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Dive into the research topics where Antoine Lizee is active.

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Featured researches published by Antoine Lizee.


Annals of Neurology | 2016

Long-term evolution of multiple sclerosis disability in the treatment era.

Bruce Cree; Pierre-Antoine Gourraud; Jorge R. Oksenberg; Carolyn Bevan; Elizabeth Crabtree-Hartman; Jeffrey M. Gelfand; Douglas S. Goodin; Jennifer Graves; Ari J. Green; Ellen M. Mowry; Darin T. Okuda; Daniel Pelletier; H.-Christian von Büdingen; Scott S. Zamvil; Alisha Agrawal; Stacy J. Caillier; Caroline Ciocca; Refujia Gomez; Rachel Kanner; Robin Lincoln; Antoine Lizee; Pamela Qualley; Adam Santaniello; Leena Suleiman; Monica Bucci; Valentina Panara; Nico Papinutto; William A. Stern; Alyssa H. Zhu; Gary Cutter

To characterize the accrual of long‐term disability in a cohort of actively treated multiple sclerosis (MS) patients and to assess whether clinical and magnetic resonance imaging (MRI) data used in clinical trials have long‐term prognostic value.


JAMA Neurology | 2016

Association of HLA genetic risk burden with disease phenotypes in multiple sclerosis

Noriko Isobe; Anisha Keshavan; Pierre Antoine Gourraud; Alyssa H. Zhu; Esha Datta; Regina Schlaeger; Stacy J. Caillier; Adam Santaniello; Antoine Lizee; Daniel Himmelstein; Sergio E. Baranzini; Jill A. Hollenbach; Bruce Cree; Stephen L. Hauser; Jorge R. Oksenberg; Roland G. Henry

IMPORTANCE Although multiple HLA alleles associated with multiple sclerosis (MS) risk have been identified, genotype-phenotype studies in the HLA region remain scarce and inconclusive. OBJECTIVES To investigate whether MS risk-associated HLA alleles also affect disease phenotypes. DESIGN, SETTING, AND PARTICIPANTS A cross-sectional, case-control study comprising 652 patients with MS who had comprehensive phenotypic information and 455 individuals of European origin serving as controls was conducted at a single academic research site. Patients evaluated at the Multiple Sclerosis Center at University of California, San Francisco between July 2004 and September 2005 were invited to participate. Spinal cord imaging in the data set was acquired between July 2013 and March 2014; analysis was performed between December 2014 and December 2015. MAIN OUTCOMES AND MEASURES Cumulative HLA genetic burden (HLAGB) calculated using the most updated MS-associated HLA alleles vs clinical and magnetic resonance imaging outcomes, including age at onset, disease severity, conversion time from clinically isolated syndrome to clinically definite MS, fractions of cortical and subcortical gray matter and cerebral white matter, brain lesion volume, spinal cord gray and white matter areas, upper cervical cord area, and the ratio of gray matter to the upper cervical cord area. Multivariate modeling was applied separately for each sex data set. RESULTS Of the 652 patients with MS, 586 had no missing genetic data and were included in the HLAGB analysis. In these 586 patients (404 women [68.9%]; mean [SD] age at disease onset, 33.6 [9.4] years), HLAGB was higher than in controls (median [IQR], 0.7 [0-1.4] and 0 [-0.3 to 0.5], respectively; P = 1.8 × 10-27). A total of 619 (95.8%) had relapsing-onset MS and 27 (4.2%) had progressive-onset MS. No significant difference was observed between relapsing-onset MS and primary progressive MS. A higher HLAGB was associated with younger age at onset and the atrophy of subcortical gray matter fraction in women with relapsing-onset MS (standard β = -1.20 × 10-1; P = 1.7 × 10-2 and standard β = -1.67 × 10-1; P = 2.3 × 10-4, respectively), which were driven mainly by the HLA-DRB1*15:01 haplotype. In addition, we observed the distinct role of the HLA-A*24:02-B*07:02-DRB1*15:01 haplotype among the other common DRB1*15:01 haplotypes and a nominally protective effect of HLA-B*44:02 to the subcortical gray atrophy (standard β = -1.28 × 10-1; P = 5.1 × 10-3 and standard β = 9.52 × 10-2; P = 3.6 × 10-2, respectively). CONCLUSIONS AND RELEVANCE We confirm and extend previous observations linking HLA MS susceptibility alleles with disease progression and specific clinical and magnetic resonance imaging phenotypic traits.


