cal diseases were used to test the device. The acquired
images showed that it was possible to detect those
agents through images acquired via the µSmartScope,
which clearly illustrate the huge potential that this de-
vice can have, specially in developing countries with
limited access to healthcare services.
As future work, we want to tackle several of the
detected issues in order to achieve a more robust ver-
sion of the µSmartScope system. In particular, we
want to solve the significant negative impact of oc-
casional plastic imperfections (originated by the 3D
printing process) in the precision of the µStage, as
well as the currently low autonomy of the system for
continuous usage.
ACKNOWLEDGEMENTS
We would like to acknowledge the financial sup-
port from North Portugal Regional Operational Pro-
gramme (NORTE 2020), Portugal 2020 and the Euro-
pean Regional Development Fund (ERDF) from Eu-
ropean Union through the project ’Deus ex Machina:
Symbiotic Technology for Societal Efficiency Gains’,
NORTE-01-0145-FEDER-000026.
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