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Erschienen in: International Journal of Computer Assisted Radiology and Surgery 4/2014

01.07.2014 | Original Article

Automated liver lesion detection in CT images based on multi-level geometric features

verfasst von: László Ruskó, Ádám Perényi

Erschienen in: International Journal of Computer Assisted Radiology and Surgery | Ausgabe 4/2014

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Abstract

Purpose

Due to the increasing number of liver cancer cases in clinical practice, there is a significant need for efficient tools for computer-assisted liver lesion analysis. A wide range of clinical applications, such as lesion characterization, quantification and follow-up, can be facilitated by automated liver lesion detection. Liver lesions vary significantly in size, shape, density and heterogeneity, which make them difficult to detect automatically. The goal of this work was to develop a method that can detect all types of liver lesions with high sensitivity and low false positive rate within a short run time.

Methods

The proposed method identifies abnormal regions in liver CT images based on their intensity using a multi-level segmentation approach. The abnormal regions are analyzed from the inside-out using basic geometric features (such as asymmetry, compactness or volume). Using this multi-level shape characterization, the abnormal regions are classified into lesions and other region types (including vessel, liver boundary). The proposed analysis also allows defining the contour of each finding. The method was trained on a set of 55 cases involving 120 lesions and evaluated on a set of 30 images involving 59 (various types of) lesions, which were manually contoured by a physician.

Results

The proposed algorithm demonstrated a high detection rate (92 %) at a low (1.7) false positive per case (precision 51 %), when the method was started from a manually contoured liver. The same level of false positive per case (1.6) and precision (51 %) was achieved at a somewhat lower detection rate (85 %), when the volume of interest was defined by a fully automated liver segmentation.

