Analysis of Gaze Trajectory and Skin Extension Pressure Data in
Blood Collection Technology
Kazuma Mihara
1
, Takeshi Matsuda
2
, Yukie Majima
1
, Seiko Masuda
1
, Masanori Akiyoshi
3
,
Kenji Adachi
4
and Naoki Taira
1
1
Graduate School of Humanities and Sustainable System Sciences, Osaka Prefecture University, Japan
2
Department of Information Security, University of Nagasaki, Japan
3
Department of Information Systems Creation, Faculty of Engineering, Kanagawa University, Japan
4
Department of Computer Science and Intelligent Systems, Graduate School of Engineering,
Osaka Prefecture University, Japan
Keywords: Blood Collection, Gaze, Nursing Skills, Skin Extension, Tacit Knowledge.
Abstract: Up to this time, research on tacit knowledge of blood collection technology has been conducted, but A method
for quantitatively evaluating skills related to blood collection technology and a system that implements them
have not been developed. For the present study, using a sensor that can measure eye gaze movement and
pressure. Collect finger pressure for skin extension and eye gaze trajectory data during blood collection, and
analyze characteristics of pressure distribution during puncture and movement range of the eye gaze and then
to examine a method to quantitatively evaluate a part of blood collection technique procedure.
1 INTRODUCTION
Blood collection, a fundamentally important medical
practice for clinical tests using blood as a sample, is
an invasive nursing technique that percutaneously
punctures a vein and extracts blood (Japanese
Committee for Clinical Laboratory Standard, 2018).
Therefore, it requires skill sufficient for precision and
consideration for the patient simultaneously (Miki, S.
et al., 2011). In fact, the Japan Nursing Association
has pointed out the necessity of further strengthening
education on intravenous injections (Japanese
Nursing Association, 2003). However, because
injection techniques entail so much tacit knowledge
that cannot be expressed in words, it is difficult to
inherit tacit knowledge in learning. An important
difficulty is that nursing students have not mastered
skilled skills (Naoki, U. et al., 2018). Therefore, it is
necessary to formalize tacit knowledge,
quantitatively evaluate skills related to blood
collection technology, and improve technical skills.
In recent years, sensing technology has become an
indispensable technology along with the trend of
Internet of Things. Many devices used worldwide
already have sensing technology.
One of them is a
gaze measuring instrument. In earlier studies have
attempted to pass on tacit knowledge of skilled
workers using gaze measurement (Harumasa, N. et al.,
2014) (Mamiko, S. et al., 2005) .These studies are
also used in the nursing field, such as feature analysis
of skills of skilled nurses (Yasuko, M. et al., 2013)
and nursing skills education (Yukie, M. et al., 2018).
As sensor technology innovations continue to
increase, their accuracy is expected to become greater
and devices are expected to become cheaper, and able
to acquire widely diverse data. Unprecedented
development of systems is expected to occur from
effective utilization of these data.
For the present study, the subject wears glasses-
type tobii pro / glasses 2 (manufactured by Tobey
Technology) as a gaze measuring instrument and a
sensor capable of measuring pressure on the finger
and then a blood collection experiment was
conducted using an arm model. For this experiment,
a simulation model arm was used. We attempted to
extract the characteristic data necessary to evaluate
each procedure by analyzing the pressure data for
skin extension and eye gaze data during puncture. As
a result, it was found that a characteristic shape
appeared in the pressure graph during skin extension
and that the gaze movement range during skin
extension was smaller than that of other procedures.
By looking at these two data in combination, each
procedure may be identified automatically.
Mihara, K., Matsuda, T., Majima, Y., Masuda, S., Akiyoshi, M., Adachi, K. and Taira, N.
Analysis of Gaze Trajectory and Skin Extension Pressure Data in Blood Collection Technology.
DOI: 10.5220/0009164606870692
In Proceedings of the 13th International Joint Conference on Biomedical Engineering Systems and Technologies (BIOSTEC 2020) - Volume 5: HEALTHINF, pages 687-692
ISBN: 978-989-758-398-8; ISSN: 2184-4305
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
687
2 RELATED RESEARCH
2.1 Tacit Knowledge during Blood
Collection
In earlier studies, we explored formalization of tacit
knowledge from various viewpoints such as
mathematical analysis of finger movement in
injection technology (Yutaro, Y. et al., 2017) and
calculation method of needle bends (Takeshi, M. et
al., 2017). Tacit knowledge was clarified by
comparing the skills of nurses and nursing students,
particularly addressing skin extension and pressure,
which are movements of nurses’ auxiliary fingers
during blood collection (Naoki, U. et al., 2018)
(Takeshi, M. et al., 2018). These studies, we collected
data of nursing students and skilled workers. And the
studies mainly focus on only skin extension pressure.
