The protocol necessary to use the prototype, in
which the patient has to follow the directions given
by the system and try to maintain the breathing with
the same rhythm that appears on the graphical
interface, also suggests the introduction of
improvements in the accuracy and precision on
obtaining samples of a specific part of the respiratory
tract, which consequently led to the increase in the
repeatability of the analysis applied to these samples.
Furthermore, it is excluded the introduction of
variability during breath sampling related with
breathing frequency, amplitude of the respiratory
cycle, the mental and physical condition of the
patient, as well as, the method applied by the person
who asks for the patient to breathe.
5 CONCLUSIONS
The research work demonstrated herein presents a
suitable and novel technology and related protocol of
using it for selectively sampling exhaled air regarding
the subject’s: metabolic production of CO
2
, smoking
habits, type of consumed food, stomach, esophagus
and oral cavity conditions. Moreover, the
implementation of a user-dependent’s respiratory
cycle model on the prototype used in this work could
allow a more accurate way to collect portions of
exhaled air according to the exhaled air’s respiratory
origin. This collection is done from single or multiple
exhalations, for online or posterior analytical analysis
for medical diagnosis and/or therapy monitoring, in a
quick, reliable, non-invasive way, applied at any
stage of life.
The imposition of a respiratory rhythm
according to the characteristics of the user (age,
gender and physiological/health condition) and the
machine learning process implemented on the
prototype led to improvements in the accuracy in
sampling breath from specific parts of the respiratory
tract and decreases the variability of the samples
related with breath frequency, amplitude of the breath
cycle, mental and physical condition of the patient.
However, the implemented algorithm have to be
optimized for better performance in real healthcare
environments and the respiratory rhythm appearing in
graphical interface should be interactively adapted
according to all age groups, especially to the elderly
and children who have more difficulty to follow this
method. We also believe that future and similar
applications for mobile devices should be developed
to help the patients to learn and train the respiratory
rhythm while the respective portable sampling
equipment for analysis is not commercially available.
The final application should be suitable to different
group stages simplifying the breath sampling process.
ACKNOWLEDGEMENTS
The authors would like to thank all volunteers that
offered their time to perform tests for the acquisition
of their respiratory cycles and for the tests of
performance of the prototype. We thank to
parents/guardians of the children who executed the
same tests, for authorize their participation and to the
daycare of FCT (center of pre-school education) for
providing space and conditions to its implementation.
The authors would also thank the Fundação para a
Ciência e Tecnologia (FCT, Portugal) for co-
financing the PhD grant (PD/BDE/114550/2016) of
the Doctoral NOVA I4H Program.
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