Skip to main content
Top
Published in: International Journal of Computer Assisted Radiology and Surgery 1/2018

01-01-2018 | Original Article

A fully automatic end-to-end method for content-based image retrieval of CT scans with similar liver lesion annotations

Authors: A. B. Spanier, N. Caplan, J. Sosna, B. Acar, L. Joskowicz

Published in: International Journal of Computer Assisted Radiology and Surgery | Issue 1/2018

Login to get access

Abstract

Purpose

The goal of medical content-based image retrieval (M-CBIR) is to assist radiologists in the decision-making process by retrieving medical cases similar to a given image. One of the key interests of radiologists is lesions and their annotations, since the patient treatment depends on the lesion diagnosis. Therefore, a key feature of M-CBIR systems is the retrieval of scans with the most similar lesion annotations. To be of value, M-CBIR systems should be fully automatic to handle large case databases.

Methods

We present a fully automatic end-to-end method for the retrieval of CT scans with similar liver lesion annotations. The input is a database of abdominal CT scans labeled with liver lesions, a query CT scan, and optionally one radiologist-specified lesion annotation of interest. The output is an ordered list of the database CT scans with the most similar liver lesion annotations. The method starts by automatically segmenting the liver in the scan. It then extracts a histogram-based features vector from the segmented region, learns the features’ relative importance, and ranks the database scans according to the relative importance measure. The main advantages of our method are that it fully automates the end-to-end querying process, that it uses simple and efficient techniques that are scalable to large datasets, and that it produces quality retrieval results using an unannotated CT scan.

Results

Our experimental results on 9 CT queries on a dataset of 41 volumetric CT scans from the 2014 Image CLEF Liver Annotation Task yield an average retrieval accuracy (Normalized Discounted Cumulative Gain index) of 0.77 and 0.84 without/with annotation, respectively.

