Semi-supervised source extraction methodology for the nosological imaging of glioblastoma response to therapy

S. Ortega-Martorell, I. Olier, T. Delgado-Goñi, M. Ciezka, M. Julià-Sapé, P. Lisboa, C. Arús
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引用次数: 3

Abstract

Glioblastomas are one the most aggressive brain tumors. Their usual bad prognosis is due to the heterogeneity of their response to treatment and the lack of early and robust biomarkers to decide whether the tumor is responding to therapy. In this work, we propose the use of a semi-supervised methodology for source extraction to identify the sources representing tumor response to therapy, untreated/unresponsive tumor, and normal brain; and create nosological images of the response to therapy based on those sources. Fourteen mice were used to calculate the sources, and an independent test set of eight mice was used to further evaluate the proposed approach. The preliminary results obtained indicate that was possible to discriminate response and untreated/unresponsive areas of the tumor, and that the color-coded images allowed convenient tracking of response, especially throughout the course of therapy.
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半监督源提取方法用于胶质母细胞瘤对治疗反应的病理成像
胶质母细胞瘤是最具侵袭性的脑肿瘤之一。他们通常的不良预后是由于他们对治疗反应的异质性,以及缺乏早期和强大的生物标志物来确定肿瘤是否对治疗有反应。在这项工作中,我们建议使用半监督方法进行源提取,以识别代表肿瘤对治疗的反应,未治疗/无反应的肿瘤和正常大脑的源;并根据这些来源创建对治疗反应的分类学图像。使用14只小鼠计算源,并使用8只小鼠的独立测试集进一步评估所提出的方法。获得的初步结果表明,可以区分肿瘤的反应和未治疗/无反应区域,并且彩色编码图像可以方便地跟踪反应,特别是在整个治疗过程中。
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