A statistical approach to automated analysis of the low‐contrast object detectability test for the large ACR MRI phantom
Ali M. Golestani, Julia M. Gee

TL;DR
This paper introduces an automated method for MRI quality control testing that matches human performance and reduces variability.
Contribution
A novel statistical Python-based automated method for low-contrast object detectability testing in MRI with high agreement to human raters.
Findings
The automated method achieved perfect intra-rater agreement and high inter-rater agreement with human raters.
The method showed consistent performance across T1- and T2-weighted images.
Stress tests confirmed the method's reliability and suitability for clinical use.
Abstract
Regular quality control checks are essential to ensure the quality of MRI systems. The American College of Radiology (ACR) has developed a standardized large phantom test protocol for this purpose. However, the ACR protocol recommends manual measurements, which are time‐consuming, labor‐intensive, and prone to variability, impacting accuracy and reproducibility. Although some aspects of the ACR evaluation have been automated or semi‐automated, tests like low‐contrast object detectability (LCOD), remain challenging to automate. LCOD involves assessing the visibility of objects at various contrast levels. The purpose of this research is to propose and evaluate an automated approach for LCOD testing in MRI. The automated Python code generates a one‐dimensional profile of image intensities along radial paths from the center of the contrast disk. These profiles are compared to templates…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Radiation Dose and Imaging · Medical Imaging and Analysis
