Title
Machine-learning-enhanced identification of electron transporting
biomolecules in electroactive microorganisms using combined Timeof-
Flight Secondary Ion Mass Spectrometry (ToF-SIMS) and
Scanning Probe Microscopy (SPM) data. (Research)
Abstract
Long range electron transport in so-called electroactive
microorganisms (e.g. cable bacteria) is not only of interest for
(electromicro)biology, but is also a new exciting frontier at the
interface with (bio-)physics and the emerging fields of bioelectronics /
biodegradable electronics. The use of state-of-the-art Time-of-Flight
Secondary Ion Mass Spectrometry combined with Scanning Probe
Microscopy (ToF-SIMS/SPM-equipment in IMEC is first of its kind
worldwide), yielded highly promising information on the composition
of cable bacteria. The general scope of this project is to introduce
machine learning in order to improve the identification from the
complex ToF-SIMS datasets of the constituting molecules and in
particular of the electron conducting moieties. It is expected that this
proposed interdisciplinary study, combining machine learning with
state-of-the-art ToF-SIMS, (micro)biology and (bio)physics, will have
a significant impact on the fundamental understanding of longdistance
electron transport in biology and could enhance the
possibilities of ToF-SIMS for the study of the chemical structure of
biological systems and other complex material systems.
Period of project
01 November 2021 - 31 October 2023