A Low Cost IoT Enabled Device for the Monitoring, Recording and
Communication of Physiological Signals
Borja F. Villar
1a
, Ana C. de la Rica
1b
, Miguel M. Vargas
2c
, Javier P. Turiel
1d
and Juan Carlos Fraile M.
1e
ITAP - Instituto de las Tecnologías Avanzadas de la Producción, University of Valladolid, Valladolid, Spain
2
University of Valladolid, School of Industrial Engineering, Valladolid, Spain
Keywords: IoT, Arduino, Data Acquisition, Biosensors, Cloud, ECG, GSR, Weareable Device.
Abstract: The physiological information obtained from patients during rehabilitation tasks with robot-assited platforms
is essential to carry out them properly. It has been shown that an environment adapted to the needs of each
patient favors their involvement and leads to a reduction in rehabilitation times. In order to be able to control
the degree of involvement of the subjects at all times and subsequently adapt certain parameters of the
rehabilitation task, physiological signals such as ECG, GSR (Galvanic Skin Response) or SKT (Skin
Temperature) are used. A low-cost device that integrates sensors for reading and recording the ECG and GSR
signals, which subsequently communicates via WiFi to a cloud-based environment is proposed in order to
carry out online data processing and dynamically adapt upper-limb rehabilitation tasks.
1 INTRODUCTION
In recent years, different biomedical devices have
been used to analyze certain physiological signals
used to control rehabilitation environments with
robotic platforms.
Activity trackers and other wearable electronic
devices have gained popularity due to users’ desire to
monitor, measure, and track using various real-time
features related to their fitness or health, including the
number of steps,heart rate, heart rate variability, body
temperature, activity and/or stress levels, etc.
(Conchel, 2018).
The importance of analyzing this type of
physiological signals in our study lies in the direct
relationship that exists between the stress level of a
subject and the HRV (Hate Rate Variability) (
Domen, 2011) and GSR (Galvanic Skin Response)
(Guerrero, 2013) measurements. Stress is a physical,
a mental, or an emotional factor that causes bodily or
mental tension. Stresses can be external
(environmental, psychological, or from social
situations) or internal (illness or caused by a medical
a
https://orcid.org/0000-0003-0090-3800
b
https://orcid.org/0000-0002-1556-7179
c
https://orcid.org/0000-0002-1952-0853
d
https://orcid.org/0000-0002-7731-2411
e
https://orcid.org/0000-0002-2877-7300
procedure). There are different methods to detect and
determine the stress level, being the most used:
measuring the cortisol level, the heart rate variability,
or the electrodermal activity (Wu, 2018). In other
way, the study of Kutt supports the use of Heart Rate
(HR) and Skin Conductance/Galvanic Skin Response
(GSR) signals to validate semantic emotional
descriptors based on valence and arousal
measurements, linked to the user’s involuntary
reactions transmitted by the Autonomic Nervous
System (ANS) (Kutt, 2018).
In our case, the heart rate (determined by the
electrocardiogram, ECG) and the electrodermal
activity (obtained from the galvanic skin response,
SR) have been chosen to determine the stress level of
a subject and their emotions during upper limb
rehabilitation tasks. An example of an application to
record the ECG and GSR in a wearable device can be
found in (Rosa, 2019) and (Crifaci, 2013) applied to
anorexia nervosa adolescents. The results of this
study determined that wearable sensors used were
feasible, unobtrusive and therefore extremely suitable
for young patients.
Villar, B., C. de la Rica, A., Vargas, M., Turiel, J. and M., J.
A Low Cost IoT Enabled Device for the Monitoring, Recording and Communication of Physiological Signals.
DOI: 10.5220/0010302901350143
In Proceedings of the 14th International Joint Conference on Biomedical Engineering Systems and Technologies (BIOSTEC 2021) - Volume 1: BIODEVICES, pages 135-143
ISBN: 978-989-758-490-9
Copyright
c
2021 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
135
After a systematic review of the most popular
physiological signal recording devices, we
determined the following ones are the best choices
right now on the market:
Consensys Bundle Development kit (Shimmer):
an 'all in one' solution which enables the user to
experience the full sensing capabilities of the
Shimmer3 platform which includes the complete
set of our Shimmer sensors (IMU, ECG, EMG,
GSR), hardware and software (Oreto, 2006).
