使用混合ML算法预测颈动脉疾病前驱期的代谢组学研究

V. Pezoulas, Pashupati P. Mishra, Olli T. Raitakari, M. Kahonen, T. Lehtimaki, D. Fotiadis, A. Sakellarios
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引用次数: 1

摘要

颈动脉疾病(CAD)可能导致中风并对患者造成致命后果。颈动脉内膜中膜厚度(IMT)明显增高的早期无创诊断和预测可降低心血管疾病的死亡率。当有足够的数据可用时,机器学习可以应用于为此目的开发健壮的模型。在这项工作中,我们利用来自年轻芬兰人研究临床试验中2147例患者的代谢组学数据来预测高内膜中膜厚度作为动脉粥样硬化性颈动脉疾病的前症阶段。开发了一种可解释的基于人工智能的管道,其中包括梯度增强树(GBT)的新应用。更具体地说,在损失函数拓扑中,使用混合损失函数来调整“飞镖”助推器中丢失率的影响。我们的分析结果表明,GBT的新实现在灵敏度方面提高了结果,这是我们分析最重要的要求(精度0.80,灵敏度0.86,AUC 0.85)。此外,研究表明,代谢组学可以提高预测IMT增加的敏感性。
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Metabolomics in the prediction of prodromal stages of carotid artery disease using a hybrid ML algorithm
Carotid artery disease (CAD) may be responsible for a stroke with fatal consequences for the patients. Early and non-invasive diagnosis and prediction of significantly high carotid intima media thickness (IMT) can reduce the death rates caused by cardiovascular disease. Machine learning can be applied for the development of robust models for this purpose when adequate data are available. In this work, we utilized metabolomics data from 2,147 patients in the Young Finns Study clinical trial to predict the high intima media thickness as a prodromal stage of the atherosclerotic carotid disease. An explainable AI based pipeline was developed which includes a novel employment of the Gradient Boosted Trees (GBT). More specifically, a hybrid loss function was used to adjust the effect of the dropout rates in the ‘dart’ booster in the loss function topology. The results of our analysis demonstrate that the novel implementation of the GBT improves the results in terms of the sensitivity which is the most important requirement to our analysis (accuracy 0.80, sensitivity 0.86, AUC 0.85). Moreover, it is shown that metabolomics can be used to increase sensitivity in predicting the increased IMT.
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