胶质母细胞瘤19/20共增益的综合放射基因组学特征表征

Padmaja Jonnalagedda;Brent Weinberg;Taejin L. Min;Shiv Bhanu;Bir Bhanu
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摘要

多形性胶质母细胞瘤(GBM)的预后和治疗计划涉及影像学、临床和分子数据的整体分析。影像学和分子特征的相关性已经引起了人们的极大兴趣,因为它有可能减少对患者进行侵入性手术的次数,并利用整体预后和治疗计划过程的资源。本文检测并描述了肿瘤生物标志物(如形状、质地、位置和肿瘤周围组织)在检测预后突变(19和20染色体的并发增益)中的影响,并提出了两种新的分析思路。首先,为了解决与医疗数据的有限性、多样性和复杂性相关的挑战,本文提出了一种新的生成模型——在生成对抗网络(R2D2-GAN)中使用解纠缠的现实放射基因组设计,旨在重建磁共振成像中高度微妙、不明显的突变表现。它生成高分辨率、多样化的数据,捕获分子标记的歧视性视觉特征,同时处理具有与患者生存相关的罕见突变(如19/20共增益)的高多样性、不平衡和有限的GBM数据。其次,本研究提出了一种称为合成图像保真度(SIF)评分的定量指标,通过使用基于梯度的模型解释来评估gan在学习视觉上不明显的预后特征方面的性能。结果与现有方法进行了比较。
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A Comprehensive Radiogenomic Feature Characterization of 19/20 Co-gain in Glioblastoma
The prognosis and treatment planning of glioblastoma multiforme (GBM) involves a holistic analysis of imaging, clinical, and molecular data. The correlation of imaging and molecular features has garnered much interest due to its potential to reduce the number of invasive procedures on a patient and resource utilization of the overall prognostic and treatment planning process. This article detects and characterizes the impact of tumor biomarkers (such as shape, texture, location, and the tissue surrounding the tumor) in detecting a prognostic mutation – the concurrent gain of 19 and 20 chromosomes, and proposes two novel ideas for this analysis. First, to address the challenges associated with the limited, diverse, and complex nature of medical data, this article proposes a novel generative model – the realistic radiogenomic design using disentanglement in generative adversarial networks (R2D2-GAN), designed to recreate highly subtle, unapparent manifestations of mutations in magnetic resonance imaging. It generates high-resolution, diverse data that captures the discriminatory visual features of the molecular markers while tackling the high diversity, unbalanced, and limited GBM data with rare mutations correlating with patient survival such as 19/20 co-gain. Second, this study proposes a quantitative metric called the synthetic image fidelity (SIF) score to evaluate the performance of GANs in learning visually unapparent prognostic features through the use of gradient-based model explanations. Results are compared with current methods.
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