AutoSense: an unobtrusively wearable wireless
sensor system for continuous assessment of
personal exposures to addictive substances and
psychosocial stress as experienced by human
participants in their natural environments (Ertin,
2011).
Ring: a mobile and robust bio-signal
measurement device for monitoring the skin
conductance (using an electrodermal sensor,
EDA and agalvanic skin response meter, GSR)
and the cardiovascular activity (using a blood
volume pulse sensor, BVP) (Mahmud, 2019).
E4 wristband: a wristband medical-grade
wearable device for real-time physiological data
acquisition and visualization, enabling
researchers to conduct in-depth data analysis
(Mccarthy, 2016).
Zephyr Performance Systems: measure six key
inputs that report on more than 20 biometrics. Is
a wearable technology built on clothes made for
sport challenges (Nazari, 2018).
Checkme Lite: a monitor for measuring,
monitoring, reviewing and storing three
physiological parameters in the home: ECG,
pulse oxygen saturation (SpO2) and blood
pressure variation (Drzazga, 2018).
BITalino: a hardware and software toolkit that
has been specifically designed to deal with the
requirements of body signals (Da Silva, 2014).
A more exhaustive comparison can be seen in
Sumit Majumder's review (Majumder, 2017).
Usually, the devices for recording these signals
are expensive and are not wearable, which makes it
difficult in many cases to carry out rehabilitation
tasks in a simple and comfortable way for both the
subject and the therapist. So, what makes a device fit
for the purpose of affective health research?
(Coghlan, 2009):
Accuracy. The devices should be low-cost to be
accessible to almost anyone without
compromising the fidelity of the results.
The device is expected to collect data
continuously without interfering with the user’s
day-to-day tasks. The platform must be mobile,
comfortable, robust in regards to prolonged
sensor contact, and have a sufficient battery-life
to last throughout the day.
Connectivity to other devices e.g. through
Bluetooth or WiFi.
Access to raw data so it can be processed post-
recording without losing any data from the
original signal.
Easy to clean and disinfect between subjects.
This work focuses on the design and manufacture
of a low-cost device made with 3D printing, making
use of basic electronics based on an Arduino-like
microcontroller, the AD8232 sensor module for
measuring the physiological signal ECG and Grove
GSR v1.1 for measuring the GSR. The
microcontroller integrates a WiFi Soc solution
providing a reliable performance in the IoT, which is
used for communication with the Thinger.io platform.
A Nextion 3.2” resistive touch screen is used for the
configuration of initial parameters and online
visualization of the signal records. We have called
this device Trazein (registered trademark).
2 DEVICE SPECIFICATIONS
2.1 Design and Materials
When designing the device, the specifications shown
in Table 1 have been taken into account, complying
with the requirements cited in (Coghlan, 2009) and
expanding with what we have considered certain
innovative improvements that will be justified in the
following sections.
Table 1: Device Specifications.
It is clear that today one of the most widely used
rapid prototyping technologies is additive
manufacturing. The flexibility obtained when making
any model with 3D printing is much greater than
making molds for plastic injection (Cano, 2019). For
this reason, it is very important to take the design into
account in the preliminary phase, paying special
attention to both the benefits of this technology and
its drawbacks.
BIODEVICES 2021 - 14th International Conference on Biomedical Electronics and Devices
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The design of this biomedical device has been
made with Fusion360, an Autodesk distribution that
covers the entire process of planning, testing and
executing a 3D design, being able to export the final
model in a .stl file ready for laminate with a software
of 3D printing, in our case Cura. Finally the
impression was made on an Ultimaker 3s.
Figure 1: Exploded Device with Fusion360 CAD Software.
“Fit to wrist” configuration.
The design is seen in Figure 1, where the different
parts that make up the device are shown. The housing
(2) is printed on Medical Smartfil material, a high-
quality filament specially designed for medical
applications. This filament has a USP Class VI or ISO
10993-1 certification, which guarantees that it is
biocompatible with the human body (Ferrás, 2020),
(Reeve, 2017). This type of technology with these
materials has given good results previously, as shown
in the study by (Aguado-Maestro, 2019).
Figure 2: “Desktop” configuration as an alternative to “Fit
to wrist” configuration.
