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Funded project: Early detection of scoliosis using radiation-free 3D ultrasound imaging

Early detection of scoliosis using radiation-free 3D ultrasound imaging – led by Professor Zheng Yong-ping, Head, Department of Biomedical Engineering and Henry G. Leong Professor in Biomedical Engineering, PolyU; $8.4 million funding. Online coverage: RTHK – https://goo.gl/Mg453S CRHK – https://goo.gl/7Xy3ma HK China News Agency – https://goo.gl/8nSSvN 香港01 – https://goo.gl/RpFWrf HK Economic Times – https://goo.gl/CVaH5v Ta Kung Pao – https://goo.gl/cYfVfh Wen Wei Po – https://goo.gl/GLzSVU on.cc – https://goo.gl/ewxzaW Sing Tao Daily – https://goo.gl/NZbhzL Sky Post – https://rebrand.ly/d190215-6500-a9cd7 東網 (台灣版) – https://rebrand.ly/cnt-news-f31ba 

15 Feb, 2019

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BME Congregation Day 2018

Congratulations to all BME’s graduates! The 24th Congregation (Faculty of Engineering) of The Hong Kong Polytechnic University was held on 16 November 2018 at the Jockey Club Auditorium of PolyU. Families and friends of graduates gathered together to witness such a memorable moment. BME Graduate Representative, Mr. CHEUNG Cheuk Hei, delivered his Valedictory Speech during the graduation ceremony. Mr. CHEUNG Cheuk Hei delivered his Valedictory Speech

16 Nov, 2018

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PolyU develops robotic arm for self-help mobile rehabilitation for stroke patients

A press conference has been held on 31 October 2018 about an innovative robotic arm developed by Dr Hu Xiao-ling and her research team in PolyU’s Department of Biomedical Engineering (BME). The robotic arm facilitates self-help and upper-limb mobile rehabilitation for stroke patients. The lightweight device enables the patients to engage in intensive and effective self-help rehabilitation exercise anywhere, anytime after they are discharged from hospital. The robotic arm, called “mobile exo-neuro-musculo-skeleton”, is the first-of-its-kind integration of exo-skeleton, soft robot and exo-nerve stimulation technologies. Stroke is the third leading cause of disability worldwide. In Hong Kong, there are about 25,000 new incidences of stroke annually in recent years. Research studies have proven that intensive, repeated and long-term rehabilitation training are critical for enhancing the physical mobility of stroke patients, thus help alleviating post-stroke symptoms such as disability. However, access to the outpatient rehabilitation service for stroke patients has been difficult. Due to the overwhelming demand for rehabilitation services, patients have to queue up for a long time to get a slot for rehabilitation training. As such, they can’t get timely support and routine rehabilitation exercises. Stroke patients also find it challenging to travel from home to outpatient clinics. The “mobile exo-neuro-musculo-skeleton”, developed by Dr Hu Xiao-ling and her research team in the Department of Biomedical Engineering (BME) of PolyU, features lightweight design (up to 300g for wearable upper limb components, which are fit for different functional training needs), low power demand (12V rechargeable battery supply for 4-hour continuous use), and sportswear features. The robotic arm thus provides a flexible, self-help, easy-to-use, mobile tool for patients to supplement their rehabilitation sessions at the clinic. The innovative training option can effectively enhance the rehabilitation progress. Dr Hu Xiaoling said development of the novel device was inspired by the feedback of many stroke patients who were discharged from hospital. They faced problems in having regular and intensive rehabilitation training crucial for limb recovery. “We are confident that with our mobile exo-neuro-musculo-skeleton, stroke patients can conduct rehabilitation training anytime and anywhere, turning the training into part of their daily activities. We hope such flexible self-help training can well supplement traditional outpatient rehabilitation services, helping stroke patients achieve a much better rehabilitation progress.” Her team anticipated that the robotic arm can be commercialised in two years. The BME innovation integrates exo-skeleton and soft robot structural designs – the two technologies commonly adopted in existing upper-limb rehabilitation training devices for stroke patients as well as the PolyU-patented exo-nerve stimulation technology. Integration of exo-skeleton, soft robot and exo-nerve stimulation technologies The working principle of both exo-skeleton and soft robot designs is to provide external mechanical forces driven by voluntary muscle signals to assist the patient’s desired joint movement. Conventional exo-skeleton structure is mainly constructed by orthotic materials such as metal and plastic, simulating external bones of the patient. Although it is compact in size, it is heavy and uncomfortable to wear. Soft robot, made of air-filled or liquid-filled pipes to simulate one’s external muscles, is light in weight but very bulky in size. Both types of structures demand high electrical power for driving motors or pumps, thus it is not convenient for patients to use them outside hospitals or rehabilitation centres. Combining the advantages of both structural designs, the BME innovative robotic arm is light in weight, compact in size, fast in response and demands minimal power supply, therefore it is suitable for use in both indoor and outdoor environment. The robotic arm is unique in performing outstanding rehabilitation effect by further integrating the external mechanical force design with the PolyU-patented Neuro-muscular Electrical Stimulation (NMES) technology. Upon detecting the electromyography signals at the user’s muscles, the device will respond by applying NMES to contract the muscles, as well as exerting external mechanical forces to assist the joint’s desired voluntary movement. Research studies found that the combination of muscle strength triggered by NMES and external mechanical forces is 40% more effective for stroke rehabilitation than applying external mechanical forces alone. Rehabilitation effect proven in trials An initial trial of the robotic arm on 10 stroke patients indicated better muscle coordination, wrist and finger functions, and lower muscle spasticity of all after they have completed 20 two-hour training sessions. Further clinical trials will be carried out in collaboration with hospitals and clinics. The robotic arm consists of components for wrist/hand, elbow, and fingers which can be worn separately or together for different functional training needs. The sportswear design, using washable fabric with ultraviolet protection and good ventilation, also makes the robotic arm a comfortable wear for the patients. The device also has a value-added feature of connecting to a mobile application (APP) where user can use the APP interface to control their own training. The APP also records real-time training data for better monitoring of the rehabilitation progress by both healthcare practitioners and the patients themselves. It can also serve as a social network platform for stroke patients to communicate online with each other for mutual support.  

