Chen Yini, Guo Weiya, Li Yushi, Lin Hongsen, Dong Deshuo, Qi Yiwei, Pu Renwang, Liu Ailian, Li Wei, Sun Bo
Department of Radiology, The First Affiliated Hospital of DalianMedical University, Dalian, China (Y.C., H.L., D.D., Y.Q., R.P., A.L., B.S.).
Department of Radiology, Dalian Municipal Women and Children's Medical Center (Group), Dalian, China (W.G.).
Acad Radiol. 2025 Jul;32(7):4164-4176. doi: 10.1016/j.acra.2025.04.008. Epub 2025 Apr 24.
Glioblastoma (GBM) and solitary brain metastasis (SBM) exhibit similar radiomics features on magnetic resonance imaging (MRI), yet their treatment strategies and prognoses significantly differ. Therefore, accurate differentiation between these two types of tumors is crucial for clinical decision-making. This study aims to establish and validate an efficient diagnostic model based on the radiomic features of the T1-weighted contrast-enhanced (T1CE) sequence in the 10 mm brain-tumor interface region to achieve precise differentiation between GBM and SBM.
This study retrospectively collected contrast-enhanced T1-weighted imaging data from 226 GBM patients and 206 SBM patients at three centers between January 2010 and October 2024. Samples from centers 1 and 2 were used as the training set, while samples from center 3 were used as the test set. Two observers manually delineated the tumor edges on the T1CE images layer by layer to obtain the Region of Interest (ROI) covering the entire tumor volume. A 10 mm brain-to-tumor interface (BTI) was extracted using Python code. Radiomic features were extracted from the 10 mm BTI region, followed by feature selection and model construction. Finally, SHAP (SHapley Additive exPlanations) was used to visualize the model. Three radiologists with 2, 6, and 18 years of diagnostic experience independently evaluated the test set samples without knowing the patient information or pathology results, establishing three diagnostic models. The DeLong test was used to compare these models with the radiomic model.
Ultimately, ten radiomic features were used for modeling. The model established using the logistic regression (LR) algorithm had an AUC of 0.893 on the training set and 0.808 on the test set. The AUCs of the three radiologists with different diagnostic experiences on the test set were 0.699, 0.740, and 0.789, respectively, all lower than that of the radiomic model. The DeLong test showed that Model performed significantly better than Doctor 1 (p<0.05) in the test set, but there was no statistically significant difference in performance between Model and Doctors 2 and 3.
The radiomic model constructed based on the 10 mm brain-tumor interface can effectively differentiate between GBM and SBM, capturing tumor heterogeneity from a new perspective, thereby significantly improving diagnostic performance and providing assistance for clinical diagnosis.
The original contributions presented in the study are included in the article/Supplemental material, further inquiries can be directed to the corresponding authors.
胶质母细胞瘤(GBM)和孤立性脑转移瘤(SBM)在磁共振成像(MRI)上表现出相似的放射组学特征,但其治疗策略和预后显著不同。因此,准确区分这两种类型的肿瘤对于临床决策至关重要。本研究旨在基于10毫米脑肿瘤界面区域的T1加权对比增强(T1CE)序列的放射组学特征建立并验证一种有效的诊断模型,以实现GBM和SBM之间的精确区分。
本研究回顾性收集了2010年1月至2024年10月期间三个中心的226例GBM患者和206例SBM患者的对比增强T1加权成像数据。中心1和中心2的样本用作训练集,中心3的样本用作测试集。两名观察者在T1CE图像上逐层手动勾勒肿瘤边缘,以获得覆盖整个肿瘤体积的感兴趣区域(ROI)。使用Python代码提取10毫米的脑肿瘤界面(BTI)。从10毫米的BTI区域提取放射组学特征,然后进行特征选择和模型构建。最后,使用SHAP(Shapley加性解释)对模型进行可视化。三名分别具有2年、6年和18年诊断经验的放射科医生在不知道患者信息或病理结果的情况下独立评估测试集样本,建立了三个诊断模型。使用DeLong检验将这些模型与放射组学模型进行比较。
最终,十个放射组学特征用于建模。使用逻辑回归(LR)算法建立的模型在训练集上的AUC为0.893,在测试集上的AUC为0.808。三名具有不同诊断经验的放射科医生在测试集上的AUC分别为0.699、0.740和0.789,均低于放射组学模型。DeLong检验表明,在测试集中模型的表现明显优于医生1(p<0.05),但模型与医生2和医生3在表现上没有统计学显著差异。
基于10毫米脑肿瘤界面构建的放射组学模型能够有效区分GBM和SBM,从新的角度捕捉肿瘤异质性,从而显著提高诊断性能,为临床诊断提供帮助。
本研究中呈现的原始贡献包含在文章/补充材料中,进一步的询问可直接联系相应的作者。