The device housing is completed by a lower cover
(1), also made of Medical SmartFil and with a
completely ergonomic design adapted to the anatomy
of most wrists. It has holes in its lateral projections to
be able to adjust the device to the user, thus acquiring
the quality of wearable. Inside it houses the
electronics components: a microcontroller (7), an
ECG signal reader (5), a GSR signal reader (6) and an
HMI (Human Machine Interface) consisting of a
touch screen (4). The electronics are separated by a
plate made in 3D printing (3) and all components are
properly screwed to the housing (2) or to the
separation plate (3).
2.2 Comparision to Other Devices
The devices that currently exist for reading
physiological signals, such as those that concern us in
this case, can be divided into two large blocks: those
that have the category of medical devices and those
that do not.
Starting with the latter, they are generally known
as wearables that can then be divided according to
their use into sports-oriented or everyday wearable.
These devices are characterized by a small and
ergonomic size, at the same time they have an internal
battery that usually lasts for several days between
each charge and finally the cost is not usually high.
On the contrary, these devices do not usually record
any physiological signals except, in some cases the
ECG, without offering the possibility of exporting the
data to be able to store or process them externally to
draw conclusions. Some examples are those shown in
Table 2.
A Low Cost IoT Enabled Device for the Monitoring, Recording and Communication of Physiological Signals
137
Continuing with those devices that fits the
category of medical devices, they offer a greater
range of signals to be read and recorded, with much
more precision and more processing capacity. On the
contrary, learning its use and operation is more
laborious, having to resort, at times, to the presence
of a specialist. They are not portable for the most part
and require an external power supply, in addition to
lacking Bluetooth or WiFi connectivity, so data
export has to be done through a cable to a computer.
The price is quite high as seen in Table 3.
Table 2: Most successful wearable devices on the market.
At Trazein, an ergonomic and portable design has
been prioritized, with a reduced weight of 80 grams
and dimensions of 110x80x35 mm. There are two
types of configurations, either with a strap to place as
a smartwach on the wrist, such as a blood pressure
monitor, or with a rigid cover to place on a table or a
horizontal surface. It has a switch on one of the sides
to interleave between the two phsyiological signals
(ECG and GSR) to be recorded, which are connected
to the same analog input port of the microcontroller.
On the other side, there are three connectors, two for
each of the sensors and another for a micro-USB
cable that is used to connect an external power
supply.
Table 3: Most successful medical devices on the market.
It has a touch screen that acts as an HMI, which is
located below the level of the casing in its upper part,
to avoid breakage or scratches in case of falls or
bumps during transport. We consider that having a
touch screen such as HMI is an added value for the
subject when it comes to being able to view their
physiological signals in real time, configure their
record history or connect to the WiFi network without
having to have a computer.
2.3 Manufacturing Specifications
Within the field of additive manufacturing, or
manufacturing using 3D printing, there are different
types of technologies (SLA, SLA and FDM). It is
important to choose the appropriate technology based
on the compromise that must exist between the cost
of the device, the final properties of the product part
and the manufacturing time. The choice of this
manufacturing mode has been selected for several
reasons (Ngo, 2018): low cost of the prototype,
flexible and personalized manufacturing when
obtaining a model designed using a CAD program,
ease of manufacture and material savings.
Table 4: Parameters for 3D printing manufacturing.
For all this, our device has been manufactured
using FDM technology using PLA as a construction
material. As it is a device for use with people, this
material is the one that best adapts, offering excellent
properties at a low price compared to other traditional
biodegradable polymers used in medical applications.
Besides being environmentally friendly it is not toxic
for use in contact with the human body (Lasprilla,
2012). Manufacturing conditions are also taken into
account when selecting the material. By raising the
temperature to get the material to be in a fluid state
and to be extruded through the nozzle built into the
print head, it causes certain volatile particles to be
emitted into the environment. Specifically, with the
material used in this project, studies have been carried
out on the harmfulness of these gases emitted on
human health. Determining that finally that these
volatile compounds emitted into the environment
during the printing of a 3D model do not pose any
health problem (Azimi, 2016), (Riya, 2019).
In this way, we obtain a low-cost [50 eur] device
with a reduced manufacturing time [6 hours] and
technical specifications that make it very convenient
to be able to house the necessary electronics and be
used in any rehabilitation environment. Thanks to its
size and weight, it is a portable device, and due to its
simplicity, it can be used without the need for prior
knowledge. The design made specifically for 3D
printing makes it easy to manufacture in any type of
printer, optimizing the amount of material used by not
requiring hardly any support material.
