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Kalman filtering for disease-state estimation from microarray data

机译:卡尔曼滤波用于根据微阵列数据估算疾病状态

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Motivation: In this paper, we propose using the Kalman filter (KF) as a pre-processing step in microarray-based molecular diagnosis. Incorporating the expression covariance between genes is important in such classification problems, since this represents the functional relationships that govern tissue state. Failing to fulfil such requirements may result in biologically implausible class prediction models. Here, we show that employing the KF to remove noise (while retaining meaningful covariance and thus being able to estimate the underlying biological state from microarray measurements) yields linearly separable data suitable for most classification algorithms. Results: We demonstrate the utility and performance of the KF as a robust disease-state estimator on publicly available binary and multi-class microarray datasets in combination with the most widely used classification methods to date. Moreover, using popular graphical representation schemes we show that our filtered datasets also have an improved visualization capability.
机译:动机:在本文中,我们建议使用卡尔曼滤波器(KF)作为基于微阵列的分子诊断中的预处理步骤。在这种分类问题中,整合基因之间的表达协方差很重要,因为这代表了控制组织状态的功能关系。未能满足此类要求可能会导致生物学上难以置信的类别预测模型。在这里,我们表明采用KF去除噪声(同时保留有意义的协方差,从而能够根据微阵列测量结果估算潜在的生物学状态)会产生适用于大多数分类算法的线性可分离数据。结果:我们结合迄今为止最广泛使用的分类方法,证明了KF作为公开的二进制和多类微阵列数据集上强大的疾病状态估计器的实用性和性能。此外,使用流行的图形表示方案,我们表明过滤后的数据集还具有改进的可视化功能。

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