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Publicações

Publicações por Nuno Fonseca

2017

A Pan-Cancer Transcriptome Analysis Reveals Pervasive Regulation through Tumor-Associated Alternative Promoters

Autores
Demircioglu, D; Kindermans, M; Nandi, T; Cukuroglu, E; Calabrese, C; Fonseca, NA; Kahles, A; Lehmann, K; Stegle, O; Brazma, A; Brooks, AN; Rätsch, G; Tan, P; Göke, J;

Publicação

Abstract
ABSTRACTMost human protein-coding genes are regulated by multiple, distinct promoters, suggesting that the choice of promoter is as important as its level of transcriptional activity. While the role of promoters as driver elements in cancer has been recognized, the contribution of alternative promoters to regulation of the cancer transcriptome remains largely unexplored. Here we infer active promoters using RNA-Seq data from 1,188 cancer samples with matched whole genome sequencing data. We find that alternative promoters are a major contributor to context-specific regulation of isoform expression and that alternative promoters are frequently deregulated in cancer, affecting known cancer-genes and novel candidates. Our study suggests that a highly dynamic landscape of active promoters shapes the cancer transcriptome, opening many opportunities to further explore the interplay of regulatory mechanism and noncoding somatic mutations with transcriptional aberrations in cancer.

2017

Large-Scale Uniform Analysis of Cancer Whole Genomes in Multiple Computing Environments

Autores
Yung, CK; O’Connor, BD; Yakneen, S; Zhang, J; Ellrott, K; Kleinheinz, K; Miyoshi, N; Raine, KM; Royo, R; Saksena, GB; Schlesner, M; Shorser, SI; Vazquez, M; Weischenfeldt, J; Yuen, D; Butler, AP; Davis-Dusenbery, BN; Eils, R; Ferretti, V; Grossman, RL; Harismendy, O; Kim, Y; Nakagawa, H; Newhouse, SJ; Torrents, D; Stein, LD; Rodriguez, JB; Boroevich, KA; Boyce, R; Brooks, AN; Buchanan, A; Buchhalter, I; Byrne, NJ; Cafferkey, A; Campbell, PJ; Chen, Z; Cho, S; Choi, W; Clapham, P; De La Vega, FM; Demeulemeester, J; Dow, MT; Dursi, LJ; Eils, J; Farcas, C; Favero, F; Fayzullaev, N; Flicek, P; Fonseca, NA; Gelpi, JL; Getz, G; Gibson, B; Heinold, MC; Hess, JM; Hofmann, O; Hong, JH; Hudson, TJ; Huebschmann, D; Hutter, B; Hutter, CM; Imoto, S; Ivkovic, S; Jeon, S; Jiao, W; Jung, J; Kabbe, R; Kahles, A; Kerssemakers, J; Kim, H; Kim, H; Kim, J; Korbel, JO; Koscher, M; Koures, A; Kovacevic, M; Lawerenz, C; Leshchiner, I; Livitz, DG; Mihaiescu, GL; Mijalkovic, S; Lazic, AM; Miyano, S; Nahal, HK; Nastic, M; Nicholson, J; Ocana, D; Ohi, K; Ohno-Machado, L; Omberg, L; Francis Ouellette, B; Paramasivam, N; Perry, MD; Pihl, TD; Prinz, M; Puiggròs, M; Radovic, P; Rheinbay, E; Rosenberg, MW; Short, C; Sofia, HJ; Spring, J; Struck, AJ; Tiao, G; Tijanic, N; Loo, PV; Vicente, D; Wala, JA; Wang, Z; Werner, J; Williams, A; Woo, Y; Wright, AJ; Xiang, Q;

Publicação

Abstract
AbstractThe International Cancer Genome Consortium (ICGC)’s Pan-Cancer Analysis of Whole Genomes (PCAWG) project aimed to categorize somatic and germline variations in both coding and non-coding regions in over 2,800 cancer patients. To provide this dataset to the research working groups for downstream analysis, the PCAWG Technical Working Group marshalled ~800TB of sequencing data from distributed geographical locations; developed portable software for uniform alignment, variant calling, artifact filtering and variant merging; performed the analysis in a geographically and technologically disparate collection of compute environments; and disseminated high-quality validated consensus variants to the working groups. The PCAWG dataset has been mirrored to multiple repositories and can be located using the ICGC Data Portal. The PCAWG workflows are also available as Docker images through Dockstore enabling researchers to replicate our analysis on their own data.

