机构地区:[1]三峡大学人民医院(宜昌市第一人民医院)放射科,宜昌443000
出 处:《磁共振成像》2023年第12期40-48,共9页Chinese Journal of Magnetic Resonance Imaging
基 金:北京医学奖励基金会睿影基金项目(编号:YXJL-2022-0105-0133)。
摘 要:目的探讨基于动态对比增强MRI(dynamic contrast-enhanced MRI,DCE-MRI)图像的纹理特征术前预测乳腺癌分子分型的价值。材料与方法回顾性分析宜昌市第一人民医院2021年10月至2022年10月75例经术后病理证实的乳腺癌患者的术前MRI图像及临床病理资料。采用χ2检验、方差分析对患者一般资料进行分析。对分子亚型以是与非作为二分类指标在DCE-MRI图像上提取特征参数,通过标准化、最优特征筛选器进行特征参数降维,采用独立样本t检验或Mann-Whitney U检验识别不同组间差异有统计学意义的最优纹理参数,采用ROC曲线下面积(area under the curve,AUC)评价纹理分析的诊断效能。另基于DCE-MRI纹理特征构建逻辑回归分类模型,绘制ROC曲线并评价模型对不同分子亚型的诊断效能。结果Luminal A型11例、Luminal B型36例、人表皮生长因子受体2(human epidermal growth factor receptor 2,HER-2)过表达型14例及三阴性乳腺癌(triple negative breast cancer,TNBC)14例,各亚型乳腺癌患者间年龄、绝经状态、病理学分型、MRI强化情况、淋巴结状态的差异皆无统计学意义(P>0.05)。基于MRI图像特征参数所建立的预测Luminal A型、Luminal B型、HER-2过表达型、TNBC的AUC[95%置信区间(confidence interval,CI)]值分别为0.92(0.77~1.00)、0.83(0.62~1.00)、0.83(0.55~1.00)、0.72(0.43~1.00)。Luminal A型与非Luminal A型组间3个纹理参数差异有统计学意义(P<0.05),三者AUC值分别为0.73、0.70和0.75,以纹理特征三维灰度共生矩阵-聚类阴影(3D grey level co-occurrence matrix cluster shadow,3D_glcm_CS)>0.439时诊断Luminal A型效能最高。Luminal B型与非Luminal B型组间2个纹理特征差异具有统计学意义(P<0.05),当原始灰度共生矩阵-聚类阴影(original gray level co-occurrence matrix cluster shadow,o_glcm_CS)>0.169时诊断Luminal B型效能最佳。HER-2过表达型与非HER-2过表达型组间5个纹理特征差异均有统计学意义,其AUC值Objective:To explore the value of texture features based on dynamic contrast-enhanced MRI(DCE-MRI)images in preoperative prediction of molecular typing of breast cancer.Materials and Methods:The preoperative MRI images and clinicopathological data of 75 patients with breast cancer confirmed by postoperative pathology in the First People's Hospital of Yichang from October 2021 to October 2022 were retrospectively analyzed.The general data of patients were analyzed by chi-square test and variance analysis.Feature parameters were extracted from DCE-MRI images for molecular subtypes with yes and no as binary classification indicators.Dimension reduction of feature parameters was performed by standardized and optimal feature filters.Independent sample t-test or Mann-Whitney U test was used to identify the optimal texture parameters with statistically significant differences between different groups.The area under the ROC curve(AUC)was used to evaluate the diagnostic efficacy of texture analysis.In addition,a logistic regression classification model was constructed based on dynamic enhanced MRI texture features,and the ROC curve was drawn to evaluate the diagnostic efficacy of the model for different molecular subtypes.Results:There were 11 cases of Luminal A type,36 cases of Luminal B type,14 cases of human epidermal growth factor receptor 2(HER-2)overexpression type and 14 cases of triple negative breast cancer(TNBC).There was no significant difference in age,menopausal status,pathological classification,MRI enhancement and lymph node status among patients with different subtypes of breast cancer(P>0.05).The AUC[95%confidence interval(CI)]values of Luminal A,Luminal B,HER-2 overexpression and TNBC were 0.92(0.77-1.00),0.83(0.62-1.00),0.83(0.55-1.00)and 0.72(0.43-1.00),respectively.There were statistically significant differences in the three texture parameters between Luminal A and non-Luminal A groups(P<0.05).The AUC values of the three were 0.73,0.70 and 0.75,respectively.When the texture feature 3D grey level co-o
关 键 词:乳腺肿瘤 分子分型 诊断价值 纹理分析 动态对比增强 磁共振成像
分 类 号:R445.2[医药卫生—影像医学与核医学] R737.9[医药卫生—诊断学]
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