Biological Systems and Engineering Division, Lawrence Berkeley National Laboratory, Berkeley, California, USA.
Berkeley Biomedical Data Science Center, Lawrence Berkeley National Laboratory, Berkeley, California, USA.
Neuro Oncol. 2023 Jan 5;25(1):68-81. doi: 10.1093/neuonc/noac154.
Lower-grade gliomas (LGG) are heterogeneous diseases by clinical, histological, and molecular criteria. We aimed to personalize the diagnosis and therapy of LGG patients by developing and validating robust cellular morphometric subtypes (CMS) and to uncover the molecular signatures underlying these subtypes.
Cellular morphometric biomarkers (CMBs) were identified with artificial intelligence technique from TCGA-LGG cohort. Consensus clustering was used to define CMS. Survival analysis was performed to assess the clinical impact of CMBs and CMS. A nomogram was constructed to predict 3- and 5-year overall survival (OS) of LGG patients. Tumor mutational burden (TMB) and immune cell infiltration between subtypes were analyzed using the Mann-Whitney U test. The double-blinded validation for important immunotherapy-related biomarkers was executed using immunohistochemistry (IHC).
We developed a machine learning (ML) pipeline to extract CMBs from whole-slide images of tissue histology; identifying and externally validating robust CMS of LGGs in multicenter cohorts. The subtypes had independent predicted OS across all three independent cohorts. In the TCGA-LGG cohort, patients within the poor-prognosis subtype responded poorly to primary and follow-up therapies. LGGs within the poor-prognosis subtype were characterized by high mutational burden, high frequencies of copy number alterations, and high levels of tumor-infiltrating lymphocytes and immune checkpoint genes. Higher levels of PD-1/PD-L1/CTLA-4 were confirmed by IHC staining. In addition, the subtypes learned from LGG demonstrate translational impact on glioblastoma (GBM).
We developed and validated a framework (CMS-ML) for CMS discovery in LGG associated with specific molecular alterations, immune microenvironment, prognosis, and treatment response.
低级别胶质瘤(LGG)在临床、组织学和分子标准上具有异质性。我们旨在通过开发和验证稳健的细胞形态计量亚型(CMS)并揭示这些亚型背后的分子特征,为 LGG 患者实现个性化诊断和治疗。
使用人工智能技术从 TCGA-LGG 队列中识别细胞形态计量生物标志物(CMB)。采用共识聚类定义 CMS。进行生存分析以评估 CMB 和 CMS 的临床影响。构建列线图以预测 LGG 患者的 3 年和 5 年总生存率(OS)。使用 Mann-Whitney U 检验分析肿瘤突变负担(TMB)和亚型之间的免疫细胞浸润。使用免疫组织化学(IHC)对重要免疫治疗相关生物标志物进行双盲验证。
我们开发了一种机器学习(ML)管道,从组织病理学全切片图像中提取 CMB;在多中心队列中识别和外部验证 LGG 的稳健 CMS。在所有三个独立队列中,各亚型的 OS 具有独立的预测能力。在 TCGA-LGG 队列中,预后不良亚型的患者对原发性和随访治疗反应不佳。预后不良亚型的 LGG 具有高突变负担、高拷贝数改变频率以及高水平的肿瘤浸润淋巴细胞和免疫检查点基因的特点。IHC 染色证实了更高水平的 PD-1/PD-L1/CTLA-4。此外,从 LGG 中学习到的亚型对胶质母细胞瘤(GBM)具有转化影响。
我们开发并验证了一种与特定分子改变、免疫微环境、预后和治疗反应相关的 LGG 中 CMS 发现的框架(CMS-ML)。