Literature DB >> 29072980

Focal Liver Lesions: Computer-aided Diagnosis by Using Contrast-enhanced US Cine Recordings.

Casey N Ta1, Yuko Kono1, Mohammad Eghtedari1, Young Taik Oh1, Michelle L Robbin1, Richard G Barr1, Andrew C Kummel1, Robert F Mattrey1.   

Abstract

Purpose To assess the performance of computer-aided diagnosis (CAD) systems and to determine the dominant ultrasonographic (US) features when classifying benign versus malignant focal liver lesions (FLLs) by using contrast material-enhanced US cine clips. Materials and Methods One hundred six US data sets in all subjects enrolled by three centers from a multicenter trial that included 54 malignant, 51 benign, and one indeterminate FLL were retrospectively analyzed. The 105 benign or malignant lesions were confirmed at histologic examination, contrast-enhanced computed tomography (CT), dynamic contrast-enhanced magnetic resonance (MR) imaging, and/or 6 or more months of clinical follow-up. Data sets included 3-minute cine clips that were automatically corrected for in-plane motion and automatically filtered out frames acquired off plane. B-mode and contrast-specific features were automatically extracted on a pixel-by-pixel basis and analyzed by using an artificial neural network (ANN) and a support vector machine (SVM). Areas under the receiver operating characteristic curve (AUCs) for CAD were compared with those for one experienced and one inexperienced blinded reader. A third observer graded cine quality to assess its effects on CAD performance. Results CAD, the inexperienced observer, and the experienced observer were able to analyze 95, 100, and 102 cine clips, respectively. The AUCs for the SVM, ANN, and experienced and inexperienced observers were 0.883 (95% confidence interval [CI]: 0.793, 0.940), 0.829 (95% CI: 0.724, 0.901), 0.843 (95% CI: 0.756, 0.903), and 0.702 (95% CI: 0.586, 0.782), respectively; only the difference between SVM and the inexperienced observer was statistically significant. Accuracy improved from 71.3% (67 of 94; 95% CI: 60.6%, 79.8%) to 87.7% (57 of 65; 95% CI: 78.5%, 93.8%) and from 80.9% (76 of 94; 95% CI: 72.3%, 88.3%) to 90.3% (65 of 72; 95% CI: 80.6%, 95.8%) when CAD was in agreement with the inexperienced reader and when it was in agreement with the experienced reader, respectively. B-mode heterogeneity and contrast material washout were the most discriminating features selected by CAD for all iterations. CAD selected time-based time-intensity curve (TIC) features 99.0% (207 of 209) of the time to classify FLLs, versus 1.0% (two of 209) of the time for intensity-based features. None of the 15 video-quality criteria had a statistically significant effect on CAD accuracy-all P values were greater than the Holm-Sidak α-level correction for multiple comparisons. Conclusion CAD systems classified benign and malignant FLLs with an accuracy similar to that of an expert reader. CAD improved the accuracy of both readers. Time-based features of TIC were more discriminating than intensity-based features. © RSNA, 2017 Online supplemental material is available for this article.

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Year:  2017        PMID: 29072980      PMCID: PMC5831265          DOI: 10.1148/radiol.2017170365

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  18 in total

1.  Recognizing Focal Liver Lesions in CEUS With Dynamically Trained Latent Structured Models.

Authors:  Xiaodan Liang; Liang Lin; Qingxing Cao; Rui Huang; Yongtian Wang
Journal:  IEEE Trans Med Imaging       Date:  2015-10-26       Impact factor: 10.048

Review 2.  Ultrasound image segmentation: a survey.

Authors:  J Alison Noble; Djamal Boukerroui
Journal:  IEEE Trans Med Imaging       Date:  2006-08       Impact factor: 10.048

3.  Parametric imaging for characterizing focal liver lesions in contrast-enhanced ultrasound.

Authors:  Nicolas G Rognin; Marcel Arditi; Laurent Mercier; Peter J A Frinking; Michel Schneider; Geneviève Perrenoud; Anass Anaye; Jean-Yves Meuwly; François Tranquart
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2010-11       Impact factor: 2.725

Review 4.  Contrast-Enhanced Ultrasound for the differentiation of benign and malignant focal liver lesions: a meta-analysis.

Authors:  Mireen Friedrich-Rust; Tom Klopffleisch; Julia Nierhoff; Eva Herrmann; Johannes Vermehren; Maximilian D Schneider; Stefan Zeuzem; Joerg Bojunga
Journal:  Liver Int       Date:  2013-02-22       Impact factor: 5.828

5.  Guidelines and good clinical practice recommendations for Contrast Enhanced Ultrasound (CEUS) in the liver - update 2012: A WFUMB-EFSUMB initiative in cooperation with representatives of AFSUMB, AIUM, ASUM, FLAUS and ICUS.

