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Machine Learning in the Nuclear Medicine: Part 2-Neural Networks and Clinical Aspects

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Date

2021-01

Authors

Zukotynski, Katherine
Gaudet, Vincent C.
Uribe, Carlos F.
Mathotaarachchi, Sulantha
Smith, Kenneth C.
Rosa-Neto, Pedro
Benard, Francois
Black, Sandra E.

Journal Title

Journal ISSN

Volume Title

Publisher

Society of Nuclear Medicine and Molecular Imaging

Abstract

This article is the second part in our machine learning series. Part 1 provided a general overview of machine learning in nuclear medicine. Part 2 focuses on neural networks. We start with an example illustrating how neural networks work and a discussion of potential applications. Recognizing that there is a spectrum of applications, we focus on recent publications in the areas of image reconstruction, low-dose PET, disease detection, and models used for diagnosis and outcome prediction. Finally, since the way machine learning algo- rithms are reported in the literature is extremely variable, we conclude with a call to arms regarding the need for standardized reporting of design and outcome metrics and we propose a basic checklist our community might follow going forward.

Description

COPYRIGHT © 2021 by the Society of Nuclear Medicine and Molecular Imaging.

Keywords

machine learning, nuclear medicine, neural networks

LC Keywords

Citation