Polony Identification Using the EM Algorithm Based on a Gaussian Mixture Model

Wei Li, Paul M. Ruegger, J. Borneman, Tao Jiang
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Abstract

Polony technology is a low-cost, high-throughput platform employed in several applications such as DNA sequencing, haplotyping and alternative pre-mRNA splicing analysis. Owing to their random placement, however, overlapping polonies occur often and may result in inaccurate or unusable data. Accurately identifying polony positions and sizes is essential for maximizing the quantity and quality of data aquired in an image, however, most existing identification algorithms do not handle overlapping polonies well. In this paper, we present a novel polony identification approach combining both a Gaussian Mixture Model (GMM) and the Expectation-Maximization (EM) algorithm. Experiments on simulated and real images of highly overlapping polonies show that our algorithm has a 10% to 20% increase in recall compared with the existing algorithms, while keeping precision at the same level.
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基于高斯混合模型的电磁算法Polony识别
Polony技术是一种低成本,高通量的平台,应用于DNA测序,单倍型和替代前mrna剪接分析等多种应用。然而,由于它们的位置是随机的,重叠的极点经常发生,可能导致不准确或不可用的数据。准确识别多边形的位置和大小对于最大限度地提高图像中获取的数据数量和质量至关重要,然而,大多数现有的识别算法不能很好地处理重叠多边形。本文提出了一种结合高斯混合模型(GMM)和期望最大化(EM)算法的聚类识别方法。在高重叠极点的模拟和真实图像上进行的实验表明,与现有算法相比,我们的算法在保持精度不变的情况下,召回率提高了10% ~ 20%。
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