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Der Nuklearmediziner 2019; 42(02): 118-132
DOI: 10.1055/a-0838-8124
DOI: 10.1055/a-0838-8124
CME-Fortbildung
Deep Learning in der SPECT und PET des Gehirns
Deep Learning in SPECT and PET of the brainVerantwortlicher Herausgeber dieser Rubrik: Wissenschaftlich verantwortlich gemäß Zertifizierungsbestimmungen für diesen Beitrag ist Prof. Dr. med. Stefan Dresel, Berlin
Weitere Informationen
Publikationsverlauf
Publikationsdatum:
22. Juli 2019 (online)
Deep Learning hat in den letzten Jahren in vielen Bereichen spektakuläre Erfolge erzielt, nicht zuletzt in der medizinischen Bildverarbeitung. Nach einer kurzen Einführung in die grundlegenden Ideen von Deep Learning sollen in diesem Übersichtsartikel einige ausgewählte Anwendungen in der SPECT und PET des Gehirns vorgestellt werden.
Abstract
Deep learning has led to stunning achievements in many areas in recent years, including medical image processing. After a brief discussion of the basic principles of deep learning, some selected applications of deep learning in SPECT and PET of the brain will be presented.
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