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1.
J Allergy Clin Immunol ; 148(3): 783-789, 2021 09.
Article in English | MEDLINE | ID: mdl-33744327

ABSTRACT

BACKGROUND: The Janus kinase (JAK) pathway mediates the activity of many asthma-relevant cytokines, including IL-4 and IL-13. GDC-0214 is a potent, inhaled, small-molecule JAK inhibitor being developed for the treatment of asthma. OBJECTIVE: We sought to determine whether GDC-0214 reduces fractional exhaled nitric oxide (Feno), a JAK1-dependent biomarker of airway inflammation, in patients with mild asthma. METHODS: We conducted a double-blind, randomized, placebo-controlled, phase 1 proof-of-activity study in adults with mild asthma and Feno higher than 40 parts per billion (ppb). Subjects were randomized 2:1 (GDC-0214:placebo) into 4 sequential ascending-dose cohorts (1 mg once daily [QD], 4 mg QD, 15 mg QD, or 15 mg twice daily). All subjects received 4 days of blinded placebo, then 10 days of either active drug or placebo. The primary outcome was placebo-corrected percent reduction in Feno from baseline to day 14. Baseline was defined as the average Feno during the blinded placebo period. Pharmacokinetics, safety, and tolerability were also assessed. RESULTS: Thirty-six subjects (mean age, 28 years; 54% females) were enrolled. Mean Feno at baseline across all subjects was 93 ± 43 ppb. At day 14, placebo-corrected difference in Feno was -23% (95% CI, -37.3 to -9) for 15 mg QD and -42% (95% CI, -57 to -27.4) for 15 mg twice daily. Higher plasma exposure was associated with greater Feno reduction. No dose-limiting adverse events, serious adverse events, or treatment discontinuations occurred. There were no major imbalances in adverse events or laboratory findings, or evidence of systemic JAK inhibition. CONCLUSIONS: GDC-0214, an inhaled JAK inhibitor, caused dose-dependent reductions in Feno in mild asthma and was well tolerated without evidence of systemic toxicity.


Subject(s)
Anti-Asthmatic Agents/therapeutic use , Asthma/drug therapy , Janus Kinase Inhibitors/therapeutic use , Nitric Oxide/metabolism , Adolescent , Adult , Anti-Asthmatic Agents/blood , Anti-Asthmatic Agents/pharmacokinetics , Anti-Asthmatic Agents/pharmacology , Asthma/metabolism , Double-Blind Method , Exhalation , Female , Humans , Janus Kinase Inhibitors/blood , Janus Kinase Inhibitors/pharmacokinetics , Janus Kinase Inhibitors/pharmacology , Male , Young Adult
2.
Genes Immun ; 20(2): 172-179, 2019 02.
Article in English | MEDLINE | ID: mdl-29550837

ABSTRACT

In clinical trials, a placebo response refers to improvement in disease symptoms arising from the psychological effect of receiving a treatment rather than the actual treatment under investigation. Previous research has reported genomic variation associated with the likelihood of observing a placebo response, but these studies have been limited in scope and have not been validated. Here, we analyzed whole-genome sequencing data from 784 patients undergoing placebo treatment in Phase III Asthma or Rheumatoid Arthritis trials to assess the impact of previously reported variation on patient outcomes in the placebo arms and to identify novel variants associated with the placebo response. Contrary to expectations based on previous reports, we did not observe any statistically significant associations between genomic variants and placebo treatment outcome. Our findings suggest that the biological origin of the placebo response is complex and likely to be variable between disease areas.


Subject(s)
Clinical Trials, Phase III as Topic/standards , Placebo Effect , Polymorphism, Single Nucleotide , Adolescent , Adult , Aged , Aged, 80 and over , Arthritis, Rheumatoid/drug therapy , Arthritis, Rheumatoid/genetics , Asthma/drug therapy , Asthma/genetics , Female , Genome-Wide Association Study , Humans , Male , Middle Aged
3.
BMC Bioinformatics ; 18(1): 351, 2017 Jul 24.
Article in English | MEDLINE | ID: mdl-28738841

ABSTRACT

BACKGROUND: Large sample sets of whole genome sequencing with deep coverage are being generated, however assembling datasets from different sources inevitably introduces batch effects. These batch effects are not well understood and can be due to changes in the sequencing protocol or bioinformatics tools used to process the data. No systematic algorithms or heuristics exist to detect and filter batch effects or remove associations impacted by batch effects in whole genome sequencing data. RESULTS: We describe key quality metrics, provide a freely available software package to compute them, and demonstrate that identification of batch effects is aided by principal components analysis of these metrics. To mitigate batch effects, we developed new site-specific filters that identified and removed variants that falsely associated with the phenotype due to batch effect. These include filtering based on: a haplotype based genotype correction, a differential genotype quality test, and removing sites with missing genotype rate greater than 30% after setting genotypes with quality scores less than 20 to missing. This method removed 96.1% of unconfirmed genome-wide significant SNP associations and 97.6% of unconfirmed genome-wide significant indel associations. We performed analyses to demonstrate that: 1) These filters impacted variants known to be disease associated as 2 out of 16 confirmed associations in an AMD candidate SNP analysis were filtered, representing a reduction in power of 12.5%, 2) In the absence of batch effects, these filters removed only a small proportion of variants across the genome (type I error rate of 3%), and 3) in an independent dataset, the method removed 90.2% of unconfirmed genome-wide SNP associations and 89.8% of unconfirmed genome-wide indel associations. CONCLUSIONS: Researchers currently do not have effective tools to identify and mitigate batch effects in whole genome sequencing data. We developed and validated methods and filters to address this deficiency.


