1 research outputs found
Capillary Electrophoresis Sensitivity Enhancement Based on Adaptive Moving Average Method
In the present work, we demonstrate
a novel approach to improve
the sensitivity of the “out of lab” portable capillary
electrophoretic measurements. Nowadays, many signal enhancement methods are
(i) underused (nonoptimal), (ii) overused (distorts the data), or
(iii) inapplicable in field-portable instrumentation because of a
lack of computational power. The described innovative migration velocity-adaptive
moving average method uses an optimal averaging window size and can
be easily implemented with a microcontroller. The contactless conductivity
detection was used as a model for the development of a signal processing
method and the demonstration of its impact on the sensitivity. The
frequency characteristics of the recorded electropherograms and peaks
were clarified. Higher electrophoretic mobility analytes exhibit higher-frequency
peaks, whereas lower electrophoretic mobility analytes exhibit lower-frequency
peaks. On the basis of the obtained data, a migration velocity-adaptive
moving average algorithm was created, adapted, and programmed into
capillary electrophoresis data-processing software. Employing the
developed algorithm, each data point is processed depending on a certain
migration time of the analyte. Because of the implemented migration
velocity-adaptive moving average method, the signal-to-noise ratio
improved up to 11 times for sampling frequency of 4.6 Hz and up to
22 times for sampling frequency of 25 Hz. This paper could potentially
be used as a methodological guideline for the development of new smoothing
algorithms that require adaptive conditions in capillary electrophoresis
and other separation methods