Quantitative MR Imaging and Spectroscopy Group, Research Center for Molecular and Cellular Imaging, Tehran University of Medical Sciences, Iran.
Department of Medical Physics and Biomedical Engineering, School of Medicine, Tehran University of Medical Sciences, Iran.
J Magn Reson Imaging. 2018 Apr;47(4):1061-1071. doi: 10.1002/jmri.25854. Epub 2017 Sep 13.
The role of quantitative apparent diffusion coefficient (ADC) maps in differentiating adnexal masses is unresolved.
PURPOSE/HYPOTHESIS: To propose an objective diagnostic method devised based on spatial features for predicting benignity/malignancy of adnexal masses in ADC maps.
Prospective.
In all, 70 women with sonographically indeterminate and histopathologically confirmed adnexal masses (38 benign, 3 borderline, and 29 malignant) were considered for this study.
FIELD STRENGTH/SEQUENCE: Conventional and diffusion-weighted magnetic resonance (MR) images (b-values = 50, 400, 1000 s/mm ) were acquired on a 3T scanner.
For each patient, two radiologists in consensus manually delineated lesion borders in whole ADC map volumes, which were consequently analyzed using spatial models (first-order histogram [FOH], gray-level co-occurrence matrix [GLCM], run-length matrix [RLM], and Gabor filters). Two independent radiologists were asked to identify the attributed (benign/malignant) classes of adnexal masses based on morphological features on conventional MRI.
Leave-one-out cross-validated feature selection followed by cross-validated classification were applied to the feature space to choose the spatial models that best discriminate benign from malignant adnexal lesions. Two schemes of feature selection/classification were evaluated: 1) including all benign and malignant masses, and 2) scheme 1 after excluding endometrioma, hemorrhagic cysts, and teratoma (14 benign, 29 malignant masses). The constructed feature subspaces for benign/malignant lesion differentiation were tested for classification of benign/borderline/malignant and also borderline/malignant adnexal lesions.
The selected feature subspace consisting of RLM features differentiated benign from malignant adnexal masses with a classification accuracy of ∼92%. The same model discriminated benign, borderline, and malignant lesions with 87% and borderline from malignant with 100% accuracy. Qualitative assessment of the radiologists based on conventional MRI features reached an accuracy of 80%.
The spatial quantification methodology proposed in this study, which works based on cellular distributions within ADC maps of adnexal masses, may provide a helpful computer-aided strategy for objective characterization of adnexal masses.
1 Technical Efficacy: Stage 2 J. Magn. Reson. Imaging 2018;47:1061-1071.
定量表观扩散系数(ADC)图在区分附件肿块中的作用尚未确定。
目的/假设:提出一种基于空间特征的客观诊断方法,用于预测 ADC 图中附件肿块的良恶性。
前瞻性。
所有经超声检查不确定且经组织病理学证实的附件肿块患者(38 例良性、3 例交界性和 29 例恶性)均被纳入本研究。
磁场强度/序列:在 3T 扫描仪上采集常规和扩散加权磁共振(MR)图像(b 值=50、400、1000 s/mm)。
对于每位患者,两位放射科医生共识性地手动描绘整个 ADC 图容积中的病变边界,随后使用空间模型(一阶直方图[FOH]、灰度共生矩阵[GLCM]、游程长度矩阵[RLM]和 Gabor 滤波器)对其进行分析。两位独立的放射科医生被要求根据常规 MRI 上的形态特征识别附件肿块的归属(良性/恶性)类别。
采用留一法交叉验证特征选择,随后进行交叉验证分类,应用于特征空间,以选择最佳区分良性和恶性附件病变的空间模型。评估了两种特征选择/分类方案:1)包括所有良性和恶性肿块,以及 2)排除子宫内膜异位症、出血性囊肿和畸胎瘤(14 个良性、29 个恶性肿块)后的方案 1。用于良性/恶性病变区分的构建特征子空间用于良性/交界性/恶性和交界性/恶性附件病变的分类测试。
由 RLM 特征组成的选定特征子空间可区分良性和恶性附件肿块,分类准确率约为 92%。同一模型以 87%的准确率区分良性、交界性和恶性病变,以 100%的准确率区分交界性和恶性病变。基于常规 MRI 特征的放射科医生定性评估准确率为 80%。
本研究提出的基于 ADC 图中细胞分布的空间量化方法可为附件肿块的客观特征提供有帮助的计算机辅助策略。
1 技术功效:第 2 阶段 J. 磁共振成像 2018;47:1061-1071。