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Computer‐aided detection of renal calculi from noncontrast CT images using TV‐flow and MSER features
Author(s) -
Liu Jianfei,
Wang Shijun,
Turkbey Evrim B.,
Linguraru Marius George,
Yao Jianhua,
Summers Ronald M.
Publication year - 2015
Publication title -
medical physics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.473
H-Index - 180
eISSN - 2473-4209
pISSN - 0094-2405
DOI - 10.1118/1.4903056
Subject(s) - thresholding , artificial intelligence , computer science , pattern recognition (psychology) , noise (video) , sensitivity (control systems) , medical imaging , anisotropic diffusion , computer vision , mathematics , image (mathematics) , electronic engineering , engineering
Purpose: Renal calculi are common extracolonic incidental findings on computed tomographic colonography (CTC). This work aims to develop a fully automated computer‐aided diagnosis system to accurately detect renal calculi on CTC images. Methods: The authors developed a total variation (TV) flow method to reduce image noise within the kidneys while maintaining the characteristic appearance of renal calculi. Maximally stable extremal region (MSER) features were then calculated to robustly identify calculi candidates. Finally, the authors computed texture and shape features that were imported to support vector machines for calculus classification. The method was validated on a dataset of 192 patients and compared to a baseline approach that detects calculi by thresholding. The authors also compared their method with the detection approaches using anisotropic diffusion and nonsmoothing. Results: At a false positive rate of 8 per patient, the sensitivities of the new method and the baseline thresholding approach were 69% and 35% ( p < 1 e − 3) on all calculi from 1 to 433 mm 3 in the testing dataset. The sensitivities of the detection methods using anisotropic diffusion and nonsmoothing were 36% and 0%, respectively. The sensitivity of the new method increased to 90% if only larger and more clinically relevant calculi were considered. Conclusions: Experimental results demonstrated that TV‐flow and MSER features are efficient means to robustly and accurately detect renal calculi on low‐dose, high noise CTC images. Thus, the proposed method can potentially improve diagnosis.