An IOT based Wearable Smart Glove for Remote Monitoring of
Rheumatoid Arthritis Patients
M. Raad, M. Deriche, A. Bin Hafeedh, H. Almasawa, K. Bin Jofan, H. Alsakkaf, A. Bahumran and
M. Salem
King Fahd University of Petroleum and Minerals, Dhahran, 31261, Saudi Arabia
Keywords: Arduino, Rheumatoid Arthritis, Therapy, Smart Glove, E-textile, IOT, Bluetooth.
Abstract: Rheumatoid Arthritis is a disabling and painful disease of finger joints affecting mainly the elderly people
and requiring continuous medications and physical therapy. Traditional arthritis measurements require labor
intensive examination by clinical staff. These manual measurements are inaccurate and subject to observer
variations. Nowadays the use of wearable technologies is spreading and rapidly becoming a trend
promising to offer key benefits in the management of chronic diseases especially at home. Here, we
propose an affordable Smart Glove instrument for assisting physiotherapists in remotely analysing patients
finger flexions when performing diverse activities at home. An E-textile based glove uses flex and force
sensors, and an Arduino platform to transmit motion data to the physiotherapists using a smart phone using
a dedicated App. The flex sensor on the index finger detects and estimates the motion, a BLE (Bluetooth
Low Energy) Nano is used for processing and wireless transmission. The wearable smart glove uses a
lithium ion 3.3V rechargeable 400mAH battery for consuming power. This Smart Glove also helps in
monitoring the patient’s response to either medication and/or diverse recommended movements. The data
collected can be used to analyse the status of the patient with time and also in assisting care givers to change
planned activities or exercises when needed.
1 INTRODUCTION
Improving the efficiency and quality of health care
services in both hospitals and homes, has always
been very important and challenging at the same
time. Among the different diseases affecting the
elderly people, in particular, is Rheumatoid Arthritis
(RA). This disease is an autoimmune disease, that
results in stiffness, swelling and possibly deformity.
Stiffness may arise from physical damage around the
joints, and the symptom of stiffness is quantified by
the degree of difficulty in joints movements.
Stiffness intensity varies between patients and
occurs most commonly in the hands (O'Flynn et al.,
2013).
Clinical manifestations of RA can be confused
with similar unrelated musculoskeletal and muscular
disorders. Outcome measures such as Disease
Activity Score (DAS) and Health Assessment
Questionnaire (HAQ), are used to asses the patient’s
disease severity. These measures are partly
subjective and can be influenced by other factors
such as depression or unrelated non-inflammatory
conditions. Patients suspected to suffer from RA are
at first examined by an Occupational Therapist (OT)
to quantify joint Range Of Motion (ROM) and hand
function. Traditional objective measures of RA
using the universal goniometer (UG) and visual
examination of the hands is labor intensive and open
to reliability problems and human bias.
Consequently, there is a crucial need to use
technology like wearables to detect stiffness of
fingers. Moreover, emerging technologies like
Internet of Things (IOT), is expected to offer
advanced connectivity of devices, systems, and
services that go beyond machine-to-machine
communications. As a part of reaching every sector
with the connectivity of IOT, eHealth services are
gaining a lot of grounds. Primarily, eHealth is a
healthcare practice supported by electronic processes
and wireless communications (
Chatterjee et al.,
2015
),(Holler et al., 2014) and (Connolly et al., 2018).
Such technology is helping doctors in remotely
monitoring their patients and treating them even
when they are not in hospital. One application of
224
Raad, M., Deriche, M., Hafeedh, A., Almasawa, H., Jofan, K., Alsakkaf, H., Bahumran, A. and Salem, M.
An IOT based Wearable Smart Glove for Remote Monitoring of Rheumatoid Arthritis Patients.
