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1.
Cell ; 184(8): 2239-2254.e39, 2021 04 15.
Article in English | MEDLINE | ID: mdl-33831375

ABSTRACT

Intra-tumor heterogeneity (ITH) is a mechanism of therapeutic resistance and therefore an important clinical challenge. However, the extent, origin, and drivers of ITH across cancer types are poorly understood. To address this, we extensively characterize ITH across whole-genome sequences of 2,658 cancer samples spanning 38 cancer types. Nearly all informative samples (95.1%) contain evidence of distinct subclonal expansions with frequent branching relationships between subclones. We observe positive selection of subclonal driver mutations across most cancer types and identify cancer type-specific subclonal patterns of driver gene mutations, fusions, structural variants, and copy number alterations as well as dynamic changes in mutational processes between subclonal expansions. Our results underline the importance of ITH and its drivers in tumor evolution and provide a pan-cancer resource of comprehensively annotated subclonal events from whole-genome sequencing data.


Subject(s)
Genetic Heterogeneity , Neoplasms/genetics , DNA Copy Number Variations , DNA, Neoplasm/chemistry , DNA, Neoplasm/metabolism , Databases, Genetic , Drug Resistance, Neoplasm/genetics , Humans , Neoplasms/pathology , Polymorphism, Single Nucleotide , Whole Genome Sequencing
2.
Nat Rev Genet ; 24(12): 851-867, 2023 Dec.
Article in English | MEDLINE | ID: mdl-37400577

ABSTRACT

Control interventions steer the evolution of molecules, viruses, microorganisms or other cells towards a desired outcome. Applications range from engineering biomolecules and synthetic organisms to drug, therapy and vaccine design against pathogens and cancer. In all these instances, a control system alters the eco-evolutionary trajectory of a target system, inducing new functions or suppressing escape evolution. Here, we synthesize the objectives, mechanisms and dynamics of eco-evolutionary control in different biological systems. We discuss how the control system learns and processes information about the target system by sensing or measuring, through adaptive evolution or computational prediction of future trajectories. This information flow distinguishes pre-emptive control strategies by humans from feedback control in biotic systems. We establish a cost-benefit calculus to gauge and optimize control protocols, highlighting the fundamental link between predictability of evolution and efficacy of pre-emptive control.


Subject(s)
Bioengineering , Biological Evolution , Humans
3.
Nature ; 578(7793): 94-101, 2020 02.
Article in English | MEDLINE | ID: mdl-32025018

ABSTRACT

Somatic mutations in cancer genomes are caused by multiple mutational processes, each of which generates a characteristic mutational signature1. Here, as part of the Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium2 of the International Cancer Genome Consortium (ICGC) and The Cancer Genome Atlas (TCGA), we characterized mutational signatures using 84,729,690 somatic mutations from 4,645 whole-genome and 19,184 exome sequences that encompass most types of cancer. We identified 49 single-base-substitution, 11 doublet-base-substitution, 4 clustered-base-substitution and 17 small insertion-and-deletion signatures. The substantial size of our dataset, compared with previous analyses3-15, enabled the discovery of new signatures, the separation of overlapping signatures and the decomposition of signatures into components that may represent associated-but distinct-DNA damage, repair and/or replication mechanisms. By estimating the contribution of each signature to the mutational catalogues of individual cancer genomes, we revealed associations of signatures to exogenous or endogenous exposures, as well as to defective DNA-maintenance processes. However, many signatures are of unknown cause. This analysis provides a systematic perspective on the repertoire of mutational processes that contribute to the development of human cancer.


Subject(s)
Mutation/genetics , Neoplasms/genetics , Age Factors , Base Sequence , Exome/genetics , Genome, Human/genetics , Humans , Sequence Analysis, DNA
4.
Nature ; 578(7793): 122-128, 2020 02.
Article in English | MEDLINE | ID: mdl-32025013

