Nonparametric clustering of RNA‐sequencing data

Gabriel L. Lozano, Nadia M. Atallah, M. Levine
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Abstract

Identification of clusters of co-expressed genes in transcriptomic data is a difficult task. Most algorithms used for this purpose can be classified into two broad categories: distance-based or model-based approaches. Distance-based approaches typically utilize a distance function between pairs of data objects and group similar objects together into clusters. Model-based approaches are based on using the mixture-modeling framework. Compared to distance-based approaches, model-based approaches offer better interpretability because each cluster can be explicitly characterized in terms of the proposed model. However, these models present a particular difficulty in identifying a correct multivariate distribution that a mixture can be based upon. In this manuscript, we review some of the approaches used to select a distribution for the needed mixture model first. Then, we propose avoiding this problem altogether by using a nonparametric MSL (Maximum Smoothed Likelihood) algorithm. This algorithm was proposed earlier in statistical literature but has not been, to the best of our knowledge, applied to transcriptomics data. The salient feature of this approach is that it avoids explicit specification of distributions of individual biological samples altogether, thus making the task of a practitioner easier. When used on a real dataset, the algorithm produces a large number of biologically meaningful clusters and compares favorably to the two other mixture-based algorithms commonly used for RNA-seq data clustering. Our code is publicly available in Github at https://github.com/Matematikoi/non_parametric_clustering.
RNA测序数据的非参数聚类
在转录组学数据中鉴定共表达基因簇是一项艰巨的任务。用于此目的的大多数算法可分为两大类:基于距离的方法或基于模型的方法。基于距离的方法通常利用数据对象对之间的距离函数,并将相似的对象分组到集群中。基于模型的方法基于使用混合建模框架。与基于距离的方法相比,基于模型的方法提供了更好的可解释性,因为每个集群都可以根据所提议的模型显式地表征。然而,这些模型在确定混合物可以基于的正确的多变量分布方面存在特别的困难。在本文中,我们首先回顾了用于选择所需混合模型的分布的一些方法。然后,我们提出使用非参数最大平滑似然(MSL)算法来避免这个问题。该算法早在统计文献中提出,但据我们所知,尚未应用于转录组学数据。这种方法的显著特点是,它避免了个体生物样本分布的明确规范,从而使从业者的任务更容易。当在真实数据集上使用时,该算法产生大量具有生物学意义的聚类,并且与通常用于RNA-seq数据聚类的其他两种基于混合的算法相比具有优势。我们的代码在Github上是公开的,网址是https://github.com/Matematikoi/non_parametric_clustering。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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