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Proteomics-Based Machine Learning Approach as an Alternative to Conventional Biomarkers for Differential Diagnosis of Chronic Kidney Diseases

机译:基于蛋白质组学的机器学习方法作为常规生物标志物进行鉴别诊断慢性肾脏疾病的替代品

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Diabetic nephropathy, hypertension, and glomerulonephritis are the most common causes of chronic kidney diseases (CKD). Since CKD of various origins may not become apparent until kidney function is significantly impaired, a differential diagnosis and an appropriate treatment are needed at the very early stages. Conventional biomarkers may not have sufficient separation capabilities, while a full-proteomic approach may be used for these purposes. In the current study, several machine learning algorithms were examined for the differential diagnosis of CKD of three origins. The tested dataset was based on whole proteomic data obtained after the mass spectrometric analysis of plasma and urine samples of 34 CKD patients and the use of label-free quantification approach. The k-nearest-neighbors algorithm showed the possibility of separation of a healthy group from renal patients in general by proteomics data of plasma with high confidence (97.8%). This algorithm has also be proven to be the best of the three tested for distinguishing the groups of patients with diabetic nephropathy and glomerulonephritis according to proteomics data of plasma (96.3% of correct decisions). The group of hypertensive nephropathy could not be reliably separated according to plasma data, whereas analysis of entire proteomics data of urine did not allow differentiating the three diseases. Nevertheless, the group of hypertensive nephropathy was reliably separated from all other renal patients using the k-nearest-neighbors classifier “one against all” with 100% of accuracy by urine proteome data. The tested algorithms show good abilities to differentiate the various groups across proteomic data sets, which may help to avoid invasive intervention for the verification of the glomerulonephritis subtypes, as well as to differentiate hypertensive and diabetic nephropathy in the early stages based not on individual biomarkers, but on the whole proteomic composition of urine and blood.
机译:糖尿病肾病,高血压和肾小球肾炎是慢性肾病(CKD)最常见的原因。由于各种起源的CKD可能不会明显,直到肾功能显然受损,因此在早期阶段需要鉴别诊断和适当的治疗。常规的生物标志物可能没有足够的分离能力,而全蛋白质组学方法可以用于这些目的。在目前的研究中,检查了几种机器学习算法,用于三个起源CKD的差异诊断。测试数据集基于在34次CKD患者的血浆和尿液样本的质谱分析和使用无标签量化方法后获得的全蛋白质组学数据。 K离最近邻居算法表明,血浆的蛋白质组学数据具有高置信度(97.8%),其综合分离健康组的可能性。该算法也被证明是三项测试的最佳测试,以区分患有糖尿病肾病和肾小球肾炎的患者组的血浆(96.3%的正确决定)。根据等离子体数据,不能可靠地分离高血压肾病,而尿液的整个蛋白质组学数据的分析不允许区分三种疾病。尽管如此,通过尿素蛋白质组数据的100%,对所有其他肾病患者的高血压肾病学团体与所有其他肾患者的肾病患者可靠地分开。测试的算法表现出良好的能力,可以在蛋白质组学数据集中区分各种组,这可能有助于避免侵入性干预才能验证肾小球肾炎亚型,以及基于单个生物标志物的早期阶段的高血压和糖尿病肾病,但是在整个泌尿和血液的蛋白质组学组成上。

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