Chiu Fang-Ying, Le Nguyen Quoc Khanh, Chen Cheng-Yu
Research Center for Sustainable Development Goals (SDGs), Tzu Chi University, Hualien 970374, Taiwan.
Professional Master Program in Artificial Intelligence in Medicine, College of Medicine, Taipei Medical University, Taipei 106339, Taiwan.
J Clin Med. 2021 May 10;10(9):2030. doi: 10.3390/jcm10092030.
Glioblastoma multiforme (GBM) carries a poor prognosis and usually presents with heterogenous regions of a necrotic core, solid part, peritumoral tissue, and peritumoral edema. Accurate demarcation on magnetic resonance imaging (MRI) between the active tumor region and perifocal edematous extension is essential for planning stereotactic biopsy, GBM resection, and radiotherapy. We established a set of radiomics features to efficiently classify patients with GBM and retrieved cerebral multiparametric MRI, including contrast-enhanced T1-weighted (T1-CE), T2-weighted, T2-weighted fluid-attenuated inversion recovery, and apparent diffusion coefficient images from local patients with GBM. A total of 1316 features on the raw MR images were selected for each annotated area. A leave-one-out cross-validation was performed on the whole dataset, the different machine learning and deep learning techniques tested; random forest achieved the best performance (average accuracy: 93.6% necrosis, 90.4% solid part, 95.8% peritumoral tissue, and 90.4% peritumoral edema). The features from the enhancing tumor and the tumor shape elongation of peritumoral edema region for high-risk groups from T1-CE. The multiparametric MRI-based radiomics model showed the efficient classification of tumor subregions of GBM and suggests that prognostic radiomic features from a routine MRI exam may also be significantly associated with key biological processes that affect the response to chemotherapy in GBM.
多形性胶质母细胞瘤(GBM)预后较差,通常表现为具有坏死核心、实体部分、瘤周组织和瘤周水肿的异质性区域。在磁共振成像(MRI)上准确区分活性肿瘤区域和灶周水肿扩展对于立体定向活检、GBM切除和放疗的规划至关重要。我们建立了一组放射组学特征,以有效分类GBM患者,并从当地GBM患者中获取了脑多参数MRI,包括对比增强T1加权(T1-CE)、T2加权、T2加权液体衰减反转恢复和表观扩散系数图像。对每个标注区域在原始MR图像上总共选择了1316个特征。对整个数据集进行留一法交叉验证,测试了不同的机器学习和深度学习技术;随机森林表现最佳(平均准确率:坏死区域为93.6%,实体部分为90.4%,瘤周组织为95.8%,瘤周水肿为90.4%)。来自T1-CE高风险组的强化肿瘤特征和瘤周水肿区域的肿瘤形状伸长特征。基于多参数MRI的放射组学模型显示了GBM肿瘤亚区域的有效分类,并表明常规MRI检查的预后放射组学特征也可能与影响GBM化疗反应的关键生物学过程显著相关。