Conclusions

Fully automatic end-to-end retrieval of similar cases based on image information alone, rather that on disease diagnosis, may help radiologists to better diagnose liver lesions.
Literature
1.
go back to reference Horton KM, Bluemke DA, Hruban RH, Soyer P, Fishman EK (1999) CT and MR imaging of benign hepatic and biliary tumors. Radio Gr 19:431–451 Horton KM, Bluemke DA, Hruban RH, Soyer P, Fishman EK (1999) CT and MR imaging of benign hepatic and biliary tumors. Radio Gr 19:431–451
2.
go back to reference Pandey P, Lewis H, Pandey A, Schmidt C, Dillhoff M, Kamel IR, Pawlik TM (2017) Updates in hepatic oncology imaging. Surg Oncol 26:195–206CrossRefPubMed Pandey P, Lewis H, Pandey A, Schmidt C, Dillhoff M, Kamel IR, Pawlik TM (2017) Updates in hepatic oncology imaging. Surg Oncol 26:195–206CrossRefPubMed
3.
go back to reference DeVita VT, Lawrence TSRS (2011) DeVita, Hellman, and Rosenberg’s cancer: principles and practice of oncology. Lippincott Williams & Wilkins, Philadelphia DeVita VT, Lawrence TSRS (2011) DeVita, Hellman, and Rosenberg’s cancer: principles and practice of oncology. Lippincott Williams & Wilkins, Philadelphia
4.
go back to reference Assy N, Nasser G, Djibre A, Beniashvili Z, Elias S, Zidan J (2009) Characteristics of common solid liver lesions and recommendations for diagnostic workup. World J Gastroenterol 15:3217–27CrossRefPubMedPubMedCentral Assy N, Nasser G, Djibre A, Beniashvili Z, Elias S, Zidan J (2009) Characteristics of common solid liver lesions and recommendations for diagnostic workup. World J Gastroenterol 15:3217–27CrossRefPubMedPubMedCentral
5.
go back to reference Oliver JH, Baron RL (1996) Helical biphasic contrast-enhanced CT of the liver: technique, indications, interpretation, and pitfalls. Radiology 201:1–14CrossRefPubMed Oliver JH, Baron RL (1996) Helical biphasic contrast-enhanced CT of the liver: technique, indications, interpretation, and pitfalls. Radiology 201:1–14CrossRefPubMed
6.
go back to reference MacDonald SL, Cowan IA, Floyd R, Mackintosh S, Graham R, Jenkins E, Hamilton R (2013) Measuring and managing radiologist workload: application of lean and constraint theories and production planning principles to planning radiology services in a major tertiary hospital. J Med Imaging Radiat Oncol 57:544–550CrossRefPubMed MacDonald SL, Cowan IA, Floyd R, Mackintosh S, Graham R, Jenkins E, Hamilton R (2013) Measuring and managing radiologist workload: application of lean and constraint theories and production planning principles to planning radiology services in a major tertiary hospital. J Med Imaging Radiat Oncol 57:544–550CrossRefPubMed
7.
go back to reference Zhao B, Tan Y, Bell DJ, Marley SE, Guo P, Mann H, Scott MLJ, Schwartz LH, Ghiorghiu DC (2013) Exploring intra- and inter-reader variability in uni-dimensional, bi-dimensional, and volumetric measurements of solid tumors on CT scans reconstructed at different slice intervals. Eur J Radiol 82:959–968CrossRefPubMed Zhao B, Tan Y, Bell DJ, Marley SE, Guo P, Mann H, Scott MLJ, Schwartz LH, Ghiorghiu DC (2013) Exploring intra- and inter-reader variability in uni-dimensional, bi-dimensional, and volumetric measurements of solid tumors on CT scans reconstructed at different slice intervals. Eur J Radiol 82:959–968CrossRefPubMed
8.
go back to reference Suzuki C, Torkzad MR, Jacobsson H, Åström G, Sundin A, Hatschek T, Fujii H, Blomqvist L (2010) Interobserver and intraobserver variability in the response evaluation of cancer therapy according to RECIST and WHO-criteria. Acta Oncol (Madr) 49:509–514CrossRef Suzuki C, Torkzad MR, Jacobsson H, Åström G, Sundin A, Hatschek T, Fujii H, Blomqvist L (2010) Interobserver and intraobserver variability in the response evaluation of cancer therapy according to RECIST and WHO-criteria. Acta Oncol (Madr) 49:509–514CrossRef
9.
go back to reference Dankerl P, Cavallaro A, Tsymbal A, Costa MJ, Suehling M, Janka R, Uder M, Hammon M (2013) A retrieval-based computer-aided diagnosis system for the characterization of liver lesions in CT scans. Acad Radiol 20:1526–34CrossRefPubMed Dankerl P, Cavallaro A, Tsymbal A, Costa MJ, Suehling M, Janka R, Uder M, Hammon M (2013) A retrieval-based computer-aided diagnosis system for the characterization of liver lesions in CT scans. Acad Radiol 20:1526–34CrossRefPubMed
10.
go back to reference Müller H, Michoux N, Bandon D, Geissbuhler A (2004) A review of content-based image retrieval systems in medical applications-clinical benefits and future directions. Int J Med Inform 73:1–23CrossRefPubMed Müller H, Michoux N, Bandon D, Geissbuhler A (2004) A review of content-based image retrieval systems in medical applications-clinical benefits and future directions. Int J Med Inform 73:1–23CrossRefPubMed
11.
go back to reference Akgül CB, Rubin DL, Napel S, Beaulieu CF, Greenspan H, Acar B (2011) Content-based image retrieval in radiology: current status and future directions. J Digit Imaging 24:208–22CrossRefPubMed Akgül CB, Rubin DL, Napel S, Beaulieu CF, Greenspan H, Acar B (2011) Content-based image retrieval in radiology: current status and future directions. J Digit Imaging 24:208–22CrossRefPubMed
