Francesca Chiaromonte

Affiliations: 
Pennsylvania State University, State College, PA, United States 
Area:
Statistics, Biostatistics Biology
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"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
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