But in this study, we collected gaze trajectory data
and skin extension pressure data. This time, we tried
to extract tacit knowledge that is unlikely to make a
difference for active nurses.
2.2 Automatic Evaluation of Medical
Procedures
Earlier studies examined the development of
automated medical procedure evaluation systems
using Deep Learning for objective evaluation of
medical procedures. Reference (Nao,S. et al. 2018)
analyzes the data obtained from kinecct, but this study
is different in that the objective is to evaluate blood
collection objectively by analyzing skin extension
pressure and eye gaze data.
3 EXPERIMENT
3.1 Outline of Experiment
For the present study, we focused on “blood
collection technology”, which is frequently
performed in daily work, among nursing techniques
and measure the pressure for skin extension and eye
gaze trajectory during puncture. Blood vessel samples
were collected using a simulation arm model. A
patient role-player was set in front of subjects to give
a sense of realism of blood collection. subjects were
able to collect blood while talking to the patient.
Table 1 shows the experimental locations and periods.
Fig. 1 shows the experimental environment. In this
experiment, we are also concurrently with a study to
see the difference in brain activity between skilled
nurses and new nurses based on cerebral blood flow
(Takahito, T. et al. 2019).
This research was conducted with the approval of
the Ethics Committee of the Graduate School of
Sustainable System Sciences, Osaka Prefecture
University.
Table 1: Experiment place and period.
Implementation
period
4 days from November to
December 2018
Implementation
location
Practice room in Hospital A
Figure 1: Experimental environment.
3.2 Test Subjects
Subjects were 19 active nurses working in hospitals
who had consented to research cooperation. Table 2
shows “the ladder levels” and numbers of nurses.
“The ladder level” is a nurse development and
evaluation system established by the Japan Nursing
Association. The five levels, from I–V, represent the
nurse ability and career. Higher numbers reflect
higher the nursing practice ability.
Table 2: Nurse ladder level.
3.3 Equipment Used
3.3.1 Pressure Sensor
The equipment used to acquire pressure data for the
present study includes the following.
Arduino Uno
Pressure sensor FSR402 (Fig. 2)
HEALTHINF 2020 - 13th International Conference on Health Informatics
688
A/D converter
1/4 carbon film resistance
Small universal board (ICB-90)
Heat-resistant electrical wire
Figure 2: Pressure sensor FSR402.
The pressure sensor was fixed on the finger that
extension skin when fixing the blood vessel. As values
of 0–1023 acquired from the sensor increase, a stronger
force is applied and acquired as time series data.
3.3.2 Eye Gaze Measuring Instrument
For gaze measurement, gaze was measured using a
wearable eye tracking system (tobii pro / glasses 2 G2-
100; Tobii Technology) (Fig. 3).
Figure 3: Tobii pro sensors.
3.3.3 Arm Model for Blood Collection
Simulation
For the blood collection simulation, we used an arm
model (LM-086; Koken Co. Ltd.). For selecting a
blood vessel to collect blood, blood vessel models of
several types exist. Fig. 4 shows the arm model with
the blood vessel model. Fig. 5 shows the type and
difficulty of the blood vessel model.
Figure 4: The arm model with the blood vessel model.
Figure 5: The type and difficulty of the blood vessel model.
We explained in advance that exchanging multiple
simulation models. A sample was presented.
However, participants do not know from which blood
vessel model they will collect blood.
4 ANALYTICAL METHOD
As described in this paper, among the 19 subjects, 4
nurses were selected from nurses who had no data
loss and who had pressure sensors on the same finger.
After graphing the pressure data and the eye gaze data
obtained from the experiment, we tagged the
procedures and actions at the time of blood collection
one by one while watching the video, and observed
their mutual relation. The recorded video is the
following (Figs. 6 and 7). The procedure for blood
collection is presented below.
(1) Wrap the tourniquet
(2) Blood vessel selection
(3) Wipe the puncture site with gauze
(4) Hold a syringe
(5) Remove the syringe cap
(6) Puncture
(7) Pull the inner cylinder
(8) Take the tourniquet
(9) Hold the puncture site with gauze
(10) Pull out the needle
The procedures were almost identical, but with some
differences in the order, depending on the person.
Figure 6: Image of camera.
