A new automated quantification algorithm for the detection and evaluation of focal liver lesions with contrast‐enhanced ultrasound

Purpose: Detect and classify focal liver lesions (FLLs) from contrast‐enhanced ultrasound (CEUS) imaging by means of an automated quantification algorithm. Methods: The proposed algorithm employs a sophisticated segmentation method to detect and contour focal lesions from 52 CEUS video sequences (30...

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Published inMedical physics (Lancaster) Vol. 42; no. 7; pp. 3948 - 3959
Main Authors Gatos, Ilias, Tsantis, Stavros, Spiliopoulos, Stavros, Skouroliakou, Aikaterini, Theotokas, Ioannis, Zoumpoulis, Pavlos, Hazle, John D., Kagadis, George C.
Format Journal Article
LanguageEnglish
Published United States American Association of Physicists in Medicine 01.07.2015
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ISSN0094-2405
2473-4209
2473-4209
DOI10.1118/1.4921753

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Summary:Purpose: Detect and classify focal liver lesions (FLLs) from contrast‐enhanced ultrasound (CEUS) imaging by means of an automated quantification algorithm. Methods: The proposed algorithm employs a sophisticated segmentation method to detect and contour focal lesions from 52 CEUS video sequences (30 benign and 22 malignant). Lesion detection involves wavelet transform zero crossings utilization as an initialization step to the Markov random field model toward the lesion contour extraction. After FLL detection across frames, time intensity curve (TIC) is computed which provides the contrast agents’ behavior at all vascular phases with respect to adjacent parenchyma for each patient. From each TIC, eight features were automatically calculated and employed into the support vector machines (SVMs) classification algorithm in the design of the image analysis model. Results: With regard to FLLs detection accuracy, all lesions detected had an average overlap value of 0.89 ± 0.16 with manual segmentations for all CEUS frame‐subsets included in the study. Highest classification accuracy from the SVM model was 90.3%, misdiagnosing three benign and two malignant FLLs with sensitivity and specificity values of 93.1% and 86.9%, respectively. Conclusions: The proposed quantification system that employs FLLs detection and classification algorithms may be of value to physicians as a second opinion tool for avoiding unnecessary invasive procedures.
Bibliography:gkagad@gmail.com
Telephone: +30 2610 962345; Fax: +30 2610 969166.
Author to whom correspondence should be addressed. Electronic mail
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ISSN:0094-2405
2473-4209
2473-4209
DOI:10.1118/1.4921753