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A machine learning approach for online automated optimization of super-resolution optical microscopy.


ABSTRACT: Traditional approaches for finding well-performing parameterizations of complex imaging systems, such as super-resolution microscopes rely on an extensive exploration phase over the illumination and acquisition settings, prior to the imaging task. This strategy suffers from several issues: it requires a large amount of parameter configurations to be evaluated, it leads to discrepancies between well-performing parameters in the exploration phase and imaging task, and it results in a waste of time and resources given that optimization and final imaging tasks are conducted separately. Here we show that a fully automated, machine learning-based system can conduct imaging parameter optimization toward a trade-off between several objectives, simultaneously to the imaging task. Its potential is highlighted on various imaging tasks, such as live-cell and multicolor imaging and multimodal optimization. This online optimization routine can be integrated to various imaging systems to increase accessibility, optimize performance and improve overall imaging quality.

SUBMITTER: Durand A 

PROVIDER: S-EPMC6286316 | biostudies-literature | 2018 Dec

REPOSITORIES: biostudies-literature

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A machine learning approach for online automated optimization of super-resolution optical microscopy.

Durand Audrey A   Wiesner Theresa T   Gardner Marc-André MA   Robitaille Louis-Émile LÉ   Bilodeau Anthony A   Gagné Christian C   De Koninck Paul P   Lavoie-Cardinal Flavie F  

Nature communications 20181207 1


Traditional approaches for finding well-performing parameterizations of complex imaging systems, such as super-resolution microscopes rely on an extensive exploration phase over the illumination and acquisition settings, prior to the imaging task. This strategy suffers from several issues: it requires a large amount of parameter configurations to be evaluated, it leads to discrepancies between well-performing parameters in the exploration phase and imaging task, and it results in a waste of time  ...[more]

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