12.
go back to reference Liu Y, Zhang D, Lu G, Ma WY (2007) A survey of content-based image retrieval with high-level semantics. Pattern Recognit Lett 40:262–282CrossRef Liu Y, Zhang D, Lu G, Ma WY (2007) A survey of content-based image retrieval with high-level semantics. Pattern Recognit Lett 40:262–282CrossRef
13.
go back to reference Grosky WI (2002) Narrowing the semantic gap—improved text-based web document retrieval using visual features. IEEE Trans Multimed 4:189–200CrossRef Grosky WI (2002) Narrowing the semantic gap—improved text-based web document retrieval using visual features. IEEE Trans Multimed 4:189–200CrossRef
14.
go back to reference Deselaers T, Deserno TM, Müller H (2008) Automatic medical image annotation in ImageCLEF 2007: overview, results, and discussion. Pattern Recognit Lett 29:1988–1995CrossRef Deselaers T, Deserno TM, Müller H (2008) Automatic medical image annotation in ImageCLEF 2007: overview, results, and discussion. Pattern Recognit Lett 29:1988–1995CrossRef
15.
go back to reference van Ginneken B, Schaefer-Prokop CM, Prokop M (2011) Computer-aided diagnosis: how to move from the laboratory to the clinic. Radiology 261:719–32CrossRefPubMed van Ginneken B, Schaefer-Prokop CM, Prokop M (2011) Computer-aided diagnosis: how to move from the laboratory to the clinic. Radiology 261:719–32CrossRefPubMed
16.
go back to reference Ponciano-Silva M, Souza JP, Bugatti PH, Bedo MVN, Kaster DS, Braga RT V, Bellucci \({\hat{A}}\)D, Azevedo-Marques PM, Traina C, Traina AJM (2013) Does a CBIR system really impact decisions of physicians in a clinical environment? In: Proceedings of the 26th IEEE international symposium on computer based medical system CBMS 2013, pp 41–46 Ponciano-Silva M, Souza JP, Bugatti PH, Bedo MVN, Kaster DS, Braga RT V, Bellucci \({\hat{A}}\)D, Azevedo-Marques PM, Traina C, Traina AJM (2013) Does a CBIR system really impact decisions of physicians in a clinical environment? In: Proceedings of the 26th IEEE international symposium on computer based medical system CBMS 2013, pp 41–46
17.
go back to reference An C, Rakhmonova G, Choi JY, Kim MJ (2016) Liver imaging reporting and data system (LI-RADS) version 2014: understanding and application of the diagnostic algorithm. Clin Mol Hepatol 22:296–307CrossRefPubMedPubMedCentral An C, Rakhmonova G, Choi JY, Kim MJ (2016) Liver imaging reporting and data system (LI-RADS) version 2014: understanding and application of the diagnostic algorithm. Clin Mol Hepatol 22:296–307CrossRefPubMedPubMedCentral
18.
go back to reference Mitchell DG, Bruix J, Sherman M, Sirlin CB (2015) LI-RADS (Liver Imaging Reporting and Data System): Summary, discussion, and consensus of the LI-RADS Management Working Group and future directions. Hepatology 61:1056–1065CrossRefPubMed Mitchell DG, Bruix J, Sherman M, Sirlin CB (2015) LI-RADS (Liver Imaging Reporting and Data System): Summary, discussion, and consensus of the LI-RADS Management Working Group and future directions. Hepatology 61:1056–1065CrossRefPubMed
19.
go back to reference Napel SA, Beaulieu CF, Rodriguez C, Cui J, Xu J, Gupta A, Korenblum D, Greenspan H, Ma Y, Rubin DL (2010) Automated retrieval of CT images of liver lesions on the basis of image similarity: method and preliminary results. Radiology 256:243–252CrossRefPubMedPubMedCentral Napel SA, Beaulieu CF, Rodriguez C, Cui J, Xu J, Gupta A, Korenblum D, Greenspan H, Ma Y, Rubin DL (2010) Automated retrieval of CT images of liver lesions on the basis of image similarity: method and preliminary results. Radiology 256:243–252CrossRefPubMedPubMedCentral
20.
go back to reference Depeursinge A, Kurtz C, Beaulieu C, Napel S, Rubin D (2014) Predicting visual semantic descriptive terms from radiological image data: preliminary results with liver lesions in CT. IEEE Trans Med Imaging 33:1669–1676CrossRefPubMedPubMedCentral Depeursinge A, Kurtz C, Beaulieu C, Napel S, Rubin D (2014) Predicting visual semantic descriptive terms from radiological image data: preliminary results with liver lesions in CT. IEEE Trans Med Imaging 33:1669–1676CrossRefPubMedPubMedCentral
21.
go back to reference Kumar A, Dyer S, Kim J, Li C, Leong PHW, Fulham M, Feng D (2016) Adapting content-based image retrieval techniques for the semantic annotation of medical images. Comput Med Imag Gr 49:37–45CrossRef Kumar A, Dyer S, Kim J, Li C, Leong PHW, Fulham M, Feng D (2016) Adapting content-based image retrieval techniques for the semantic annotation of medical images. Comput Med Imag Gr 49:37–45CrossRef
22.
go back to reference Xu J, Napel S, Greenspan H, Beaulieu CF, Agrawal N, Rubin DL (2012) Quantifying the margin sharpness of lesions on radiological images for content-based image retrieval. Med Phys 39:5405CrossRefPubMedPubMedCentral Xu J, Napel S, Greenspan H, Beaulieu CF, Agrawal N, Rubin DL (2012) Quantifying the margin sharpness of lesions on radiological images for content-based image retrieval. Med Phys 39:5405CrossRefPubMedPubMedCentral