ABSTRACT

Cancer develops through a process of somatic evolution1,2. Sequencing data from a single biopsy represent a snapshot of this process that can reveal the timing of specific genomic aberrations and the changing influence of mutational processes3. Here, by whole-genome sequencing analysis of 2,658 cancers as part of the Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium of the International Cancer Genome Consortium (ICGC) and The Cancer Genome Atlas (TCGA)4, we reconstruct the life history and evolution of mutational processes and driver mutation sequences of 38 types of cancer. Early oncogenesis is characterized by mutations in a constrained set of driver genes, and specific copy number gains, such as trisomy 7 in glioblastoma and isochromosome 17q in medulloblastoma. The mutational spectrum changes significantly throughout tumour evolution in 40% of samples. A nearly fourfold diversification of driver genes and increased genomic instability are features of later stages. Copy number alterations often occur in mitotic crises, and lead to simultaneous gains of chromosomal segments. Timing analyses suggest that driver mutations often precede diagnosis by many years, if not decades. Together, these results determine the evolutionary trajectories of cancer, and highlight opportunities for early cancer detection.


Subject(s)
Evolution, Molecular , Genome, Human/genetics , Neoplasms/genetics , DNA Repair/genetics , Gene Dosage , Genes, Tumor Suppressor , Genetic Variation , Humans , Mutagenesis, Insertional/genetics
5.
PLoS Comput Biol ; 20(7): e1011585, 2024 Jul.
Article in English | MEDLINE | ID: mdl-39038063

ABSTRACT

Quantitative understanding of microbial growth is an essential prerequisite for successful control of pathogens as well as various biotechnology applications. Even though the growth of cell populations has been extensively studied, microbial growth remains poorly characterised at the spatial level. Indeed, even isogenic populations growing at different locations on solid growth medium typically show significant location-dependent variability in growth. Here we show that this variability can be attributed to the initial physiological states of the populations, the interplay between populations interacting with their local environment and the diffusion of nutrients and energy sources coupling the environments. We further show how the causes of this variability change throughout the growth of a population. We use a dual approach, first applying machine learning regression models to discover that location dominates growth variability at specific times, and, in parallel, developing explicit population growth models to describe this spatial effect. In particular, treating nutrient and energy source concentration as a latent variable allows us to develop a mechanistic resource consumer model that captures growth variability across the shared environment. As a consequence, we are able to determine intrinsic growth parameters for each local population, removing confounders common to location-dependent variability in growth. Importantly, our explicit low-parametric model for the environment paves the way for massively parallel experimentation with configurable spatial niches for testing specific eco-evolutionary hypotheses.


Subject(s)
Machine Learning , Models, Biological , Computational Biology , Nutrients/metabolism
7.
PLoS Comput Biol ; 19(7): e1011268, 2023 07.
Article in English | MEDLINE | ID: mdl-37498846

ABSTRACT

Permafrost thawing and the potential 'lab leak' of ancient microorganisms generate risks of biological invasions for today's ecological communities, including threats to human health via exposure to emergent pathogens. Whether and how such 'time-travelling' invaders could establish in modern communities is unclear, and existing data are too scarce to test hypotheses. To quantify the risks of time-travelling invasions, we isolated digital virus-like pathogens from the past records of coevolved artificial life communities and studied their simulated invasion into future states of the community. We then investigated how invasions affected diversity of the free-living bacteria-like organisms (i.e., hosts) in recipient communities compared to controls where no invasion occurred (and control invasions of contemporary pathogens). Invading pathogens could often survive and continue evolving, and in a few cases (3.1%) became exceptionally dominant in the invaded community. Even so, invaders often had negligible effects on the invaded community composition; however, in a few, highly unpredictable cases (1.1%), invaders precipitated either substantial losses (up to -32%) or gains (up to +12%) in the total richness of free-living species compared to controls. Given the sheer abundance of ancient microorganisms regularly released into modern communities, such a low probability of outbreak events still presents substantial risks. Our findings therefore suggest that unpredictable threats so far confined to science fiction and conjecture could in fact be powerful drivers of ecological change.