The parameters used in the Ultimaker Cura
v.4.7.1 lamination software that we consider to be
optimal to obtain a high-performance device and also
taking into account the conditions recommended by
the manufacturer are those shown in Table 4.
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138
2.4 Electronic Specifications
When selecting the electronics that the device should
include to meet the specifications, we chose the
following: AD8232 module for reading the ECG
signal, Grove GSR v1.1 module for reading the GSR
signal, a WEMOS D1 MINI development board
based on ESP8266EX microcontroller and finally an
HMI composed of a Nextion NX3224T024. The
scheme is shown in Figure 3.
ECG Module. AD8232 Heart Rate Monitor
(Sparkfun
TM
) module is used for measuring the
ECG and determinate the heart rate of the user. The
ECG module is based on the AD8232 (Analog
Devices), an integrated circuit with specially
calibrated signal amplifiers and noise filters for
ECG signals. The module suppresses the 60Hz
noise generated by household electricity. The
module provides an analog output so an analog-to-
digital conversion must be performed to process and
display the ECG on the HMI. Examples of
investigations that have used this module are
(Gifari, 2015), (Lu, 2014), (Mishra, 2018) obtaining
promising results:
Table 5: ECG bandwith specification.
According to (Rachit, 2020), ECG bandwidth
specification is dependent with its application and it
is presented in table 5. Table 6 shows a comparison
of different chips for ECG measurement. AD8232
have been chosen over other chips for the following
reasons: HM301D is three channels, while we only
need a single channel ECG for QRS detection;
ADS1191 doesn’t provide high enough gain to get
good resolution; AD8232 has the best output
impedance and gain.
Table 6: Comparison between most used ECG microchips.
GSR Module. The Grove GSR sensor v1.1
module (Seeed) is used for measuring the electrical
conductance of the skin to determinate the GSR.
Grove GSR sensor allows to spot emotions by
simple attaching two electrodes to two fingers on
one hand. These emotions can cause stimulus to the
sympathetic nervous system, resulting more sweat
being secreted by the sweat glands. Grove GSR
has been used in emotion related projects, as shown
in (Anzanpour, 2015), (Zhang, 2019) and (Saputra,
2017).
WEMOS D1 MINI Development Board. It is
based on the ESP8266EX, which is a low-cost WiFi
microchip, with a full TCP/IP stack and
microcontroller capability, produced by Espressif
Systems. It is commonly used for a wide variety of
projects, among others those related to
communication in home healthcare environments,
as shown in (Rachit, 2020) and (Mesquita, 2018).
To tackle all the specification we design the hardware
using a step-by step method. The design starts with
level 0, continued by level 1, and so on until every
level can be implemented using specific hardware.
Figure 3: Electronic scheme for the Trazein device.
2.5 Connectivity and IoT
One way to introduce the project into the IoT
environment is by incorporating a data collection and
storage platform. This application is Thinger.io,
presenting itself as open source and free of charge.
The establishment of the connection between the
device and the platform is through WiFi. Thinger.io
is an open source software, and it offers an Arduino
client library for connecting almost any Arduino
board and other supported boards like ESP8266 for a
simpler integration. It is possible to store time series
data, identity and access management, even access by
third-party applications, one of the advantages being
A Low Cost IoT Enabled Device for the Monitoring, Recording and Communication of Physiological Signals
139
the possibility of two-way communication between
the elements in real time, with the REST-API method.
The communication between the platform and the
device does not imply a high consumption of energy,
moreover, it is used efficiently.
All this is presented in a web interface where the
user can manage all the resources, and even the
possibility of making use of a mobile application
where can be viewed the data collected in a simple
and immediate way (Bustamante, 2019).
The maximum number of devices that can be
connected to for free is 2, with 4 dashboards and 4
endpoints. Writing the collected data at least every 60
seconds in the storage bucket while the endpoint is
every 10 seconds, storing a total of up to 10 value
fields. All stored data can be exported in two very
common formats for further analysis: text and comma
separated values files (.txt and .csv).
Figure 4: Functional Block of ECG/GSR Trazein device.
