Department of Clinical and Experimental Medicine, University of Pisa, Pisa, Italy.
Department of Surgical, Medical, Molecular and Critical Area Pathology, University of Pisa, Pisa, Italy.
Nephrol Dial Transplant. 2021 Sep 27;36(10):1859-1866. doi: 10.1093/ndt/gfaa175.
Chronic kidney disease (CKD) shows different clinical features in Types1 (T1D) and 2 diabetes (T2D). Metabolomics have recently provided useful contribution to the identification of biomarkers of CKD progression in either form of the disease. However, no studies have so far compared plasma metabolomics between T1D and T2D in order to identify differential signatures of progression of estimated glomerular filtration rate (eGFR) decline.
We used two large cohorts of T1D (from Finland) and T2D (from Italy) patients followed up to 7 and 3 years, respectively. In both groups, progression was defined as the top quartile of yearly decline in eGFR. Pooled data from the two groups were analysed by univariate and bivariate random forest (RF), and confirmed by bivariate partial least squares (PLS) analysis, the response variables being type of diabetes and eGFR progression.
In progressors, yearly eGFR loss was significantly larger in T2D [-5.3 (3.0), median (interquartile range)mL/min/1.73 m2/year] than T1D [-3.7 (3.1) mL/min/1.73 m2/year ; P = 0.018]. Out of several hundreds, bivariate RF extracted 22 metabolites associated with diabetes type (all higher in T1D than T2D except for 5-methylthioadenosine, pyruvate and β-hydroxypyruvate) and 13 molecules associated with eGFR progression (all higher in progressors than non-progressors except for sphyngomyelin). Three of the selected metabolites (histidylphenylalanine, leucylphenylalanine, tryptophylasparagine) showed a significant interaction between disease type and progression. Only eight metabolites were common to both bivariate RF and PLS.
Identification of metabolomic signatures of CKD progression is partially dependent on the statistical model. Dual analysis identified molecules specifically associated with progressive renal impairment in both T1D and T2D.
慢性肾脏病(CKD)在 1 型(T1D)和 2 型糖尿病(T2D)中表现出不同的临床特征。代谢组学最近为识别 CKD 进展的生物标志物提供了有用的贡献,无论是在疾病的哪种形式中。然而,迄今为止,尚无研究比较 T1D 和 T2D 之间的血浆代谢组学,以确定估计肾小球滤过率(eGFR)下降的进展的差异特征。
我们使用了来自芬兰的 T1D(来自芬兰)和意大利的 T2D(来自意大利)患者的两个大型队列,分别随访 7 年和 3 年。在这两组中,进展都定义为 eGFR 每年下降的前四分之一。对来自两组的合并数据进行了单变量和双变量随机森林(RF)分析,并通过双变量偏最小二乘(PLS)分析进行了验证,反应变量为糖尿病类型和 eGFR 进展。
在进展者中,T2D[eGFR 每年损失为-5.3(3.0),中位数(四分位距)mL/min/1.73 m2/年]明显大于 T1D[eGFR 每年损失为-3.7(3.1)mL/min/1.73 m2/年;P=0.018]。在数百种代谢物中,双变量 RF 提取出 22 种与糖尿病类型相关的代谢物(除 5-甲基硫代腺苷、丙酮酸和β-羟丙酮酸外,所有代谢物在 T1D 中均高于 T2D)和 13 种与 eGFR 进展相关的代谢物(除鞘磷脂外,所有代谢物在进展者中均高于非进展者)。所选代谢物中有 3 种(组氨酰苯丙氨酸、亮氨酰苯丙氨酸、色氨酰天冬酰胺)显示出疾病类型与进展之间的显著相互作用。只有 8 种代谢物同时存在于双变量 RF 和 PLS 中。
CKD 进展的代谢组学特征的识别部分取决于统计模型。双重分析确定了在 T1D 和 T2D 中均与进行性肾损害特异性相关的分子。