Subject(s)
Biota , Introduced Species , Humans , Ecosystem
10.
Proc Natl Acad Sci U S A ; 117(33): 19694-19704, 2020 08 18.
Article in English | MEDLINE | ID: mdl-32737164

ABSTRACT

Control can alter the eco-evolutionary dynamics of a target pathogen in two ways, by changing its population size and by directed evolution of new functions. Here, we develop a payoff model of eco-evolutionary control based on strategies of evolution, regulation, and computational forecasting. We apply this model to pathogen control by molecular antibody-antigen binding with a tunable dosage of antibodies. By analytical solution, we obtain optimal dosage protocols and establish a phase diagram with an error threshold delineating parameter regimes of successful and compromised control. The solution identifies few independently measurable fitness parameters that predict the outcome of control. Our analysis shows how optimal control strategies depend on mutation rate and population size of the pathogen, and how monitoring and computational forecasting affect protocols and efficiency of control. We argue that these results carry over to more general systems and are elements of an emerging eco-evolutionary control theory.


Subject(s)
Biological Evolution , Host-Pathogen Interactions , Antibodies/immunology , Humans , Immunity , Models, Biological
11.
BMC Bioinformatics ; 23(1): 522, 2022 Dec 06.
Article in English | MEDLINE | ID: mdl-36474143

ABSTRACT

BACKGROUND: A deep understanding of carcinogenesis at the DNA level underpins many advances in cancer prevention and treatment. Mutational signatures provide a breakthrough conceptualisation, as well as an analysis framework, that can be used to build such understanding. They capture somatic mutation patterns and at best identify their causes. Most studies in this context have focused on an inherently additive analysis, e.g. by non-negative matrix factorization, where the mutations within a cancer sample are explained by a linear combination of independent mutational signatures. However, other recent studies show that the mutational signatures exhibit non-additive interactions. RESULTS: We carefully analysed such additive model fits from the PCAWG study cataloguing mutational signatures as well as their activities across thousands of cancers. Our analysis identified systematic and non-random structure of residuals that is left unexplained by the additive model. We used hierarchical clustering to identify cancer subsets with similar residual profiles to show that both systematic mutation count overestimation and underestimation take place. We propose an extension to the additive mutational signature model-multiplicatively acting modulatory processes-and develop a maximum-likelihood framework to identify such modulatory mutational signatures. The augmented model is expressive enough to almost fully remove the observed systematic residual patterns. CONCLUSION: We suggest the modulatory processes biologically relate to sample specific DNA repair propensities with cancer or tissue type specific profiles. Overall, our results identify an interesting direction where to expand signature analysis.


Subject(s)
Neoplasms , Humans , Mutation , Neoplasms/genetics
12.
PLoS Comput Biol ; 17(9): e1009418, 2021 09.
Article in English | MEDLINE | ID: mdl-34555024

ABSTRACT

Increasing body of experimental evidence suggests that anticancer and antimicrobial therapies may themselves promote the acquisition of drug resistance by increasing mutability. The successful control of evolving populations requires that such biological costs of control are identified, quantified and included to the evolutionarily informed treatment protocol. Here we identify, characterise and exploit a trade-off between decreasing the target population size and generating a surplus of treatment-induced rescue mutations. We show that the probability of cure is maximized at an intermediate dosage, below the drug concentration yielding maximal population decay, suggesting that treatment outcomes may in some cases be substantially improved by less aggressive treatment strategies. We also provide a general analytical relationship that implicitly links growth rate, pharmacodynamics and dose-dependent mutation rate to an optimal control law. Our results highlight the important, but often neglected, role of fundamental eco-evolutionary costs of control. These costs can often lead to situations, where decreasing the cumulative drug dosage may be preferable even when the objective of the treatment is elimination, and not containment. Taken together, our results thus add to the ongoing criticism of the standard practice of administering aggressive, high-dose therapies and motivate further experimental and clinical investigation of the mutagenicity and other hidden collateral costs of therapies.


Subject(s)
Drug Resistance, Microbial/genetics , Drug Resistance, Neoplasm/genetics , Anti-Infective Agents/administration & dosage , Antineoplastic Agents/administration & dosage , Computational Biology , Computer Simulation , Dose-Response Relationship, Drug , Evolution, Molecular , Host Microbial Interactions/drug effects , Host Microbial Interactions/genetics , Humans , Models, Biological , Mutation/drug effects , Mutation Rate , Neoplasms/drug therapy , Neoplasms/genetics , Phenotype , Stochastic Processes
13.
Nature ; 534(7605): 47-54, 2016 06 02.
Article in English | MEDLINE | ID: mdl-27135926

