Internet-of-Things Management of Medical Chairs and Wheelchairs
Chelsea Yeh
1
, Alexander W. Lee
1
, Hudson Kaleb Kalaw Dy
1
and Karin C. Li
2
1
Walnut Valley Research Institute, Walnut, California, U.S.A.
2
School of Medicine, University of California Riverside, Riverside, California, U.S.A.
Keywords: Wheelchair, Geri Chair, Treatment Chair, Hospital Management, Injury Prevention, Internet of Things, IoT.
Abstract: In this paper, we describe the application of the technologies of the Internet-of-Things (IoT) to the
management of wheelchairs and medical chairs such as geriatric (Geri) chairs or treatment chairs. Specifically,
it seeks to monitor the status of high-risk or physically-weakened patients in hospitals or care facilities as they
rest on wheelchairs or await treatment on medical chairs with sensor data collected by embedded pressure and
motion sensors, and provide real-time alerts to the medical staff. The potential for injuries from high-risk
individuals attempting to stand and falling is very serious. The injuries often result in additional complications
to the underlying health condition requiring the use of the wheelchair or treatment. The proposed IoT
wheelchair and medical chair management system will alert the staff immediately when a susceptible
individual stands or attempt to stand, and allow them to take immediate remedial action. The motion data
from the network of sensors is further processed by machine learning models which predict occupant intent
regarding sit-to-stand transition, providing preventive alerts to the staff. The research consists of two parts.
The first part created IoT-connected sensors and devices used to capture the occupant’s motion on the chair
and send the data to a central server. The second part developed the staff alert application that runs on mobile
phones and consoles located in the nurses' stations, that receive the information from the server.
1 INTRODUCTION
In a hospital or care facility, one of the roles of the
staff is to ensure the safety of patients as they rest or
wait for treatment. Internet of Things (IoT) allows for
real-time remote collection and interpretation of data,
and immediate feedback of monitored status based on
the collected data. In medical applications, IoT
enables the collection of medical data of patients in a
hospital and the dissemination of the patients’ status
to the medical staff immediately. This allows the
medical staff to assess the condition of those in their
care, and take appropriate actions to prevent or
mitigate worsening medical conditions or additional
complications and injuries.
In this research, we developed a real-time
wheelchair and medical chair monitoring system
based on IoT-connected pressure and motion sensors.
Here, wheelchairs and medical chairs are equipped
with IoT pressure and motion sensors that detect
whether or not the occupant has moved to a standing
position, or is attempting to stand. The devices
transmit the data of the motion or change in pressure
in real-time to a central server. Computational
intelligence based on the sensor data can be provided
on the chairs to detect and/or predict occupant status
or intent. The server processes and interprets the data,
then updates to a mobile application running on the
staff’s mobile devices, alerting them if a high-risk
occupant stands or is attempting to stand. It can also
alert the nurses in the nurses’ station via a dedicated
console, or be integrated into the facility's patient
management system.
Further work includes the measurement of the
patient’s lower body strength during recovery or
rehabilitation. Current tests include the 30-second
chair stand test (30CST) and 5 times sit-to-stand test
(5xSTS) are used to assess lower-body strength
(Zhang, 2018). Chairs equipped with pressure sensors
and motion sensors will be able to capture the
dynamic weight distribution and motion of the seat as
the patients perform the test, and provide more data
regarding the area of performance improvement and
strengthening.
2 SIT-TO-STAND EVENT
MANAGEMENT
The elderly population, patients who are physically
weakened due to medical conditions, and patients
whose medication impairs physical control are
Yeh, C., Lee, A., Dy, H. and Li, K.
Internet-of-Things Management of Medical Chairs and Wheelchairs.
DOI: 10.5220/0011059600003194
In Proceedings of the 7th International Conference on Internet of Things, Big Data and Security (IoTBDS 2022), pages 183-188
ISBN: 978-989-758-564-7; ISSN: 2184-4976
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
183
particularly susceptible to falls in injury. This is
especially problematic when individuals move from a
sitting position to a standing position (Pozaic, 2016).
