Skip to main content
Erschienen in: International Journal of Computer Assisted Radiology and Surgery 10/2018

10.07.2018 | Original Article

Robust extraction for low-contrast liver tumors using modified adaptive likelihood estimation

verfasst von: Qing Huang, Hui Ding, Xiaodong Wang, Guangzhi Wang

Erschienen in: International Journal of Computer Assisted Radiology and Surgery | Ausgabe 10/2018

Einloggen, um Zugang zu erhalten

Abstract

Purpose

Liver tumor extraction is essential for liver ablation surgery planning and treatment. For accurate and robust tumor segmentation, we propose a semiautomatic method using adaptive likelihood classification with modified likelihood model.

Methods

First, a minimal ellipse (or quasi-ellipsoid) that encloses a liver tumor is generated for initialization. Then, a hybrid intensity likelihood modification based on nonparametric density estimation is proposed to enhance local likelihood contrast and reduce its inhomogeneity. A prior elliptical (or quasi-ellipsoid) shape constraint is directly integrated into the likelihood to further prevent leakage of the algorithm into adjacent tissues with similar intensity. Finally, an adaptive likelihood classification is proposed for accurate segmentation of tumors with low contrast, high noise or heterogeneous densities.

Results

Experiments were performed on 3Dircadb and LiTS datasets. The average volumetric overlap errors of the 3Dircadb and LiTS datasets were 27.05 and 35.72%, respectively. The algorithm’s robustness was validated by comparing results of 5 operators with multiple selections on different tumors.

