Francesca Chiaromonte
Affiliations: | Pennsylvania State University, State College, PA, United States |
Area:
Statistics, Biostatistics BiologyGoogle:
"Francesca Chiaromonte"
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Publications
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Mughal MR, Koch H, Huang J, et al. (2020) Learning the properties of adaptive regions with functional data analysis. Plos Genetics. 16: e1008896 |
Chen D, Cremona MA, Qi Z, et al. (2020) Human L1 Transposition Dynamics Unraveled with Functional Data Analysis. Molecular Biology and Evolution |
Arbeithuber B, Hester J, Cremona MA, et al. (2020) Age-related accumulation of de novo mitochondrial mutations in mammalian oocytes and somatic tissues. Plos Biology. 18: e3000745 |
Cechova M, Harris RS, Tomaszkiewicz M, et al. (2019) High satellite repeat turnover in great apes studied with short- and long-read technologies. Molecular Biology and Evolution |
Guiblet W, Cremona M, Cechova M, et al. (2018) Long-read sequencing technology indicates genome-wide effects of non-B DNA on polymerization speed and error rate. Genome Research |
Cremona MA, Pini A, Cumbo F, et al. (2018) IWTomics: testing high-resolution sequence-based "Omics" data at multiple locations and scales. Bioinformatics (Oxford, England) |
Marschall T, Marz M, Abeel T, et al. (2018) Computational pan-genomics: status, promises and challenges. Briefings in Bioinformatics. 19: 118-135 |
Bartolucci F, Chiaromonte F, Don PK, et al. (2017) Composite Likelihood Inference in a Discrete Latent Variable Model for Two-Way “Clustering-by-Segmentation” Problems Journal of Computational and Graphical Statistics. 26: 388-402 |
Fungtammasan A, Walsh E, Chiaromonte F, et al. (2016) Corrigendum: A genome-wide analysis of common fragile sites: What features determine chromosomal instability in the human genome? Genome Research. 26: 1451 |
Liu Y, Chiaromonte F, Li B. (2016) Structured Ordinary Least Squares: A Sufficient Dimension Reduction approach for regressions with partitioned predictors and heterogeneous units. Biometrics |