Conclusions

The proposed method can efficiently detect liver lesions irrespective of their size, shape, density and heterogeneity within half a minute. According to the evaluation, its accuracy is competitive with the actual state-of-the-art approaches, and the contour of the detected findings is acceptable in most of the cases. Future work shall focus on more precise lesion contouring so that the proposed method can be a solid basis for fully automated liver tumour burden estimation.
Literatur
1.
Zurück zum Zitat Doi K (2007) Computer-aided diagnosis in medical imaging: historical review, current status and future potential. Comput Med Imaging Graph 31(4–5):198–211PubMedCentralPubMedCrossRef Doi K (2007) Computer-aided diagnosis in medical imaging: historical review, current status and future potential. Comput Med Imaging Graph 31(4–5):198–211PubMedCentralPubMedCrossRef
2.
Zurück zum Zitat van Leeuwen MS, Noordzij J, Feldberg MA, Hennipman AH, Doornewaard H (1996) Focal liver lesions: characterization with triphasic spiral CT. Radiology 201:327–336PubMed van Leeuwen MS, Noordzij J, Feldberg MA, Hennipman AH, Doornewaard H (1996) Focal liver lesions: characterization with triphasic spiral CT. Radiology 201:327–336PubMed
3.
Zurück zum Zitat Corso JJ, Yuille A, Sicotte NL, Toga A (2007) Detection and segmentation of pathological structures by the extended graph-shifts algorithm. In: Medical image computing and computer-assisted intervention—MICCAI 2007, Lecturer Notes in Computer Science, vol 4791, pp 985–993 Corso JJ, Yuille A, Sicotte NL, Toga A (2007) Detection and segmentation of pathological structures by the extended graph-shifts algorithm. In: Medical image computing and computer-assisted intervention—MICCAI 2007, Lecturer Notes in Computer Science, vol 4791, pp 985–993
4.
Zurück zum Zitat Nie J, Xue Z, Liu T, Young GS, Setayesh K, Guo L, Wong STC (2009) Automated brain tumor segmentation using spatial accuracy-weighted hidden Markov random field. Comput Med Imaging Graph 33(6):431–441PubMedCentralPubMedCrossRef Nie J, Xue Z, Liu T, Young GS, Setayesh K, Guo L, Wong STC (2009) Automated brain tumor segmentation using spatial accuracy-weighted hidden Markov random field. Comput Med Imaging Graph 33(6):431–441PubMedCentralPubMedCrossRef
5.
Zurück zum Zitat Kitasaka T, Tsujimura Y, Nakamura Y, Mori K, Suenaga Y, Ito M, Nawano S (2007) Automated extraction of lymph nodes from 3-d abdominal CT images using 3-d minimum directional difference filter. In: Medical image computing and computer-assisted intervention—MICCAI 2007, Lecturer Notes Computer Science, vol 4792, pp 336–343 Kitasaka T, Tsujimura Y, Nakamura Y, Mori K, Suenaga Y, Ito M, Nawano S (2007) Automated extraction of lymph nodes from 3-d abdominal CT images using 3-d minimum directional difference filter. In: Medical image computing and computer-assisted intervention—MICCAI 2007, Lecturer Notes Computer Science, vol 4792, pp 336–343
6.
Zurück zum Zitat Bilello M, Gokturk SB, Desser T, Napel S, Jeffrey RB Jr, Beaulieu CF (2004) Automatic detection and classification of hypodense hepatic lesions on contrast-enhanced venous-phase CT. Med Phys 31(9):2584–2593PubMedCrossRef Bilello M, Gokturk SB, Desser T, Napel S, Jeffrey RB Jr, Beaulieu CF (2004) Automatic detection and classification of hypodense hepatic lesions on contrast-enhanced venous-phase CT. Med Phys 31(9):2584–2593PubMedCrossRef
7.
Zurück zum Zitat Duda D, Kretowsky M, Bezy-Wendling J (2006) Texture characterization for hepatic tumor recognition in multiphase CT. Biocybern Biomed Eng 26(4):15–24 Duda D, Kretowsky M, Bezy-Wendling J (2006) Texture characterization for hepatic tumor recognition in multiphase CT. Biocybern Biomed Eng 26(4):15–24
8.
Zurück zum Zitat Huang YL, Chen JH, Shen WC (2006) Diagnosis of hepatic tumors with texture analysis in nonenhanced computed tomography images. Acad Radiol 13(6):713–720PubMedCrossRef Huang YL, Chen JH, Shen WC (2006) Diagnosis of hepatic tumors with texture analysis in nonenhanced computed tomography images. Acad Radiol 13(6):713–720PubMedCrossRef
9.
