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Classification of astrocytomas and oligodendrogliomas from mass spectrometry data using sparse kernel machines

机译:利用稀疏核心机器对星形细胞瘤和少突胚层的分类

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Glioma histologies are the primary factor in prognostic estimates and are used in determining the proper course of treatment. Furthermore, due to the sensitivity of cranial environments, real-time tumor-cell classification and boundary detection can aid in the precision and completeness of tumor resection. A recent improvement to mass spectrometry known as desorption electrospray ionization operates in an ambient environment without the application of a preparation compound. This allows for a real-time acquisition of mass spectra during surgeries and other live operations. In this paper, we present a framework using sparse kernel machines to determine a glioma sample's histopathological subtype by analyzing its chemical composition acquired by desorption electrospray ionization mass spectrometry.
机译:胶质瘤组织学是预后估计中的主要因素,用于确定适当的治疗过程。此外,由于颅环境的敏感性,实时肿瘤细胞分类和边界检测可以帮助肿瘤切除的精确和完整性。最近被称为解吸电喷雾电离的质谱的改善在环境环境中不应用制备化合物。这允许在手术和其他实时操作期间实时获取质谱。在本文中,我们通过分析通过解吸电喷雾电离质谱法获取的化学组成来确定使用稀疏核机器的框架来确定胶质瘤样品的组织病理学亚型。

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