DOI: 10.5220/0007573302240228
In Proceedings of the 12th International Joint Conference on Biomedical Engineering Systems and Technologies (BIOSTEC 2019), pages 224-228
ISBN: 978-989-758-353-7
Copyright
c
2019 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
major importance is home based motion sensing
specially for the elderly people. Wearable sensors
can be used to monitor patients at home and track
their movements (OQuigley et al., 2014).
Researchers have discussed E-textile devices for
data collecting to support work on Parkinson’s
disease. Parkinson Disease (PD) is a
neurodegenerative motor disorder that targets and
breaks down the nervous system. It occurs more
frequently with the elderly people. Affected
individuals can become unable to perform fine
motor movements of hands and arms. Collecting
objective movement data from a device such as a
smart textile can help in accurately monitoring the
patient state (Plant et al., 2014). Also, patients with
post-strokes can suffer from hand disabilities and
would benefit from Smart Gloves during
rehabilitation (Hidayat et al., 2015). Several smart
clothes were developed for tracking the activities of
users by using textile-based sensors for monitoring
deformation along textile, positions, angles, and
accelerations of body segments or joints during
motion (Goncu-Berk et al., 2017). In (Jung et al.,
2017), the researchers developed the RAPAEL smart
glove by involving video games to help patients in
their rehabilitation process at home. Various
sensitized gloves have been discussed in the
literature, for example, gloves that track hand and
finger motion for providing feedback to
rehabilitation systems (Escoto et al., 2017). For a
review of wearable sensors, the reader is directed to
read the survey by Duarte Dias in (Dias et al., 2018).
In this paper, we propose a novel Smart Glove
design that provides accurate readings and send
relevant information to doctors especially
physiotherapists enabling them to monitor patients
and provide them with the most suitable
prescriptions. The Smart Glove has several
therapeutic functions. One of these functions is to
provide doctors with flex related measurements
through simple smart phone applications. An
additional novel feature that is added is the ability to
measure hand gripping capabilities of patients by
holding house hold objects like a tea cup for
instance, while the patient is holding a cup of tea,
the therapist can monitor remotely the rehabilitation
process of the patient by looking at the data sent
from the gripper sensors through the smart glove.
The proposed smart glove can be used for several
other purposes as will be discussed in the next
sections. It is worth noting that the proposed system
has been implemented using off-the-shelf components
which were combined with our algorithms for data
analysis and information transmission.
2 METHODOLOGY
This work focuses on the development of a Smart
Glove system for helping the elderly people at home
suffering from joints movement disability. The main
objective is to design, implement and test a device
for remotely monitoring hand and fingers
movements. The system uses Smart Glove and a
multitude of E-textile sensors to measure the range
of motion (ROM) of fingers, and a microcontroller.
This system can collect and send rehabilitation
related data to physiotherapists. The microcontroller
allows the control of the activity of the Smart Glove
in an easy and effective way. The Smart Glove is
connected to a Bluetooth Module for observing the
state of patient`s palm and alerting the
physiotherapist if an error or an abnormality has
occurred. The main advantage of the proposed
solution is its simplicity, cost-efficiency, and
scalability with home based IOT systems. The whole
proposed system costed less than 100$ to build and
has low power requirements, compared to the
commercial Rapael Smart glove for arthritis Rehab,
which has a rental cost of 99$/month, and a total
cost for hospital amounting to 15,000$.
Nevertheless, the proposed smart glove is only
intended to be worn while collecting measurements.
Additional research is needed to make the system
more user friendly and non-invasive, in addition to
collecting patient’s data in a clinical setting with the
aid of a physiotherapist.
Figure1: System Design.
