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 algorithms 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.
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Zukotynski, K., Gaudet, V., Uribe, C. F., Mathotaarachchi, S., Smith, K. C., Rosa-Neto, P., … Black, S. E. (2021). Machine learning in nuclear medicine: Part 2-neural networks and clinical aspects. Journal of Nuclear Medicine, 62(1), 22–29. https://doi.org/10.2967/jnumed.119.231837
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