MoCoLo: a testing framework for motif co-localization

Author:

Xu Qi1234ORCID,del Mundo Imee M A56,Zewail-Foote Maha78,Luke Brian T910,Vasquez Karen M56,Kowalski Jeanne1112

Affiliation:

1. Department of Molecular Biosciences , College of Natural Sciences, The , Austin, TX, 78712, USA

2. University of Texas at Austin , College of Natural Sciences, The , Austin, TX, 78712, USA

3. Department of Oncology , Dell Medical School, The , Austin, TX, 78712, USA

4. University of Texas at Austin , Dell Medical School, The , Austin, TX, 78712, USA

5. Dell Pediatric Research Institute , Division of Pharmacology and Toxicology, College of Pharmacy, , Austin, Texas, 78723 , USA

6. The University of Texas at Austin , Division of Pharmacology and Toxicology, College of Pharmacy, , Austin, Texas, 78723 , USA

7. Department of Chemistry and Biochemistry , , Georgetown, TX, 78626 , USA

8. Southwestern University , , Georgetown, TX, 78626 , USA

9. Bioinformatics and Computational Science , , Frederick, Maryland, 21701 , USA

10. Frederick National Laboratory for Cancer Research , , Frederick, Maryland, 21701 , USA

11. Department of Oncology , Dell Medical School, The , Austin, TX, 78712 , USA

12. University of Texas at Austin , Dell Medical School, The , Austin, TX, 78712 , USA

Abstract

Abstract Sequence-level data offers insights into biological processes through the interaction of two or more genomic features from the same or different molecular data types. Within motifs, this interaction is often explored via the co-occurrence of feature genomic tracks using fixed-segments or analytical tests that respectively require window size determination and risk of false positives from over-simplified models. Moreover, methods for robustly examining the co-localization of genomic features, and thereby understanding their spatial interaction, have been elusive. We present a new analytical method for examining feature interaction by introducing the notion of reciprocal co-occurrence, define statistics to estimate it and hypotheses to test for it. Our approach leverages conditional motif co-occurrence events between features to infer their co-localization. Using reverse conditional probabilities and introducing a novel simulation approach that retains motif properties (e.g. length, guanine-content), our method further accounts for potential confounders in testing. As a proof-of-concept, motif co-localization (MoCoLo) confirmed the co-occurrence of histone markers in a breast cancer cell line. As a novel analysis, MoCoLo identified significant co-localization of oxidative DNA damage within non-B DNA-forming regions that significantly differed between non-B DNA structures. Altogether, these findings demonstrate the potential utility of MoCoLo for testing spatial interactions between genomic features via their co-localization.

Funder

Department of Oncology

Dell Medical School

National Institutes of Health

Southwestern University’s Garey Endowed Chair in Chemistry

National Cancer Institute

Department of Health and Human

Publisher

Oxford University Press (OUP)

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