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An overview and a roadmap for artificial intelligence in hematology and oncology
82
Zitationen
21
Autoren
2023
Jahr
Abstract
BACKGROUND: Artificial intelligence (AI) is influencing our society on many levels and has broad implications for the future practice of hematology and oncology. However, for many medical professionals and researchers, it often remains unclear what AI can and cannot do, and what are promising areas for a sensible application of AI in hematology and oncology. Finally, the limits and perils of using AI in oncology are not obvious to many healthcare professionals. METHODS: In this article, we provide an expert-based consensus statement by the joint Working Group on "Artificial Intelligence in Hematology and Oncology" by the German Society of Hematology and Oncology (DGHO), the German Association for Medical Informatics, Biometry and Epidemiology (GMDS), and the Special Interest Group Digital Health of the German Informatics Society (GI). We provide a conceptual framework for AI in hematology and oncology. RESULTS: First, we propose a technological definition, which we deliberately set in a narrow frame to mainly include the technical developments of the last ten years. Second, we present a taxonomy of clinically relevant AI systems, structured according to the type of clinical data they are used to analyze. Third, we show an overview of potential applications, including clinical, research, and educational environments with a focus on hematology and oncology. CONCLUSION: Thus, this article provides a point of reference for hematologists and oncologists, and at the same time sets forth a framework for the further development and clinical deployment of AI in hematology and oncology in the future.
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Autoren
- Wiebke Rösler
- Michael Altenbuchinger
- Bettina Baeßler
- Tim Beißbarth
- Gernot Beutel
- Robert M. Bock
- Nikolas von Bubnoff
- Jan‐Niklas Eckardt
- Sebastian Foersch
- Chiara Maria Lavinia Loeffler
- Jan Moritz Middeke
- Martha-Lena Mueller
- Thomas Oellerich
- Benjamin Risse
- André Scherag
- Christoph Schliemann
- Markus Scholz
- Rainer Spang
- Christian Thielscher
- Ioannis Tsoukakis
- Jakob Nikolas Kather
Institutionen
- University Hospital of Zurich(CH)
- Universitätsmedizin Göttingen(DE)
- Universitätsklinikum Würzburg(DE)
- Medizinische Hochschule Hannover(DE)
- Institut für Mikroelektronik- und Mechatronik-Systeme(DE)
- University of Lübeck(DE)
- Fresenius (Germany)(DE)
- University Hospital Carl Gustav Carus(DE)
- Johannes Gutenberg University Mainz(DE)
- University Medical Center of the Johannes Gutenberg University Mainz(DE)
- Munich Leukemia Laboratory (Germany)(DE)
- Goethe University Frankfurt(DE)
- University Hospital Frankfurt(DE)
- University of Münster(DE)
- Jena University Hospital(DE)
- Friedrich Schiller University Jena(DE)
- University Hospital Münster(DE)
- Leipzig University(DE)
- University of Regensburg(DE)
- FOM University of Applied Sciences for Economics and Management(DE)
- Sana Klinikum Offenbach(DE)
- Heidelberg University(DE)
- National Center for Tumor Diseases(DE)
- University Hospital Heidelberg(DE)