Abujamea Abdullah Hussain, Salem Salma Abdulrahman, Ibrahim Hend Samir, ElRefaei Manal Ahmed, Aloufi Areej Saud, Alotabibi Abdulmajeed, Albeshan Salman Mohammed, Eliraqi Fatma
Department of Radiology and Medical Imaging, College of Medicine, King Saud University (KSU), Riyadh 11461, Saudi Arabia.
Royal Commission Medical Centre, Yanbu 46457, Saudi Arabia.
Diagnostics (Basel). 2025 Aug 14;15(16):2033. doi: 10.3390/diagnostics15162033.
This study aimed to evaluate the diagnostic performance of simplified intravoxel incoherent motion (IVIM) diffusion-weighted imaging (DWI) parameters in distinguishing malignant from benign breast lesions, and to explore their association with clinicopathological features. This retrospective study included 108 women who underwent breast MRI with multi-b-value DWI (0, 20, 200, 500, 800 s/mm). Of those 108 women, 73 had pathologically confirmed malignant lesions. IVIM maps (ADC_map, D, D*, and perfusion fraction f) were generated using IB-Diffusion™ software version 21.12. Lesions were manually segmented by radiologists, and clinicopathological data including receptor status, Ki-67 index, cancer type, histologic grade, and molecular subtype were extracted from medical records. Nonparametric tests and ROC analysis were used to assess group differences and diagnostic performance. Additionally, a binary logistic regression model combining D, D*, and f was developed to evaluate their joint diagnostic utility, with ROC analysis applied to the model's predicted probabilities. Malignant lesions demonstrated significantly lower diffusion parameters compared to benign lesions, including ADC_map ( = 0.004), D ( = 0.009), and D* ( = 0.016), indicating restricted diffusion in cancerous tissue. In contrast, the perfusion fraction (f) did not show a significant difference ( = 0.202). ROC analysis revealed moderate diagnostic accuracy for ADC_map (AUC = 0.671), D (AUC = 0.657), and D* (AUC = 0.644), while f showed poor discrimination (AUC = 0.576, = 0.186). A combined logistic regression model using D, D*, and f significantly improved diagnostic performance, achieving an AUC of 0.725 ( < 0.001), with 67.1% sensitivity and 74.3% specificity. ADC_map achieved the highest sensitivity (100%) but had low specificity (11.4%). Among clinicopathological features, only histologic grade was significantly associated with IVIM metrics, with higher-grade tumors showing lower ADC_map and D* values ( = 0.042 and = 0.046, respectively). No significant associations were found between IVIM parameters and ER, PR, HER2 status, Ki-67 index, cancer type, or molecular subtype. Simplified IVIM DWI offers moderate accuracy in distinguishing malignant from benign breast lesions, with diffusion-related parameters (ADC_map, D, D*) showing the strongest diagnostic value. Incorporating D, D*, and f into a combined model enhanced diagnostic performance compared to individual IVIM metrics, supporting the potential of multivariate IVIM analysis in breast lesion characterization. Tumor grade was the only clinicopathological feature consistently associated with diffusion metrics, suggesting that IVIM may reflect underlying tumor differentiation but has limited utility for molecular subtype classification.
本研究旨在评估简化体素内不相干运动(IVIM)扩散加权成像(DWI)参数在鉴别乳腺良恶性病变中的诊断性能,并探讨其与临床病理特征的相关性。这项回顾性研究纳入了108例行多b值DWI(0、20、200、500、800 s/mm²)乳腺MRI检查的女性。在这108名女性中,73例有病理证实的恶性病变。使用IB-Diffusion™ 21.12版软件生成IVIM图(表观扩散系数图、D值、D值和灌注分数f)。由放射科医生手动分割病变,并从病历中提取包括受体状态、Ki-67指数、癌症类型、组织学分级和分子亚型在内的临床病理数据。采用非参数检验和ROC分析评估组间差异和诊断性能。此外,建立了一个结合D值、D值和f的二元逻辑回归模型来评估其联合诊断效用,并将ROC分析应用于该模型的预测概率。与良性病变相比,恶性病变的扩散参数显著更低,包括表观扩散系数图(P = 0.004)、D值(P = 0.009)和D值(P = 0.016),表明癌组织中扩散受限。相比之下,灌注分数(f)没有显著差异(P = 0.202)。ROC分析显示表观扩散系数图(AUC = 0.671)、D值(AUC = 0.657)和D值(AUC = 0.644)具有中等诊断准确性,而f的鉴别能力较差(AUC = 0.576,P = 0.186)。使用D值、D值和f的联合逻辑回归模型显著提高了诊断性能,AUC为0.725(P < 0.001),灵敏度为67.1%,特异度为74.3%。表观扩散系数图的灵敏度最高(100%),但特异度较低(11.4%)。在临床病理特征中,只有组织学分级与IVIM指标显著相关,高级别肿瘤的表观扩散系数图和D值较低(分别为P = 0.042和P = 0.046)。未发现IVIM参数与雌激素受体、孕激素受体、人表皮生长因子受体2状态、Ki-67指数、癌症类型或分子亚型之间存在显著关联。简化IVIM DWI在鉴别乳腺良恶性病变方面具有中等准确性,与扩散相关的参数(表观扩散系数图、D值、D值)显示出最强的诊断价值。与单个IVIM指标相比,将D值、D值和f纳入联合模型可提高诊断性能,支持多变量IVIM分析在乳腺病变特征描述中的潜力。肿瘤分级是唯一与扩散指标始终相关的临床病理特征,表明IVIM可能反映潜在的肿瘤分化,但在分子亚型分类中的效用有限。