In addition, patients with cognitive and memory
impairment may attempt to stand and leave while
resting in a sitting position, risking both falls and
becoming lost by wandering. Our project aims to
solve these issues by introducing a monitoring system
designed to supervise the movement of those
occupants while sitting in a wheelchair, geriatric
(Geri) chair, or other treatment chairs. This allows the
care staff the ability to react promptly and take
appropriate remedial actions to the high-risk
individual standing or attempting to stand. The idea
of putting Geri chair alarms to alert nurses and care
staff of occupant movement has been implemented
before in existing products (alzstore.com). In
previous works, chair alarms have been employed to
signal occupants leaving the chair with a co-located,
integrated alarm. These chair alarms consist of a
chord attached to an occupant’s clothing. If an
occupant stands, the cord pulls out a magnetic contact
sensor which produces an audible alarm, alerting the
caregivers of the situation. A pressure-sensitive pad
that rests on the seating area of the chair has also been
developed to sound an audible alarm if the occupant
stands, reducing the pressure on the pad.
However, in a hospital or care facility, this is
likely to disturb the other individuals in the vicinity
of the alarm. For our project, we aim to remove the
audio aspect of these alarms. By enabling the sensors
to send notifications to the staff via an IoT network
the disturbance created by the audio alarm is
eliminated. The staff must be alerted in case of an
alarm whenever they are on duty. Therefore, this
system sends alerts directly to the mobile phones of
the on-duty medical or care staff.
In our previous work, we integrated a pressure
sensor to hospital beds with IoT to alert nurses when
a bed-rest patient vacates their bed and risking falls
and injuries (Yeh, 2021). Another work incorporates
gesture recognition of data from a sensor array
mounted on patient chairs that provide an audio alarm
to the staff and PC notification (Knight, 2008).
3 COMPONENTS
The embedded IoT medical system consists of the
following elements:
1) Network of pressure sensors and motion sensors
suitable for wheelchair or medical chair use;
2) Internet-capable processing devices co-located
and connected to the chair absence sensors,
which collect, interpret, and transmit the sensor
data
3) An algorithm or set of algorithms, running on
the processing device and/or server, to
determine if the occupant has stood up or is in
the process of standing up. The algorithms can
also include machine learning models for
occupant intention-to-stand prediction
4) A WiFi, 5G, or other suitable and secure
network accessible from inside the facility or
environment
5) A data collection server that receives the chair
status data for the facility or the sector of the
facility which it is monitoring
6) Mobile devices or cellular phones that is
normally carried by the staff during their shift,
running the mobile application that displays the
status of the chairs that the staff is attending to
or responsible for
3.1 Sensors
Pressure sensors such as pressure pads are
commercially available and easy to obtain. These
devices sense pressure through the distribution of the
occupant weight among the pad and sensors. In this
system, the pressure pad is connected to a Wi-Fi
module. The purpose of the module is to read real-
time occupant data from the sensors and relay the
information to the data analysis server.
Also, motion sensors or accelerometers are
readily available to measure the movement on the
chair. Here, occupant motion can be monitored to
determine if a sit-to-stand event is occurring. In
addition, the accelerometer may be able to determine
the quality of rest that the occupant is experiencing.
We would like to emphasize that the accelerometer is
to be mounted on the chair, and not worn on the wrist
of the patient/user. This minimizes patient discomfort
and the workload on the care staff by reducing bodily
attachments, as the patient may already have various
monitoring devices and intravenous tubes attached to
their bodies.
In addition to pressure and motion sensors, it is
also possible to utilize other sensing technology to
assist in the monitoring of wheelchairs or medical
chairs. Heat sensors can also be deployed on the chair
to monitor the temperature of the chair as the
occupant is sitting on the chair. This temperature will
not be an accurate reading of the occupant's body
temperature, due to the lack of direct contact between
the sensor and the occupant's body (shielded by gown,
IoTBDS 2022 - 7th International Conference on Internet of Things, Big Data and Security
184
sheets, etc.). However, it does provide a relative
difference in temperature when the occupant is on the
chair versus not on the chair.
3.2 Microcontroller
The sensors will be connected via a suitable interface
to a computing device (microcontroller). Depending
on the computing and power requirements, the
microcontroller can also perform computation on the
collected data. For example, if the algorithm is simple
enough for the sensing modality, the microcontroller
would be able to directly determine if a sit-to-stand
transition has occurred.
The microcontroller must be equipped with
networking capabilities, preferably wireless, which
will be used to transmit the collected data to a server.
Ideally, the microcontroller will be powered via an
AC power adaptor. This provides a constant source of
power delivered by the facility. Since many treatment
chairs are typically already powered, using AC power
should be an option in a hospital environment.
However, for wheelchairs AC power is usually not
available because of their mobility, and rechargeable
batteries must be deployed. Even if AC power is
available, rechargeable batteries may be
advantageous to provide backup power to the
microcontroller and sensing devices in case of a
power failure.
