Identifying Personalised treatment plan for GBM using Multidimensional Patient Similarity Analytics

Meera Varmar, Jereesh A S
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Abstract

International Agency for Research on Cancer (IACR) reported an increase in the worldwide cancer rate which is now known to be a major impediment to increasing life expectancy. Glioblastoma multiform, further named as astrocytoma, is a fast-growing truculent type of brain tumour that develops in the cerebral hemispheres, mainly in the frontal and temporal lobes of the brain. According to the National Brain Tumor Society, GBM accounts for 49.1 percent of all primary malignant brain tumors. Despite advances in the available treatment options, there is not much improvement in overall patient survival rate and still ranges from 14.6 to 20.5months. Also, some individuals show adverse drug reactions due to their genetic composition, and the condition is called idiosyncrasy. The proposed work aims to find an effective treatment strategy for GBM patients on the basis of their clinical and genomic factors. The work is presented based on Genomic Data Commons (GDC), cBioportal and Cancer Browser dataset. Here we develop different patient cohorts based on the predictive features using K-means++ algorithm. A test patient acquires the treatment pattern of its most similar neighbour using patient similarity analytics. This is a generalized approach that can be applied to any
使用多维患者相似度分析确定GBM的个性化治疗方案
国际癌症研究机构(IACR)报告称,全球癌症发病率上升,这是目前已知的延长预期寿命的主要障碍。多形性胶质母细胞瘤,又称星形细胞瘤,是一种生长迅速的恶性脑肿瘤,主要发生在大脑半球,主要发生在大脑额叶和颞叶。根据国家脑肿瘤协会的数据,GBM占所有原发性恶性脑肿瘤的49.1%。尽管现有的治疗方案取得了进展,但总体患者生存率并没有太大改善,仍然在14.6至20.5个月之间。此外,一些个体由于其基因组成而表现出药物不良反应,这种情况被称为特异性。本研究旨在结合GBM患者的临床和基因组因素,寻找有效的治疗策略。这项工作是基于基因组数据共享(GDC), cBioportal和癌症浏览器数据集提出的。在这里,我们使用k -means++算法基于预测特征开发不同的患者队列。测试患者使用患者相似性分析获得其最相似邻居的治疗模式。这是一种通用的方法,可以应用于任何
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