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Artificial intelligence–based rapid brain volumetry substantially improves differential diagnosis in dementia
8
Zitationen
38
Autoren
2024
Jahr
Abstract
Introduction: This study evaluates the clinical value of a deep learning-based artificial intelligence (AI) system that performs rapid brain volumetry with automatic lobe segmentation and age- and sex-adjusted percentile comparisons. Methods: Fifty-five patients-17 with Alzheimer's disease (AD), 18 with frontotemporal dementia (FTD), and 20 healthy controls-underwent cranial magnetic resonance imaging scans. Two board-certified neuroradiologists (BCNR), two board-certified radiologists (BCR), and three radiology residents (RR) assessed the scans twice: first without AI support and then with AI assistance. Results: < 0.05) recorded significantly more correct diagnoses. Discussion: AI-assisted volumetry improves diagnostic performance in differentiating AD and FTD, benefiting all reader groups, including BCNR. Highlights: Artificial intelligence (AI)-supported brain volumetry significantly improved the diagnostic accuracy for Alzheimer's disease (AD) and frontotemporal dementia (FTD), with notable performance gains across radiologists of varying expertise levels.The presented AI tool is readily clinically available and reduces brain volumetry processing time from 12 to 24 hours to under 5 minutes, with full integration into picture archiving and communication systems, streamlining the workflow and facilitating real-time clinical decision making.AI-supported rapid brain volumetry has the potential to improve early diagnosis and to improve patient management.
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Autoren
- Jan Rudolph
- Johannes Rueckel
- Jörg Döpfert
- Wen Xin Ling
- J Opalka
- Christian Brem
- Nina Hesse
- Maria Ingenerf
- Vanessa Koliogiannis
- Olga Solyanik
- Boj Hoppe
- Hanna Zimmermann
- Wilhelm Flatz
- Robert Forbrig
- Maximilian Patzig
- Boris‐Stephan Rauchmann
- Robert Perneczky
- Oliver Peters
- Josef Priller
- Anja Schneider
- Klaus Fließbach
- Andreas Hermann
- Jens Wiltfang
- Frank Jessen
- Emrah Düzel
- Katharina Büerger
- Stefan Teipel
- Christoph Laske
- Matthis Synofzik
- Annika Spottke
- Michael Ewers
- Peter Dechent
- John–Dylan Haynes
- Johannes Levin
- Thomas Liebig
- Jens Ricke
- Michael Ingrisch
- Sophia Stoecklein
Institutionen
- LMU Klinikum(DE)
- Ludwig-Maximilians-Universität München(DE)
- Medico-Academic Consultings (Germany)(DE)
- German Center for Neurodegenerative Diseases(DE)
- University of Sheffield(GB)
- Charité - Universitätsmedizin Berlin(DE)
- TUM Klinikum(DE)
- UK Dementia Research Institute(GB)
- University of Edinburgh(GB)
- University of Bonn(DE)
- University Hospital Bonn(DE)
- University of Rostock(DE)
- University of Aveiro(PT)
- University of Cologne(DE)
- Cologne Excellence Cluster on Cellular Stress Responses in Aging Associated Diseases(DE)
- Otto-von-Guericke-Universität Magdeburg(DE)
- Hertie Institute for Clinical Brain Research(DE)
- University of Göttingen(DE)
- Bernstein Center for Computational Neuroscience Berlin(DE)
- Munich Cluster for Systems Neurology(DE)
- Munich Center for Machine Learning