随机森林对1型糖尿病进展的预测能力分析

Niels F. Cleymans;Mark Van De Casteele;Julie Vandewalle;Aster K. Desouter;Frans K. Gorus;Kurt Barbé
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摘要

1型糖尿病(T1Ds)是一种慢性的、目前无法治愈的多因素疾病,由免疫介导的胰岛素生成胰腺β细胞破坏引起,尽管终生接受胰岛素治疗,但仍会导致破坏性和昂贵的急性和慢性并发症。突然的临床发作之前是一个持续时间高度可变的无症状疾病阶段,其特征是连续出现各种类型的β细胞自身抗体(AAbs)。优化的临床发病时间预测有助于早期诊断,这也是降低首次危及生命的糖尿病酮症酸中毒发生率和在无症状阶段规划新的预防试验的关键。对已知T1D患者一级亲属的研究表明,疾病进展可以通过遗传和免疫生物标志物来预测,但这些预测受到传统统计方法(如Cox回归模型)的限制。本探索性研究旨在揭示随机森林机器学习算法在T1D生物医学背景下作为生存模型的潜力。本文构建了两个随机森林生存模型。第一个模型预测个体从单个AAb阳性(AAb+)到多个AAb阳性(AAb+)所需的时间,这是T1D发展的关键步骤。第二个模型预测了从多个AAb+到T1D发病的转变。本文证明了随机森林生存模型优于传统的Cox回归方法;我们进行了详细的变量重要性分析,以发现新的生物标志物相互作用;我们为T1D的精确测量和风险分层建立了一个完善的框架,为更早、更有针对性的干预铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing Random Forest’s Predictive Capability for Type 1 Diabetes Progression
Type 1 diabetes (T1Ds) is a chronic, for now, incurable multifactorial disease caused by the immune-mediated destruction of insulin-producing pancreatic $\beta $ -cells, causing devastating and costly acute and chronic complications, despite lifelong insulin treatment. Abrupt clinical onset is preceded by an asymptomatic disease phase of highly variable duration which is marked by the sequential appearance of various types of $\beta $ -cell autoantibodies (AAbs). Optimized predictions of time to clinical onset facilitate early diagnosis which is also key to reducing the incidence of inaugural life-threatening diabetic ketoacidosis and planning novel prevention trials in the asymptomatic stage. Research in first-degree relatives of known T1D patients has shown that disease progression can be predicted by genetic and immune biomarkers, but these predictions are limited by using the traditional statistical approaches such as Cox regression models. This explorative study aims to uncover the potential of random forest machine learning algorithms as survival models within the biomedical context of T1D. Two random forest survival models were constructed in R. The first constructed model predicts how long it will take for individuals to go from single to multiple AAb positivity (AAb+), a crucial step in T1D development. The second model predicts the transition from multiple AAb+ to the onset of T1D. This article demonstrates that our random forest survival models outperform traditional Cox regression methods; we conduct a detailed analysis of variable importance to uncover novel biomarker interactions; and we establish a refined framework for precise measurement and risk stratification of T1D, paving the way for earlier and more targeted intervention.
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