31 Oct, 2018

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Jockey Club Smart Ageing Hub Opening Ceremony & Symposium

Jockey Club Smart Ageing Hub Opening Ceremony & Symposium A New Project of BME for Promoting Gerontechnology   We are pleased to share with you that BME is launching a new project, the Jockey Club Smart Ageing Hub (“the Project”), for enhancing the public awareness of technological devices related to the elderly. Details of the event are as follows: Date            : 27 October 2018 (Saturday) Time           : 9:00 am – 4:30 pm (registration starts at 8:30am) Venue         : Chiang Chen Studio Theatre, The Hong Kong  Polytechnic University More Information: Event Booklet

27 Oct, 2018

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PolyU develops eNightLog System for caring Elderly with Dementia

In a press conference arranged by CPA which has been held on 8 October 2018, The Hong Kong Polytechnic University (PolyU) has developed eNightLog, a multi-function nighttime monitoring system for elderly with dementia, to track their respiration and activities in bed for preventing fall or wandering away. The safe and non-restraint system, particularly designed for coping with the typical environment of nursing homes in Hong Kong, will help greatly improve the elderly’s quality of life, while enhancing the efficiency and lessening the workload of healthcare personnel. It is projected that the number of people aged 65 and above in Hong Kong will reach around 2.5 million by 2040, about one-third of the overall population then. Among the elderly at that time, around 332,700, or one out of 10, would suffer from dementia, triple of the figure in    2009. [1]The most common type of dementia is Alzheimer’s Disease, characterized by gradual deterioration in one’s mental capacities including memory, judgment and communication ability, as well as usual symptoms of depression, agitation and sleep disturbances. The eNightLog system, developed by a research team led by Ir Professor Zheng Yongping, Head of the Department of Biomedical Engineering (BME) at PolyU and Henry G. Leong Professor in Biomedical Engineering, was awarded Gold Medal at the 46th International Exhibition of Inventions of Geneva this year. Members of the research team include Dr Eric Tam, Dr James Cheung, Mr Will Lai and Mr Alex Mak. “PolyU has profound history of applying the assistive and rehabilitation health technologies developed by our faculty members to cope with social needs. By helping various nursing homes to set up the eNightLog system we developed, we hope to contribute our expertise for helping create an age-friendly society,” said Professor Zheng. He is glad that the government has pledged support towards constructing “Smart Living” for all citizens especially for the disadvantaged, and planned to roll out a HK$1 billion fund this year for subsidizing elderly service units to make good use of gerontechnology. He hopes that with such support, eNightLog can bring benefits to not only more elderly with dementia, but also other elderly in need and other disabled groups. eNightLog system provides safe and non-restraint monitoring The non-contact and non-invasive eNightLog system is embedded with event sequence tracking and different kinds of remote sensing and imaging technologies, based on innovative algorithm developed by the BME team of PolyU. This innovative technique has already been patented. Seventeen systems have been installed and tested in a nursing home for 2 months this year for nighttime monitoring. During this period, 380 incidences of elderly leaving bed alone were recorded, with all them being successfully detected (100%), and only 2 times of false alarm occurred (0.5%). In addition, the system recorded 525 events of caregivers visiting elderly and accompanying the elderly leaving, and accuracy rate is 100%. The eNightLog system includes following sensors to detect different activities of the elderly in bed: Near Infrared 3D sensor tracts the resident’s positions and postures (lying down, sitting on bed or bedside, standing beside the bed, bed-leaving) and caregivers’ visits. It thus helps prevent the resident from falling and wandering, and improve staff response time. The algorithm can also detect caregivers paying night visits to the elderly, thus avoiding false alarm. Ultra-Wideband (UWB) Impulse Radar sensor detects small motions even under quilt, including respiration rate, to identify the resident’s health condition and sleep quality. Environment sensor provides various ambient measurements and controls, such as room temperature and light control. The activity status and alarm of multiple residents are transmitted in the form of text, icons or processed infrared image, to display on the caregivers’ computer stations or mobile devices. Signals detected beyond the pre-set normality range will trigger alarm for caregivers to take immediate actions. The research team will soon extend the functions of eNightLog system to detecting heart rate and body temperature, and connect the system with different kinds of smart devices such as electronic diaper. In addition, the system can also link with an ultrasound bladder volume detector to facilitate caregivers to take better care of their residents, especially in handling urinary incontinence. The team is exploring big data analysis to provide more preventive information for health care of elderly. “Being a multi-sensing system and platform, eNightLog is greatly scalable in connecting with other devices, including wearable, non-contact or remote-control ones. The further applications and development of eNightLog with advancing rehabilitation health technologies can be very promising,” said Dr Eric Tam. (End) ********   [1]Yu R, Chau P, McGhee S, Cheung W, Chan K, et al.. (2012) Trends in Prevalence and Mortality of Dementia in Elderly Hong Kong Population: Projections, Disease Burden, and Implication for Long-Term Care. International Journal of Alzheimer’s Disease. doi: 10.1155/2012/406852.

