Longitudinal Image Data for Outcome Modeling
In oncology, medical imaging is crucial for diagnosis, treatment planning and therapy execution. Treatment responses can be complex and varied and are known to involve factors of treatment, patient characteristics and tumor microenvironment. Longitudinal image analysis is able to track temporal chan...
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Veröffentlicht in: | Clinical oncology (Royal College of Radiologists (Great Britain)) 2024-06, p.103610, Article 103610 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | In oncology, medical imaging is crucial for diagnosis, treatment planning and therapy execution. Treatment responses can be complex and varied and are known to involve factors of treatment, patient characteristics and tumor microenvironment. Longitudinal image analysis is able to track temporal changes, aiding in disease monitoring, treatment evaluation, and outcome prediction. This allows for the enhancement of personalized medicine. However, analyzing longitudinal 2D and 3D images presents unique challenges, including image registration, reliable segmentation, dealing with variable imaging intervals, and sparse data. This review presents an overview of techniques and methodologies in longitudinal image analysis, with a primary focus on outcome modeling in radiation oncology.
•Longitudinal analysis enables tracking changes aiding in disease monitoring.•The increasing availability of images marks a new era in longitudinal analyses.•Longitudinal image data have immense potential to improve patient outcome. |
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ISSN: | 0936-6555 1433-2981 1433-2981 |
DOI: | 10.1016/j.clon.2024.06.053 |