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Identification and external validation of IgA nephropathy patients benefiting from immunosuppression therapy

机译:IgA肾病患者受益于免疫抑制治疗的鉴定及外部验证

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Background Although IgA nephropathy (IgAN), an immune-mediated disease with heterogeneous clinical and pathological phenotypes, is the most common glomerulonephritis worldwide, it remains unclear which IgAN patients benefit from immunosuppression (IS) therapy. Methods Clinical and pathological data from 4047 biopsy-proven IgAN patients from 24 renal centres in China were included. The derivation and validation cohorts were composed of 2058 and 1989 patients, respectively. Model-based recursive partitioning, a machine learning approach, was performed to partition patients in the derivation cohort into subgroups with different IS long-term benefits, associated with time to end-stage kidney disease, measured by adjusted Kaplan-Meier estimator and adjusted hazard ratio (HR) using Cox regression. Findings Three identified subgroups obtained a significant IS benefits with HRs ≤ 1. In patients with serum creatinine ≤ 1·437?mg/dl, the benefits of IS were observed in those with proteinuria 1·525?g/24h (node 6; HR?=?0·50; 95% CI, 0·29 to 0·89; P =?0·02), especially in those with proteinuria 2·480?g/24h (node 8; HR?= 0·23; 95% CI, 0·11 to 0·50; P 0·001). In patients with serum creatinine 1·437?mg/dl, those with high proteinuria and crescents benefitted from IS (node 12; HR?=?0·29; 95% CI, 0·09 to 0·94; P =?0·04). The treatment benefits were externally validated in the validation cohort. Interpretation Machine learning could be employed to identify subgroups with different IS benefits. These efforts promote decision-making, assist targeted clinical trial design, and shed light on individualised treatment in IgAN patients. Funding National Key Research and Development?Program of China (2016YFC0904103), National Key Technology R&D Program (2015BAI12B02).
机译:背景技术虽然IgA肾病(IgAn),具有异质临床和病理表型的免疫介导的疾病是全球最常见的肾小球肾炎,但仍然不清楚哪种Igan患者受益于免疫抑制(是)治疗。方法包括来自中国24个肾中心的4047个活检证代IgAN患者的临床和病理数据。衍生和验证队列分别由2058和1989名患者组成。基于模型的递归分配,一种机器学习方法对衍生群体的分区患者进行衍生群组,与不同的是长期益处,随着时间的推移,通过调整的Kaplan-Meier估计和调整后的危害来测量。测量使用COX回归的比率(HR)。发现三个鉴定的亚组得到显着的是HRS≤1.在血清肌酐≤1·437Ω·mg / dl的患者中,在蛋白尿> 1·525?g / 24h的那些中观察到的益处(节点6; hr?= 0·50; 95%ci,0·29至0·89; p = 0·02),特别是在蛋白尿> 2·480?g / 24h(节点8; hr?= 0· 23; 95%CI,0·11至0·50; P <0·001)。在患者患有血清肌酐> 1·437?mg / dl的患者中,具有高蛋白尿和青春痘的那些(节点12; hr?= 0·29; 95%CI,0·09至0·94; p =? 0·04)。治疗益处在验证队列中进行了外部验证。可以使用解释机器学习来识别不同的子组是有益的。这些努力促进了Igan患者中个性化治疗的决策,协助有针对性的临床试验设计和脱落。资助国家重点研发?中国(2016年FFC0904103),国家重点技术研发计划(2015Bai12B02)。

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