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Detecting intentional insulin omission for weight loss in girls with type 1 diabetes mellitus

机译:检测1型糖尿病女孩的故意胰岛素遗失以减轻体重

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Objective Intentional insulin omission is a unique inappropriate compensatory behavior that occurs in patients with type 1 diabetes mellitus, mostly in females, who omit or restrict their required insulin doses in order to lose weight. Diagnosis of this underlying disorder is difficult. We aimed to use clinical and laboratory criteria to create an algorithm to assist in the detection of intentional insulin omission. Method The distribution of HbA1c levels from 287 (181 females) patients with type 1 diabetes were used as reference. Data from 26 patients with type 1 diabetes and intentional insulin omission were analysed. The Weka (Waikato Environment for Knowledge Analysis) machine learning software, decision tree classifier with 10-fold cross validation was used to developed prediction models. Model performance was assessed by cross-validation in a further 43 patients. Results Adolescents with intentional insulin omission were discriminated by: female sex, HbA1c>9.2%, more than 20% of HbA1c measurements above the 90th percentile, the mean of 3 highest delta HbA1c z-scores>1.28, current age and age at diagnosis. The models developed showed good discrimination (sensitivity and specificity 0.88 and 0.74, respectively). The external test dataset revealed good performance of the model with a sensitivity and specificity of 1.00 and 0.97, respectively. Discussion Using data mining methods we developed a clinical prediction model to determine an individual's probability of intentionally omitting insulin. This model provides a decision support system for the detection of intentional insulin omission for weight loss in adolescent females with type 1 diabetes mellitus.
机译:目的故意胰岛素遗漏是一种独特的不适当的代偿行为,发生在1型糖尿病患者中,多数发生在女性中,这些女性为了减轻体重而省略或限制了所需的胰岛素剂量。这种潜在疾病的诊断很困难。我们旨在使用临床和实验室标准来创建算法,以协助检测故意的胰岛素遗漏。方法以287例(181名女性)1型糖尿病患者的HbA1c水平分布为参考。分析了来自26位1型糖尿病和故意遗漏胰岛素的患者的数据。使用具有十倍交叉验证的决策树分类器Weka(Waikato知识分析环境)机器学习软件开发了预测模型。通过交叉验证在另外43名患者中评估模型表现。结果故意遗漏胰岛素的青少年有以下特征:女性,HbA1c> 9.2%,高于90%的HbA1c测量值超过20%,3个最高HbA1c Z得分平均值> 1.28,当前年龄和诊断年龄。所开发的模型显示出良好的辨别力(敏感性和特异性分别为0.88和0.74)。外部测试数据集显示该模型具有良好的性能,灵敏度和特异性分别为1.00和0.97。讨论使用数据挖掘方法,我们开发了一种临床预测模型,以确定个人有意省略胰岛素的可能性。该模型提供了一个决策支持系统,用于检测1型糖尿病青春期女性体重减轻的故意胰岛素遗漏。

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