Wang Wesley, Kumm Zeynep Temerit, Ho Cindy, Zanesco-Fontes Ideli, Texiera Gustavo, Reis Rui Manuel, Martinetto Horacio, Khan Javaria, McCandless Martin G, Baker Katherine E, Anderson Mark D, Chohan Muhammad Omar, Beyer Sasha, Elder J Brad, Giglio Pierre, Otero José Javier
Department of Pathology, Ohio State University Wexner Medical Center, Columbus, Ohio, USA.
Molecular Oncology Research Center, Barretos Cancer Hospital, Barretos, Brazil.
Neurooncol Adv. 2023 Nov 11;6(1):vdad140. doi: 10.1093/noajnl/vdad140. eCollection 2024 Jan-Dec.
Glioblastoma is a malignant brain tumor requiring careful clinical monitoring even after primary management. Personalized medicine has suggested the use of various molecular biomarkers as predictors of patient prognosis or factors utilized for clinical decision-making. However, the accessibility of such molecular testing poses a constraint for various institutes requiring identification of low-cost predictive biomarkers to ensure equitable care.
We collected retrospective data from patients seen at Ohio State University, University of Mississippi, Barretos Cancer Hospital (Brazil), and FLENI (Argentina) who were managed for glioblastoma-amounting to 581 patient records documented using REDCap. Patients were evaluated using an unsupervised machine learning approach comprised of dimensionality reduction and eigenvector analysis to visualize the inter-relationship of collected clinical features.
We discovered that the serum white blood cell (WBC) count of a patient during baseline planning for treatment was predictive of overall survival with an over 6-month median survival difference between the upper and lower quartiles of WBC count. By utilizing an objective PD-L1 immunohistochemistry quantification algorithm, we were further able to identify an increase in PD-L1 expression in glioblastoma patients with high serum WBC counts.
These findings suggest that in a subset of glioblastoma patients the incorporation of WBC count and PD-L1 expression in the brain tumor biopsy as simple biomarkers predicting glioblastoma patient survival. Moreover, machine learning models allow the distillation of complex clinical data sets to uncover novel and meaningful clinical relationships.
胶质母细胞瘤是一种恶性脑肿瘤,即使在初始治疗后也需要仔细的临床监测。个性化医疗建议使用各种分子生物标志物作为患者预后的预测指标或用于临床决策的因素。然而,这种分子检测的可及性对各机构构成了限制,这些机构需要识别低成本的预测生物标志物以确保公平的医疗服务。
我们收集了俄亥俄州立大学、密西西比大学、巴西巴雷托斯癌症医院和阿根廷FLENI收治的胶质母细胞瘤患者的回顾性数据,共计581份使用REDCap记录的患者病历。采用由降维和特征向量分析组成的无监督机器学习方法对患者进行评估,以可视化所收集临床特征之间的相互关系。
我们发现,患者在基线治疗计划期间的血清白细胞(WBC)计数可预测总生存期,白细胞计数上四分位数和下四分位数之间的中位生存期差异超过6个月。通过使用客观的PD-L1免疫组织化学定量算法,我们进一步能够识别出血清白细胞计数高的胶质母细胞瘤患者中PD-L1表达的增加。
这些发现表明,在一部分胶质母细胞瘤患者中,将白细胞计数和脑肿瘤活检中的PD-L1表达纳入作为预测胶质母细胞瘤患者生存的简单生物标志物。此外,机器学习模型能够提炼复杂的临床数据集以发现新的有意义的临床关系。