Annals of Neurology | 2014

Precision medicine in chronic disease management: The multiple sclerosis BioScreen

Pierre Antoine Gourraud; Roland G. Henry; Bruce Cree; Jason C. Crane; Antoine Lizee; Marram P. Olson; Adam Santaniello; Esha Datta; Alyssa H. Zhu; Carolyn Bevan; Jeffrey M. Gelfand; Jennifer Graves; Douglas S. Goodin; Ari J. Green; H.-Christian von Büdingen; Emmanuelle Waubant; Scott S. Zamvil; Elizabeth Crabtree-Hartman; Sarah J. Nelson; Sergio E. Baranzini; Stephen L. Hauser

We present a precision medicine application developed for multiple sclerosis (MS): the MS BioScreen. This new tool addresses the challenges of dynamic management of a complex chronic disease; the interaction of clinicians and patients with such a tool illustrates the extent to which translational digital medicine—that is, the application of information technology to medicine—has the potential to radically transform medical practice. We introduce 3 key evolutionary phases in displaying data to health care providers, patients, and researchers: visualization (accessing data), contextualization (understanding the data), and actionable interpretation (real‐time use of the data to assist decision making). Together, these form the stepping stones that are expected to accelerate standardization of data across platforms, promote evidence‐based medicine, support shared decision making, and ultimately lead to improved outcomes. Ann Neurol 2014;76:633–642


eLife | 2017

Systematic integration of biomedical knowledge prioritizes drugs for repurposing

Daniel Himmelstein; Antoine Lizee; Christine Hessler; Leo Brueggeman; Sabrina Chen; Dexter Hadley; Ari J. Green; Pouya Khankhanian; Sergio E. Baranzini

The ability to computationally predict whether a compound treats a disease would improve the economy and success rate of drug approval. This study describes Project Rephetio to systematically model drug efficacy based on 755 existing treatments. First, we constructed Hetionet (neo4j.het.io), an integrative network encoding knowledge from millions of biomedical studies. Hetionet v1.0 consists of 47,031 nodes of 11 types and 2,250,197 relationships of 24 types. Data were integrated from 29 public resources to connect compounds, diseases, genes, anatomies, pathways, biological processes, molecular functions, cellular components, pharmacologic classes, side effects, and symptoms. Next, we identified network patterns that distinguish treatments from non-treatments. Then, we predicted the probability of treatment for 209,168 compound–disease pairs (het.io/repurpose). Our predictions validated on two external sets of treatment and provided pharmacological insights on epilepsy, suggesting they will help prioritize drug repurposing candidates. This study was entirely open and received realtime feedback from 40 community members.


Journal of Medical Genetics | 2015

Haplotype-based approach to known MS-associated regions increases the amount of explained risk

Pouya Khankhanian; Pierre-Antoine Gourraud; Antoine Lizee; Douglas S. Goodin

Genome-wide association studies (GWAS), using single nucleotide polymorphisms (SNPs), have yielded 110 non-human leucocyte antigen genomic regions that are associated with multiple sclerosis (MS). Despite this large number of associations, however, only 28% of MS-heritability can currently be explained. Here we compare the use of multi-SNP-haplotypes to the use of single-SNPs as alternative methods to describe MS genetic risk. SNP-haplotypes (of various lengths from 1 up to 15 contiguous SNPs) were constructed at each of the 110 previously identified, MS-associated, genomic regions. Even after correcting for the larger number of statistical comparisons made when using the haplotype-method, in 32 of the regions, the SNP-haplotype based model was markedly more significant than the single-SNP based model. By contrast, in no region was the single-SNP based model similarly more significant than the SNP-haplotype based model. Moreover, when we included the 932 MS-associated SNP-haplotypes (that we identified from 102 regions) as independent variables into a logistic linear model, the amount of MS-heritability, as assessed by Nagelkerkes R-squared, was 38%, which was considerably better than 29%, which was obtained by using only single-SNPs. This study demonstrates that SNP-haplotypes can be used to fine-map the genetic associations within regions of interest previously identified by single-SNP GWAS. Moreover, the amount of the MS genetic risk explained by the SNP-haplotype associations in the 110 MS-associated genomic regions was considerably greater when using SNP-haplotypes than when using single-SNPs. Also, the use of SNP-haplotypes can lead to the discovery of new regions of interest, which have not been identified by a single-SNP GWAS.


International Journal of Epidemiology | 2016

Meta-analysis of genome-wide association studies reveals genetic overlap between Hodgkin lymphoma and multiple sclerosis.