We display in Fig1 the overall proposed system. The
Smart Glove comprises two flex sensors and one
force sensor. Finger motion is measured by a flex
sensor while the force sensor measures the applied
pressure on each finger and transfers all these data to
the microcontroller. The Arduino Lilypad processes
the data and sends them to a physiotherapist by
using a Bluetooth module. In this research, we use
LilyPad Arduino, which is designed for E-textiles
and wearables e-health applications. It can be sewn
to fabric and similarly mounted power supplies,
sensors and actuators with conductive thread. Two
E-textile force sensors and one E-textile flex sensor
were used only due to the limited I/O ports on the
An IOT based Wearable Smart Glove for Remote Monitoring of Rheumatoid Arthritis Patients
225
Lilypad Arduino. It has an Analogue /Digital (A/D)
converter built on the chip and a clock speed of 8
Mhz. The Main Board is based on the
ATmega168V (the low-power version of the
ATmega168). The Arduino board has a USB
connector to enable it to be connected to a PC to
upload or retrieve data. The board exposes the
microcontrollers I/O (Input/output) pins to enable it
to connect those pins to other circuits or to sensors,
etc. The Bluetooth module used in this research is
called BlueSMiRF silver and it uses the RN-42
module. A Smart Glove system is developed in order
to effectively demonstrate the activity daily living of
a patient including the grasping of objects for a
certain task. The process involving transmitting
electrical signals from the sensors to the LilyPad
Arduino to analyse the data is the most challenging
task in the circuit design. As shown in Fig. 2
(Gloves), the flex and force sensors are attached on
the Smart Glove. The hand glove incorporates a
sensory system which can detect the force of
grasping any object and the finger degree of
bending.
3 EXPERIMENTAL RESULTS
Fig. 3 shows the Smart Glove sensor readings as
shown in the Smart Phone of the therapist for remote
monitoring of the patient’s hand joint movements.
The glove has been synthesized from normal
stretched clothe and the sensors were glued on this
layer. Another nylon layer covers and protects the
sensors. The flex and force sensors were calibrated
based on instructions provided in the datasheet.
Figure 2: Smart Glove Prototype.
The LilyPad Arduino microcontroller has been
used in this device to process and control signals
generated from sensors. The Arduino
microcontroller is powered by a lithium ion
rechargeable battery embedded in the gloves. The
Arduino microcontroller processes the raw data
collected from sensors and transmits it to the mobile
screen as shown in Fig. 3. In addition to monitoring
the progress of rehabilitation through improvement
of hand joint motion based on the prescribed
exercises, the therapist or the doctor can also
monitor the gripping capability of the patients. The
system was tested successfully in the lab. Further
extensive lab experimentation is planned to evaluate
the performance of the smart glove utilization in a
clinical setup in collaboration with a physiotherapist
in a nearby hospital. The open platform software for
Arduino was used compatible to C language. This
feature with the advent of IOT opens lots avenues as
this valuable data can be sent on the spot or later to a
therapist for analysis which saves lots of physical
interaction with the therapist and hence decreases
the cost. Fig. 4 shows the Analog data (ADC) is
directly proportional to the force (Newton) of the
force sensor. This is vital to detect the gripping force
needed based on the physiotherapist plan,
particularly in monitoring the activity of daily living
like making tea. Also, the experiment shows that the
flex's resistance is directly proportional to the
bending as shown in Figure5. The flex sensor is a
carbon strip that measures the resistance which is
directly proportional to the amount of bending and
deflection as shown in Fig. 5. The force sensor is
basically a variable resistance that changes its value
depending on the amount of pressure applied. The
experiment shows that when the flex sensor is bend
inward, resistance value increased significantly as
the angle of flex sensor is bend further. However,
when it is bent outward, the resistance value
decreased gradually. These preliminary findings
suggest that flex sensor is clearly suitable to detect
finger bending angle by utilizing inward bend of the
flex sensor.
Figure 3: Sensor readings as shown in the smart phone.
BIOSIGNALS 2019 - 12th International Conference on Bio-inspired Systems and Signal Processing
226
Figure 4: Force sensor, Newton Vs ADC.
Figure 5: Flex sensor, Resistance vs Bending Degree.
4 CONCLUSION
We discussed in this paper a Smart Glove based
system for monitoring joints and fingers movements
for patients suffering from RA. The system is useful
from remote monitoring of patients staying home.