23.
go back to reference Spanier AB, Joskowicz L (2014) Towards content-based image retrieval?: From computer generated features to semantic descriptions of liver CT scans. In: CLEF online work, notes. pp 438–447 Spanier AB, Joskowicz L (2014) Towards content-based image retrieval?: From computer generated features to semantic descriptions of liver CT scans. In: CLEF online work, notes. pp 438–447
24.
go back to reference Spanier AB, Joskowicz L (2017) Automatic Atlas-free multi-organ segmentation of contrast-enhanced CT scans. In: Hanbury A, Müller H, Langs G (eds) Cloud-Based Benchmarking Med Image Anal. Springer, Berlin, pp 145–164CrossRef Spanier AB, Joskowicz L (2017) Automatic Atlas-free multi-organ segmentation of contrast-enhanced CT scans. In: Hanbury A, Müller H, Langs G (eds) Cloud-Based Benchmarking Med Image Anal. Springer, Berlin, pp 145–164CrossRef
25.
go back to reference Achanta R, Shaji A, Smith K, Lucchi A, Fua P, Süsstrunk S (2011) SLIC superpixels compared to state-of-the-art superpixel methods. Pattern Anal Mach Intell IEEE Trans 34:2274–2282CrossRef Achanta R, Shaji A, Smith K, Lucchi A, Fua P, Süsstrunk S (2011) SLIC superpixels compared to state-of-the-art superpixel methods. Pattern Anal Mach Intell IEEE Trans 34:2274–2282CrossRef
26.
go back to reference Cha SH, Srihari SN (2002) On measuring the distance between histograms. Pattern Recognit 35:1355–1370CrossRef Cha SH, Srihari SN (2002) On measuring the distance between histograms. Pattern Recognit 35:1355–1370CrossRef
27.
go back to reference Marvasti NB, Kökciyan N, Türkay R, Yazici A, Yolum P, Üsküdarl S, Acar B (2014) ImageCLEF liver CT image annotation task 2014. In: CLEF (working notes), pp 329–340 Marvasti NB, Kökciyan N, Türkay R, Yazici A, Yolum P, Üsküdarl S, Acar B (2014) ImageCLEF liver CT image annotation task 2014. In: CLEF (working notes), pp 329–340
28.
go back to reference Yolum P, Üsküdarl S, Acar B (2014) ImageCLEF liver CT image annotation task 2014. In: CLEF online work, notes, pp 329–340 Yolum P, Üsküdarl S, Acar B (2014) ImageCLEF liver CT image annotation task 2014. In: CLEF online work, notes, pp 329–340
29.
go back to reference Pedregosa F, Grisel O, Weiss R, Passos A, Brucher M (2011) Scikit-learn?: Machine Learning in Python. J Mach Res 12:2825–2830 Pedregosa F, Grisel O, Weiss R, Passos A, Brucher M (2011) Scikit-learn?: Machine Learning in Python. J Mach Res 12:2825–2830
30.
go back to reference Kalervo J, Kekäläinen J (2002) Cumulated gain-based evaluation of IR techniques. ACM Trans Inf Syst 20(4):422–446 Kalervo J, Kekäläinen J (2002) Cumulated gain-based evaluation of IR techniques. ACM Trans Inf Syst 20(4):422–446
31.
go back to reference Spanier AB, Cohen D, Joskowicz L (2017) A new method for the automatic retrieval of medical cases based on the RadLex ontology. Int J Comput Assist Radiol Surg 12:471–484CrossRefPubMed Spanier AB, Cohen D, Joskowicz L (2017) A new method for the automatic retrieval of medical cases based on the RadLex ontology. Int J Comput Assist Radiol Surg 12:471–484CrossRefPubMed
32.
go back to reference Chapelle O, Haffner P, Vapnik VN (1999) Support vector machines for histogram-based image classification. IEEE Trans Neural Netw 10:1055–1064CrossRefPubMed Chapelle O, Haffner P, Vapnik VN (1999) Support vector machines for histogram-based image classification. IEEE Trans Neural Netw 10:1055–1064CrossRefPubMed
33.
go back to reference Echegaray S, Gevaert O, Shah R, Kamaya A, Louie J, Kothary N, Napel S (2015) Core samples for radiomics features that are insensitive to tumor segmentation: method and pilot study using CT images of hepatocellular carcinoma. J Med Imaging 2:41011CrossRef Echegaray S, Gevaert O, Shah R, Kamaya A, Louie J, Kothary N, Napel S (2015) Core samples for radiomics features that are insensitive to tumor segmentation: method and pilot study using CT images of hepatocellular carcinoma. J Med Imaging 2:41011CrossRef
34.
go back to reference Järvelin K, Kekäläinen J (2002) Cumulated gain-based evaluation of IR techniques. ACM Trans Inf Syst 20:422–446CrossRef Järvelin K, Kekäläinen J (2002) Cumulated gain-based evaluation of IR techniques. ACM Trans Inf Syst 20:422–446CrossRef
Metadata
Title
A fully automatic end-to-end method for content-based image retrieval of CT scans with similar liver lesion annotations
Authors
A. B. Spanier
N. Caplan
J. Sosna
B. Acar
L. Joskowicz
Publication date
01-01-2018
Publisher
Springer International Publishing
Published in
International Journal of Computer Assisted Radiology and Surgery / Issue 1/2018
Print ISSN: 1861-6410
Electronic ISSN: 1861-6429
DOI
https://doi.org/10.1007/s11548-017-1687-1

Other articles of this Issue 1/2018

International Journal of Computer Assisted Radiology and Surgery 1/2018 Go to the issue