Pouya Khankhanian; Wendy Cozen; Daniel Himmelstein; Lohith Madireddy; Lennox Din; Anke van den Berg; Takuya Matsushita; Sally L. Glaser; Jayaji M. Moré; Karin E. Smedby; Sergio E. Baranzini; Thomas M. Mack; Antoine Lizee; Silvia de Sanjosé; Pierre Antoine Gourraud; Alexandra Nieters; Stephen L. Hauser; Pierluigi Cocco; Marc Maynadié; Lenka Foretova; Anthony Staines; Manon Delahaye-Sourdeix; Dalin Li; Smita Bhatia; Mads Melbye; Kenan Onel; Ruth F. Jarrett; James D. McKay; Jorge R. Oksenberg; Henrik Hjalgrim

Abstract Background : Based on epidemiological commonalities, multiple sclerosis (MS) and Hodgkin lymphoma (HL), two clinically distinct conditions, have long been suspected to be aetiologically related. MS and HL occur in roughly the same age groups, both are associated with Epstein-Barr virus infection and ultraviolet (UV) light exposure, and they cluster mutually in families (though not in individuals). We speculated if in addition to sharing environmental risk factors, MS and HL were also genetically related. Using data from genome-wide association studies (GWAS) of 1816 HL patients, 9772 MS patients and 25 255 controls, we therefore investigated the genetic overlap between the two diseases. Methods: From among a common denominator of 404 K single nucleotide polymorphisms (SNPs) studied, we identified SNPs and human leukocyte antigen (HLA) alleles independently associated with both diseases. Next, we assessed the cumulative genome-wide effect of MS-associated SNPs on HL and of HL-associated SNPs on MS. To provide an interpretational frame of reference, we used data from published GWAS to create a genetic network of diseases within which we analysed proximity of HL and MS to autoimmune diseases and haematological and non-haematological malignancies. Results: SNP analyses revealed genome-wide overlap between HL and MS, most prominently in the HLA region. Polygenic HL risk scores explained 4.44% of HL risk (Nagelkerke R 2 ), but also 2.36% of MS risk. Conversely, polygenic MS risk scores explained 8.08% of MS risk and 1.94% of HL risk. In the genetic disease network, HL was closer to autoimmune diseases than to solid cancers. Conclusions: HL displays considerable genetic overlap with MS and other autoimmune diseases.


Pharmacogenomics Journal | 2018

Significant variation between SNP-based HLA imputations in diverse populations: the last mile is the hardest

Derek James Pappas; Antoine Lizee; V Paunic; K R Beutner; Allan Motyer; Damjan Vukcevic; Stephen Leslie; J Biesiada; J Meller; Kent D. Taylor; X Zheng; L P Zhao; P-A Gourraud; Jill A. Hollenbach; Steven J. Mack; Martin Maiers

Four single nucleotide polymorphism (SNP)-based human leukocyte antigen (HLA) imputation methods (e-HLA, HIBAG, HLA*IMP:02 and MAGPrediction) were trained using 1000 Genomes SNP and HLA genotypes and assessed for their ability to accurately impute molecular HLA-A, -B, -C and –DRB1 genotypes in the Human Genome Diversity Project cell panel. Imputation concordance was high (>89%) across all methods for both HLA-A and HLA-C, but HLA-B and HLA-DRB1 proved generally difficult to impute. Overall, <27.8% of subjects were correctly imputed for all HLA loci by any method. Concordance across all loci was not enhanced via the application of confidence thresholds; reliance on confidence scores across methods only led to noticeable improvement (+3.2%) for HLA-DRB1. As the HLA complex is highly relevant to the study of human health and disease, a standardized assessment of SNP-based HLA imputation methods is crucial for advancing genomic research. Considerable room remains for the improvement of HLA-B and especially HLA-DRB1 imputation methods, and no imputation method is as accurate as molecular genotyping. The application of large, ancestrally diverse HLA and SNP reference data sets and multiple imputation methods has the potential to make SNP-based HLA imputation methods a tractable option for determining HLA genotypes.


BMC Medical Genetics | 2015

Genetic contribution to multiple sclerosis risk among Ashkenazi Jews

Pouya Khankhanian; Takuya Matsushita; Lohith Madireddy; Antoine Lizee; Lennox Din; Jayaji M. Moré; Pierre Antoine Gourraud; Stephen L. Hauser; Sergio E. Baranzini; Jorge R. Oksenberg