ABSTRACT

We analysed whole-genome sequences of 560 breast cancers to advance understanding of the driver mutations conferring clonal advantage and the mutational processes generating somatic mutations. We found that 93 protein-coding cancer genes carried probable driver mutations. Some non-coding regions exhibited high mutation frequencies, but most have distinctive structural features probably causing elevated mutation rates and do not contain driver mutations. Mutational signature analysis was extended to genome rearrangements and revealed twelve base substitution and six rearrangement signatures. Three rearrangement signatures, characterized by tandem duplications or deletions, appear associated with defective homologous-recombination-based DNA repair: one with deficient BRCA1 function, another with deficient BRCA1 or BRCA2 function, the cause of the third is unknown. This analysis of all classes of somatic mutation across exons, introns and intergenic regions highlights the repertoire of cancer genes and mutational processes operating, and progresses towards a comprehensive account of the somatic genetic basis of breast cancer.


Subject(s)
Breast Neoplasms/genetics , Genome, Human/genetics , Mutation/genetics , Cohort Studies , DNA Mutational Analysis , DNA Replication/genetics , DNA, Neoplasm/genetics , Female , Genes, BRCA1 , Genes, BRCA2 , Genomics , Humans , Male , Mutagenesis , Mutation Rate , Oncogenes/genetics , Recombinational DNA Repair/genetics
14.
PLoS Comput Biol ; 16(12): e1008538, 2020 12.
Article in English | MEDLINE | ID: mdl-33370253

ABSTRACT

Combinatorial therapies are required to treat patients with advanced cancers that have become resistant to monotherapies through rewiring of redundant pathways. Due to a massive number of potential drug combinations, there is a need for systematic approaches to identify safe and effective combinations for each patient, using cost-effective methods. Here, we developed an exact multiobjective optimization method for identifying pairwise or higher-order combinations that show maximal cancer-selectivity. The prioritization of patient-specific combinations is based on Pareto-optimization in the search space spanned by the therapeutic and nonselective effects of combinations. We demonstrate the performance of the method in the context of BRAF-V600E melanoma treatment, where the optimal solutions predicted a number of co-inhibition partners for vemurafenib, a selective BRAF-V600E inhibitor, approved for advanced melanoma. We experimentally validated many of the predictions in BRAF-V600E melanoma cell line, and the results suggest that one can improve selective inhibition of BRAF-V600E melanoma cells by combinatorial targeting of MAPK/ERK and other compensatory pathways using pairwise and third-order drug combinations. Our mechanism-agnostic optimization method is widely applicable to various cancer types, and it takes as input only measurements of a subset of pairwise drug combinations, without requiring target information or genomic profiles. Such data-driven approaches may become useful for functional precision oncology applications that go beyond the cancer genetic dependency paradigm to optimize cancer-selective combinatorial treatments.


Subject(s)
Melanoma/drug therapy , Skin Neoplasms/drug therapy , Antineoplastic Agents/therapeutic use , Combined Modality Therapy , Humans , Precision Medicine , Protein Kinase Inhibitors/therapeutic use , Proto-Oncogene Proteins B-raf/metabolism
15.
Mol Biol Evol ; 36(4): 691-708, 2019 04 01.
Article in English | MEDLINE | ID: mdl-30657986

ABSTRACT

Pre-existing and de novo genetic variants can both drive adaptation to environmental changes, but their relative contributions and interplay remain poorly understood. Here we investigated the evolutionary dynamics in drug-treated yeast populations with different levels of pre-existing variation by experimental evolution coupled with time-resolved sequencing and phenotyping. We found a doubling of pre-existing variation alone boosts the adaptation by 64.1% and 51.5% in hydroxyurea and rapamycin, respectively. The causative pre-existing and de novo variants were selected on shared targets: RNR4 in hydroxyurea and TOR1, TOR2 in rapamycin. Interestingly, the pre-existing and de novo TOR variants map to different functional domains and act via distinct mechanisms. The pre-existing TOR variants from two domesticated strains exhibited opposite rapamycin resistance effects, reflecting lineage-specific functional divergence. This study provides a dynamic view on how pre-existing and de novo variants interactively drive adaptation and deepens our understanding of clonally evolving populations.


