Renal medicine

肾脏医学
  • 文章类型: Journal Article
    背景:二型糖尿病(T2D)是慢性肾脏疾病(CKD)和进展为终末期肾脏疾病的主要原因。T2D患者CKD的及时诊断编码可以改善护理质量和患者预后。
    目的:评估基于估算的肾小球滤过率(eGFR)的CKD证据与英国初级保健中CKD诊断编码之间的一致性。
    方法:回顾性分析了2012年至2022年间来自英格兰60个初级保健中心的2型糖尿病患者的电子健康记录数据。
    方法:我们使用基于eGFR的CKD和诊断代码估算了每100人年CKD的发病率。应用Logistic回归来确定哪些属性与诊断编码相关联。使用中位数和四分位数范围总结从基于eGFR的CKD到输入诊断代码的时间。
    结果:CKD的总发生率为2.32(95%CI:2.24,2.41),基于eGFR的标准明显高于诊断代码:1.98(95%CI:1.90,2.05)和1.06(95%CI:1.00,1.11);P<0.001。使用基于eGFR的标准确定的CKD发病率中只有46%具有相应的诊断代码。年轻的病人,严重程度较高的CKD阶段,观察到的尿白蛋白/肌酐比值或未观察到的HbA1c更有可能具有诊断代码。
    结论:在英国初级保健中具有基于eGFR的CKD证据的患者的诊断编码在2型糖尿病患者中较差,尽管CKD是众所周知的糖尿病并发症。
    BACKGROUND: Type two diabetes (T2D) is a leading cause of both chronic kidney disease (CKD) and onward progression to end-stage renal disease. Timely diagnosis coding of CKD in patients with T2D could lead to improvements in quality of care and patient outcomes.
    OBJECTIVE: To assess the consistency between estimated glomerular filtration rate (eGFR)-based evidence of CKD and CKD diagnosis coding in UK primary care.
    METHODS: A retrospective analysis of electronic health record data in a cohort of people with T2D from 60 primary care centres within England between 2012 and 2022.
    METHODS: We estimated the incidence rate of CKD per 100 person-years using eGFR-based CKD and diagnosis codes. Logistic regression was applied to establish which attributes were associated with diagnosis coding. Time from eGFR-based CKD to entry of a diagnosis code was summarised using the median and interquartile range.
    RESULTS: The overall incidence of CKD was 2.32 (95% confidence interval [CI] = 2.24 to 2.41) and significantly higher for eGFR-based criteria than diagnosis codes: 1.98 (95% CI = 1.90 to 2.05) versus 1.06 (95% CI = 1.00 to 1.11), respectively; P<0.001. Only 45.4% of CKD incidences identified using eGFR-based criteria had a corresponding diagnosis code. Patients who were younger, had a higher CKD stage (G4), had an observed urine albumin-to-creatinine ratio (A1), or no observed HbA1c in the past year were more likely to have a diagnosis code.
    CONCLUSIONS: Diagnosis coding of patients with eGFR-based evidence of CKD in UK primary care is poor within patients with T2D, despite CKD being a well-known complication of diabetes.
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  • 文章类型: Journal Article
    背景:美国国家健康与护理卓越研究所2021年慢性肾脏病(CKD)指南建议使用肾衰竭风险方程(KFRE),其中包括白蛋白尿的测量。计算估计肾小球滤过率(eGFR)的公式也已更新。
    目的:研究KFRE和更新的eGFR方程对初级保健中CKD诊断(eGFR<60mL/min/1.73m2)的影响以及可能的肾脏病转诊。
    方法:初级保健数据库(安全匿名信息链接数据库[SAIL])和前瞻性队列研究(UKBiobank),使用2013年至2020年的数据。
    方法:使用更新的eGFR方程评估CKD诊断率。在eGFR为30-59mL/min/1.73m2的人群中,确定了以下人群:每年进行白蛋白尿测试的人群和符合肾脏病学转诊标准的人群,原因是:a)eGFR加速下降或明显白蛋白尿;b)eGFR下降<30mL/min/1.73m2;c)仅KFRE>5%。分析在英国生物银行按种族分层。
    结果:使用更新的eGFR方程导致SAIL中主要白人人群的新CKD诊断下降了1.2倍,而英国生物银行的黑人参与者的CKD患病率上升了1.9倍。自2015年以来,蛋白尿检测率一直低于30%。在2019年,使用KFRE>5%的患者在eGFR下降之前确定了182/61721(0.3%)的CKD进展高风险患者和361/61721(0.6%)的低危患者不再符合转诊条件。“亚裔”和“其他”种族不成比例地提高了KFRE。
    结论:在初级保健中应用KFRE标准将导致更多肾衰竭风险升高的患者(尤其是少数族裔)和更少的低风险患者转诊。需要扩展白蛋白尿测试,以实现更广泛的KFRE实施。
    National Institute for Health and Care Excellence 2021 guidelines on chronic kidney disease (CKD) recommend the use of the Kidney Failure Risk Equation (KFRE), which includes measurement of albuminuria. The equation to calculate estimated glomerular filtration rate (eGFR) has also been updated.
    To investigate the impact of the use of KFRE and the updated eGFR equation on CKD diagnosis (eGFR <60 mL/min/1.73 m2) in primary care and potential referrals to nephrology.
    Primary care database (Secure Anonymised Information Linkage Databank [SAIL]) and prospective cohort study (UK Biobank) using data available between 2013 and 2020.
    CKD diagnosis rates were assessed when using the updated eGFR equation. Among people with eGFR 30-59 mL/min/1.73 m2 the following groups were identified: those with annual albuminuria testing and those who met nephrology referral criteria because of: a) accelerated eGFR decline or significant albuminuria; b) eGFR decline <30 mL/ min/1.73 m2 only; and c) KFRE >5% only. Analyses were stratified by ethnicity in UK Biobank.