3.3 Algorithm and Machine Learning
From the data collected by the sensors, one or more
algorithms are used to determine the status of the
occupant on the chair. Several types of algorithms can
be developed and deployed in the system, and can be
dynamically changed in response to clinical or patient
requirements. The proposed algorithm types are as
follows:
1) Simple chair vacancy algorithm
Determines whether the person has left the chair
2) Sit-to-stand transition algorithm
Determine in real-time what stage of the sit-to-
stand transition is being executed, from fully
seated, to weight shifting, to weight transfer, to
fully standing.
It will also determine if a sit-to-stand attempt
has failed.
3) Predictive sit-to-stand algorithm
Predicts from the movement on the sensors the
probability that the person is intending or begins
to attempt to stand
4) Lower body strength algorithm
Measures the dynamic movement of the patient
as they perform sit-to-stand transitions, and
determines rehabilitation progress and relative
strength and weakness during stages of
movement
With a pressure pad under the seating area, the
algorithm to determine if the occupant has vacated the
chair is relatively simple to implement a type 1
algorithm. Either a lower threshold pressure level has
been crossed, or a sudden decrease in pressure level
can be used to trigger an alert. With additional
pressure sensors, located on the four corners of the
seat, the weight distribution of the person can be
measured, allowing dynamic measurement of the
person’s motion to implement a type 2 algorithm.
This can be further enhanced by motion sensors
situated around the chair to implement type 3 or 4
algorithms.
Simple algorithms such as types 1 and 2 that do
not require much computing power can be
implemented directly in the microcontroller. This
would lower the data transmission on the
requirements on the network, and reduce the
computation load on the server. The microcontroller
can simply transmit the computed state of the person.
For more complex algorithms, if the
microcontroller lacks the necessary processing
power, it can simply transmit the received data to the
server for execution. However, with the capabilities
of modern microcontrollers, we expect more types of
algorithms to be executable locally on the chair.
We are planning the use of machine learning
models to predict the individual’s sit-to-stand
intention from the motion collected from the sensor
network. It is possible to use supervised learning to
train the model, with the researchers labeling the
intention of the seated individual prior to a sit-to-
stand event or no transition event. However, because
the time series data before an actual sit-to-stand event
is captured, this data can be used for unsupervised
learning, dramatically lowering the training cost of
the human labeling process. Although the training
will be done on the server, the pre-trained machine
learning model can potentially run on the
microcontroller.
3.4 Network
The hospital or care facility must provide a network
that the microcontrollers deployed on the chairs can
connect to. WiFi is the most prevalent wireless
networking system deployed in most modern
environments. The network must provide adequate
security against data interception and data breaches,
Internet-of-Things Management of Medical Chairs and Wheelchairs
185
and WiFi provides this capability. It must be highly
reliable (transmitted data is not lost or corrupted) and
have low latency (transmitted data is received
immediately). Bandwidth requirements are low for
the IoT chairs, as only a small amount of data is
transmitted per second per chair.
Other data networking systems may be used,
provided that the facility or environment possesses
such a system or is willing to invest in such a system,
and the system provides the necessary security.
Wireless systems include 5G cellular networks.
Wired systems that can be considered are ethernet,
powerline communication, coaxial, or telephone
networking.
3.5 Server
The role of the central server is to receive the data sent
by the microcontroller from sensors attached to the
IoT chairs. When a microcontroller or algorithm
running the server determines/predicts a sit-to-stand
event, it will send an alert to the mobile device or cell
phone carried by the responsible caretaker and/or the
console at the nurses’ station.
It is often the case that there are multiple nurses
or care staff in the facility, each attending to a set of
chairs, some with high-risk or physically-weakened
individuals, and some without.
The configuration of the assignment of the chairs
to each caretaker must be simple and straightforward.
Also, the chair alert must be able to be turned on or
off for each chair depending on whether a high-risk
individual has been placed on the chair, and if the
occupant has been removed from the chair (by the
staff) for reasons such as return to bed or treatment
sessions.
3.6 Mobile Devices and Mobile
Application
The mobile application that notifies and alerts the
responsible nurses or care staff of sit-to-stand
transition will run on a mobile device that the staff
member carries. For caretakers with facility-issued or
personal mobile phones that they carry on their
persons during their shift, the mobile application can
be installed and provisioned on these devices by the
IT staff. Dedicated devices can also be developed that
connect to the facility’s network and alert the
caretakers of risky sit-to-stand events.
As a high-risk or physically-weakened individual
is placed on a particular IoT chair, the nurse will be
able to scan a barcode or QR code, or connect via
Bluetooth or RFID, and turn on the alert for that chair.
