Abstract

IntroductionUltrasound equipment provides real-time visualization of internal organs, essential for early disease detection and diagnosis. However, poor-quality ultrasound images can compromise diagnostic accuracy and increase the risk of misdiagnosis. Quality assessments are often subjective, relying on the evaluator's experience and interpretation, which can vary. MethodsThis study introduces a two-stage deep learning framework designed to objectively assess ultrasound image quality using phantom data across three key parameters: ‘Dead zone’, ‘Axial/lateral resolution’, and ‘Gray scale and dynamic range’. Stage 1 automatically extracts regions of interest for each parameter, while Stage 2 employs detection or classification models to evaluate image quality within these regions. To generate an overall equipment quality score, a logistic regression model combines the weighted results from each parameter. ResultsThe classification model demonstrated high performance across datasets, achieving AUC scores of 98.6% for ‘Dead zone’, 87.7% for ‘Axial/lateral resolution’, and 96.0% for ‘Gray scale and dynamic range’. Further analysis using guideline-compliant images of individual devices showed AUC scores of 98.2%, 92.8%, and 100%, respectively. These findings highlight deep learning's potential for quantitative and objective assessments of ultrasound image quality. Ultimately, this framework provides a streamlined approach to quality management, enabling consistent quality control and efficient scoring-based evaluation of ultrasound equipment.

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