3 IMPLEMENTATION, TEST
AND ANALYSIS
3.1 Manufacturing Results
The manufactured device looks like the one shown in
Figure 5, with the ECG and GSR sensors connected
as has been done in the patient trials.
The device has a highly ergonomic finish, which
adapts easily to the wrist of the subjects regardless of
their anatomy. The upper part has been coated with
epoxy resin, to preserve the material after different
uses. At the same time, the epoxy resin gives it greater
resistance to impacts or accidental falls. The part that
comes into contact with the skin has not received this
treatment, to maintain the conditions described in the
USP Class VI or ISO 10993-1 regulations.
Figure 5: Final 3D printed manufactured device.
Subject 1: Age 22, Rest, 50 seconds.
Subject 2: Age 57, Rest, 65 seconds.
Subject 3: Age 59, Rest, 22 seconds.
Subject 4: Age 82, Rest, 22 seconds.
Figure 6: ECG signal sample acquisition and QRS detection
for different subjects.
3.2 Experimental Protocol
When performing the proof of concept of the device,
we have carried out an experimental study with 4
healthy subjects. The subjects ranged in age from 22
to 87 years, 2 males and 2 females. The tests were
BIODEVICES 2021 - 14th International Conference on Biomedical Electronics and Devices
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carried out under laboratory conditions, at an ambient
temperature of 25ºC, in the FabLab facilities of the
University of Valladolid. These tests consisted in
measuring the heart rate and the galvanic response of
the skin, in a resting situation in order to validate the
correct functioning of the device in reading, sending
and storing physiological signals, observing the
different values obtained and comparing them with
similar studies (Mochan, 2011), (Villarejo, 2012).
3.3 Test and Analisys
The results obtained from the recording of the ECG
are those shown in Figure 6, while in Figure 7 the
device can be seen in full operation with one of the
subjects, showing the instantaneous recording of the
ECG signal and the beats per minute (BPM) at rest.
The implementation of the Pam-Tompkins
algorithm (Pan J., 1985), commonly used to detect
QRS complexes in electrocardiographic signals, was
carried out. In this way, we are able to obtain the BPM
shown on the screen. It should be mentioned that the
signal shown on the screen has not yet applied the
algorithm and that its processing is carried out online
on the ESP8266.
The results obtained from reading and recording
the GSR are shown in Figure 8, where the horizontal
axis is in units of time (seconds) and the vertical axis
in units of resistance (ohms).
Figure 7: Trazein HMI showing ECG signal and BPM real-
time acquisition with one subject.
Subject 1: Age 22, Rest, 373 seconds.
Subject 2: Age 57, Rest, 373 seconds
Subject 3: Age 59, Rest, 22 seconds.
Subject 4: Age 82, Rest, 22 seconds.
Figure 8: GSR signal sample acquisition for different
subjects.
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A Low Cost IoT Enabled Device for the Monitoring, Recording and Communication of Physiological Signals
141
Figure 9: Trazein HMI showing GSR signal real-time
acquisition with Subject 2.
4 CONCLUSIONS AND FUTURE
WORKS
In this paper we have shown a new device for the
acquisition, recording and sending of the ECG and
GSR physiological signals. The novelty lies both in
the design and manufacturing process, as well as in
the concept of working in real time with cloud
storage. The first refers to an ergonomic design,
wearable type that adjusts to the wrist of any subject.
Also, the configuration can be changed to be a
desktop device. On the other hand, it is manufactured
in 3D printing, in a time of 6 hours and with
biomedical material that ensures safe contact between
the device and the human body.
The second refers to a touch HMI that displays the
physiological signals and displays the key value on
the screen. While recording, it sends data packets to
the cloud that are stored in the form of tokens, to be
downloaded later in .csv or .txt format for later
medical analysis. The implementation of the Pam-
Tompkins algorithm in the ESP8266 microcontroller
allows to process the acquired signal in real time and
detect the QRS complex for the subsequent
acquisition of the beats per minute.
The results obtained with the four subjects show
the correct functioning of the device, being still
necessary a validation against a commercial medical
device to contrast results under the same conditions.
Future lines of work go through experimentation with
healthy subjects, being monitored at the same time by
Trazein and Biopac MP150, in order to determine the
precision of a low-cost device compared to a
commercial one.
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