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1.
Nat Commun ; 14(1): 6422, 2023 10 12.
Article in English | MEDLINE | ID: mdl-37828026

ABSTRACT

Tumors acquire alterations in oncogenes and tumor suppressor genes in an adaptive walk through the fitness landscape of tumorigenesis. However, the interactions between oncogenes and tumor suppressor genes that shape this landscape remain poorly resolved and cannot be revealed by human cancer genomics alone. Here, we use a multiplexed, autochthonous mouse platform to model and quantify the initiation and growth of more than one hundred genotypes of lung tumors across four oncogenic contexts: KRAS G12D, KRAS G12C, BRAF V600E, and EGFR L858R. We show that the fitness landscape is rugged-the effect of tumor suppressor inactivation often switches between beneficial and deleterious depending on the oncogenic context-and shows no evidence of diminishing-returns epistasis within variants of the same oncogene. These findings argue against a simple linear signaling relationship amongst these three oncogenes and imply a critical role for off-axis signaling in determining the fitness effects of inactivating tumor suppressors.


Subject(s)
Lung Neoplasms , Proto-Oncogene Proteins p21(ras) , Mice , Humans , Animals , Proto-Oncogene Proteins p21(ras)/genetics , Oncogenes/genetics , Lung Neoplasms/genetics , Lung Neoplasms/pathology , Carcinogenesis/genetics , Cell Transformation, Neoplastic/genetics , Mutation
2.
Nat Microbiol ; 4(4): 663-674, 2019 04.
Article in English | MEDLINE | ID: mdl-30742071

ABSTRACT

Thousands of pathogens are known to infect humans, but only a fraction are readily identifiable using current diagnostic methods. Microbial cell-free DNA sequencing offers the potential to non-invasively identify a wide range of infections throughout the body, but the challenges of clinical-grade metagenomic testing must be addressed. Here we describe the analytical and clinical validation of a next-generation sequencing test that identifies and quantifies microbial cell-free DNA in plasma from 1,250 clinically relevant bacteria, DNA viruses, fungi and eukaryotic parasites. Test accuracy, precision, bias and robustness to a number of metagenomics-specific challenges were determined using a panel of 13 microorganisms that model key determinants of performance in 358 contrived plasma samples, as well as 2,625 infections simulated in silico and 580 clinical study samples. The test showed 93.7% agreement with blood culture in a cohort of 350 patients with a sepsis alert and identified an independently adjudicated cause of the sepsis alert more often than all of the microbiological testing combined (169 aetiological determinations versus 132). Among the 166 samples adjudicated to have no sepsis aetiology identified by any of the tested methods, sequencing identified microbial cell-free DNA in 62, likely derived from commensal organisms and incidental findings unrelated to the sepsis alert. Analysis of the first 2,000 patient samples tested in the CLIA laboratory showed that more than 85% of results were delivered the day after sample receipt, with 53.7% of reports identifying one or more microorganisms.


Subject(s)
Cell-Free Nucleic Acids/genetics , Communicable Diseases/diagnosis , High-Throughput Nucleotide Sequencing/methods , Cohort Studies , Communicable Diseases/microbiology , Communicable Diseases/parasitology , Communicable Diseases/virology , DNA, Bacterial/genetics , DNA, Fungal/genetics , DNA, Viral/genetics , Humans , Sepsis/diagnosis , Sepsis/microbiology
3.
PLoS One ; 5(9)2010 Sep 29.
Article in English | MEDLINE | ID: mdl-20927376

ABSTRACT

BACKGROUND: The investigation of the interconnections between the molecular and genetic events that govern biological systems is essential if we are to understand the development of disease and design effective novel treatments. Microarray and next-generation sequencing technologies have the potential to provide this information. However, taking full advantage of these approaches requires that biological connections be made across large quantities of highly heterogeneous genomic datasets. Leveraging the increasingly huge quantities of genomic data in the public domain is fast becoming one of the key challenges in the research community today. METHODOLOGY/RESULTS: We have developed a novel data mining framework that enables researchers to use this growing collection of public high-throughput data to investigate any set of genes or proteins. The connectivity between molecular states across thousands of heterogeneous datasets from microarrays and other genomic platforms is determined through a combination of rank-based enrichment statistics, meta-analyses, and biomedical ontologies. We address data quality concerns through dataset replication and meta-analysis and ensure that the majority of the findings are derived using multiple lines of evidence. As an example of our strategy and the utility of this framework, we apply our data mining approach to explore the biology of brown fat within the context of the thousands of publicly available gene expression datasets. CONCLUSIONS: Our work presents a practical strategy for organizing, mining, and correlating global collections of large-scale genomic data to explore normal and disease biology. Using a hypothesis-free approach, we demonstrate how a data-driven analysis across very large collections of genomic data can reveal novel discoveries and evidence to support existing hypothesis.


Subject(s)
Data Mining , Databases, Genetic , Animals , Database Management Systems , Gene Expression Profiling , Humans , Meta-Analysis as Topic
4.
Genome Res ; 17(10): 1420-30, 2007 Oct.
Article in English | MEDLINE | ID: mdl-17785536

ABSTRACT

We examined fixed substitutions in the human lineage since divergence from the common ancestor with the chimpanzee, and determined what fraction are AT to GC (weak-to-strong). Substitutions that are densely clustered on the chromosomes show a remarkable excess of weak-to-strong "biased" substitutions. These unexpected biased clustered substitutions (UBCS) are common near the telomeres of all autosomes but not the sex chromosomes. Regions of extreme bias are enriched for genes. Human and chimp orthologous regions show a striking similarity in the shape and magnitude of their respective UBCS maps, suggesting a relatively stable force leads to clustered bias. The strong and stable signal near telomeres may have participated in the evolution of isochores. One exception to the UBCS pattern found in all autosomes is chromosome 2, which shows a UBCS peak midchromosome, mapping to the fusion site of two ancestral chromosomes. This provides evidence that the fusion occurred as recently as 740,000 years ago and no more than approximately 3 million years ago. No biased clustering was found in SNPs, suggesting that clusters of biased substitutions are selected from mutations. UBCS is strongly correlated with male (and not female) recombination rates, which explains the lack of UBCS signal on chromosome X. These observations support the hypothesis that biased gene conversion (BGC), specifically in the male germline, played a significant role in the evolution of the human genome.


Subject(s)
Gene Conversion , Genome, Human , Animals , Chromosomes, Human, Pair 2/genetics , Chromosomes, Human, X/genetics , Chromosomes, Human, Y/genetics , Evolution, Molecular , Female , Gene Fusion , Humans , Male , Models, Genetic , Pan troglodytes/genetics , Polymorphism, Single Nucleotide , Recombination, Genetic , Sex Characteristics , Species Specificity , Telomere/genetics , Time Factors
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