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Survival to Diabetes by age, gender and BMI category

机译:按年龄,性别和BMI类别划分的糖尿病存活率

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ABSTRACT AimTo carry out a 10 year survival analysis to provide insight to NHS partners regarding the time to Type -2 Diabetes across the population of ABM HB and by a variety of key criteria including BMI, gender, age and deprivation. ApproachSurvival time was taken from the window start date (current data date – 10 years) to patient exit from the study (Death, Type-2 Diabetes diagnosis or window end date). Survival output was generated using the Kaplan-Meier estimate as part of the survival package (Therneau T. M., 2015) in R, with Type-2 Diabetes diagnosis as the event variable with the following control and stratification variables: Gender, Age Group (at window start), Average BMI Category and Deprivation Quintile. To identify Diabetic and I particular type-2 patients we developed dictionaries using diagnosis codes from both ICD-10 and READ. These dictionaries were then mapped against the GP, Inpatient and Outpatient datasets to capture a diagnosis of Diabetes as early as possible. The logic to determine whether patients are Diabetic involved the use of 277 READ and 56 ICD-10 codes, incorporating and expanding upon the QOF standard rule-set. To identify as many BMIs as possible three methods were used firstly using absolute BMI measurements. Secondly, using READ codes for pre-binned BMI categories. Thirdly, by combining separate height and weight measurements. The latter method in particular introduces data quality problems, both with erroneous values and in cases where different GPs use different units of measurement (e.g. metres, centimetre, feet, stones). To use these measurements in a reliable manner, we developed complex conditional statements to extract valid measurement records and store them uniformly, such that we can use them easily in a variety of data queries to classify patients by weight category. ResultsCumulative probability (calculated from inverse ‘survival time’) to diabetes is greater in obese and more elderly. There was not the expected impact of deprivation. Representation of survival curves were difficult for lay people and some other stakeholders to interpret so stacked bar charts of cumulative probabilities were visualised. Stakeholders valued being able to interact with the different aggregated visualisations to display different aspects of the results.The results provided valuable insights for NHS partners and informed predictive models.
机译:摘要目标:进行10年生存分析,向NHS合作伙伴提供有关ABM HB人群中-2型糖尿病发生时间的信息,并根据包括BMI,性别,年龄和剥夺在内的各种关键标准进行分析。方法生存时间从窗口开始日期(当前数据日期– 10年)到患者退出研究(死亡,2型糖尿病诊断或窗口结束日期)。使用Kaplan-Meier估计作为R中生存软件包的一部分(Therneau TM,2015)生成生存输出,其中2型糖尿病诊断为事件变量,具有以下控制和分层变量:性别,年龄组(在窗口中)开始),平均BMI类别和剥夺五分位数。为了识别糖尿病患者和我特定的2型患者,我们使用ICD-10和READ的诊断代码开发了词典。然后将这些词典与GP,住院患者和门诊患者数据集相对应,以尽早捕获对糖尿病的诊断。确定患者是否为糖尿病患者的逻辑涉及使用277 READ和56 ICD-10代码,并结合并扩展了QOF标准规则集。为了确定尽可能多的BMI,首先使用三种方法进行绝对BMI测量。其次,对预定义的BMI类别使用READ代码。第三,结合单独的身高和体重测量。后一种方法特别会带来数据质量问题,包括错误的值以及在不同的GP使用不同的度量单位(例如米,厘米,英尺,石头)的情况下。为了以可靠的方式使用这些测量,我们开发了复杂的条件语句来提取有效的测量记录并统一存储,以便我们可以轻松地在各种数据查询中使用它们,以按体重类别对患者进行分类。结果肥胖者和老年人的糖尿病累积概率(根据“生存时间”倒数计算)更高。没有出现剥夺的预期影响。生存曲线很难为外行人和其他利益相关者解释,因此可以看到堆积的累积概率条形图。利益相关者重视能够与不同的汇总可视化进行交互以显示结果的不同方面。结果为NHS合作伙伴提供了有价值的见解,并为他们提供了明智的预测模型。

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