Subject(s)
Biological Evolution , Drug Resistance, Fungal/genetics , Saccharomyces cerevisiae/genetics , Cell Cycle Proteins/genetics , Hydroxyurea , Mutation , Phosphatidylinositol 3-Kinases/genetics , Quantitative Trait Loci , Saccharomyces cerevisiae Proteins/genetics , Selection, Genetic , Sirolimus
16.
PLoS Comput Biol ; 15(11): e1007493, 2019 11.
Article in English | MEDLINE | ID: mdl-31738747

ABSTRACT

A tumour grows when the total division (birth) rate of its cells exceeds their total mortality (death) rate. The capability for uncontrolled growth within the host tissue is acquired via the accumulation of driver mutations which enable the tumour to progress through various hallmarks of cancer. We present a mathematical model of the penultimate stage in such a progression. We assume the tumour has reached the limit of its present growth potential due to cell competition that either results in total birth rate reduction or death rate increase. The tumour can then progress to the final stage by either seeding a metastasis or acquiring a driver mutation. We influence the ensuing evolutionary dynamics by cytotoxic (increasing death rate) or cytostatic (decreasing birth rate) therapy while keeping the effect of the therapy on net growth reduction constant. Comparing the treatments head to head we derive conditions for choosing optimal therapy. We quantify how the choice and the related gain of optimal therapy depends on driver mutation, metastasis, intrinsic cell birth and death rates, and the details of cell competition. We show that detailed understanding of the cell population dynamics could be exploited in choosing the right mode of treatment with substantial therapy gains.


Subject(s)
Cytostatic Agents/pharmacology , Cytotoxins/pharmacology , Neoplasms/drug therapy , Antineoplastic Agents/pharmacology , Biological Evolution , Disease Progression , Humans , Models, Biological , Models, Theoretical , Mutation , Neoplastic Processes
17.
PLoS Pathog ; 13(7): e1006447, 2017 Jul.
Article in English | MEDLINE | ID: mdl-28704525

ABSTRACT

Identifying the genetic determinants of phenotypes that impact disease severity is of fundamental importance for the design of new interventions against malaria. Here we present a rapid genome-wide approach capable of identifying multiple genetic drivers of medically relevant phenotypes within malaria parasites via a single experiment at single gene or allele resolution. In a proof of principle study, we found that a previously undescribed single nucleotide polymorphism in the binding domain of the erythrocyte binding like protein (EBL) conferred a dramatic change in red blood cell invasion in mutant rodent malaria parasites Plasmodium yoelii. In the same experiment, we implicated merozoite surface protein 1 (MSP1) and other polymorphic proteins, as the major targets of strain-specific immunity. Using allelic replacement, we provide functional validation of the substitution in the EBL gene controlling the growth rate in the blood stages of the parasites.


Subject(s)
Antigens, Protozoan/genetics , Malaria/immunology , Malaria/parasitology , Merozoite Surface Protein 1/genetics , Plasmodium yoelii/genetics , Plasmodium yoelii/pathogenicity , Protozoan Proteins/genetics , Receptors, Cell Surface/genetics , Antigens, Protozoan/metabolism , Erythrocytes/parasitology , Host-Parasite Interactions , Humans , Immunity , Malaria/genetics , Merozoite Surface Protein 1/metabolism , Plasmodium yoelii/growth & development , Plasmodium yoelii/metabolism , Polymorphism, Single Nucleotide , Protozoan Proteins/metabolism , Receptors, Cell Surface/metabolism , Virulence
18.
PLoS Comput Biol ; 14(12): e1006258, 2018 12.
Article in English | MEDLINE | ID: mdl-30550564

