posted on 2018-05-30, 00:00authored byKarolis Misiunas, Niklas Ermann, Ulrich F. Keyser
Nanopore
sensing is a versatile technique for the analysis of molecules
on the single-molecule level. However, extracting information from
data with established algorithms usually requires time-consuming checks
by an experienced researcher due to inherent variability of solid-state
nanopores. Here, we develop a convolutional neural network (CNN) for
the fully automated extraction of information from the time-series
signals obtained by nanopore sensors. In our demonstration, we use
a previously published data set on multiplexed single-molecule protein
sensing. The neural network learns to classify translocation events
with greater accuracy than previously possible, while also increasing
the number of analyzable events by a factor of 5. Our results demonstrate
that deep learning can achieve significant improvements in single
molecule nanopore detection with potential applications in rapid diagnostics.