Analysis of Gaze Trajectory and Skin Extension Pressure Data in Blood Collection Technology
689
Figure 7: Wide angle camera from tobii.
5 RESULTS AND DISCUSSION
This study examines characteristics of the changes in
pressure during skin extension and the trajectory data
of the eye gaze, comparing each procedure and
action.
5.1 Skin Extension Pressure Graph
First, we introduce a graph of pressure during skin
extension. Figs. 8–10 show changes in the skin
extension pressure with a scatter diagram (smooth
line).
Figure 8: Nurse ID15, Changes in skin extension pressure.
Figure 9: Nurse ID11, Changes in skin extension pressure.
The pressure data include data other than skin
extension. They include states such as “having a
syringe” and “unscrewing the cap of the syringe”. As
shown in Figs. The characteristic shape was visible.
Regardless of the success or failure of blood
collection, it looked like a rectangle
Figure 10: Nurse ID18, Changes in skin extension pressure.
5.2 Gaze Locus Graph
Next, we introduce a gaze locus graph. Figures 11–14
show scatter plots (smooth lines) of the eye gaze
trajectory until skin extension. Similar to the pressure
graph, this graph includes items other than the eye
gaze during skin extension, and also includes
behavioral and procedural states. The circled range
represents the range of motion of the eye gaze when
the skin extension. Throughout the procedure, the
range of gaze movement during skin extension and
puncture was smaller than that for other procedures.
However, As shown in Figures 11 and 12, it can be
characterized that failure is bigger than success.
Figures 13 and 14 both show data from nurse 18.
Nevertheless, but more than individual differences,
differences in the range of gaze movement during
skin extension are failure is bigger than success. This
time, the gaze patterns of four nurses were analyzed
based on the dominant arm and the finger attached to
the pressure sensor. The relationship between nurses
and ladder levels is shown in Table 3. Results showed
that the gaze momentum at the time of skin extension
or puncture increased when it fails. In addition, it was
found that the higher the ladder level has a tendency
to the longer moving distance of eye gaze when
selecting blood vessels. The table 4 shows the moving
distance of the four nurses' eye gaze. This trend that
the higher the ladder level, the more moving distance
of eye gaze, because the higher the ladder level, the
more pondered the injection location after selecting
the blood vessels. However, it has been pointed out in
post-experiment interviews that the sense of a
patient's arm is vastly different from the sensation
0
200
400
600
800
1000
1200
0 5 10 15 20 25 30 35
Time-axis
(s)
Pressure
Skin extension
0
200
400
600
800
1000
0 102030405060
Skin extension
Time-axis
(s)
Pressure
0
200
400
600
800
1000
1200
0 1020304050
Skin extension
Time-axis
(s)
Pressure
HEALTHINF 2020 - 13th International Conference on Health Informatics
690
with this arm model. So, it is likely that there simply
is variability in gaze distance among participants, not
that there is a trend. Presumably, simple comparison
is difficult. In the future study, we will examine the
arm model validity and it need to do analysis with
more participants.
Figure 11: Nurse ID11-Success, the eye gaze movement
range for skin extension.
Figure 12: Nurse ID10-Failure, the eye gaze movement
range for skin extension.
Figure 13: Nurse ID18- Success, the eye gaze movement
range for skin extension.
Figure 14: Nurse ID18-Failure, the eye gaze movement
range for skin extension.
Table 3: Experiment place and period.
NurseID Ladder level
10
11
15
18
Table 4: moving distance of the eye gaze.
Ladder Level NurseID The Moving Distance (pixel)
15 1399
10
2654
3324
11
11597
18114
18 7726
6 CONCLUSION
In this analysis, a characteristic pressure distribution
appeared in the skin development pressure during
blood collection.
We also found that the range of
motion of the gaze at the time of skin extension and
the puncture was smaller than the range of motion of
the eye gaze during other procedures.
7 FUTURE WORK
Based on these results, we can consider the
construction of a general-purpose evaluation system
for procedures. Results of the nurses analyzed this
time tended to show similar characteristic shapes in
pressure during skin extension. However, some
400
600
800
1000
600 800 1000 1200 1400 1600 1800
600
650
700
750
800
850
900
950
1000
1050
1100
200 400 600 800 1000 1200 1400
0
200
400
600
800
1000
1200
500 700 900 1100 1300 1500
0
200
400
600
800
1000
1200
600 800 1000 1200 1400 1600
Analysis of Gaze Trajectory and Skin Extension Pressure Data in Blood Collection Technology
691
nurses have shapes appearing twice in a single
procedure. In such cases, it is impossible to determine
which of the two is the skin extension pressure just
before puncture. but the range of motion of the eye
gaze during skin extension and puncture is smaller
than that for other procedures such as “wrapping a
tourniquet” and “blood vessel selection.” Therefore,
it is possible to estimate the skin extension and
puncture work by combining the two data of the
pressure data and the gaze data. Furthermore, the
range of gaze movement at the time of skin extension
and insertion be larger at the time of failure than at
the time of success. This feature will be important for
judging success or failure of the technique.
