Maud Arsac
BioMérieux
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Publication
Featured researches published by Maud Arsac.
Journal of Clinical Microbiology | 2015
Sébastien Spinali; Alex van Belkum; Richard V. Goering; Victoria Girard; Martin Welker; Marc Van Nuenen; David H. Pincus; Maud Arsac; Géraldine Durand
ABSTRACT The integration of matrix-assisted laser desorption ionization–time of flight mass spectrometry (MALDI-TOF MS) in clinical microbiology has revolutionized species identification of bacteria, yeasts, and molds. However, beyond straightforward identification, the method has also been suggested to have the potential for subspecies-level or even type-level epidemiological analyses. This minireview explores MALDI-TOF MS-based typing, which has already been performed on many clinically relevant species. We discuss the limits of the methods resolution and we suggest interpretative criteria allowing valid comparison of strain-specific data. We conclude that guidelines for MALDI-TOF MS-based typing can be developed along the same lines as those used for the interpretation of data from pulsed-field gel electrophoresis (PFGE).
Journal of Clinical Microbiology | 2014
Sophie De Respinis; Valérie Monnin; Victoria Girard; Martin Welker; Maud Arsac; Béatrice Cellière; Géraldine Durand; Philipp P. Bosshard; Claudio Farina; Marco Passera; Alex van Belkum; Orlando Petrini; Mauro Tonolla
ABSTRACT The objective of this research was to extend the Vitek MS fungal knowledge base version 2.0.0 to allow the robust identification of clinically relevant dermatophytes, using a variety of strains, incubation times, and growth conditions. First, we established a quick and reliable method for sample preparation to obtain a reliable and reproducible identification independently of the growth conditions. The Vitek MS V2.0.0 fungal knowledge base was then expanded using 134 well-characterized strains belonging to 17 species in the genera Epidermophyton, Microsporum, and Trichophyton. Cluster analysis based on mass spectrum similarity indicated good species discrimination independently of the culture conditions. We achieved a good separation of the subpopulations of the Trichophyton anamorph of Arthroderma benhamiae and of anthropophilic and zoophilic strains of Trichophyton interdigitale. Overall, the 1,130 mass spectra obtained for dermatophytes gave an estimated identification performance of 98.4%. The expanded fungal knowledge base was then validated using 131 clinical isolates of dermatophytes belonging to 13 taxa. For 8 taxa all strains were correctly identified, and for 3 the rate of successful identification was >90%; 75% (6/8) of the M. gypseum strains were correctly identified, whereas only 47% (18/38) of the African T. rubrum population (also called T. soudanense) were recognized accurately, with a large quantity of strains misidentified as T. violaceum, demonstrating the close relationship of these two taxa. The method of sample preparation was fast and efficient and the expanded Vitek MS fungal knowledge base reliable and robust, allowing reproducible dermatophyte identifications in the routine laboratory.
Journal of Clinical Microbiology | 2010
Marie Gauthier; Bertrand Bonnaud; Maud Arsac; Fabien Lavocat; Jérôme Maisetti; Alan Kay; François Simon; Fabien Zoulim; Guy Vernet
ABSTRACT Genome analysis of hepatitis B virus (HBV) in patient sera is helpful for monitoring treatment. We developed an improved version of a DNA microarray to identify HBV genotypes and to detect mutations of interest in the S, Pol, Core, and X genes. It includes an automated software analysis of fluorescence values for simpler, more robust data interpretation. In this version, probes were added to identify genotype H, to analyze 155 additional positions, and to detect 561 additional polymorphisms. Sequences were added to the alignments to resolve hybridization problems due to natural polymorphisms in the vicinity of important codons. The duplex PCR protocol allowed whole-genome analysis in a single tube. An alternative nested-PCR protocol allowed genotyping and mutations in S and reverse transcriptase (rt) genes in patients with low viral loads, as demonstrated in patients with less than 400 HBV genome copies/ml. Reproducibility was high, with variation coefficients lower than 3%. Only 0.57% of 20,771 codons from 253 samples could not be identified. The concordance with Sanger sequencing for the identification of codons improved from 92.8% to 95.7% with the improved version. Concordance was higher than 91% for codons associated with resistance to lamivudine, emtricitabine, telbivudine, famciclovir, entecavir, and tenofovir with vaccine escape and for pre-Core mutants. Concordance was lower for adefovir resistance mutations (68.6%) and mutations in the basal core promoter (60.3%), probably because hybridization efficiency was affected by the low GC content of the probes. A concordance of 93.7% with sequencing for genotype identification was observed in 190 specimens, lower than that obtained with the first version, possibly due to mixed virus populations.
Diagnostic Microbiology and Infectious Disease | 2016
Victoria Girard; Sandrine Mailler; Martin Welker; Maud Arsac; Béatrice Cellière; Pierre-Jean Cotte-Pattat; Sonia Chatellier; Géraldine Durand; Anne-Marie Béni; Jacques Schrenzel; Elizabeth Miller; Rahima Dussoulier; W. Michael Dunne; Susan M. Butler-Wu; Michael A. Saubolle; Den Sussland; Melissa Bell; Alex van Belkum; Parampal Deol
Identification of microorganisms by MALDI-TOF MS has been widely accepted in clinical microbiology. However, for Mycobacterium spp. and Nocardia spp. such identification has not yet reached the optimal level of routine testing. Here we describe the development of an identification tool for 49 and 15 species of Mycobacterium spp. and Nocardia spp., respectively. During database construction, a number of ambiguous reference identifications were revealed and corrected via molecular analyses. Eventually, more than 2000 individual mass spectra acquired from 494 strains were included in a reference database and subjected to bio-statistical analyses. This led to correct species identification and correct combination of species into several complexes or groups, such as the Mycobacterium tuberculosis complex. With the Advanced Spectrum Classifier algorithm, class-specific bin weights were determined and tested by cross-validation experiments with good results. When challenged with independent isolates, overall identification performance was 90% for identification of Mycobacterium spp. and 88% for Nocardia spp. However, for a number of Mycobacterium sp. isolates, no identification could be achieved and in most cases, this could be attributed to the production of polymers that masked the species-specific protein peak patterns. For the species where >20 isolates were tested, correct identification reached 95% or higher. With the current spectral database, the identification of Mycobacterium spp. and Nocardia spp. by MALDI-TOF MS can be performed in routine clinical diagnostics although in some complicated cases verification by sequencing remains mandatory.
Bioinformatics | 2014
Pierre Mahé; Maud Arsac; Sonia Chatellier; Valérie Monnin; Nadine Perrot; Sandrine Mailler; Victoria Girard; Mahendrasingh Ramjeet; Jérémy Surre; Bruno Lacroix; Alex van Belkum; Jean-Baptiste Veyrieras
Archive | 2014
Grégory Strubel; Maud Arsac; Denis Desseree; Pierre-Jean Cotte-Pattat
Archive | 2013
Grégory Strubel; Maud Arsac; Denis Desseree; Pierre-Jean Cotte-Pattat; Pierre Mahé
Archive | 2013
Jones M. Hyman; Parampal Deol; Elizabeth Miller; Victoria Girard; Amber Gates; Sandrine Mailler; Maud Arsac; John Walsh
Archive | 2017
Pierre Mahé; Maud Arsac; Nadine Perrot; Marie-Hélène Charles; Patrick Broyer; Jay Hyman; John Walsh; Sonia Chatellier; Victoria Girard; Alex van Belkum; Jean-Baptiste Veyrieras
Archive | 2016
Alex van Belkum; Victoria Girard; Maud Arsac; Robin Patel