Zurück zum Zitat Mougiakakou SG, Valavanis IK, Nikita A, Nikita KS (2007) Differential diagnosis of CT focal liver lesions using texture features, feature selection and ensemble driven classifiers. Artif Intell Med 41(1):25–37PubMedCrossRef Mougiakakou SG, Valavanis IK, Nikita A, Nikita KS (2007) Differential diagnosis of CT focal liver lesions using texture features, feature selection and ensemble driven classifiers. Artif Intell Med 41(1):25–37PubMedCrossRef
10.
Zurück zum Zitat Tajima T, Zhang X, Kitagawa T, Kanematsu M, Zhou X, Hara T, Fujita H, Yokoyama R, Kondo H, Hoshi H, Nawano S, Shinozaki K (2007) Computer-aided detection (CAD) of hepatocellular carcinoma on multiphase CT images. Proc SPIE 6514:65142QCrossRef Tajima T, Zhang X, Kitagawa T, Kanematsu M, Zhou X, Hara T, Fujita H, Yokoyama R, Kondo H, Hoshi H, Nawano S, Shinozaki K (2007) Computer-aided detection (CAD) of hepatocellular carcinoma on multiphase CT images. Proc SPIE 6514:65142QCrossRef
11.
Zurück zum Zitat Kumar SS, Moni RS (2010) Diagnosis of liver tumor from CT images using fast discrete curvelet transform. Int J Comput Sci Eng 2(4):1173–1178 Kumar SS, Moni RS (2010) Diagnosis of liver tumor from CT images using fast discrete curvelet transform. Int J Comput Sci Eng 2(4):1173–1178
12.
Zurück zum Zitat Safdari M, Pasari R, Rubin D, Greenspan H (2013) Image patch-based method for automated classification and detection of focal liver lesions on CT. In: Proceedings of SPIE 8670, medical imaging 2013: computer-aided diagnosis, 86700Y Safdari M, Pasari R, Rubin D, Greenspan H (2013) Image patch-based method for automated classification and detection of focal liver lesions on CT. In: Proceedings of SPIE 8670, medical imaging 2013: computer-aided diagnosis, 86700Y
13.
Zurück zum Zitat Quatrehomme A, Millet I, Hoa D, Subsol G, Puech W (2013) Assessing the classification of liver focal lesions by using multi-phase computer tomography scans. In: Greenspan H, Müller H, Syeda-Mahmood T (eds). Lecture notes in computer science: medical content-based retrieval for clinical decision support, vol 7723, pp 80–91 Quatrehomme A, Millet I, Hoa D, Subsol G, Puech W (2013) Assessing the classification of liver focal lesions by using multi-phase computer tomography scans. In: Greenspan H, Müller H, Syeda-Mahmood T (eds). Lecture notes in computer science: medical content-based retrieval for clinical decision support, vol 7723, pp 80–91
15.
Zurück zum Zitat Pescia D, Paragios N, Chemouny S (2008) Automatic detection of liver tumors. In: Proceedings of the 2008 IEEE international symposium on biomedical imaging, pp 672–675 Pescia D, Paragios N, Chemouny S (2008) Automatic detection of liver tumors. In: Proceedings of the 2008 IEEE international symposium on biomedical imaging, pp 672–675
16.
Zurück zum Zitat Massoptier L, Casciaro S (2008) A new fully automatic and robust algorithm for fast segmentation of liver tissue and tumors from CT scans. Eur Radiol 18(8):1658–1665PubMedCrossRef Massoptier L, Casciaro S (2008) A new fully automatic and robust algorithm for fast segmentation of liver tissue and tumors from CT scans. Eur Radiol 18(8):1658–1665PubMedCrossRef
17.
Zurück zum Zitat Moltz JH, Bornemann L, Kuhnigk JM, Dicken V, Peitgen E, Meier S, Bolte H, Fabel M, Bauknecht HC, Hittinger M, Kiessling A, Pusken M, Peitgen HO (2009) Advanced segmentation techniques for lung nodules, liver metastases, and enlarged lymph nodes in CT scans. IEEE J Sel Topics Signal Process 3(1):122–134CrossRef Moltz JH, Bornemann L, Kuhnigk JM, Dicken V, Peitgen E, Meier S, Bolte H, Fabel M, Bauknecht HC, Hittinger M, Kiessling A, Pusken M, Peitgen HO (2009) Advanced segmentation techniques for lung nodules, liver metastases, and enlarged lymph nodes in CT scans. IEEE J Sel Topics Signal Process 3(1):122–134CrossRef
18.
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: Proceedings of 2010 10th international conference on intelligent systems design and applications, 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: Proceedings of 2010 10th international conference on intelligent systems design and applications, pp 1253–1258
19.
Zurück zum Zitat Militzer A, Hager T, Jäger F, Tietjen C, Hornegger J (2010) Automatic detection and segmentation of focal liver lesions in contrast enhanced CT images. In: 2010 20th international conference on, pattern recognition, pp 2524–2527 Militzer A, Hager T, Jäger F, Tietjen C, Hornegger J (2010) Automatic detection and segmentation of focal liver lesions in contrast enhanced CT images. In: 2010 20th international conference on, pattern recognition, pp 2524–2527
