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基于肿瘤及肿瘤-脑界面的胶质母细胞瘤与孤立性脑转移瘤的纹理特征鉴别

Texture Feature Differentiation of Glioblastoma and Solitary Brain Metastases Based on Tumor and Tumor-brain Interface.

作者信息

Chen Yini, Lin Hongsen, Sun Jiayi, Pu Renwang, Zhou Yujing, Sun Bo

机构信息

Department of Radiology, The First Affiliated Hospital of Dalian Medical University, Dalian, China (Y.C., H.L., J.S., R.P., Y.Z., B.S.).

Department of Radiology, The First Affiliated Hospital of Dalian Medical University, Dalian, China (Y.C., H.L., J.S., R.P., Y.Z., B.S.); College of Medical Imaging, Dalian Medical University, Dalian, Liaoning, China (J.S.).

出版信息

Acad Radiol. 2025 Jan;32(1):400-410. doi: 10.1016/j.acra.2024.08.025. Epub 2024 Aug 31.

Abstract

RATIONALE AND OBJECTIVES

Texture features, derived from both the entire tumor area and the region of the tumor-to-brain interface, are crucial indicators for distinguishing tumor types and their degrees of malignancy. However, the discriminative value of texture features from both regions for identifying glioblastomas and metastatic tumors has not been thoroughly explored. The aim of this study is to develop and validate a diagnostic model that combines texture features from the entire tumor area and a 10 mm tumor-to-brain interface region, in an attempt to identify more stable and effective texture features.

METHOD

We retrospectively collected enhanced T1-weighted imaging data from 97 patients with glioblastoma (GBM) and 90 patients with single brain metastasis (SBM) between 2010 and 2024. Machine learning is used to establish multiple diagnostic models for discriminating GBM and SBM based on texture features of the entire tumor and 10 mm tumor-to-brain interface regions. Results underwent evaluation through 5-fold cross-validation analysis, calculating the area under the receiver operating characteristic curve (AUC) for each model. The performance of each model was compared using the Delong test, and the interpretability of the optimized model was further augmented by employing Shapley additive explanations (SHAP).

RESULTS

The AUCs for all pipelines in the validation dataset were compared using FeAture Explorer (FAE) software. Among the models established by Kruskal-Wallis(KW) and Logistic Regression(LR), the AUC was highest using the "one-standard error" rule. '10mm_glrlm_GrayLevelNonUniformity' was considered the most stable and predictive feature. The best models in the training set, test set, and validation set were not the same. In the test set, the KW1LR model had the highest AUC of 0.880 and an accuracy of 0.824.

CONCLUSION

The texture feature model that combines the overall tumor and the tumor-brain interface is beneficial for distinguishing glioblastoma from solitary metastatic tumors, and the texture features of the tumor interface exhibit higher heterogeneity.

摘要

原理与目的

源自整个肿瘤区域以及肿瘤与脑界面区域的纹理特征,是区分肿瘤类型及其恶性程度的关键指标。然而,来自这两个区域的纹理特征在识别胶质母细胞瘤和转移瘤方面的鉴别价值尚未得到充分探索。本研究的目的是开发并验证一种诊断模型,该模型结合来自整个肿瘤区域和10毫米肿瘤与脑界面区域的纹理特征,试图识别更稳定、有效的纹理特征。

方法

我们回顾性收集了2010年至2024年间97例胶质母细胞瘤(GBM)患者和90例单发脑转移瘤(SBM)患者的增强T1加权成像数据。使用机器学习基于整个肿瘤和10毫米肿瘤与脑界面区域的纹理特征建立多个区分GBM和SBM的诊断模型。通过五折交叉验证分析对结果进行评估,计算每个模型的受试者工作特征曲线下面积(AUC)。使用德龙检验比较每个模型的性能,并通过采用夏普利加性解释(SHAP)进一步增强优化模型的可解释性。

结果

使用特征探索器(FAE)软件比较验证数据集中所有管道的AUC。在由克鲁斯卡尔 - 沃利斯(KW)和逻辑回归(LR)建立的模型中,使用“一个标准误差”规则时AUC最高。“10mm_glrlm_灰度非均匀性”被认为是最稳定且具有预测性的特征。训练集、测试集和验证集中的最佳模型并不相同。在测试集中,KW1LR模型的AUC最高,为0.880,准确率为0.824。

结论

结合整个肿瘤和肿瘤 - 脑界面的纹理特征模型有助于区分胶质母细胞瘤与孤立性转移瘤,且肿瘤界面的纹理特征表现出更高的异质性。

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