LADA糖尿病病例分类、控制和变量重要性的集成神经模型

A. Miller, John Panneerselvam, Lu Liu, N. Antonopoulos
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引用次数: 0

摘要

糖尿病是一种复杂的疾病,但通常被认为是一种潜在的个体疾病。全面了解LADA糖尿病以前未知的方面不仅有可能确定对LADA的更好理解,而且可以帮助1型和2型糖尿病的分类,因为LADA具有1型和2型糖尿病的特征。本文提出了一种新的异构集成模型,该模型由带有特征提取的神经网络、带有多层感知器的神经网络和多层感知器组成,旨在对LADA糖尿病进行分类,并在分类中加权家族史、年龄、性别、BMI、胆固醇水平和腰围等常规变量的重要性。基于上述三种算法集成堆栈对这些常规变量进行分析,并对整个体系结构进行优化以获得最佳分类性能。所提出的新型集成堆栈在案例、控制和变量重要性的识别方面提供了可靠的预测精度。基于ROC/AUC曲线、查全率、查全率等统计数据对该集成模型进行性能评价,预测准确率为92.00%,灵敏度为91.77%,特异度为92.23%,准确率为92.23%,查全率为91.79%,F1评分为92.02%,最终优于经典分类模型。进一步分析确定腰围是分类过程中一个重要且有影响的变量,因此显示出腰腰与LADA糖尿病100%相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ensemble Neural Model for Classification of LADA Diabetes Case, Control and Variable Importance
LADA Diabetes is a complex disease, but often dismissed as a potential individual disease within its own right. A comprehensive understanding of previously unknown aspects of LADA diabetes has the potential to not only ascertain a greater comprehension of LADA but also can assist the classification of Type 1 and Type 2 diabetes, as LADA characterises the attributes of both Type 1 and Type 2 diabetes. This paper proposes a novel heterogeneous ensemble model comprising of Neural network with Feature Extraction, Neural network alongside Multilayer Perceptron with Multiple Layers with the intention of classifying LADA diabetes along with weighting the importance of conventional variables including family history, age, gender, BMI, cholesterol level, and waist size in the classification. These conventional variables are analysed based on the aforementioned three-algorithm ensemble stack, and the entire architecture is tuned for optimal classification performance. The proposed novel ensemble stack delivers a reliable prediction accuracy in the identification of case, control, and variable importance. Performance evaluation of the proposed ensemble model based on statistics such as ROC/AUC curve, precision and recall demonstrated a higher predictive accuracy of 92.00%, sensitivity of 91.77%, and specificity of 92.23% alongside a precision of 92.23%, recall at 91.79% and an F1 score of 92.02%, ultimately outperforming well-known classical classification models. Further analysis has determined waist as an important and influential variable in the classification process, whereby a 100% association of LADA diabetes with waist is exhibited.
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