Logo

Publikacije (209)

Nazad
Lewis Au, Z. Tippu, H. Pallikonda, A. Cattin, Georgia Whitton, A. Rowan, A. Fendler, Jahangeer Malik et al.

Ángel Fernández-Sanromán, A. Fendler, B. J. Tan, A. Cattin, C. Spencer, Rachael Thompson, L. Au, Irene Lobon et al.

A genomic and transcriptomic analysis of patients with clear-cell renal cell carcinoma reveals clinically relevant patterns of nongenetic evolution, including progressive immune dysfunction and cGAS–STING suppression.

Liani G. Devito, Eugénie S. Lim, S. M. O'Toole, S. T. Shepherd, Daqi Deng, Hugang Feng, Taja Barber, William M. Drake et al.

L. Marandino, R. Campi, Daniele Amparore, Z. Tippu, L. Albiges, Umberto Capitanio, R. Giles, Silke Gillessen et al.

R. Culliford, Sam Lawrence, Charlie Mills, Z. Tippu, D. Chubb, A. Cornish, Lisa Browning, B. Kinnersley et al.

Clear cell renal cell carcinoma (ccRCC) is the most common form of kidney cancer, but a comprehensive description of its genomic landscape is lacking. We report the whole genome sequencing of 778 ccRCC patients enrolled in the 100,000 Genomes Project, providing for a detailed description of the somatic mutational landscape of ccRCC. We identify candidate driver genes, which as well as emphasising the major role of epigenetic regulation in ccRCC highlight additional biological pathways extending opportunities for therapeutic interventions. Genomic characterisation identified patients with divergent clinical outcome; higher number of structural copy number alterations associated with poorer prognosis, whereas VHL mutations were independently associated with a better prognosis. The observations that higher T-cell infiltration is associated with better overall survival and that genetically predicted immune evasion is not common supports the rationale for immunotherapy. These findings should inform personalised surveillance and treatment strategies for ccRCC patients.

Megan Buckley, Chloé Terwagne, A. Ganner, L. Cubitt, Reid A. Brewer, Dong-Kyu Kim, Christina M. Kajba, Nicole Forrester et al.

To maximize the impact of precision medicine approaches, it is critical to identify genetic variants underlying disease and to accurately quantify their functional effects. A gene exemplifying the challenge of variant interpretation is the von Hippel–Lindautumor suppressor (VHL). VHL encodes an E3 ubiquitin ligase that regulates the cellular response to hypoxia. Germline pathogenic variants in VHL predispose patients to tumors including clear cell renal cell carcinoma (ccRCC) and pheochromocytoma, and somatic VHL mutations are frequently observed in sporadic renal cancer. Here we optimize and apply saturation genome editing to assay nearly all possible single-nucleotide variants (SNVs) across VHL’s coding sequence. To delineate mechanisms, we quantify mRNA dosage effects and compare functional effects in isogenic cell lines. Function scores for 2,268 VHL SNVs identify a core set of pathogenic alleles driving ccRCC with perfect accuracy, inform differential risk across tumor types and reveal new mechanisms by which variants impact function. These results have immediate utility for classifying VHL variants encountered clinically and illustrate how precise functional measurements can resolve pleiotropic and dosage-dependent genotype–phenotype relationships across complete genes.

Adam J. Widman, Minita J. Shah, A. Frydendahl, Daniel Halmos, C. C. Khamnei, N. Øgaard, Srinivas Rajagopalan, Anushri Arora et al.

In solid tumor oncology, circulating tumor DNA (ctDNA) is poised to transform care through accurate assessment of minimal residual disease (MRD) and therapeutic response monitoring. To overcome the sparsity of ctDNA fragments in low tumor fraction (TF) settings and increase MRD sensitivity, we previously leveraged genome-wide mutational integration through plasma whole genome sequencing (WGS). We now introduce MRD-EDGE, a machine learning-guided WGS ctDNA single nucleotide variant (SNV) and copy number variant (CNV) detection platform designed to increase signal enrichment. MRD-EDGESNV uses deep learning and a ctDNA-specific feature space to increase SNV signal-to-noise enrichment in WGS by ~300X compared to previous WGS error suppression. MRD-EDGECNV also reduces the degree of aneuploidy needed for ultrasensitive CNV detection through WGS from 1 Gb to 200 Mb, vastly expanding its applicability within solid tumors. We harness the improved performance to identify MRD following surgery in multiple cancer types, track changes in TF in response to neoadjuvant immunotherapy in lung cancer and demonstrate ctDNA shedding in precancerous colorectal adenomas. Finally, the radical signal-to-noise enrichment in MRD-EDGESNV enables plasma-only (non tumor-informed) disease monitoring in advanced melanoma and lung cancer, yielding clinically informative TF monitoring for patients on immune checkpoint inhibition (ICI).

Petros Fessas, S. Hessey, Corentin Richard, C. Naceur-Lombardelli, S. Ward, David A. Moore, Karolina Nowakowska, Blanca Trujillo et al.

Ángel Fernández Sanromán, L. Au, B. J. Tan, C. Spencer, Anne-Laure Catin, Irene Lobon, H. Pallikonda, K. Litchfield et al.

C. Spencer, Axel Camara, Auriane Riou, L. Au, Jose I. Lopez, Z. Tippu, C. Maussion, Kenneth Ho et al.

James Larkin, Richard Marais, Nuria Porta, David Gonzalez de Castro, Lisa Parsons, C. Messiou, Gordon Stamp, Lisa Thompson et al.

Brian Hanley, Lisa Gallegos, L. Spain, H. Pallikonda, Z. Tippu, S. Hill, A. Barhoumi, F. Byrne et al.

Nema pronađenih rezultata, molimo da izmjenite uslove pretrage i pokušate ponovo!

Pretplatite se na novosti o BH Akademskom Imeniku

Ova stranica koristi kolačiće da bi vam pružila najbolje iskustvo

Saznaj više