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DOI: 10.1055/a-0838-8135
Big Imaging Data: Klinische Bildanalyse mit Radiomics und Deep Learning
Big Imaging Data: Clinical Image Analysis with Radiomics and Deep LearningPublikationsverlauf
Publikationsdatum:
22. Juli 2019 (online)
Zusammenfassung
Radiomics ist eine Methode der medizinischen Bildanalyse, bei der quantitative Merkmale aus Bilddaten extrahiert und mittels Machine Learning zu prädiktiven Modellen weiterverarbeitet werden. Ziel dieser Arbeit ist es, die technischen Grundlagen von Radiomics und mögliche klinische Anwendungen unter besonderer Berücksichtigung nuklearmedizinischer Daten zu erläutern. Dabei wird zunächst die klassische Radiomics-Methode besprochen, welche auf einer exakten Segmentierung der zu analysierenden Pathologie beruht und bei der die Features manuell definiert werden müssen. Anschließend wird auf das noch wenig verbreitete, allerdings vielversprechende Deep Learning basierte Radiomics eingegangen, dessen Vorteile darin liegen, dass ausschließlich datengetrieben gearbeitet wird und daher weder exakte Segmentierungen noch manuelle Definitionen der Features benötigt werden. Abschließend werden einige Anwendungen von Radiomics besprochen, die zukünftig im klinischen Alltag eine Rolle spielen könnten.
Abstract
Radiomics is a method of medical image analysis in which quantitative features are extracted from image data and processed into predictive models using machine learning. The aim of this work is to explain the technical basics of radiomics and possible clinical applications with special emphasis on nuclear medicine imaging data. First, the classical radiomics method is discussed, which is based on an exact segmentation of pathologies and where the features have to be defined manually. The advantages of this method lie in the fact that it is exclusively data-driven and therefore neither exact segmentations nor manual definitions of the features are required. Finally, some applications of Radiomics will be discussed that could play a role in the clinical routine in the future.
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