20.
Zurück zum Zitat Masuda Y, Foruzan AH, Tateyama T, Chen YW (2010) Automatic liver tumor detection using EM/MPM algorithm and shape information. Softw Eng Data Mining, pp 692–695 Masuda Y, Foruzan AH, Tateyama T, Chen YW (2010) Automatic liver tumor detection using EM/MPM algorithm and shape information. Softw Eng Data Mining, pp 692–695
21.
Zurück zum Zitat Casciaro S, Franchini R, Massoptier L, Casciaro E, Conversano F, Malvasi A, Lay-Ekuakille A (2012) Fully automatic segmentations of liver and hepatic tumors from 3-d computed tomography abdominal images: comparative evaluation of two automatic methods. IEEE Sens J 12(3):464–473CrossRef Casciaro S, Franchini R, Massoptier L, Casciaro E, Conversano F, Malvasi A, Lay-Ekuakille A (2012) Fully automatic segmentations of liver and hepatic tumors from 3-d computed tomography abdominal images: comparative evaluation of two automatic methods. IEEE Sens J 12(3):464–473CrossRef
22.
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(10):1965–1976PubMedCentralPubMedCrossRef 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(10):1965–1976PubMedCentralPubMedCrossRef
23.
Zurück zum Zitat Wu D, Liu D, Suehling M, Tietjen C, Soza G, Zhou KS (2012) Automatic detection of liver lesion from 3d computed tomography images. In: IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops, pp 31–37 Wu D, Liu D, Suehling M, Tietjen C, Soza G, Zhou KS (2012) Automatic detection of liver lesion from 3d computed tomography images. In: IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops, pp 31–37
24.
Zurück zum Zitat Chi Y, Zhou J, Venkatesh SK, Huang S, Tian Q, Hennedige T, Liu L (2013) Computer-aided focal liver lesion detection. Int J Comput Assist Radiol Surg 8(4):511–525 Chi Y, Zhou J, Venkatesh SK, Huang S, Tian Q, Hennedige T, Liu L (2013) Computer-aided focal liver lesion detection. Int J Comput Assist Radiol Surg 8(4):511–525
25.
Zurück zum Zitat Schwier M, Moltz JH, Peitgen HO (2011) Object-based analysis of CT images for automatic detection and segmentation of hypodense liver lesions. Int J Comput Assist Radiol.Surg 6(6):737–747PubMedCrossRef Schwier M, Moltz JH, Peitgen HO (2011) Object-based analysis of CT images for automatic detection and segmentation of hypodense liver lesions. Int J Comput Assist Radiol.Surg 6(6):737–747PubMedCrossRef
26.
Zurück zum Zitat Folio LR, Choi MM, Solomon JM, Schaub NP (2013) Automated registration, segmentation, and measurement of metastatic melanoma tumors in serial CT scans. Acad Radiol 20(5):604–613PubMedCrossRef Folio LR, Choi MM, Solomon JM, Schaub NP (2013) Automated registration, segmentation, and measurement of metastatic melanoma tumors in serial CT scans. Acad Radiol 20(5):604–613PubMedCrossRef
28.
Zurück zum Zitat Sethian JA (1999) Level set methods and fast marching methods. Cambridge University Press, Cambridge Sethian JA (1999) Level set methods and fast marching methods. Cambridge University Press, Cambridge
30.
Zurück zum Zitat Ruskó L, Bekes G (2010) Liver segmentation for contrast-enhanced MR images using partitioned probabilistic model. Int J Comput Assist Radiol Surg 6(1):13–20PubMedCrossRef Ruskó L, Bekes G (2010) Liver segmentation for contrast-enhanced MR images using partitioned probabilistic model. Int J Comput Assist Radiol Surg 6(1):13–20PubMedCrossRef
31.
Zurück zum Zitat Metz CE (2006) Receiver operating characteristic analysis: a tool for the quantitative evaluation of observer performance and imaging systems. J Am Coll Radiol 3(6):413–422PubMedCrossRef Metz CE (2006) Receiver operating characteristic analysis: a tool for the quantitative evaluation of observer performance and imaging systems. J Am Coll Radiol 3(6):413–422PubMedCrossRef
Metadaten
Titel
Automated liver lesion detection in CT images based on multi-level geometric features
verfasst von
László Ruskó
Ádám Perényi
Publikationsdatum
01.07.2014
Verlag
Springer Berlin Heidelberg
Erschienen in
International Journal of Computer Assisted Radiology and Surgery / Ausgabe 4/2014
Print ISSN: 1861-6410
Elektronische ISSN: 1861-6429
DOI
https://doi.org/10.1007/s11548-013-0949-9

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