An initial experience of machine learning based on multi-sequence texture parameters in magnetic resonance imaging to differentiate glioblastoma from brain metastases

被引:25
作者
Tateishi, Machiko [1 ]
Nakaura, Takeshi [1 ]
Kitajima, Mika [1 ]
Uetani, Hiroyuki [1 ]
Nakagawa, Masataka [1 ]
Inoue, Taihei [1 ]
Kuroda, Jun-ichiro [2 ]
Mukasa, Akitake [2 ]
Yamashita, Yasuyuki [1 ]
机构
[1] Kumamoto Univ, Grad Sch Med Sci, Dept Diagnost Radiol, Kumamoto, Japan
[2] Kumamoto Univ, Grad Sch Med Sci, Dept Neurosurg, Kumamoto, Japan
关键词
Machine learning; Texture analysis; Glioblastoma; Brain metastasis; Multi-parametric MRI; DIFFUSION; EPIDEMIOLOGY; PERFUSION;
D O I
10.1016/j.jns.2019.116514
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Purpose: To evaluate the performance of a machine learning method based on texture parameters in conventional magnetic resonance imaging (MRI) in differentiating glioblastoma (GB) from brain metastases (METs). Materials and methods: In this retrospective study conducted between November 2008 and July 2017, we included 73 patients diagnosed with GB (n = 73) and METs (n = 53) who underwent contrast-enhanced 3 T brain MRI. Twelve histogram and texture parameters were assessed on T2-weighted images (T2WIs), apparent diffusion coefficient maps (ADCs), and contrast-enhanced T1-weighted images (CE-T1WIs). A prediction model was developed for a machine learning method, and the area under the receiver operating characteristic curve of this model was calculated through 5-fold cross-validation. Furthermore, machine learning method's performance was compared with three board-certified radiologists' judgments. Results: Univariate logistic regression model showed that the area under the curve (AUC) was highest with the standard value of T2WIs (0.78), followed by the maximum value of T2WIs (0.764), minimum value of T2WIs (0.738), minimum values of CE-T1WIs and contrast of T2WIs (0.733), and mean value of T2WIs (0.724). AUC calculated using the support vector machine was comparable to that calculated by the three radiologists (0.92 vs. 0.72, p <.01; 0.92 vs. 0.73, p <.01; and 0.92 vs. 0.86, p =.096). Conclusion: In differentiating GB from METs on the basis of texture parameters in MRI, the performance of the machine learning method based on convention MRI was superior to that of the univariate method, and comparable to that of the radiologists.
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页数:6
相关论文
共 11 条
[1]   Perfusion and diffusion MR imaging in enhancing malignant cerebral tumors [J].
Calli, Cem ;
Kitis, Omer ;
Yunten, Nigun ;
Yurtseven, Taskin ;
Islekel, Sertac ;
Akalin, Taner .
EUROPEAN JOURNAL OF RADIOLOGY, 2006, 58 (03) :394-403
[2]   Distinction between high-grade gliomas and solitary metastases using peritumoral 3-T magnetic resonance spectroscopy, diffusion, and perfusion imagings [J].
Chiang, IC ;
Kuo, YT ;
Lu, CY ;
Yeung, KW ;
Lin, WC ;
Sheu, FO ;
Liu, GC .
NEURORADIOLOGY, 2004, 46 (08) :619-627
[3]   Epidemiology of Metastatic Brain Tumors [J].
Fox, Benjamin D. ;
Cheung, Vincent J. ;
Patel, Akash J. ;
Suki, Dima ;
Rao, Ganesh .
NEUROSURGERY CLINICS OF NORTH AMERICA, 2011, 22 (01) :1-+
[4]   Brain metastases: epidemiology and pathophysiology [J].
Gavrilovic, IT ;
Posner, JB .
JOURNAL OF NEURO-ONCOLOGY, 2005, 75 (01) :5-14
[5]  
Kono K, 2001, AM J NEURORADIOL, V22, P1081
[6]   Potential role of advanced MRI techniques for the peritumoural region in differentiating glioblastoma multiforme and solitary metastatic lesions [J].
Lee, E. J. ;
Ahn, K. J. ;
Lee, E. K. ;
Lee, Y. S. ;
Kim, D. B. .
CLINICAL RADIOLOGY, 2013, 68 (12) :E689-E697
[7]   DIAGNOSIS-SPECIFIC PROGNOSTIC FACTORS, INDEXES, AND TREATMENT OUTCOMES FOR PATIENTS WITH NEWLY DIAGNOSED BRAIN METASTASES: A MULTI-INSTITUTIONAL ANALYSIS OF 4,259 PATIENTS [J].
Sperduto, Paul W. ;
Chao, Samuel T. ;
Sneed, Penny K. ;
Luo, Xianghua ;
Suh, John ;
Roberge, David ;
Bhatt, Amit ;
Jensen, Ashley W. ;
Brown, Paul D. ;
Shih, Helen ;
Kirkpatrick, John ;
Schwer, Amanda ;
Gaspar, Laurie E. ;
Fiveash, John B. ;
Chiang, Veronica ;
Knisely, Jonathan ;
Sperduto, Christina Maria ;
Mehta, Minesh .
INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2010, 77 (03) :655-661
[8]  
Stadnik TW, 2001, AM J NEURORADIOL, V22, P969
[9]  
Tang YM, 2006, AM J NEURORADIOL, V27, P609
[10]   The incidence and significance of multiple lesions in glioblastoma [J].
Thomas, Reena P. ;
Xu, Linda W. ;
Lober, Robert M. ;
Li, Gordon ;
Nagpal, Seema .
JOURNAL OF NEURO-ONCOLOGY, 2013, 112 (01) :91-97