Dose Reduction and Image Enhancement in Preclinical Mouse Imaging using Deep Learning

Author and co-authors: Florence Muller, Jens Maebe, Boris Vervenne, Joel Karp, Christian Vanhove, Stefaan Vandenberghe

Preclinical PET and CT imaging provide a powerful toolset to non-invasively acquire functional and anatomical images of laboratory animals, yet both modalities involve ionizing radiation. While delivered dose levels are normally non-lethal to the animal, they can be substantial enough to impact experimental outcomes of animal models, especially in longitudinal follow-up studies. It is thus important to aim for dose reduction, but lowering the radiation dose inherently introduces noise in the images, and reduced image quality negatively impacts diagnostic performance. Various denoising techniques already exist, but deep learning (DL) methods have become increasingly popular for image quality enhancement.

In this webinar, ir. Florence Muller (Ghent University – University of Pennsylvania) will present two recent studies that aimed to investigate the use of convolutional neural networks (CNN) to denoise low dose micro-CT and micro-PET images. Florence will explain how she developed and evaluated an image-to-image CNN framework to predict higher quality images from noisier images acquired at lower radiation doses for both modalities.

Watch this On-Demand Webinar 

Please enter your details below to gain on-demand access to this webinar. 

Input value is invalid.

Kontaktinformation

Bitte geben Sie Ihren Vornamen ein
Bitte geben Sie Ihren Nachnamen ein
Please enter a valid e-mail address
Bitte geben Sie Ihr Unternehmen / Ihre Institution ein

Additional Information

I would like to attend

Your selection

*Please notice, registration for the Bruker Night exclusively for attendees of the Bruker Scientific Workshop.

Attending the Bruker Night?

Your selection

I am a customer or I am interested in 

Your selection *
Your selection
Your selection

Workshops for Monday afternoon you would like to attend:

Your selection

Please select which days you want to attend and if you want to submit a poster.

Your selection *

Please send your abstract by 15th of August 2023 to this email address: ceum2023@uochb.cas.cz

Privacy-Einstellungen

Keep Me Updated
Please accept the Terms and Conditions
Please accept the Terms and Conditions