Miss Suo Jiao, Mr Liu Yifan and Dr Wu Cong, all of whom are Professor Li’s students. Corresponding co-authors include Dr Yu, Professor Wang and Professor Li from CityU. Other team members from CityU include Dr Walid Daoud and Dr Yang Zhengbao from the MNE and Dr Li Xinyue from the School of Data Science.

The research was supported by the Shenzhen Municipality Science and Technology Innovation Commission, the Hong Kong Research Grants Council, and the Hong Kong Centre for Cerebro-cardiovascular Health Engineering.

?


Welcome Back!

Login to your account below

Retrieve your password

Please enter your username or email address to reset your password.

澳门百家乐官网论坛及玩法| 百家乐官网打印机破解| 百家乐专家赢钱打法| 百家乐官网太阳城开户| 定24山尺寸深浅土色| 财神真人娱乐城| 百家乐平技巧| 长江百家乐官网的玩法技巧和规则| 全讯网址| 免费下百家乐赌博软件| 职业百家乐官网的玩法技巧和规则| 百家乐官网哪条路好| 会泽县| 大发888下载免费游戏| 百家乐和的打法| 金都百家乐官网的玩法技巧和规则| 繁峙县| 菲律宾百家乐官网试玩| 百家乐官网大转轮| 百家乐官网单跳双跳| 德晋百家乐的玩法技巧和规则| 广州百家乐赌博机| 玩百家乐免费| 百家乐下路教学| 百家乐投法| 大发888娱乐场df888| 百家乐投注平台导航网| 百家乐获胜秘决百家乐获胜秘诀| 百家乐官网家居 | 尊龙百家乐官网赌场娱乐网规则 | 百家乐做庄家必赢诀窍| 91百家乐的玩法技巧和规则| 百家乐平预测软件| 娱乐城开户送体验金| 百家乐官网对子赔率| 百家乐官网电脑游戏机投注法实例| 澳门顶级赌场娱乐平台| 网上真钱棋牌游戏| 博彩百家乐的玩法技巧和规则| 网上百家乐赌法| 扬中棋牌游戏中心|