8 Oct, 2018

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PolyU Head of BME shares views on biomedical technology in TV programme

Ir Professor Yongping Zheng, Head of the Department of Biomedical Engineering of PolyU, was interviewed in a RTHK TV31 television programme 830 Magazine (《 日常8點半》) on 27 September 2018, 8:30 pm. He shared his insights on the development of biomedical technology and smart medical industry in Hong Kong. He said although the development of local biomedical technology industry has been a bit slow, he is confident that the industry, with the support from university sector and the government, will boom and contribute to smart city development in Hong Kong. Professor Zheng’s part is form around 16:22 to 22:54 (in Cantonese), video please click HERE.         

27 Sep, 2018

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Good Seed Supports BME Student Project – “Eye-Runner”

Good Seed Supports BME Student Project – “Eye-Runner” A Digital Guide Runner for the Visually Impaired Runners and Beyond the Finish Line   BME students WONG Chun Yiu, CHIU Edmond Ka Tsun, YIP Wing Yiu and TERN Yoe Rhey received a funding support of HK$100,000 from Good Seed in early 2017 to set up the Vivid Sense Limited for development and production of a wearable assistive device targeted for use by the visually impaired – “Eye-Runner”.   As the team realized that training plans of many visually impaired persons rely on support and help from guide runners, the initial concept of Eye-Runner was to develop a wearable assistive device which uses camera and ultrasonic sensor to help navigate visually impaired persons to run safely on tracks and avoid obstacles. With support from the Good Seed, the “Eye-Runner” had completed the user test at a residential home for elderlies with visual impairment. Positive feedback was received from trial users and the team will fine tune the design and setting of Eye-runner to fit the visually impaired persons’ needs. Although mass production is not currently being considered, the team will explore further extending the device’s applications and targets for socially beneficial purposes.   About Good Seed Good Seed is jointly organised by the Jockey Club Design Institute for Social Innovation Design Institute for Social Innovation and Institute for Entrepreneurship of PolyU, funded by the Social Innovation and Entrepreneurship Development Fund to support social innovation projects and address poverty and other social issues.   Online Newspaper Article HK01                                            http://trsurl.com/s/7V3 Yahoo HK                                     http://trsurl.com/s/7UT Ming Pao                                       (1) http://trsurl.com/s/7UX  (2) http://trsurl.com/s/7V1 Hong Kong Economic Times        (1) http://trsurl.com/s/7UZ  (2) http://trsurl.com/s/7V0 On.cc                                             (1) http://trsurl.com/s/7UU  (2) http://trsurl.com/s/7UY Sing Tao                                        (1) http://trsurl.com/s/7US  (2)http://trsurl.com/s/7UV     Related Link Student project Eyerunner granted HK$100,000

9 Apr, 2018

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BME awarded Gold Medal in the 46th International Exhibition of Inventions (Geneva)

The Hong Kong Polytechnic University (PolyU) has brought glory to Hong Kong by winning 9 prizes, project eNightLog – Nighttime Monitoring System for Caring Elderly with Dementia invented by Ir Prof. Yongping ZHENG, Department of Biomedical Engineering (BME) awarded Gold Medal at the 46th International Exhibition of Inventions of Geneva. Details of the project: eNightLog – Nighttime Monitoring System for Caring Elderly with Dementia Principal Investigator: Ir Prof. Yongping ZHENG, Department of Biomedical Engineering Equipped with event sequence tracking, different kinds of remote sensing and imaging technologies, this system performs intelligent nighttime monitoring of dementia patients in a non-restraint approach. In case of unusual incident, the system will send an alert message to the caregiver immediately, expediting the incident handling process. PolyU will install over 100 units of eNightlog in local elderly health centres. Video (Chinese only) : https://video.polyu.edu.hk/Panopto/Pages/Viewer.aspx?id=d0473446-c446-4fc8-841d-049c70406153

31 Mar, 2018

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