| Literature DB >> 34927995 |
Leonid Mill1,2, David Wolff3, Nele Gerrits4, Patrick Philipp5, Lasse Kling3, Florian Vollnhals2,3, Andrew Ignatenko5, Christian Jaremenko1,3, Yixing Huang1,3, Olivier De Castro5, Jean-Nicolas Audinot5, Inge Nelissen4, Tom Wirtz5, Andreas Maier1, Silke Christiansen2,6,7.
Abstract
Nanoparticles occur in various environments as a consequence of man-made processes, which raises concerns about their impact on the environment and human health. To allow for proper risk assessment, a precise and statistically relevant analysis of particle characteristics (such as size, shape, and composition) is required that would greatly benefit from automated image analysis procedures. While deep learning shows impressive results in object detection tasks, its applicability is limited by the amount of representative, experimentally collected and manually annotated training data. Here, an elegant, flexible, and versatile method to bypass this costly and tedious data acquisition process is presented. It shows that using a rendering software allows to generate realistic, synthetic training data to train a state-of-the art deep neural network. Using this approach, a segmentation accuracy can be derived that is comparable to man-made annotations for toxicologically relevant metal-oxide nanoparticle ensembles which were chosen as examples. The presented study paves the way toward the use of deep learning for automated, high-throughput particle detection in a variety of imaging techniques such as in microscopies and spectroscopies, for a wide range of applications, including the detection of micro- and nanoplastic particles in water and tissue samples.Entities:
Keywords: helium ion microscopy; image analysis; machine learning; nanoparticles; segmentation; toxicology
Mesh:
Year: 2021 PMID: 34927995 DOI: 10.1002/smtd.202100223
Source DB: PubMed Journal: Small Methods ISSN: 2366-9608