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Identification of biomarkers for risk stratification of cardiovascular events using genetic algorithm with recursive local floating search

机译:使用遗传算法和递归局部浮动搜索识别心血管事件风险分层的生物标志物

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Conventional biomarker discovery focuses mostly on the identification of single markers and thus often has limited success in disease diagnosis and prognosis. This study proposes a method to identify an optimized protein biomarker panel based on MS studies for predicting the risk of major adverse cardiac events (MACE) in patients. Since the simplicity and concision requirement for the development of immunoassays can only tolerate the complexity of the prediction model with a very few selected discriminative biomarkers, established optimization methods, such as conventional genetic algorithm (GA), thus fails in the high-dimensional space. In this paper, we present a novel variant of GA that embeds the recursive local floating enhancement technique to discover a panel of protein biomarkers with far better prognostic value for prediction of MACE than existing methods, including the one approved recently by FDA (Food and Drug Administration). The new pragmatic method applies the constraints of MACE relevance and biomarker redundancy to shrink the local searching space in order to avoid heavy computation penalty resulted from the local floating optimization. The proposed method is compared with standard GA and other variable selection approaches based on the MACE prediction experiments. Two powerful classification techniques, partial least squares logistic regression (PLS-LR) and support vector machine classifier (SVMC), are deployed as the MACE predictors owing to their ability in dealing with small scale and binary response data. New preprocessing algorithms, such as low-level signal processing, duplicated spectra elimination, and outliner patient's samples removal, are also included in the proposed method. The experimental results show that an optimized panel of seven selected biomarkers can provide more than 77.1% MACE prediction accuracy using SVMC. The experimental results empirically demonstrate that the new GA algorithm with local floating enhancement (GA-LFE) can achieve the better MACE prediction performance comparing with the existing techniques. The method has been applied to SELDI/MALDI MS datasets to discover an optimized panel of protein biomarkers to distinguish disease from control.
机译:常规生物标志物的发现主要集中于单一标志物的鉴定,因此在疾病诊断和预后方面的成功往往有限。这项研究提出了一种基于MS研究来鉴定优化的蛋白质生物标志物组的方法,以预测患者发生重大不良心脏事件(MACE)的风险。由于开发免疫测定方法的简单性和简洁性要求只能通过很少选择的区分性生物标记物来忍受预测模型的复杂性,因此已建立的优化方法(如常规遗传算法(GA))在高维空间中失败了。在本文中,我们提出了一种新的GA变体,它嵌入了递归的局部漂浮增强技术,以发现一组蛋白质生物标志物,其预后价值比现有方法(包括最近由FDA批准的方法)更能预测MACE行政)。该新的实用方法利用了MACE相关性和生物标记冗余的约束来缩小局部搜索空间,以避免局部浮动优化带来的大量计算损失。将该方法与标准GA和其他基于MACE预测实验的变量选择方法进行了比较。由于它们能够处理小规模和二进制响应数据,因此有两种强大的分类技术,即偏最小二乘逻辑回归(PLS-LR)和支持向量机分类器(SVMC)被用作MACE预测因子。所提出的方法还包括新的预处理算法,例如低水平信号处理,重复光谱消除和轮廓概述患者的样品去除。实验结果表明,使用SVMC,由七个选定的生物标记物组成的优化面板可以提供77.1%的MACE预测准确性。实验结果表明,与现有技术相比,新的具有局部浮动增强的GA算法(GA-LFE)可以实现更好的MACE预测性能。该方法已应用于SELDI / MALDI MS数据集,以发现优化的一组蛋白质生物标记物,以区分疾病与对照。

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