| Literature DB >> 36044070 |
Karl-Heinz Nenning1,2, Georg Langs3.
Abstract
Neuroimaging is critical in clinical care and research, enabling us to investigate the brain in health and disease. There is a complex link between the brain's morphological structure, physiological architecture, and the corresponding imaging characteristics. The shape, function, and relationships between various brain areas change during development and throughout life, disease, and recovery. Like few other areas, neuroimaging benefits from advanced analysis techniques to fully exploit imaging data for studying the brain and its function. Recently, machine learning has started to contribute (a) to anatomical measurements, detection, segmentation, and quantification of lesions and disease patterns, (b) to the rapid identification of acute conditions such as stroke, or (c) to the tracking of imaging changes over time. As our ability to image and analyze the brain advances, so does our understanding of its intricate relationships and their role in therapeutic decision-making. Here, we review the current state of the art in using machine learning techniques to exploit neuroimaging data for clinical care and research, providing an overview of clinical applications and their contribution to fundamental computational neuroscience.Entities:
Keywords: Artificial intelligence; Connectomics; Deep learning; Neuro imaging; Prediction models
Year: 2022 PMID: 36044070 DOI: 10.1007/s00117-022-01051-1
Source DB: PubMed Journal: Radiologie (Heidelb) ISSN: 2731-7048