Becker Anton S, Ghafoor Soleen, Marcon Magda, Perucho Jose A, Wurnig Moritz C, Wagner Matthias W, Khong Pek-Lan, Lee Elaine Yp, Boss Andreas
Department of Diagnostic and Interventional Radiology, University Hospital of Zurich, Zurich, Switzerland.
Department of Diagnostic Radiology, The University of Hong Kong, Hong Kong, PR China.
Acta Radiol Open. 2017 Oct 17;6(10):2058460117729574. doi: 10.1177/2058460117729574. eCollection 2017 Oct.
Texture analysis in oncological magnetic resonance imaging (MRI) may yield surrogate markers for tumor differentiation and staging, both of which are important factors in the treatment planning for cervical cancer.
To identify texture features which may predict tumor differentiation and nodal status in diffusion-weighted imaging (DWI) of cervical carcinoma.
Twenty-three patients were enrolled in this prospective, institutional review board (IRB)-approved study. Pelvic MRI was performed at 3-T including a DWI echo-planar sequence with b-values 40, 300, and 800 s/mm. Apparent diffusion coefficient (ADC) maps were used for region of interest (ROI)-based texture analysis (32 texture features) of tumor, muscle, and fat based on histogram and gray-level matrices (GLM). All features confounded by the ROI size (linear model) were excluded. The remaining features were examined for correlations with histological differentiation (Spearman) and nodal status (Kruskal-Wallis). Hierarchical cluster analysis was used to identify correlations between features. A value < 0.05 was considered statistically significant.
Mean age was 55 years (range = 37-78 years). Biopsy revealed two well-differentiated, eight moderately differentiated, two moderately to poorly differentiated tumors, and five poorly differentiated tumors. Six tumors could not be graded. Lymph nodes were involved in 11 patients. Three GLM features correlated with the differentiation: LRHGE (ϱ = 0.53, = 0.03), ZP (ϱ = -0.49, < 0.05), and SZE (ϱ = -0.51, = 0.04). Two histogram features, skewness (0.65 vs. 1.08, = 0.04) and kurtosis (0.53 vs. 1.67, = 0.02), were higher in patients with positive nodal status. Cluster analysis revealed several co-correlations.
We identified potentially predictive GLM features for histological tumor differentiation and histogram features for nodal cancer stage.
肿瘤磁共振成像(MRI)中的纹理分析可能会产生肿瘤分化和分期的替代标志物,这两者都是宫颈癌治疗计划中的重要因素。
识别在宫颈癌扩散加权成像(DWI)中可能预测肿瘤分化和淋巴结状态的纹理特征。
23例患者纳入了这项经机构审查委员会(IRB)批准的前瞻性研究。在3-T下进行盆腔MRI检查,包括b值为40、300和800 s/mm²的DWI回波平面序列。表观扩散系数(ADC)图用于基于感兴趣区域(ROI)的肿瘤、肌肉和脂肪的纹理分析(32个纹理特征),基于直方图和灰度矩阵(GLM)。排除所有受ROI大小混淆的特征(线性模型)。检查其余特征与组织学分化(Spearman)和淋巴结状态(Kruskal-Wallis)的相关性。采用层次聚类分析来识别特征之间的相关性。P值<0.05被认为具有统计学意义。
平均年龄为55岁(范围=37-78岁)。活检显示2例高分化、8例中分化、2例中低分化肿瘤和5例低分化肿瘤。6例肿瘤无法分级。11例患者有淋巴结受累。三个GLM特征与分化相关:LRHGE(ϱ=0.53,P=0.03)、ZP(ϱ=-0.49,P<0.05)和SZE(ϱ=-0.51,P=0.04)。两个直方图特征,偏度(0.65对1.08,P=0.04)和峰度(0.53对1.67,P=0.02),在淋巴结阳性患者中更高。聚类分析显示了几个共同相关性。
我们识别出了可能预测组织学肿瘤分化的GLM特征和淋巴结癌分期的直方图特征。