Rathore Saima, Niazi Tamim, Iftikhar Muhammad Aksam, Chaddad Ahmad
Center for Biomedical Image Computing and Analytics, University of Pennsylvania, PA 19104, USA.
Department of Radiology, Perelman School of Medicine, University of Pennsylvania, PA 19104, USA.
Cancers (Basel). 2020 Mar 2;12(3):578. doi: 10.3390/cancers12030578.
Cancer pathology reflects disease progression (or regression) and associated molecular characteristics, and provides rich phenotypic information that is predictive of cancer grade and has potential implications in treatment planning and prognosis. According to the remarkable performance of computational approaches in the digital pathology domain, we hypothesized that machine learning can help to distinguish low-grade gliomas (LGG) from high-grade gliomas (HGG) by exploiting the rich phenotypic information that reflects the microvascular proliferation level, mitotic activity, presence of necrosis, and nuclear atypia present in digital pathology images. A set of 735 whole-slide digital pathology images of glioma patients (median age: 49.65 years, male: 427, female: 308, median survival: 761.26 days) were obtained from TCGA. Sub-images that contained a viable tumor area, showing sufficient histologic characteristics, and that did not have any staining artifact were extracted. Several clinical measures and imaging features, including conventional (intensity, morphology) and advanced textures features (gray-level co-occurrence matrix and gray-level run-length matrix), extracted from the sub-images were further used for training the support vector machine model with linear configuration. We sought to evaluate the combined effect of conventional imaging, clinical, and texture features by assessing the predictive value of each feature type and their combinations through a predictive classifier. The texture features were successfully validated on the glioma patients in 10-fold cross-validation (accuracy = 75.12%, AUC = 0.652). The addition of texture features to clinical and conventional imaging features improved grade prediction compared to the models trained on clinical and conventional imaging features alone ( = 0.045 and = 0.032 for conventional imaging features and texture features, respectively). The integration of imaging, texture, and clinical features yielded a significant improvement in accuracy, supporting the synergistic value of these features in the predictive model. The findings suggest that the texture features, when combined with conventional imaging and clinical markers, may provide an objective, accurate, and integrated prediction of glioma grades. The proposed digital pathology imaging-based marker may help to (i) stratify patients into clinical trials, (ii) select patients for targeted therapies, and (iii) personalize treatment planning on an individual person basis.
癌症病理学反映疾病进展(或消退)及相关分子特征,并提供丰富的表型信息,这些信息可预测癌症分级,对治疗方案规划和预后具有潜在影响。鉴于计算方法在数字病理学领域的卓越表现,我们推测机器学习能够通过利用反映微血管增殖水平、有丝分裂活性、坏死情况以及数字病理学图像中存在的核异型性等丰富表型信息,帮助区分低级别胶质瘤(LGG)和高级别胶质瘤(HGG)。从TCGA获取了一组735例胶质瘤患者的全切片数字病理学图像(中位年龄:49.65岁,男性427例,女性308例,中位生存期:761.26天)。提取包含存活肿瘤区域、具有足够组织学特征且无任何染色伪影的子图像。从子图像中提取的若干临床指标和影像特征,包括传统特征(强度、形态)和高级纹理特征(灰度共生矩阵和灰度游程长度矩阵),进一步用于训练线性配置的支持向量机模型。我们试图通过预测分类器评估每种特征类型及其组合的预测价值,以评估传统影像、临床和纹理特征的综合效果。纹理特征在胶质瘤患者的10折交叉验证中成功得到验证(准确率 = 75.12%,AUC = 0.652)。与仅基于临床和传统影像特征训练的模型相比(传统影像特征和纹理特征的p值分别为 = 0.045和 = 0.032),将纹理特征添加到临床和传统影像特征中可改善分级预测。影像、纹理和临床特征的整合使准确率有显著提高,支持这些特征在预测模型中的协同价值。研究结果表明,纹理特征与传统影像和临床标志物相结合时,可能为胶质瘤分级提供客观、准确且综合的预测。所提出的基于数字病理学影像的标志物可能有助于(i)将患者分层纳入临床试验,(ii)选择适合靶向治疗的患者,以及(iii)基于个体情况制定个性化治疗方案。