BackgroundMultiple sclerosis (MS) is an autoimmune disease of the central nervous system, with a strong genetic component. Over 100 genetic loci have been implicated in susceptibility to MS in European populations, the most prominent being the 15:01 allele of the HLA-DRB1 gene. The prevalence of MS is high in European populations including those of Ashkenazi origin, and low in African and Asian populations including those of Jewish origin.MethodsHere we identified and extracted a total of 213 Ashkenazi MS cases and 546 ethnically matched healthy control individuals from two previous genome-wide case-control association analyses, and 72 trios (affected proband and two unaffected parents) from a previous genome-wide transmission disequilibrium association study, using genetic data to define Ashkenazi. We compared the pattern of genetic risk between Ashkenazi and non-Ashkenazi Europeans. We also sought to identify novel Ashkenazi-specific risk loci by performing association tests on the subset of Ashkenazi cases, controls, probands, and parents from each study.ResultsThe HLA-DRB1*15:01 allele and the non-HLA risk alleles were present at relatively low frequencies among Ashkenazi and explained a smaller fraction of the population-level risk when compared to non-Ashkenazi Europeans. Alternative HLA susceptibility alleles were identified in an Ashkenazi-only association study, including HLA-A*68:02 and one or both genes in the HLA-B*38:01-HLA-C*12:03 haplotype. The genome-wide screen in Ashkenazi did not reveal any loci associated with MS risk.ConclusionThese results suggest that genetic susceptibility to MS in Ashkenazi Jews has not been as well established as that of non-Ashkenazi Europeans. This implies value in studying large well-characterized Ashkenazi populations to accelerate gene discovery in complex genetic diseases.


Multiple Sclerosis Journal | 2018

Harnessing electronic medical records to advance research on multiple sclerosis

Vincent Damotte; Antoine Lizee; Matthew Tremblay; Alisha Agrawal; Pouya Khankhanian; Adam Santaniello; Refujia Gomez; Robin Lincoln; Wendy Tang; Tiffany Chen; Nelson Lee; Pablo Villoslada; Jill A. Hollenbach; Carolyn D. Bevan; Jennifer Graves; Riley Bove; Douglas S. Goodin; Ari J. Green; Sergio E. Baranzini; Bruce Cree; Roland G. Henry; Stephen L. Hauser; Jeffrey M. Gelfand; Pierre Antoine Gourraud

Background: Electronic medical records (EMR) data are increasingly used in research, but no studies have yet evaluated similarity between EMR and research-quality data and between characteristics of an EMR multiple sclerosis (MS) population and known natural MS history. Objectives: To (1) identify MS patients in an EMR system and extract clinical data, (2) compare EMR-extracted data with gold-standard research data, and (3) compare EMR MS population characteristics to expected MS natural history. Methods: Algorithms were implemented to identify MS patients from the University of California San Francisco EMR, de-identify the data and extract clinical variables. EMR-extracted data were compared to research cohort data in a subset of patients. Results: We identified 4142 MS patients via search of the EMR and extracted their clinical data with good accuracy. EMR and research values showed good concordance for Expanded Disability Status Scale (EDSS), timed-25-foot walk, and subtype. We replicated several expected MS epidemiological features from MS natural history including higher EDSS for progressive versus relapsing–remitting patients and for male versus female patients and increased EDSS with age at examination and disease duration. Conclusion: Large real-world cohorts algorithmically extracted from the EMR can expand opportunities for MS clinical research.


Annals of Neurology | 2014

Precision medicine in chronic disease management: the MS BioScreen

Pierre-Antoine Gourraud; Roland G. Henry; Bruce Ac Cree; Jason C. Crane; Antoine Lizee; Marram P. Olson; Adam Santaniello; Esha Datta; Alyssa H. Zhu; Carolyn Bevan; Jeffrey M. Gelfand; Jennifer Graves; Douglas Goodin; Ari J. Green; H.-Christian von Büdingen; Emmanuelle Waubant; Scott S. Zamvil; Elizabeth Crabtree-Hartman; Sarah J. Nelson; Sergio E. Baranzini; Stephen L. Hauser

We present a precision medicine application developed for multiple sclerosis (MS): the MS BioScreen. This new tool addresses the challenges of dynamic management of a complex chronic disease; the interaction of clinicians and patients with such a tool illustrates the extent to which translational digital medicine—that is, the application of information technology to medicine—has the potential to radically transform medical practice. We introduce 3 key evolutionary phases in displaying data to health care providers, patients, and researchers: visualization (accessing data), contextualization (understanding the data), and actionable interpretation (real‐time use of the data to assist decision making). Together, these form the stepping stones that are expected to accelerate standardization of data across platforms, promote evidence‐based medicine, support shared decision making, and ultimately lead to improved outcomes. Ann Neurol 2014;76:633–642

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Ari J. Green

University of California

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Bruce Cree

University of California

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