Similarly, the alert is turned off for the chair prior to
when the occupant is removed from the chair.
The facility management or IT staff will be able
to assign the set of chairs to each particular mobile
device/caretaker from the central server, or on the
mobile devices.
The mobile device can provide alerts in the form
of (1) visible notification on the screen, (2) vibration
of the device, and/or (3) one-time or periodic audible
beep or alarm.
4 INITIAL SYSTEM
For the initial presence sensing system development,
we created a test system from the following
components.
The microcontroller was chosen to be the ESP32
because it is powerful, low cost, and, most
importantly, has integrated WiFi capabilities
(espressive.com). It is compatible with the Arduino
Integrated Development Environment, a widely used
open-source development system that uses the C++
coding language, making it simple for programming
and updating. The ESP32 platform features a built-in
dual-core CPU with WiFi connectivity, a wide
operating temperature range from -40°C to 125°C.
This development board is low-cost and usually
operates at 160MHz with 4MB of flash memory and
8MB of PSRAM.
WiFi networks are ubiquitous and secured with
WPA2 (IEEE, 2016). The IoT devices will be
connected over a 2.4GHz WiFi band because it is
more secure and has a longer range compared to the
5.0GHz band.
For this initial development, we chose the Blynk
cloud-based server. Blynk is an IoT platform that
allows machine learning and data analytics on mobile
apps and runs over the HTTPS API. Blynk (blynk.io)
operates with the concept of a virtual pin, which
enables data to be exchanged from a device to the
server easily via the cloud.
Similarly, we used the commercially available
Blynk application for the application that runs on
mobile devices. It operates on both iOS and Android.
The Blynk mobile application uses a drag-and-drop
interface, allowing for a simple and user-friendly
design.
We are investigating and building the different
types of algorithms that will process the sensor data.
We are building the machine learning models using
TensorFlow (Abadi, 2016), and are investigating the
use of TensorFlow Lite Micro (David, 2020) to run
the pre-training model on the ESP32.
IoTBDS 2022 - 7th International Conference on Internet of Things, Big Data and Security
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For future development, we plan to migrate to
more secure and robust servers and mobile devices.
Cloud-based servers include Amazon Web Services
(Amazon 2015), Google Cloud (Gonzales, 2015), and
Microsoft Azure (Copeland, 2015). Also, a variety of
software solutions exist if the facility plans to host the
servers in-house.
The React Native environment is being planned
for the development of the mobile application. It
supports both the Android and iOS operating systems.
React Native (facebook.github.io) is built on
JavaScript while rendering in the platform’s native
user interface, enabling cross-platform sharing of
code from a single codebase.
Figure 1 shows the screenshot of the chair
management mobile application on the iOS
environment. Here, alerts for Chair 1 and Chair 4 are
active. Chair 2 and Chair 3 are turned off because no
high-risk individuals are occupying the chairs. Chair
1 is showing green, meaning the occupant is in the
chair. Chair 4 is showing red, meaning the occupant
has stood up and an alarm is raised.
Figure 1: Alarms; Chair alert on/off.
Figure 2 shows the screenshot of the mobile
notification alert in real-time as the occupant on Chair
4 stands up.
Figure 3 shows the screenshot of the alert on the
lock screen of the iOS device in real-time as the
occupant on Chair 4 stands up.
Figure 2: Notification on the application screen.
Figure 3: Notification on the lock screen.
Figure 4 shows a commercially available pressure
sensing pad (nationalcallsystems.com) used to
monitor occupant presence on the chair.
Internet-of-Things Management of Medical Chairs and Wheelchairs
187
Figure 5 shows a semiconductor motion sensor
(InvenSense MPU-6050 accelerometer + gyroscope)
(InvenSense, 2020) module and a strain gauge weight
sensor (sparkfun.com).
Figure 4: Pressure sensing pad.
Figure 5: Motion and weight sensor modules.
5 CONCLUSION AND FUTURE
WORK
We have created a novel IoT-based wheelchair and
medical chair management system that uses
integrated sensors (pressure and motion sensors),
WIFI-connected microcontrollers, algorithms, cloud-
based servers, and mobile applications. This alerts the
nurses and care staff immediately of sit-to-stand
events that may lead to falls and serious injuries, and
take mitigating actions to prevent such injuries and
complications.
We propose the integration of additional sensors
and algorithms to the medical chairs that enable the
dynamic assessment of patient rehabilitation and
recovery in each phase of the sit-to-stand transition,
and identify areas of strengthening and weakening.
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