Quantification of Heterogeneity as a Biomarker in Tumor Imaging: A Systematic Review

被引:133
作者
Alic, Lejla [1 ,2 ]
Niessen, Wiro J. [1 ,3 ]
Veenland, Jifke F. [1 ]
机构
[1] Erasmus MC, Dept Radiol & Med Informat, Biomed Imaging Grp Rotterdam, Rotterdam, Netherlands
[2] Netherlands Org Appl Sci Res TNO, Dept Intelligent Imaging, The Hague, Netherlands
[3] Delft Univ Technol, Fac Sci Appl, Delft, Netherlands
关键词
COMPUTER-AIDED-DIAGNOSIS; SUPPORT VECTOR MACHINE; FOCAL LIVER-LESIONS; SOLITARY PULMONARY NODULES; BREAST-CANCER DIAGNOSIS; CONTRAST-ENHANCED MRI; CT TEXTURE ANALYSIS; CELL LUNG-CANCER; CEREBRAL BLOOD-VOLUME; PAROTID-GLAND LESIONS;
D O I
10.1371/journal.pone.0110300
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Background: Many techniques are proposed for the quantification of tumor heterogeneity as an imaging biomarker for differentiation between tumor types, tumor grading, response monitoring and outcome prediction. However, in clinical practice these methods are barely used. This study evaluates the reported performance of the described methods and identifies barriers to their implementation in clinical practice. Methodology: The Ovid, Embase, and Cochrane Central databases were searched up to 20 September 2013. Heterogeneity analysis methods were classified into four categories, i.e., non-spatial methods (NSM), spatial grey level methods (SGLM), fractal analysis (FA) methods, and filters and transforms (F&T). The performance of the different methods was compared. Principal Findings: Of the 7351 potentially relevant publications, 209 were included. Of these studies, 58% reported the use of NSM, 49% SGLM, 10% FA, and 28% F&T. Differentiation between tumor types, tumor grading and/or outcome prediction was the goal in 87% of the studies. Overall, the reported area under the curve (AUC) ranged from 0.5 to 1 (median 0.87). No relation was found between the performance and the quantification methods used, or between the performance and the imaging modality. A negative correlation was found between the tumor-feature ratio and the AUC, which is presumably caused by overfitting in small datasets. Cross-validation was reported in 63% of the classification studies. Retrospective analyses were conducted in 57% of the studies without a clear description. Conclusions: In a research setting, heterogeneity quantification methods can differentiate between tumor types, grade tumors, and predict outcome and monitor treatment effects. To translate these methods to clinical practice, more prospective studies are required that use external datasets for validation: these datasets should be made available to the community to facilitate the development of new and improved methods.
引用
收藏
页数:15
相关论文
共 227 条
[61]   Tumour heterogeneity in oesophageal cancer assessed by CT texture analysis: Preliminary evidence of an association with tumour metabolism, stage, and survival [J].
Ganeshan, B. ;
Skogen, K. ;
Pressney, I. ;
Coutroubis, D. ;
Miles, K. .
CLINICAL RADIOLOGY, 2012, 67 (02) :157-164
[62]   Tumour heterogeneity in non-small cell lung carcinoma assessed by CT texture analysis: a potential marker of survival [J].
Ganeshan, Balaji ;
Panayiotou, Elleny ;
Burnand, Kate ;
Dizdarevic, Sabina ;
Miles, Ken .
EUROPEAN RADIOLOGY, 2012, 22 (04) :796-802
[63]   Texture analysis of non-small cell lung cancer on unenhanced computed tomography: initial evidence for a relationship with tumour glucose metabolism and stage [J].
Ganeshan, Balaji ;
Abaleke, Sandra ;
Young, Rupert C. D. ;
Chatwin, Christopher R. ;
Miles, Kenneth A. .
CANCER IMAGING, 2010, 10 (01) :137-143
[64]   IMPROVING THE DISTINCTION BETWEEN BENIGN AND MALIGNANT BREAST-LESIONS - THE VALUE OF SONOGRAPHIC TEXTURE ANALYSIS [J].
GARRA, BS ;
KRASNER, BH ;
HORII, SC ;
ASCHER, S ;
MUN, SK ;
ZEMAN, RK .
ULTRASONIC IMAGING, 1993, 15 (04) :267-285
[65]   Evaluation of Hepatic Tumor Response to Yttrium-90 Radioembolization Therapy Using Texture Signatures Generated from Contrast-enhanced CT Images [J].
Gensure, Rebekah H. ;
Foran, David J. ;
Lee, Vincent M. ;
Gendel, Vyacheslav M. ;
Jabbour, Salma K. ;
Carpizo, Darren R. ;
Nosher, John L. ;
Yang, Lin .
ACADEMIC RADIOLOGY, 2012, 19 (10) :1201-1207
[66]   Improving brain tumor characterization on MRI by probabilistic neural networks and non-linear transformation of textural features [J].
Georgiadis, Pantelis ;
Cavouras, Dionisis ;
Kalatzis, Ioannis ;
Daskalakis, Antonis ;
Kagadis, George C. ;
Sifaki, Koralia ;
Malamas, Menelaos ;
Nikiforidis, George ;
Solomou, Ekaterini .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2008, 89 (01) :24-32
[67]   Quantitative combination of volumetric MR imaging and MR spectroscopy data for the discrimination of meningiomas from metastatic brain tumors by means of pattern recognition [J].
Georgiadis, Pantelis ;
Kostopoulos, Spiros ;
Cavouras, Dionisis ;
Glotsos, Dimitris ;
Kalatzis, Ioannis ;
Sifaki, Koralia ;
Malamas, Menelaos ;
Solomou, Ekaterini ;
Nikiforidis, George .
MAGNETIC RESONANCE IMAGING, 2011, 29 (04) :525-535
[68]   Enhancing the discrimination accuracy between metastases, gliomas and meningiomas on brain MRI by volumetric textural features and ensemble pattern recognition methods [J].
Georgiadis, Pantelis ;
Cavouras, Dionisis ;
Kalatzis, Ioannis ;
Glotsos, Dimitris ;
Athanasiadis, Emmanouil ;
Kostopoulos, Spiros ;
Sifaki, Koralia ;
Malamas, Menelaos ;
Nikiforidis, George ;
Solomou, Ekaterini .
MAGNETIC RESONANCE IMAGING, 2009, 27 (01) :120-130
[69]   Textural analysis of contrast-enhanced MR images of the breast [J].
Gibbs, P ;
Turnbull, LW .
MAGNETIC RESONANCE IN MEDICINE, 2003, 50 (01) :92-98
[70]   Computerized analysis of lesions in US images of the breast [J].
Giger, ML ;
Al-Hallaq, H ;
Huo, ZM ;
Moran, C ;
Wolverton, DE ;
Chan, CW ;
Zhong, WM .
ACADEMIC RADIOLOGY, 1999, 6 (11) :665-674