Clustering individuals using INMTD: a novel versatile multi-view embedding framework integrating omics and imaging data.

Zuqi Li, Sam F L Windels, Noël Malod-Dognin, Seth M Weinberg, Mary L Marazita, Susan Walsh, Mark D Shriver, David W Fardo, Peter Claes, Nataša Pržulj, Kristel Van Steen
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Abstract

Motivation: Combining omics and images can lead to a more comprehensive clustering of individuals than classic single-view approaches. Among the various approaches for multi-view clustering, nonnegative matrix tri-factorization (NMTF) and nonnegative Tucker decomposition (NTD) are advantageous in learning low-rank embeddings with promising interpretability. Besides, there is a need to handle unwanted drivers of clusterings (i.e. confounders).

Results: In this work, we introduce a novel multi-view clustering method based on NMTF and NTD, named INMTD, which integrates omics and 3D imaging data to derive unconfounded subgroups of individuals. According to the adjusted Rand index, INMTD outperformed other clustering methods on a synthetic dataset with known clusters. In the application to real-life facial-genomic data, INMTD generated biologically relevant embeddings for individuals, genetics, and facial morphology. By removing confounded embedding vectors, we derived an unconfounded clustering with better internal and external quality; the genetic and facial annotations of each derived subgroup highlighted distinctive characteristics. In conclusion, INMTD can effectively integrate omics data and 3D images for unconfounded clustering with biologically meaningful interpretation.

Availability and implementation: INMTD is freely available at https://github.com/ZuqiLi/INMTD.

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使用INMTD聚类个体:一种集成组学和成像数据的新型通用多视图嵌入框架。
动机:结合组学和图像可以比传统的单一视图方法更全面地对个体进行聚类。在各种多视图聚类方法中,非负矩阵三因子分解(NMTF)和非负塔克分解(NTD)在学习低秩嵌入方面具有优势,并且具有良好的可解释性。此外,还需要处理不需要的集群驱动因素(即混杂因素)。结果:在这项工作中,我们引入了一种新的基于NMTF和NTD的多视图聚类方法,称为INMTD,该方法将组学和3D成像数据集成在一起,以获得个体的无混淆亚群。根据调整后的Rand指数,INMTD在已知聚类的合成数据集上优于其他聚类方法。在应用于现实生活中的面部基因组数据时,INMTD生成了与个体、遗传学和面部形态学相关的生物学嵌入。通过去除混杂嵌入向量,得到具有较好内外质量的无混杂聚类;每个衍生亚群的遗传和面部注释突出了不同的特征。综上所述,INMTD可以有效地整合组学数据和3D图像,实现具有生物学意义的无混淆聚类。可用性和实施:https://github.com/ZuqiLi/INMTD.Supplementary信息:补充数据可在生物信息学网站在线获得。
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