The system enables doctors to diagnose and identify
the states of mobility and joints stiffness of the
patients without requiring them to be present at the
hospital. The system provides the doctors with
accurate readings of the flexion and applied force
via a smart phone. With the advent of IOT &
communication technology like 5G, it opens lots of
avenues for E-health and results in cost saving. The
system was tested successfully in the lab both for the
force and flex sensors utilizing volunteer students.
Nevertheless, further research need to be done in the
future in collaboration with a physiotherapist in a
clinical setting. The main limitation of this research
was the limited input/output interface of the used
Arduino microcontroller which limited the number
of sensors used to detect symptoms of the disease or
immobility. Work is in progress to accommodate
more sensors and add machine learning algorithms
on top to give the proposed solution the unique
feature of learning and adapting with the patient
situation.
ACKNOWLEDGMENTS
The authors would acknowledge the support of
KFUPM for this research.
REFERENCES
O'Flynn, B., Torres, J., Connolly, J., Condell, J., Curran,
K., and Gardiner, P., 2013. "Novel smart sensor glove
for arthritis rehabiliation," in the Proceedings of the
IEEE International conference on Body Sensor
Networks (BSN), pp. 1-6.
Chatterjee, P. and Armentano, R. L., 2015. "Internet of
things for a smart and ubiquitous ehealth system," in
International conference on Computational
Intelligence and Communication Networks (CICN),
pp. 903-907.
Holler, J., Tsiatsis, V., Mulligan, C., Karnouskos, S., and
Boyle, D., 2014. From Machine-to-machine to the
Internet of Things: Introduction to a New Age of
Intelligence. Academic Press.
Connolly, J., Condell, J., O’Flynn, B., Sanchez, J. T., and
Gardiner, P., 2018. "IMU sensor-based electronic
goniometric glove for clinical finger movement
analysis," IEEE Sensors Journal, vol. 18, no. 3, pp.
1273-1281.
OQuigley et al., C., 2014. "Characteristics of a piezo-
resistive fabric stretch sensor glove for home-
monitoring of rheumatoid arthritis," in 11
th
International Workshop on Wearable and Implantable
Body Sensor Networks (BSN Workshops, pp. 23-2.
Plant L, Noriega B, Sonti A, Constant N, Mankodiya K.,
2014. Smart E-textile gloves for quantified
measurements in movement disorders. IEEE MIT
Undergraduate Research Technology Conference
(URTC) pp. 1-4.
Hidayat AA, Arief Z, Happyanto DC, 2015. Mobile
application with simple moving average filtering for
monitoring finger muscles therapy of post-stroke
people. In International Electronics Symposium (IES),
pp. 1-6.
Goncu-Berk G, Topcuoglu N, 2017. A Healthcare
Wearable for Chronic Pain Management. Design of a
Smart Glove for Rheumatoid Arthritis. The Design
Journal, vol. 20, no.1,pp.1978-1988.
Jung HT, Kim H, Jeong J, Jeon B, Ryu T, Kim Y., 2017.
Feasibility of using the RAPAEL Smart Glove in
upper limb physical therapy for patients after stroke: A
randomized controlled trial. InEngineering in
Medicine and Biology Society (EMBC), 39th Annual
International Conference of the IEEE 2017 Jul 11 pp.
3856-3859.
Escoto, A., Trejos, A. L., Walton, D. M., and Sadi, J.,
2017. "A sensorized glove for therapist skill
performance assessment during neck manipulation," in
IEEE 30
th
Canadian Conference on Electrical and
Computer Engineering (CCECE), pp. 1-4.
An IOT based Wearable Smart Glove for Remote Monitoring of Rheumatoid Arthritis Patients
227
Dias, D., and Paulo Silva Cunha, J. 2018. " Wearable
Health Devices- Vital Sign Monitoring, Systems and
Technologies", Sensors, vol.18,no.8, pp. 2414-2442.
BIOSIGNALS 2019 - 12th International Conference on Bio-inspired Systems and Signal Processing
228