    Using the updated eGFR equation resulted in a 1.2-fold fall in new CKD diagnoses in the predominantly White population in SAIL, whereas CKD prevalence rose by 1.9-fold among Black participants in UK Biobank. Rates of albuminuria testing have been consistently below 30% since 2015. In 2019, using KFRE >5% identified 182/61 721 (0.3%) patients at high risk of CKD progression before their eGFR declined and 361/61 721 (0.6%) low-risk patients who were no longer eligible for referral. Ethnic groups \'Asian\' and \'other\' had disproportionately raised KFREs.
    Application of KFRE criteria in primary care will lead to referral of more patients at elevated risk of kidney failure (particularly among minority ethnic groups) and fewer low-risk patients. Albuminuria testing needs to be expanded to enable wider KFRE implementation.
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  • 文章类型: Journal Article
    背景:先前的英国生物银行研究表明,症状和身体测量对一般人群的长期临床结果具有很好的预测作用。症状和体征可以直观和非侵入性地预测和监测疾病进展,尤其是远程医疗,但是相关的研究在糖尿病和肾脏医学方面是有限的。方法:这项回顾性队列研究旨在评估基于症状的分层框架和个体糖尿病症状的预测能力。连续从香港的门诊诊所抽取三百名成年糖尿病患者进行前瞻性症状评估。从链接的医疗记录中回顾性地提取了人口统计学和生化参数的纵向测量。估算的肾小球滤过率(GFR)(自变量)与生物化学之间的关联,流行病学因素,通过混合回归分析评估个体症状.采用德尔菲共识法建立了基于症状聚类的糖尿病症状分层框架。Akaike信息准则(AIC)和贝叶斯信息准则(BIC)在具有不同生化组合的统计模型之间进行了比较,流行病学,和症状变量。结果:在4.2年的随访期内,水肿的基线表现(-1.8ml/min/1.73m2,95CI:-2.5至-1.2,p<0.001),上腹胀(-0.8ml/min/1.73m2,95CI:-1.4至-0.2,p=0.014)和干便和稀便交替(-1.1ml/min/1.73m2,95CI:-1.9至-0.4,p=0.004)与较快的年度GFR下降独立相关。从文献中确定了11个症状群,主要通过胃肠道表型对糖尿病进行分层。与使用单个症状相比,使用Delphi共识同步的症状聚类作为统计模型中的自变量降低了复杂性并提高了解释力。症状-生物-流行病学联合模型的AIC最低(4,478vs.5,824vs.4,966vs.7,926)和BIC(4,597vs.5,870vs.5,065vs.8,026)与症状相比,症状流行病学和生物流行病学模型,分别。患者共同表现出一系列的疲劳,萎靡不振,口干,和干燥的咽喉与较快的年度GFR下降独立相关(-1.1ml/min/1.73m2,95CI:-1.9至-0.2,p=0.011)。结论:基于关键生化和流行病学因素的基于症状的附加诊断提高了糖尿病患者肾功能下降的预测能力。在临床实践和研究设计中应考虑症状的动态变化。
    Background: Previous UK Biobank studies showed that symptoms and physical measurements had excellent prediction on long-term clinical outcomes in general population. Symptoms and signs could intuitively and non-invasively predict and monitor disease progression, especially for telemedicine, but related research is limited in diabetes and renal medicine. Methods: This retrospective cohort study aimed to evaluate the predictive power of a symptom-based stratification framework and individual symptoms for diabetes. Three hundred two adult diabetic patients were consecutively sampled from outpatient clinics in Hong Kong for prospective symptom assessment. Demographics and longitudinal measures of biochemical parameters were retrospectively extracted from linked medical records. The association between estimated glomerular filtration rate (GFR) (independent variable) and biochemistry, epidemiological factors, and individual symptoms was assessed by mixed regression analyses. A symptom-based stratification framework of diabetes using symptom clusters was formulated by Delphi consensus method. Akaike information criterion (AIC) and Bayesian information criterion (BIC) were compared between statistical models with different combinations of biochemical, epidemiological, and symptom variables. Results: In the 4.2-year follow-up period, baseline presentation of edema (-1.8 ml/min/1.73m2, 95%CI: -2.5 to -1.2, p < 0.001), epigastric bloating (-0.8 ml/min/1.73m2, 95%CI: -1.4 to -0.2, p = 0.014) and alternating dry and loose stool (-1.1 ml/min/1.73m2, 95%CI: -1.9 to -0.4, p = 0.004) were independently associated with faster annual GFR decline. Eleven symptom clusters were identified from literature, stratifying diabetes predominantly by gastrointestinal phenotypes. Using symptom clusters synchronized by Delphi consensus as the independent variable in statistical models reduced complexity and improved explanatory power when compared to using individual symptoms. Symptom-biologic-epidemiologic combined model had the lowest AIC (4,478 vs. 5,824 vs. 4,966 vs. 7,926) and BIC (4,597 vs. 5,870 vs. 5,065 vs. 8,026) compared to the symptom, symptom-epidemiologic and biologic-epidemiologic models, respectively. Patients co-presenting with a constellation of fatigue, malaise, dry mouth, and dry throat were independently associated with faster annual GFR decline (-1.1 ml/min/1.73m2, 95%CI: -1.9 to -0.2, p = 0.011). Conclusions: Add-on symptom-based diagnosis improves the predictive power on renal function decline among diabetic patients based on key biochemical and epidemiological factors. Dynamic change of symptoms should be considered in clinical practice and research design.
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