Conclusions

The proposed method achieved good results in different tumors, even in low-contrast tumors with blurred boundaries. Reliable results can still be achieved over different initializations by different operators using the proposed method.
Literatur
1.
Zurück zum Zitat Siegel RL, Miller KD, Jemal A (2017) Cancer statistics, 2018 CA: a cancer. J Clin 68:7–30 Siegel RL, Miller KD, Jemal A (2017) Cancer statistics, 2018 CA: a cancer. J Clin 68:7–30
2.
Zurück zum Zitat Bhardwaj N, Strickland AD, Ahmad F, Dennison AR, Lloyd DM (2010) Liver ablation techniques: a review. Surg Endosc 24:254–265CrossRefPubMed Bhardwaj N, Strickland AD, Ahmad F, Dennison AR, Lloyd DM (2010) Liver ablation techniques: a review. Surg Endosc 24:254–265CrossRefPubMed
3.
Zurück zum Zitat Linguraru MG, Richbourg WJ, Liu J, Watt JM, Pamulapati V, Wang S, Summers RM (2012) Tumor burden analysis on computed tomography by automated liver and tumor segmentation. IEEE Trans Med Imaging 31:1965–1976CrossRefPubMedPubMedCentral Linguraru MG, Richbourg WJ, Liu J, Watt JM, Pamulapati V, Wang S, Summers RM (2012) Tumor burden analysis on computed tomography by automated liver and tumor segmentation. IEEE Trans Med Imaging 31:1965–1976CrossRefPubMedPubMedCentral
5.
Zurück zum Zitat Moltz JH, Bornemann L, Dicken V, Peitgen H-O (2008) Segmentation of liver metastases in CT scans by adaptive thresholding and morphological processing. In: MICCAI workshop, 2008, pp 195 Moltz JH, Bornemann L, Dicken V, Peitgen H-O (2008) Segmentation of liver metastases in CT scans by adaptive thresholding and morphological processing. In: MICCAI workshop, 2008, pp 195
6.
Zurück zum Zitat Wong D, Liu J, Fengshou Y, Tian Q, Xiong W, Zhou J, Qi Y, Han T, Venkatesh S, Wang S-C (2008) A semi-automated method for liver tumor segmentation based on 2D region growing with knowledge-based constraints. In: MICCAI workshop, 2008, pp 159 Wong D, Liu J, Fengshou Y, Tian Q, Xiong W, Zhou J, Qi Y, Han T, Venkatesh S, Wang S-C (2008) A semi-automated method for liver tumor segmentation based on 2D region growing with knowledge-based constraints. In: MICCAI workshop, 2008, pp 159
7.
Zurück zum Zitat Stawiaski J, Decenciere E, Bidault F (2008) Interactive liver tumor segmentation using graph-cuts and watershed. In: Workshop on 3D segmentation in the clinic: a grand challenge II. Liver tumor segmentation challenge. MICCAI, New York, USA, 2008 Stawiaski J, Decenciere E, Bidault F (2008) Interactive liver tumor segmentation using graph-cuts and watershed. In: Workshop on 3D segmentation in the clinic: a grand challenge II. Liver tumor segmentation challenge. MICCAI, New York, USA, 2008
8.
Zurück zum Zitat Smeets D, Loeckx D, Stijnen B, De Dobbelaer B, Vandermeulen D, Suetens P (2010) Semi-automatic level set segmentation of liver tumors combining a spiral-scanning technique with supervised fuzzy pixel classification. Med Image Anal 14:13–20CrossRefPubMed Smeets D, Loeckx D, Stijnen B, De Dobbelaer B, Vandermeulen D, Suetens P (2010) Semi-automatic level set segmentation of liver tumors combining a spiral-scanning technique with supervised fuzzy pixel classification. Med Image Anal 14:13–20CrossRefPubMed
9.
Zurück zum Zitat Li C, Wang X, Eberl S, Fulham M, Yin Y, Chen J, Feng DD (2013) A likelihood and local constraint level set model for liver tumor segmentation from CT volumes. IEEE Trans Biomed Eng 60:2967–2977CrossRefPubMed Li C, Wang X, Eberl S, Fulham M, Yin Y, Chen J, Feng DD (2013) A likelihood and local constraint level set model for liver tumor segmentation from CT volumes. IEEE Trans Biomed Eng 60:2967–2977CrossRefPubMed
10.
Zurück zum Zitat Hoogi A, Beaulieu CF, Cunha GM, Heba E, Sirlin CB, Napel S, Rubin DL (2017) Adaptive local window for level set segmentation of CT and MRI liver lesions. Med Image Anal 37:46–55CrossRefPubMedPubMedCentral Hoogi A, Beaulieu CF, Cunha GM, Heba E, Sirlin CB, Napel S, Rubin DL (2017) Adaptive local window for level set segmentation of CT and MRI liver lesions. Med Image Anal 37:46–55CrossRefPubMedPubMedCentral
11.
Zurück zum Zitat Chaieb F, Said TB, Mabrouk S, Ghorbel F (2017) Accelerated liver tumor segmentation in four-phase computed tomography images. J Real-Time Image Process 13:121–133CrossRef Chaieb F, Said TB, Mabrouk S, Ghorbel F (2017) Accelerated liver tumor segmentation in four-phase computed tomography images. J Real-Time Image Process 13:121–133CrossRef
12.
Zurück zum Zitat Häme Y, Pollari M (2012) Semi-automatic liver tumor segmentation with hidden Markov measure field model and non-parametric distribution estimation. Med Image Anal 16:140–149CrossRefPubMed Häme Y, Pollari M (2012) Semi-automatic liver tumor segmentation with hidden Markov measure field model and non-parametric distribution estimation. Med Image Anal 16:140–149CrossRefPubMed
13.
Zurück zum Zitat Schwier M, Moltz JH, Peitgen H-O (2011) Object-based analysis of CT images for automatic detection and segmentation of hypodense liver lesions. Int J Comput Assist Radiol Surg 6:737CrossRefPubMed Schwier M, Moltz JH, Peitgen H-O (2011) Object-based analysis of CT images for automatic detection and segmentation of hypodense liver lesions. Int J Comput Assist Radiol Surg 6:737CrossRefPubMed
14.
