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Automated MR image processing and analysis of malignant brain tumors: enabling technology for data mining

机译:自动化MR图像处理和恶性脑肿瘤分析:数据挖掘启用技术

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Glioblastoma multiforme (GBM) is a malignant brain cancer with poor patient prognosis (i.e. time to survival, time to tumor progression). A number of clinical trials are underway evaluating novel therapeutic strategies and magnetic resonance imaging is the most routinely performed procedure for accurate serial monitoring of patients. The electronic availability of the comprehensive data collected as part of the clinical trials provides an unprecedented opportunity to discover new relationships in complex diseases such as GBM. However, imaging data, which is the most accurate non-invasive assessment of GBMs, is not directly amenable for data mining. The focus of this chapter is on image analysis techniques including image spatial and intensity standardization, novel methods for robust tumor and edema segmentation, and quantification of tumor intensity, texture, and shape characteristics. The chapter concludes with an application of discovering the relationship between these quantitative image-derived features and time to survival in GBM patients; the data is part of a comprehensive large electronically accessible archive at UCLA (UCLA Neuro-oncology database).
机译:胶质母细胞瘤多形状(GBM)是一种恶性脑癌,患者预后差(即生存时间,时间肿瘤进展)。正在进行许多临床试验,评估新颖的治疗策略,磁共振成像是最常规进行的准确串行监测患者的过程。作为临床试验的一部分收集的综合数据的电子可用性提供了前所未有的机会,可以在诸如GBM等复杂疾病中发现新的关系。然而,成像数据是GBMS最准确的非侵入性评估,而不直接适用于数据挖掘。本章的重点是图像分析技术,包括图像空间和强度标准化,鲁棒肿瘤和水肿分割的新方法,以及肿瘤强度,质地和形状特征的定量。本章的结论是在施用这些定量图像衍生的特征与GBM患者中存活时间之间的关系的综述;数据是UCLA(UCLA神经磁性数据库)的全面大型电子访问档案的一部分。

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