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A Systematic Review of Medical Image Quality Assessment
by
Lee, Byeong-Il
, Herath, H. M. S. S.
, Herath, H. M. K. K. M. B.
, Madusanka, Nuwan
in
Accuracy
/ Algorithms
/ Artificial intelligence
/ artificial intelligence (AI)
/ Clinical outcomes
/ Diagnostic imaging
/ Evaluation
/ Image quality
/ imaging modalities
/ Literature reviews
/ Machine learning
/ machine learning (ML)
/ Magnetic resonance imaging
/ Medical electronics
/ medical image quality assessment (MIQA)
/ Medical imaging
/ Methods
/ Noise reduction
/ objective assessment
/ Quality assessment
/ Standardization
/ subjective assessment
/ Systematic Review
/ Technology application
/ Tomography
/ Ultrasonic imaging
2025
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A Systematic Review of Medical Image Quality Assessment
by
Lee, Byeong-Il
, Herath, H. M. S. S.
, Herath, H. M. K. K. M. B.
, Madusanka, Nuwan
in
Accuracy
/ Algorithms
/ Artificial intelligence
/ artificial intelligence (AI)
/ Clinical outcomes
/ Diagnostic imaging
/ Evaluation
/ Image quality
/ imaging modalities
/ Literature reviews
/ Machine learning
/ machine learning (ML)
/ Magnetic resonance imaging
/ Medical electronics
/ medical image quality assessment (MIQA)
/ Medical imaging
/ Methods
/ Noise reduction
/ objective assessment
/ Quality assessment
/ Standardization
/ subjective assessment
/ Systematic Review
/ Technology application
/ Tomography
/ Ultrasonic imaging
2025
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Do you wish to request the book?
A Systematic Review of Medical Image Quality Assessment
by
Lee, Byeong-Il
, Herath, H. M. S. S.
, Herath, H. M. K. K. M. B.
, Madusanka, Nuwan
in
Accuracy
/ Algorithms
/ Artificial intelligence
/ artificial intelligence (AI)
/ Clinical outcomes
/ Diagnostic imaging
/ Evaluation
/ Image quality
/ imaging modalities
/ Literature reviews
/ Machine learning
/ machine learning (ML)
/ Magnetic resonance imaging
/ Medical electronics
/ medical image quality assessment (MIQA)
/ Medical imaging
/ Methods
/ Noise reduction
/ objective assessment
/ Quality assessment
/ Standardization
/ subjective assessment
/ Systematic Review
/ Technology application
/ Tomography
/ Ultrasonic imaging
2025
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Journal Article
A Systematic Review of Medical Image Quality Assessment
2025
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Overview
Medical image quality assessment (MIQA) is vital in medical imaging and directly affects diagnosis, patient treatment, and general clinical results. Accurate and high-quality imaging is necessary to make accurate diagnoses, efficiently design treatments, and consistently monitor diseases. This review summarizes forty-two research studies on diverse MIQA approaches and their effects on performance in diagnostics, patient results, and efficiency in the process. It contrasts subjective (manual assessment) and objective (rule-driven) evaluation methods, underscores the growing promise of machine intelligence and machine learning (ML) in MIQA automation, and describes the existing MIQA challenges. AI-powered tools are revolutionizing MIQA with automated quality checks, noise reduction, and artifact removal, producing consistent and reliable imaging evaluation. Enhanced image quality is demonstrated in every examination to improve diagnostic precision and support decision making in the clinic. However, challenges still exist, such as variability in quality and variability in human ratings and small datasets hindering standardization. These must be addressed with better-quality data, low-cost labeling, and standardization. Ultimately, this paper reinforces the need for high-quality medical imaging and the potential of MIQA with the power of AI. It is crucial to advance research in this area to advance healthcare.
Publisher
MDPI AG,MDPI
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