2017

Transcription factor activities enhance markers of drug response in cancer

Autores
Garcia-Alonso, L; Iorio, F; Matchan, A; Fonseca, N; Jaaks, P; Falcone, F; Bignell, G; McDade, SS; Garnett, MJ; Saez-Rodriguez, J;

Publicação

Abstract
AbstractTranscriptional dysregulation is a key feature of cancer. Transcription factors (TFs) are the main link between signalling pathways and the transcriptional regulatory machinery of the cell, positioning them as key oncogenic inductors and therefore potential targets of therapeutic intervention. We implemented a computational pipeline to infer TF regulatory activities from basal gene expression and applied it to publicly available and newly generated RNA-seq data from a collection of 1,010 cancer cell lines and 9,250 primary tumors. We show that the predicted TF activities recapitulate known mechanisms of transcriptional dysregulation in cancer and dissect mutant-specific effects in driver genes. Importantly, we show the potential for predicted TF activities to be used as markers of sensitivity to the inhibition of their upstream regulators. Furthermore, combining these inferred activities with existing pharmacogenomic markers significantly improves the stratification of sensitive and resistant cell lines for several compounds. Our approach provides a framework to link driver genomic alterations with transcriptional dysregulation that helps to predict drug sensitivity in cancer and to dissect its mechanistic determinants.

2017

Whole genome and RNA sequencing of 1,220 cancers reveals hundreds of genes deregulated by rearrangement of cis-regulatory elements

Autores
Zhang, Y; Chen, F; Fonseca, NA; He, Y; Fujita, M; Nakagawa, H; Zhang, Z; Brazma, A; Creighton, CJ;

Publicação

Abstract
AbstractUsing a dataset of somatic Structural Variants (SVs) in cancers from 2658 patients—1220 with corresponding gene expression data—we identified hundreds of genes for which the nearby presence (within 100kb) of an SV breakpoint was associated with altered expression. For the vast majority of these genes, expression was increased rather than decreased with corresponding SV event. Well-known up-regulated cancer-associated genes impacted by this phenomenon included TERT, MDM2, CDK4, ERBB2, CD274, PDCD1LG2, and IGF2. SVs upstream of TERT involved ~3% of cancer cases and were most frequent in liver-biliary, melanoma, sarcoma, stomach, and kidney cancers. SVs associated with up-regulation of PD1 and PDL1 genes involved ~1% of non-amplified cases. For many genes, SVs were significantly associated with either increased numbers or greater proximity of enhancer regulatory elements near the gene. DNA methylation near the gene promoter was often increased with nearby SV breakpoint, which may involve inactivation of repressor elements.AbbreviationsPCAWGthe Pan-Cancer Analysis of Whole Genomes projectSVStructural Variant

2018

Tumors induce de novo steroid biosynthesis in T cells to evade immunity

Autores
Mahata, B; Pramanik, J; van der Weyden, L; Polanski, K; Kar, G; Riedel, A; Chen, X; Fonseca, NA; Kundu, K; Campos, LS; Ryder, E; Duddy, G; Walczak, I; Okkenhaug, K; Adams, DJ; Shields, JD; Teichmann, SA;

Publicação

Abstract
ABSTRACTTumors subvert immune cell function to evade immune responses, yet the complex mechanisms driving immune evasion remain poorly understood. Here we show that tumors induce de novo steroidogenesis in T lymphocytes to evade anti-tumor immunity. Using a novel transgenic steroidogenesis-reporter mouse line we identify and characterize de novo steroidogenic immune cells. Genetic ablation of T cell steroidogenesis restricts primary tumor growth and metastatic dissemination in mouse models. Steroidogenic T cells dysregulate anti-tumor immunity, and inhibition of the steroidogenesis pathway was sufficient to restore anti-tumor immunity. This study demonstrates T cell de novo steroidogenesis as a mechanism of anti-tumor immunosuppression and a potential druggable target.

2020

Speeding up the detection of invasive aquatic species using environmental DNA and nanopore sequencing

Autores
Egeter, B; Veríssimo, J; Lopes-Lima, M; Chaves, C; Pinto, J; Riccardi, N; Beja, P; Fonseca, NA;

Publicação

Abstract
AbstractTraditional detection of aquatic invasive species, via morphological identification is often time-consuming and can require a high level of taxonomic expertise, leading to delayed mitigation responses. Environmental DNA (eDNA) detection approaches of multiple species using Illumina-based sequencing technology have been used to overcome these hindrances, but sample processing is often lengthy. More recently, portable nanopore sequencing technology has become available, which has the potential to make molecular detection of invasive species more widely accessible and to substantially decrease sample turnaround times. However, nanopore-sequenced reads have a much higher error rate than those produced by Illumina platforms, which has so far hindered the adoption of this technology. We provide a detailed laboratory protocol and bioinformatic tools to increase the reliability of nanopore sequencing to detect invasive species, and we test its application using invasive bivalves. We sampled water from sites with pre-existing bivalve occurrence and abundance data, and contrasting bivalve communities, in Italy and Portugal. We extracted, amplified and sequenced eDNA with a turnaround of 3.5 days. The majority of processed reads were = 99 % identical to reference sequences. There were no taxa detected other than those known to occur. The lack of detections of some species at some sites could be explained by their known low abundances. This is the first reported use of MinION to detect aquatic invasive species from eDNA samples. The approach can be easily adapted for other metabarcoding applications, such as biodiversity assessment, ecosystem health assessment and diet studies.

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