8 SUMMARY
This study was designed to extract the characteristic
data necessary to evaluate each blood collection
procedure, and to clarify the characteristics of
pressure and the eye gaze movement range for skin
extension during blood collection. Results show that
each procedure can be identified automatically
examining these two data types in combination.
Further study is required for developing
quantitatively evaluating the relationship between
pressure and gaze data in order to realize an automatic
evaluation.
ACKNOWLEDGMENTS
This research was supported by JSPS KAKENHI
19K10808, 19K22774, 17K19845. We deeply
appreciate the nurses, including those of Hospital A,
for their cooperation with this study.
REFERENCES
Japanese Committee for Clinical Laboratory
Standard.2018. Standard Phlebotomy Guideline.
Miki Sato, Hiroko Otsu, Yoko Sota, Arisa Nishio, Tomoko
Tanaka, and Tetsuji Minoura., 2011. Differences
Between Nurse and Student in Eye Tracking During
Venous Blood Collection. Bulletin of Aichi Prefectural
University School of Nursing & Health,17, pp.1-14.
Japanese Nursing Association.,2003. Guidelines for
conducting intravenous injections.
Naoki Ueda, Masao Izumi, Yukie Majima, Takeshi
Matsuda and Yasuko Maekawa., 2018.
Correlation between left hand contact force and skin
development in injection technique.
The Institute of Electronics, Information and
Communication Engineers, IEICE technical report
117(419), pp.11-16.
Harumasa Nishina, Masashi Kume, and Yuka Takai., 2014.
Features of gaze and chasing of expert in metal-fittings-
of-flag. Studies in science and technology, Vol3, NO.1,
pp23-28.
Mamiko Sakata, Yuka Marumo., 2005. Quantitative
Analysis of the Use of Eye Movements in Japanese
Traditional Dance. IPSJ SIG Computers and the
Humanities,2005, pp.9-14.
Yasuko Maekawa, Yukie Majima.,2009. Quantifying Eye
Tracking for Learning the Tacit Knowledge of Nursing
Skill: Differences between Skilled Nurses and Nursing
Students in Intravenous Injection. Japanese Society for
Information and Systems in Education.Vol.27(7),
pp.122-129.
Yukie Majima, Takeshi Matsuda, and Seiko Masuda.,
Development of Wearable Learning System for
Education of Nursing Skills. Studies in Health
Technology and Informatics, vol.264, pp.1720-1721.
Yutaro Yoshida, Takeshi Matsuda, Yukie Majima and
Kousuke Ootani., 2017. Mathematical Analysis and
Consideration on the Hand Motion Data at an Injection
Technique. IPSJ SIG Technical Report, 2017-5J-06.
Takeshi Matsuda, Yukie Majima., 2017. Consideration on
Feature Extraction of Skill Level by Puncture Angle of
Injection Technique. 23
rd
Int’l Conf on Parallel and
Distributed Processing Techniques and Applications
(Accepted)
Takeshi Matsuda, Yukie Majima, and Kousuke Ootani.,
2018. Pressure data analysis for vascular fixation in
venipuncture. The Institute of Electronics, Information
and Communication Engineers,IEICE technical report
117(419), pp.1-3.
Nao Sato, Kenju Akai, Makoto Hirose, Satoru Okamoto,
and Kenji Karino., 2018. Visualization of Acquisition
Experience in Sternal Compression Maneuver Using
Kinect Sensoring: For Co-Creation of Medical
Technique Experiential Values. International Journal
of Automation Technology, Vol.12, No.4, pp.542-552.
Takahito Tamai, Yukie Majima and Tsuneo Kawano., 2019.
A Study on Brain Activities during Blood Draw
Technique
-Viewpoint from cerebral blood flow-. The Institute of
Electronics, Information and Communication
Engineers,IEICE technical report Vol.118, No.509,
PP.11-15.
HEALTHINF 2020 - 13th International Conference on Health Informatics
692