Subject(s)
Genome-Wide Association Study/methods , Genotype , High-Throughput Nucleotide Sequencing , Humans , Macular Degeneration/genetics , Macular Degeneration/pathology , Phenotype , Polymorphism, Single Nucleotide , Principal Component Analysis , Sequence Analysis, DNA , Software
4.
Mol Biol Evol ; 29(5): 1367-77, 2012 May.
Article in English | MEDLINE | ID: mdl-22160768

ABSTRACT

Unprecedented global surveillance of viruses will result in massive sequence data sets that require new statistical methods. These data sets press the limits of Bayesian phylogenetics as the high-dimensional parameters that comprise a phylogenetic tree increase the already sizable computational burden of these techniques. This burden often results in partitioning the data set, for example, by gene, and inferring the evolutionary dynamics of each partition independently, a compromise that results in stratified analyses that depend only on data within a given partition. However, parameter estimates inferred from these stratified models are likely strongly correlated, considering they rely on data from a single data set. To overcome this shortfall, we exploit the existing Monte Carlo realizations from stratified Bayesian analyses to efficiently estimate a nonparametric hierarchical wavelet-based model and learn about the time-varying parameters of effective population size that reflect levels of genetic diversity across all partitions simultaneously. Our methods are applied to complete genome influenza A sequences that span 13 years. We find that broad peaks and trends, as opposed to seasonal spikes, in the effective population size history distinguish individual segments from the complete genome. We also address hypotheses regarding intersegment dynamics within a formal statistical framework that accounts for correlation between segment-specific parameters.


Subject(s)
Evolution, Molecular , Influenza A virus/genetics , Influenza A virus/pathogenicity , Influenza, Human/virology , Bayes Theorem , Computational Biology , Genome, Viral , Hemagglutinin Glycoproteins, Influenza Virus/genetics , Humans , Influenza, Human/epidemiology , Models, Biological , Monte Carlo Method , Neuraminidase/genetics , Pandemics , Periodicity , Phylogeny , Viral Proteins/genetics , Wavelet Analysis
5.
Mol Biol Evol ; 28(5): 1605-16, 2011 May.
Article in English | MEDLINE | ID: mdl-21135151

ABSTRACT

The interplay between C-C chemokine receptor type 5 (CCR5) host genetic background, disease progression, and intrahost HIV-1 evolutionary dynamics remains unclear because differences in viral evolution between hosts limit the ability to draw conclusions across hosts stratified into clinically relevant populations. Similar inference problems are proliferating across many measurably evolving pathogens for which intrahost sequence samples are readily available. To this end, we propose novel hierarchical phylogenetic models (HPMs) that incorporate fixed effects to test for differences in dynamics across host populations in a formal statistical framework employing stochastic search variable selection and model averaging. To clarify the role of CCR5 host genetic background and disease progression on viral evolutionary patterns, we obtain gp120 envelope sequences from clonal HIV-1 variants isolated at multiple time points in the course of infection from populations of HIV-1-infected individuals who only harbored CCR5-using HIV-1 variants at all time points. Presence or absence of a CCR5 wt/Δ32 genotype and progressive or long-term nonprogressive course of infection stratify the clinical populations in a two-way design. As compared with the standard approach of analyzing sequences from each patient independently, the HPM provides more efficient estimation of evolutionary parameters such as nucleotide substitution rates and d(N)/d(S) rate ratios, as shown by significant shrinkage of the estimator variance. The fixed effects also correct for nonindependence of data between populations and results in even further shrinkage of individual patient estimates. Model selection suggests an association between nucleotide substitution rate and disease progression, but a role for CCR5 genotype remains elusive. Given the absence of clear d(N)/d(S) differences between patient groups, delayed onset of AIDS symptoms appears to be solely associated with lower viral replication rates rather than with differences in selection on amino acid fixation.


Subject(s)
Evolution, Molecular , Gene Deletion , HIV Infections/genetics , HIV-1/genetics , Models, Genetic , Receptors, CCR5/genetics , Acquired Immunodeficiency Syndrome/genetics , Acquired Immunodeficiency Syndrome/physiopathology , Acquired Immunodeficiency Syndrome/virology , Bayes Theorem , CD4 Lymphocyte Count , Disease Progression , Genotype , HIV Envelope Protein gp120/genetics , HIV Infections/physiopathology , HIV Infections/virology , HIV-1/isolation & purification , Heterozygote , Host-Pathogen Interactions , Humans , Male , Phylogeny , Polymorphism, Genetic , Sequence Alignment , Sequence Analysis, DNA
6.
Ann Appl Stat ; 4(4): 1722-1748, 2010.
Article in English | MEDLINE | ID: mdl-26681992

ABSTRACT

Massive datasets in the gigabyte and terabyte range combined with the availability of increasingly sophisticated statistical tools yield analyses at the boundary of what is computationally feasible. Compromising in the face of this computational burden by partitioning the dataset into more tractable sizes results in stratified analyses, removed from the context that justified the initial data collection. In a Bayesian framework, these stratified analyses generate intermediate realizations, often compared using point estimates that fail to account for the variability within and correlation between the distributions these realizations approximate. However, although the initial concession to stratify generally precludes the more sensible analysis using a single joint hierarchical model, we can circumvent this outcome and capitalize on the intermediate realizations by extending the dynamic iterative reweighting MCMC algorithm. In doing so, we reuse the available realizations by reweighting them with importance weights, recycling them into a now tractable joint hierarchical model. We apply this technique to intermediate realizations generated from stratified analyses of 687 influenza A genomes spanning 13 years allowing us to revisit hypotheses regarding the evolutionary history of influenza within a hierarchical statistical framework.

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