首页> 美国卫生研究院文献>Frontiers in Computational Neuroscience >A Multi-parametric MRI-Based Radiomics Signature and a Practical ML Model for Stratifying Glioblastoma Patients Based on Survival Toward Precision Oncology
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A Multi-parametric MRI-Based Radiomics Signature and a Practical ML Model for Stratifying Glioblastoma Patients Based on Survival Toward Precision Oncology

机译:基于生存的精确肿瘤学,基于多参数MRI的放射学特征和实用的ML模型用于分层胶质母细胞瘤患者

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Purpose: Predicting patients' survival outcomes is recognized of key importance to clinicians in oncology toward determining an ideal course of treatment and patient management. This study applies radiomics analysis on pre-operative multi-parametric MRI of patients with glioblastoma from multiple institutions to identify a signature and a practical machine learning model for stratifying patients into groups based on overall survival.Methods: This study included 163 patients' data with glioblastoma, collected by BRATS 2018 Challenge from multiple institutions. In this proposed method, a set of 147 radiomics image features were extracted locally from three tumor sub-regions on standardized pre-operative multi-parametric MR images. LASSO regression was applied for identifying an informative subset of chosen features whereas a Cox model used to obtain the coefficients of those selected features. Then, a radiomics signature model of 9 features was constructed on the discovery set and it performance was evaluated for patients stratification into short- (<10 months), medium- (10–15 months), and long-survivors (>15 months) groups. Eight ML classification models, trained and then cross-validated, were tested to assess a range of survival prediction performance as a function of the choice of features.Results: The proposed mpMRI radiomics signature model had a statistically significant association with survival (P < 0.001) in the training set, but was not confirmed (P = 0.110) in the validation cohort. Its performance in the validation set had a sensitivity of 0.476 (short-), 0.231 (medium-), and 0.600 (long-survivors), and specificity of 0.667 (short-), 0.732 (medium-), and 0.794 (long-survivors). Among the tested ML classifiers, the ensemble learning model's results showed superior performance in predicting the survival classes, with an overall accuracy of 57.8% and AUC of 0.81 for short-, 0.47 for medium-, and 0.72 for long-survivors using the LASSO selected features combined with clinical factors.Conclusion: A derived GLCM feature, representing intra-tumoral inhomogeneity, was found to have a high association with survival. Clinical factors, when added to the radiomics image features, boosted the performance of the ML classification model in predicting individual glioblastoma patient's survival prognosis, which can improve prognostic quality a further step toward precision oncology.
机译:目的:预测患者的生存结果被认为对于肿瘤学临床医生对于确定理想的治疗方案和患者管理至关重要。这项研究对来自多个机构的胶质母细胞瘤患者进行术前多参数MRI放射学分析,以识别特征和实用的机器学习模型,以根据总体生存率将患者分为几类。方法:该研究包括BRATS 2018 Challenge从多个机构收集的163例胶质母细胞瘤患者数据。在该提出的方法中,从标准化的术前多参数MR图像上的三个肿瘤子区域局部提取了一组147个放射图像特征。 LASSO回归用于识别选定特征的信息子集,而Cox模型用于获得那些选定特征的系数。然后,在发现集上构建了具有9个特征的放射性标记特征模型,并评估了患者分为短(<10个月),中(10-15个月)和长存活(> 15个月)患者的表现组。测试了八个经过训练,然后经过交叉验证的ML分类模型,以评估根据功能选择而定的一系列生存预测性能。结果:拟议的mpMRI放射学特征模型具有统计学意义与训练组的生存率相关(P <0.001),但在验证队列中未得到证实(P = 0.110)。其在验证集中的表现具有0.476(短),0.231(中)和0.600(长存活)的敏感性,以及0.667(短),0.732(中)和0.794(长)的特异性。幸存者)。在经过测试的ML分类器中,整体学习模型的结果显示出在预测生存类别方面的优越性能,使用选定的LASSO的总体准确度为57.8%,短生存者的AUC为0.81,中生存者的AUC为0.47,长生存者的AUC为0.72特征结合临床因素。结论:发现代表肿瘤内不均一性的GLCM特征与生存率高度相关。当将临床因素添加到放射线图像特征中时,可以提高ML分类模型在预测单个胶质母细胞瘤患者生存预后方面的性能,从而可以提高预后质量,这是向精确肿瘤学迈出的又一步。

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