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Reliable typing of systemic amyloidoses through proteomic analysis of subcutaneous adipose tissue

机译:通过蛋白质组学分析皮下脂肪组织可靠地确定全身性淀粉样蛋白

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摘要

Considering the important advances in treating specific types of systemic amyloidoses, unequivocal typing of amyloid deposits is now essential. Subcutaneous abdominal fat aspiration is the easiest, most common diagnostic procedure. We developed a novel, automated approach, based on Multidimensional Protein Identification Technology, for typing amyloidosis. Fat aspirates were obtained from patients with the most common systemic amyloidoses (ALλ, ALκ, transthyretin, and reactive amyloidosis), with Congo red score more than or equal to 3+, and nonaffected controls. Peptides from extracted and digested proteins were analyzed by Multidimensional Protein Identification Technology. On semiquantitative differential analysis (patients vs controls) of mass spectrometry data, specific proteins up-represented in patients were identified and used as deposit biomarkers. An algorithm was developed to classify patients according to type and abundance of amyloidogenic proteins in samples; in all cases, proteomic characterization was concordant with fibril identification by immunoelectron microscopy and consistent with clinical presentation. Our approach allows reliable amyloid classification using readily available fat aspirates.
机译:考虑到治疗特定类型的全身性淀粉样蛋白的重要进展,淀粉样蛋白沉积物的明确分型现在至关重要。腹部皮下脂肪抽吸是最简单,最常见的诊断程序。我们基于多维蛋白质识别技术开发了一种新颖的自动化方法来键入淀粉样变性病。脂肪抽吸物来自最常见的全身性淀粉样糖(ALλ,ALκ,运甲状腺素蛋白和反应性淀粉样变性)患者,刚果红评分大于或等于3+,并且未受影响。通过多维蛋白质鉴定技术分析提取和消化的蛋白质中的肽。在质谱数据的半定量差异分析(患者与对照组)中,确定了患者中表达较高的特定蛋白质,并将其用作沉积生物标志物。开发了一种算法,可根据样本中淀粉样蛋白的类型和丰富程度对患者进行分类。在所有情况下,蛋白质组学表征与免疫电子显微镜对原纤维的鉴定一致,并与临床表现相符。我们的方法允许使用容易获得的脂肪抽吸物对淀粉样蛋白进行可靠的分类。

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