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首页> 外文期刊>Cancer research: The official organ of the American Association for Cancer Research, Inc >Mass Spectrometry Imaging Enables Discrimination of Renal Oncocytoma from Renal Cell Cancer Subtypes and Normal Kidney Tissues
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Mass Spectrometry Imaging Enables Discrimination of Renal Oncocytoma from Renal Cell Cancer Subtypes and Normal Kidney Tissues

机译:质谱成像使得能够从肾细胞癌亚型和正常肾组织中的肾儿肾细胞瘤歧视

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Precise diagnosis and subtyping of kidney tumors are imperative to optimize and personalize treatment decision for patients. Patients with the most common benign renal tumor, renal oncocytomas, may be overtreated with surgical resection because of limited preoperative diagnostic methods that can accurately identify the benign condition with certainty. In this study, desorption electrospray ionization (DESI)-mass spectrometry (MS) imaging was applied to study the metabolic and lipid profiles of various types of renal tissues, including normal kidney, renal oncocytoma, and renal cell carcinomas (RCC). A total of 73,992 mass spectra from 71 patient samples were obtained and used to build predictive models using the least absolute shrinkage and selection operator (Lasso). Overall accuracies of 99.47% per pixel and 100% per patient for prediction of the three tissue types were achieved. In particular, renal oncocytoma and chromophobe RCC, which present the most significant morphologic overlap and are sometimes indistinguishable using histology alone, were also investigated and the predictive models built yielded 100% accuracy in discriminating these tumor types. Discrimination of three subtypes ofRCC was also achieved on the basis of DESI-MS imaging data. Importantly, several small metabolites and lipids species were identified as characteristic of individual tissue types and chemically characterized using tandem MS and high mass accuracy measurements. Collectively, our study shows that the metabolic data acquired by DESI-MS imaging in conjunction with statistical modeling allows discrimination of renal tumors and thus has the potential to be used in the clinical setting to improve treatment of patients with kidney tumor.
机译:肾肿瘤的精确诊断和亚型是针对患者的优化和个性化治疗决策的迫切性。患者患有最常见的良性肾肿瘤,肾心囊肿,可能会因手术切除而过度处理,因为术前诊断方法有限,可以确定地确定良性条件。在该研究中,应用解吸电喷雾电离(DESI)谱图(MS)成像用于研究各种类型的肾组织的代谢和脂质谱,包括正常的肾,肾癌肾细胞和肾细胞癌(RCC)。获得来自71例患者样品的73,992个质谱,并用于使用最小的绝对收缩和选择操作员(套索)构建预测模型。实现了每像素99.47%的总体精度,每位患者100%用于预测三种组织类型。特别地,还研究了肾癌和发球菌,其具有单独使用组织学的最显着的形态重叠和有时难以区分,并且在鉴别这些肿瘤类型时,构建的预测模型得到了100%的精度。在Desi-MS成像数据的基础上也实现了RCC的三个亚型的歧视。重要的是,将几种小代谢物和脂质物种鉴定为个体组织类型的特征,并使用串联MS和高质量的精度测量化学表征。集体,我们的研究表明,与统计学建模结合的DESI-MS成像所获得的代谢数据允许抗肾肿瘤的判断,从而有可能在临床环境中使用,以改善肾脏肿瘤患者的治疗。

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