Zurück zum Zitat Livraghi T, Solbiati L, Meloni MF, Gazelle GS, Halpern EF, Goldberg SN (2003) Treatment of focal liver tumors with percutaneous radio-frequency ablation: complications encountered in a multicenter study. Radiology 226:441–451CrossRefPubMed Livraghi T, Solbiati L, Meloni MF, Gazelle GS, Halpern EF, Goldberg SN (2003) Treatment of focal liver tumors with percutaneous radio-frequency ablation: complications encountered in a multicenter study. Radiology 226:441–451CrossRefPubMed
15.
Zurück zum Zitat Abdel-massieh NH, Hadhoud MM, Amin KM (2010) A novel fully automatic technique for liver tumor segmentation from CT scans with knowledge-based constraints. In: 2010 10th International conference on intelligent systems design and applications, 2010, pp 1253–1258 Abdel-massieh NH, Hadhoud MM, Amin KM (2010) A novel fully automatic technique for liver tumor segmentation from CT scans with knowledge-based constraints. In: 2010 10th International conference on intelligent systems design and applications, 2010, pp 1253–1258
16.
Zurück zum Zitat Weickert J, Romeny BMTH, Viergever MA (1998) Efficient and reliable schemes for nonlinear diffusion filtering. IEEE Trans Image Process 7:398–410CrossRefPubMed Weickert J, Romeny BMTH, Viergever MA (1998) Efficient and reliable schemes for nonlinear diffusion filtering. IEEE Trans Image Process 7:398–410CrossRefPubMed
17.
Zurück zum Zitat Narendra PM, Fitch RC (1981) Real-time adaptive contrast enhancement. IEEE Trans Pattern Anal Mach Intell 3:655–661CrossRefPubMed Narendra PM, Fitch RC (1981) Real-time adaptive contrast enhancement. IEEE Trans Pattern Anal Mach Intell 3:655–661CrossRefPubMed
18.
Zurück zum Zitat Michailovich O, Rathi Y, Tannenbaum A (2007) Image segmentation using active contours driven by the Bhattacharyya gradient flow. IEEE Trans Image Process 16:2787–2801CrossRefPubMedPubMedCentral Michailovich O, Rathi Y, Tannenbaum A (2007) Image segmentation using active contours driven by the Bhattacharyya gradient flow. IEEE Trans Image Process 16:2787–2801CrossRefPubMedPubMedCentral
19.
Zurück zum Zitat Heimann T, Van Ginneken B, Styner MA, Arzhaeva Y, Aurich V, Bauer C, Beck A, Becker C, Beichel R, Bekes G (2009) Comparison and evaluation of methods for liver segmentation from CT datasets. IEEE Trans Med Imaging 28:1251–1265CrossRefPubMed Heimann T, Van Ginneken B, Styner MA, Arzhaeva Y, Aurich V, Bauer C, Beck A, Becker C, Beichel R, Bekes G (2009) Comparison and evaluation of methods for liver segmentation from CT datasets. IEEE Trans Med Imaging 28:1251–1265CrossRefPubMed
20.
Zurück zum Zitat Li C, Xu C, Gui C, Fox MD (2010) Distance regularized level set evolution and its application to image segmentation. IEEE Trans Image Process 19:3243–3254CrossRefPubMed Li C, Xu C, Gui C, Fox MD (2010) Distance regularized level set evolution and its application to image segmentation. IEEE Trans Image Process 19:3243–3254CrossRefPubMed
21.
Zurück zum Zitat Foruzan AH, Chen Y-W (2016) Improved segmentation of low-contrast lesions using sigmoid edge model. Int J Comput Assist Radiol Surg 11:1267–1283CrossRefPubMed Foruzan AH, Chen Y-W (2016) Improved segmentation of low-contrast lesions using sigmoid edge model. Int J Comput Assist Radiol Surg 11:1267–1283CrossRefPubMed
22.
Zurück zum Zitat Wu W, Wu S, Zhou Z, Zhang R, Zhang Y (2017) 3D liver tumor segmentation in CT images using improved fuzzy C-means and graph cuts. Biomed Res Int 2017:11 Wu W, Wu S, Zhou Z, Zhang R, Zhang Y (2017) 3D liver tumor segmentation in CT images using improved fuzzy C-means and graph cuts. Biomed Res Int 2017:11
23.
Zurück zum Zitat Christ PF, Ettlinger F, Grün F, Elshaera MEA, Lipkova J, Schlecht S, Ahmaddy F, Tatavarty S, Bickel M, Bilic P (2017) Automatic liver and tumor segmentation of ct and MRI volumes using cascaded fully convolutional neural networks, arXiv preprint arXiv:1702.05970 Christ PF, Ettlinger F, Grün F, Elshaera MEA, Lipkova J, Schlecht S, Ahmaddy F, Tatavarty S, Bickel M, Bilic P (2017) Automatic liver and tumor segmentation of ct and MRI volumes using cascaded fully convolutional neural networks, arXiv preprint arXiv:​1702.​05970
24.
Zurück zum Zitat Lipková J, Rempfler M, Christ P, Lowengrub J, Menze BH (2017) Automated unsupervised segmentation of liver lesions in CT scans via Cahn-Hilliard phase separation, arXiv preprint arXiv:1704.02348 Lipková J, Rempfler M, Christ P, Lowengrub J, Menze BH (2017) Automated unsupervised segmentation of liver lesions in CT scans via Cahn-Hilliard phase separation, arXiv preprint arXiv:​1704.​02348
25.
Zurück zum Zitat Li X, Chen H, Qi X, Dou Q, Fu C-W, Heng PA (2017) H-DenseUNet: hybrid densely connected UNet for liver and liver tumor segmentation from CT volumes, arXiv preprint arXiv:1709.07330 Li X, Chen H, Qi X, Dou Q, Fu C-W, Heng PA (2017) H-DenseUNet: hybrid densely connected UNet for liver and liver tumor segmentation from CT volumes, arXiv preprint arXiv:​1709.​07330
Metadaten
Titel
Robust extraction for low-contrast liver tumors using modified adaptive likelihood estimation
verfasst von
Qing Huang
Hui Ding
Xiaodong Wang
Guangzhi Wang
Publikationsdatum
10.07.2018
Verlag
Springer International Publishing
Erschienen in
International Journal of Computer Assisted Radiology and Surgery / Ausgabe 10/2018
Print ISSN: 1861-6410
Elektronische ISSN: 1861-6429
DOI
https://doi.org/10.1007/s11548-018-1820-9

Weitere Artikel der Ausgabe 10/2018

International Journal of Computer Assisted Radiology and Surgery 10/2018 Zur Ausgabe

Update Radiologie

Bestellen Sie unseren Fach-Newsletter und bleiben Sie gut informiert.