ABSTRACT

The emergence of microbial antibiotic resistance is a global health threat. In clinical settings, the key to controlling spread of resistant strains is accurate and rapid detection. As traditional culture-based methods are time consuming, genetic approaches have recently been developed for this task. The detection of antibiotic resistance is typically made by measuring a few known determinants previously identified from genome sequencing, and thus requires the prior knowledge of its biological mechanisms. To overcome this limitation, we employed machine learning models to predict resistance to 11 compounds across four classes of antibiotics from existing and novel whole genome sequences of 1936 E. coli strains. We considered a range of methods, and examined population structure, isolation year, gene content, and polymorphism information as predictors. Gradient boosted decision trees consistently outperformed alternative models with an average accuracy of 0.91 on held-out data (range 0.81-0.97). While the best models most frequently employed gene content, an average accuracy score of 0.79 could be obtained using population structure information alone. Single nucleotide variation data were less useful, and significantly improved prediction only for two antibiotics, including ciprofloxacin. These results demonstrate that antibiotic resistance in E. coli can be accurately predicted from whole genome sequences without a priori knowledge of mechanisms, and that both genomic and epidemiological data can be informative. This paves way to integrating machine learning approaches into diagnostic tools in the clinic.


Subject(s)
Drug Resistance, Bacterial/genetics , Escherichia coli/genetics , Sequence Analysis, DNA/methods , Anti-Bacterial Agents/pharmacology , DNA, Bacterial/genetics , Drug Resistance, Multiple, Bacterial/drug effects , Escherichia coli Infections , Forecasting/methods , Genome/genetics , Genome, Bacterial , Humans , Microbial Sensitivity Tests
19.
Nat Methods ; 12(7): 615-621, 2015 Jul.
Article in English | MEDLINE | ID: mdl-26125594

ABSTRACT

Genomic information on tumors from 50 cancer types cataloged by the International Cancer Genome Consortium (ICGC) shows that only a few well-studied driver genes are frequently mutated, in contrast to many infrequently mutated genes that may also contribute to tumor biology. Hence there has been large interest in developing pathway and network analysis methods that group genes and illuminate the processes involved. We provide an overview of these analysis techniques and show where they guide mechanistic and translational investigations.


Subject(s)
Gene Regulatory Networks , Genome , Neoplasms/genetics , Signal Transduction/physiology , Humans
20.
Blood ; 128(1): e1-9, 2016 07 07.
Article in English | MEDLINE | ID: mdl-27121471

ABSTRACT

The diagnosis of hematologic malignancies relies on multidisciplinary workflows involving morphology, flow cytometry, cytogenetic, and molecular genetic analyses. Advances in cancer genomics have identified numerous recurrent mutations with clear prognostic and/or therapeutic significance to different cancers. In myeloid malignancies, there is a clinical imperative to test for such mutations in mainstream diagnosis; however, progress toward this has been slow and piecemeal. Here we describe Karyogene, an integrated targeted resequencing/analytical platform that detects nucleotide substitutions, insertions/deletions, chromosomal translocations, copy number abnormalities, and zygosity changes in a single assay. We validate the approach against 62 acute myeloid leukemia, 50 myelodysplastic syndrome, and 40 blood DNA samples from individuals without evidence of clonal blood disorders. We demonstrate robust detection of sequence changes in 49 genes, including difficult-to-detect mutations such as FLT3 internal-tandem and mixed-lineage leukemia (MLL) partial-tandem duplications, and clinically significant chromosomal rearrangements including MLL translocations to known and unknown partners, identifying the novel fusion gene MLL-DIAPH2 in the process. Additionally, we identify most significant chromosomal gains and losses, and several copy neutral loss-of-heterozygosity mutations at a genome-wide level, including previously unreported changes such as homozygosity for DNMT3A R882 mutations. Karyogene represents a dependable genomic diagnosis platform for translational research and for the clinical management of myeloid malignancies, which can be readily adapted for use in other cancers.


Subject(s)
Genomics/methods , Hematologic Neoplasms , Leukemia, Myeloid , Myelodysplastic Syndromes , Carrier Proteins/genetics , DNA (Cytosine-5-)-Methyltransferases/genetics , DNA Methyltransferase 3A , Female , Formins , Hematologic Neoplasms/diagnosis , Hematologic Neoplasms/genetics , Histone-Lysine N-Methyltransferase/genetics , Humans , Leukemia, Myeloid/diagnosis , Leukemia, Myeloid/genetics , Male , Mutation , Myelodysplastic Syndromes/diagnosis , Myelodysplastic Syndromes/genetics , Myeloid-Lymphoid Leukemia Protein/genetics , Oncogene Proteins, Fusion/genetics , fms-Like Tyrosine Kinase 3/genetics
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