Virtual Monoenergetic Images of Dual-Energy CT-Impact on Repeatability, Reproducibility, and Classification in Radiomics

被引:27
作者
Euler, Andre [1 ]
Laqua, Fabian Christopher [1 ]
Cester, Davide [1 ]
Lohaus, Niklas [1 ]
Sartoretti, Thomas [1 ]
dos Santos, Daniel Pinto [2 ]
Alkadhi, Hatem [1 ]
Baessler, Bettina [1 ]
机构
[1] Univ Zurich, Univ Hosp Zurich, Inst Diagnost & Intervent Radiol, Raemistr 100, CH-8091 Zurich, Switzerland
[2] Univ Cologne, Univ Hosp Cologne, Med Fac, Inst Diagnost & Intervent Radiol, Kerpener Str 62, D-50937 Cologne, Germany
关键词
radiomics; spectral CT; dual-energy CT; oncology; machine learning; computed tomography; reproducibility; test-retest; virtual monoenergetic reconstructions; TEXTURE ANALYSIS; FEATURES; RECURRENCE;
D O I
10.3390/cancers13184710
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary Virtual monoenergetic images from dual-energy CT are incrementally used in routine clinical practice. Thus, radiomic analysis will be more often performed on these images in the future. This study characterized the test-retest repeatability and reproducibility of radiomic features from virtual monoenergetic images and their impact on machine-learning-based lesion classification. The results of this study provide a basis to improve radiomic analyses and identify the role of feature stability in classification tasks when using virtual monoenergetic imaging with different scan or reconstruction parameters in multicenter clinical studies. The purpose of this study was to (i) evaluate the test-retest repeatability and reproducibility of radiomic features in virtual monoenergetic images (VMI) from dual-energy CT (DECT) depending on VMI energy (40, 50, 75, 120, 190 keV), radiation dose (5 and 15 mGy), and DECT approach (dual-source and split-filter DECT) in a phantom (ex vivo), and (ii) to assess the impact of VMI energy and feature repeatability on machine-learning-based classification in vivo in 72 patients with 72 hypodense liver lesions. Feature repeatability and reproducibility were determined by concordance-correlation-coefficient (CCC) and dynamic range (DR) >= 0.9. Test-retest repeatability was high within the same VMI energies and scan conditions (percentage of repeatable features ranging from 74% for SFDE mode at 40 keV and 15 mGy to 86% for DSDE at 190 keV and 15 mGy), while reproducibility varied substantially across different VMI energies and DECTs (percentage of reproducible features ranging from 32.8% for SFDE at 5 mGy comparing 40 with 190 keV to 99.2% for DSDE at 15 mGy comparing 40 with 50 keV). No major differences were observed between the two radiation doses (<10%) in all pair-wise comparisons. In vivo, machine learning classification using penalized regression and random forests resulted in the best discrimination of hemangiomas and metastases at low-energy VMI (40 keV), and for cysts at high-energy VMI (120 keV). Feature selection based on feature repeatability did not improve classification performance. Our results demonstrate the high repeatability of radiomics features when keeping scan and reconstruction conditions constant. Reproducibility diminished when using different VMI energies or DECT approaches. The choice of optimal VMI energy improved lesion classification in vivo and should hence be adapted to the specific task.
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页数:15
相关论文
共 42 条
[1]   User's guide to correlation coefficients [J].
Akoglu, Haldun .
TURKISH JOURNAL OF EMERGENCY MEDICINE, 2018, 18 (03) :91-93
[2]   Spectral multi-energy CT texture analysis with machine learning for tissue classification: an investigation using classification of benign parotid tumours as a testing paradigm [J].
Al Ajmi, Eiman ;
Forghani, Behzad ;
Reinhold, Caroline ;
Bayat, Maryam ;
Forghani, Reza .
EUROPEAN RADIOLOGY, 2018, 28 (06) :2604-2611
[3]   Pathologic stratification of operable lung adenocarcinoma using radiomics features extracted from dual energy ct images [J].
Bae, Jung Min ;
Jeong, Ji Yun ;
Lee, Ho Yun ;
Sohn, Insuk ;
Kim, Hye Seung ;
Son, Ji Ye ;
Kwon, O. Jung ;
Choi, Joon Young ;
Lee, Kyung Soo ;
Shim, Young Mog .
ONCOTARGET, 2017, 8 (01) :523-535
[4]   Robustness and Reproducibility of Radiomics in Magnetic Resonance Imaging A Phantom Study [J].
Baessler, Bettina ;
Weiss, Kilian ;
dos Santos, Daniel Pinto .
INVESTIGATIVE RADIOLOGY, 2019, 54 (04) :221-228
[5]   Test-Retest Reproducibility Analysis of Lung CT Image Features [J].
Balagurunathan, Yoganand ;
Kumar, Virendra ;
Gu, Yuhua ;
Kim, Jongphil ;
Wang, Hua ;
Liu, Ying ;
Goldgof, Dmitry B. ;
Hall, Lawrence O. ;
Korn, Rene ;
Zhao, Binsheng ;
Schwartz, Lawrence H. ;
Basu, Satrajit ;
Eschrich, Steven ;
Gatenby, Robert A. ;
Gillies, Robert J. .
JOURNAL OF DIGITAL IMAGING, 2014, 27 (06) :805-823
[6]   Virtual monoenergetic imaging in rapid kVp-switching dual-energy CT (DECT) of the abdomen: impact on CT texture analysis [J].
Baliyan, Vinit ;
Kordbacheh, Hamed ;
Parameswaran, Bimal ;
Ganeshan, Balaji ;
Sahani, Dushyant ;
Kambadakone, Avinash .
ABDOMINAL RADIOLOGY, 2018, 43 (10) :2693-2701
[7]   Radiomics of CT Features May Be Nonreproducible and Redundant: Influence of CT Acquisition Parameters [J].
Berenguer, Roberto ;
del Rosario Pastor-Juan, Maria ;
Canales-Vazquez, Jesus ;
Castro-Garcia, Miguel ;
Villas, Maria Victoria ;
Mansilla Legorburo, Francisco ;
Sabater, Sebastia .
RADIOLOGY, 2018, 288 (02) :407-415
[8]   Prediction of Pancreatic Neuroendocrine Tumor Grade Based on CT Features and Texture Analysis [J].
Canellas, Rodrigo ;
Burk, Kristine S. ;
Parakh, Anushri ;
Sahani, Dushyant V. .
AMERICAN JOURNAL OF ROENTGENOLOGY, 2018, 210 (02) :341-346
[9]  
Comtois Dominic, 2022, CRAN
[10]   White Paper of the Society of Computed Body Tomography and Magnetic Resonance on Dual-Energy CT, Part 4: Abdominal and Pelvic Applications [J].
De Cecco, Carlo N. ;
Boll, Daniel T. ;
Bolus, David N. ;
Foley, W. Dennis ;
Kaza, Ravi K. ;
Morgan, Desiree E. ;
Rofsky, Neil M. ;
Sahani, Dushyant V. ;
Schoepf, U. Joseph ;
Shuman, William P. ;
Siegel, Marilyn J. ;
Vrtiska, Terri J. ;
Yeh, Benjamin M. ;
Berland, Lincoln L. .
JOURNAL OF COMPUTER ASSISTED TOMOGRAPHY, 2017, 41 (01) :8-14