Authors:  Michel Claudon; Christoph F Dietrich; Byung Ihn Choi; David O Cosgrove; Masatoshi Kudo; Christian P Nolsøe; Fabio Piscaglia; Stephanie R Wilson; Richard G Barr; Maria C Chammas; Nitin G Chaubal; Min-Hua Chen; Dirk Andre Clevert; Jean Michel Correas; Hong Ding; Flemming Forsberg; J Brian Fowlkes; Robert N Gibson; Barry B Goldberg; Nathalie Lassau; Edward L S Leen; Robert F Mattrey; Fuminori Moriyasu; Luigi Solbiati; Hans-Peter Weskott; Hui-Xiong Xu
Journal:  Ultrasound Med Biol       Date:  2012-11-05       Impact factor: 2.998

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

Authors:  Ilias Gatos; Stavros Tsantis; Stavros Spiliopoulos; Aikaterini Skouroliakou; Ioannis Theotokas; Pavlos Zoumpoulis; John D Hazle; George C Kagadis
Journal:  Med Phys       Date:  2015-07       Impact factor: 4.071

7.  Computer-aided diagnosis for the classification of focal liver lesions by use of contrast-enhanced ultrasonography.

Authors:  Junji Shiraishi; Katsutoshi Sugimoto; Fuminori Moriyasu; Naohisa Kamiyama; Kunio Doi
Journal:  Med Phys       Date:  2008-05       Impact factor: 4.071

8.  Automating tumor classification with pixel-by-pixel contrast-enhanced ultrasound perfusion kinetics.

Authors:  Casey N Ta; Yuko Kono; Christopher V Barback; Robert F Mattrey; Andrew C Kummel
Journal:  J Vac Sci Technol B Nanotechnol Microelectron       Date:  2012-03-22

9.  Contrast-enhanced ultrasound with SonoVue: differentiation between benign and malignant focal liver lesions in 317 patients.

Authors:  Alexandra von Herbay; Julia Westendorff; Michael Gregor
Journal:  J Clin Ultrasound       Date:  2010-01       Impact factor: 0.910

Review 10.  Current consensus and guidelines of contrast enhanced ultrasound for the characterization of focal liver lesions.

Authors:  Jae Young Jang; Moon Young Kim; Soung Won Jeong; Tae Yeob Kim; Seung Up Kim; Sae Hwan Lee; Ki Tae Suk; Soo Young Park; Hyun Young Woo; Sang Gyune Kim; Jeong Heo; Soon Koo Baik; Hong Soo Kim; Won Young Tak
Journal:  Clin Mol Hepatol       Date:  2013-03-25
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  8 in total

1.  Deep learning radiomics for focal liver lesions diagnosis on long-range contrast-enhanced ultrasound and clinical factors.

Authors:  Li Liu; Chunlin Tang; Lu Li; Ping Chen; Ying Tan; Xiaofei Hu; Kaixuan Chen; Yongning Shang; Deng Liu; He Liu; Hongjun Liu; Fang Nie; Jiawei Tian; Mingchang Zhao; Wen He; Yanli Guo
Journal:  Quant Imaging Med Surg       Date:  2022-06

2.  Deep Learning for the Detection, Localization, and Characterization of Focal Liver Lesions on Abdominal US Images.

Authors:  Hind Dadoun; Anne-Laure Rousseau; Eric de Kerviler; Jean-Michel Correas; Anne-Marie Tissier; Fanny Joujou; Sylvain Bodard; Kemel Khezzane; Constance de Margerie-Mellon; Hervé Delingette; Nicholas Ayache
Journal:  Radiol Artif Intell       Date:  2022-03-02

Review 3.  Artificial intelligence for the prevention and clinical management of hepatocellular carcinoma.

Authors:  Julien Calderaro; Tobias Paul Seraphin; Tom Luedde; Tracey G Simon
Journal:  J Hepatol       Date:  2022-06       Impact factor: 30.083

4.  R2* value derived from multi-echo Dixon technique can aid discrimination between benign and malignant focal liver lesions.

Authors:  Guang-Zi Shi; Hong Chen; Wei-Ke Zeng; Ming Gao; Meng-Zhu Wang; Hui-Ting Zhang; Jun Shen
Journal:  World J Gastroenterol       Date:  2021-03-28       Impact factor: 5.742

5.  Deep learning promotes B-mode ultrasound screening for focal liver lesions.

Authors:  Akira Yamada
Journal:  EBioMedicine       Date:  2020-06-05       Impact factor: 8.143

6.  Improving B-mode ultrasound diagnostic performance for focal liver lesions using deep learning: A multicentre study.

Authors:  Qi Yang; Jingwei Wei; Xiaohan Hao; Dexing Kong; Xiaoling Yu; Tianan Jiang; Junqing Xi; Wenjia Cai; Yanchun Luo; Xiang Jing; Yilin Yang; Zhigang Cheng; Jinyu Wu; Huiping Zhang; Jintang Liao; Pei Zhou; Yu Song; Yao Zhang; Zhiyu Han; Wen Cheng; Lina Tang; Fangyi Liu; Jianping Dou; Rongqin Zheng; Jie Yu; Jie Tian; Ping Liang
Journal:  EBioMedicine       Date:  2020-04-28       Impact factor: 8.143

7.  Differentiation of atypical hepatic hemangioma from liver metastases: Diagnostic performance of a novel type of color contrast enhanced ultrasound.

Authors:  Xiao-Feng Wu; Xiu-Mei Bai; Wei Yang; Yu Sun; Hong Wang; Wei Wu; Min-Hua Chen; Kun Yan
Journal:  World J Gastroenterol       Date:  2020-03-07       Impact factor: 5.742

8.  Artificial intelligence assists identifying malignant versus benign liver lesions using contrast-enhanced ultrasound.

Authors:  Hang-Tong Hu; Wei Wang; Li-Da Chen; Si-Min Ruan; Shu-Ling Chen; Xin Li; Ming-De Lu; Xiao-Yan Xie; Ming Kuang
Journal:  J Gastroenterol Hepatol       Date:  2021-05-05       Impact factor: 4.029

  8 in total

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