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Predicting the Development of Type 2 Diabetes in a Large Australian Cohort Using Machine-Learning Techniques: Longitudinal Survey Study

机译:使用机器学习技术预测大型澳大利亚队列中2型糖尿病的发展:纵向调查研究

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Background Previous conventional models for the prediction of diabetes could be updated by incorporating the increasing amount of health data available and new risk prediction methodology. Objective We aimed to develop a substantially improved diabetes risk prediction model using sophisticated machine-learning algorithms based on a large retrospective population cohort of over 230,000 people who were enrolled in the study during 2006-2017. Methods We collected demographic, medical, behavioral, and incidence data for type 2 diabetes mellitus (T2DM) in over 236,684 diabetes-free participants recruited from the 45 and Up Study. We predicted and compared the risk of diabetes onset in these participants at 3, 5, 7, and 10 years based on three machine-learning approaches and the conventional regression model. Results Overall, 6.05% (14,313/236,684) of the participants developed T2DM during an average 8.8-year follow-up period. The 10-year diabetes incidence in men was 8.30% (8.08%-8.49%), which was significantly higher (odds ratio 1.37, 95% CI 1.32-1.41) than that in women at 6.20% (6.00%-6.40%). The incidence of T2DM was doubled in individuals with obesity (men: 17.78% [17.05%-18.43%]; women: 14.59% [13.99%-15.17%]) compared with that of nonobese individuals. The gradient boosting machine model showed the best performance among the four models (area under the curve of 79% in 3-year prediction and 75% in 10-year prediction). All machine-learning models predicted BMI as the most significant factor contributing to diabetes onset, which explained 12%-50% of the variance in the prediction of diabetes. The model predicted that if BMI in obese and overweight participants could be hypothetically reduced to a healthy range, the 10-year probability of diabetes onset would be significantly reduced from 8.3% to 2.8% (P.001). Conclusions A one-time self-reported survey can accurately predict the risk of diabetes using a machine-learning approach. Achieving a healthy BMI can significantly reduce the risk of developing T2DM.
机译:背景技术通过结合可用的健康数据量和新的风险预测方法,可以更新前一种用于预测糖尿病的常规模型。目的,我们旨在使用复杂的机器学习算法制定基本上改善的糖尿病风险预测模型,基于2006 - 2017年在研究中注册了230,000人的大型回顾人口群组。方法采集236,684名糖尿病(T2DM)的人口统计,医疗,行为和发病率数据收集于236,684名糖尿病的参与者中的236,684名糖尿病参与者。我们预测并将这些参与者在基于三种机器学习方法和传统回归模型的3,5,7和10年中进行了糖尿病发作的风险。结果总体而言,6.05%(14,313 / 236,684)参与者在平均8.8年的随访期间开发了T2DM。男性的10年糖尿病发病率为8.30%(8.08%-8.49%),比妇女在6.20%(6.00%-6.40%)中显着提高(赔率比1.37,95%CI 1.32-1.41)。 T2DM的发病率为肥胖的个体(男性:17.78%[17.05%-18.43%];女性:14.59%[13.99%-15.17%])与非同一个人相比。梯度升压机模型在四个型号(3年预测中的曲线下的区域为79%,10年预测中的75%)显示了最佳性能。所有机器学习模型都预测了BMI作为糖尿病发病的最重要因素,这解释了糖尿病预测方差的12%-50%。该模型预测,如果肥胖和超重参与者的BMI可以假设减少到健康范围,则糖尿病发病的10年概率将从8.3%降低至2.8%(P <.001)。结论一次性自我报告的调查可以使用机器学习方法准确预测糖尿病的风险。实现健康的BMI可以显着降低发展T2DM的风险。

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