Department of Radiology, Medical University Innsbruck, Anichstraße 35, 6020 Innsbruck, Austria.
Department of Pathology, Medical University Innsbruck, Anichstraße 35, 6020 Innsbruck, Austria.
Curr Oncol. 2023 Mar 13;30(3):3315-3328. doi: 10.3390/curroncol30030252.
Discrimination between benign and atypical lipomatous tumors (ALT) is important due to potential local complications and recurrence of ALT but can be difficult due to the often-similar imaging appearance. Using a standardized MRI protocol, this study aimed to rank established and quantitative MRI features by diagnostic value in the differentiation of benign and atypical lipomatous tumors and to develop a robust scoring system.
Patients with clinical or sonographic suspicion of a lipomatous tumor were prospectively and consecutively enrolled from 2015 to 2019 after ethic review board approval. Histology was confirmed for all ALT and 85% of the benign cases. Twenty-one demographic and morphologic and twenty-three quantitative features were extracted from a standardized MRI protocol (T1/T2-proton-density-weighting, turbo-inversion recovery magnitude, T2* multi-echo gradient-echo imaging, qDIXON-Vibe fat-quantification, T1 relaxometry, T1 mapping, diffusion-weighted and post-contrast sequences). A ranking of these features was generated through a Bayes network analysis with gain-ratio feature evaluation.
Forty-five patients were included in the analysis (mean age, 61.2 ± 14.2 years, 27 women [60.0%]). The highest-ranked ALT predictors were septation thickness (gain ratio merit [GRM] 0.623 ± 0.025, = 0.0055), intra- and peritumoral STIR signal discrepancy (GRM 0.458 ± 0.046, < 0.0001), orthogonal diameter (GRM 0.554 ± 0.188, = 0.0013), contrast enhancement (GRM 0.235 ± 0.015, = 0.0010) and maximum diameter (GRM 0.221 ± 0.075, = 0.0009). The quantitative features did not provide a significant discriminatory value. The highest-ranked predictors were used to generate a five-tiered score for the identification of ALTs (correct classification rate 95.7% at a cut-off of three positive items, sensitivity 100.0%, specificity 94.9%, likelihood ratio 19.5).
Several single MRI features have a substantial diagnostic value in the identification of ALT, yet a multiparametric approach by a simple combination algorithm may support radiologists in the identification of lipomatous tumors in need for further histological assessment.
良性和非典型脂肪肉瘤(ALT)的鉴别很重要,因为前者可能存在局部并发症和复发,而后者的影像学表现通常相似。本研究旨在使用标准化 MRI 方案,通过诊断价值对已建立的和定量的 MRI 特征进行排序,以区分良性和非典型脂肪肉瘤,并建立一个稳健的评分系统。
在伦理审查委员会批准后,前瞻性连续招募了 2015 年至 2019 年间因临床或超声检查怀疑脂肪性肿瘤的患者。对所有 ALT 和 85%的良性病例均进行组织学检查。从标准化 MRI 方案(T1/T2-质子密度加权、涡轮反转恢复幅度、T2*-多回波梯度回波成像、qDIXON-Vibe 脂肪定量、T1 弛豫率、T1 映射、扩散加权和对比后序列)中提取了 21 项人口统计学、形态学和 23 项定量特征。通过贝叶斯网络分析和增益比特征评估对这些特征进行排名。
45 例患者纳入分析(平均年龄 61.2±14.2 岁,女性 27 例[60.0%])。ALT 预测值最高的特征为分隔厚度(增益比优势[GRM]0.623±0.025, =0.0055)、瘤内和瘤周短 T1 反转恢复信号差异(GRM 0.458±0.046,<0.0001)、正交直径(GRM 0.554±0.188, =0.0013)、对比增强(GRM 0.235±0.015, =0.0010)和最大直径(GRM 0.221±0.075, =0.0009)。定量特征没有提供显著的鉴别价值。使用最高预测值生成了一个用于识别 ALT 的五层级评分(截断值为 3 个阳性项目时正确分类率为 95.7%,敏感性为 100.0%,特异性为 94.9%,似然比为 19.5)。
多项 MRI 特征在识别 ALT 方面具有重要的诊断价值,但通过简单的组合算法进行多参数方法可能有助于放射科医生识别需要进一步组织学评估的脂肪性肿瘤。