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1.
Bioinformatics ; 39(10)2023 Oct 03.
Article de Anglais | MEDLINE | ID: mdl-37756698

RÉSUMÉ

MOTIVATION: Biological network analysis for high-throughput biomedical data interpretation relies heavily on topological characteristics. Networks are commonly composed of nodes representing genes or proteins that are connected by edges when interacting. In this study, we use the rich information available in the Reactome pathway database to build biological networks accounting for small molecules and proteoforms modeled using protein isoforms and post-translational modifications to study the topological changes induced by this refinement of the network representation. RESULTS: We find that improving the interactome modeling increases the number of nodes and interactions, but that isoform and post-translational modification annotation is still limited compared to what can be expected biologically. We also note that small molecule information can distort the topology of the network due to the high connectedness of these molecules, which does not necessarily represent the reality of biology. However, by restricting the connections of small molecules to the context of biochemical reactions, we find that these improve the overall connectedness of the network and reduce the prevalence of isolated components and nodes. Overall, changing the representation of the network alters the prevalence of articulation points and bridges globally but also within and across pathways. Hence, some molecules can gain or lose in biological importance depending on the level of detail of the representation of the biological system, which might in turn impact network-based studies of diseases or druggability. AVAILABILITY AND IMPLEMENTATION: Networks are constructed based on data publicly available in the Reactome Pathway knowledgebase: reactome.org.

2.
Biostatistics ; 24(4): 1031-1044, 2023 10 18.
Article de Anglais | MEDLINE | ID: mdl-35536588

RÉSUMÉ

Experimental design usually focuses on the setting where treatments and/or other aspects of interest can be manipulated. However, in observational biomedical studies with sequential processing, the set of available samples is often fixed, and the problem is thus rather the ordering and allocation of samples to batches such that comparisons between different treatments can be made with similar precision. In certain situations, this allocation can be done by hand, but this rapidly becomes impractical with more challenging cohort setups. Here, we present a fast and intuitive algorithm to generate balanced allocations of samples to batches for any single-variable model where the treatment variable is nominal. This greatly simplifies the grouping of samples into batches, makes the process reproducible, and provides a marked improvement over completely random allocations. The general challenges of allocation and why good solutions can be hard to find are also discussed, as well as potential extensions to multivariable settings.


Sujet(s)
Algorithmes , Études observationnelles comme sujet , Humains , Plan de recherche
3.
J Proteome Res ; 20(1): 122-128, 2021 01 01.
Article de Anglais | MEDLINE | ID: mdl-32969222

RÉSUMÉ

Randomization is used in experimental design to reduce the prevalence of unanticipated confounders. Complete randomization can however create imbalanced designs, for example, grouping all samples of the same condition in the same batch. Block randomization is an approach that can prevent severe imbalances in sample allocation with respect to both known and unknown confounders. This feature provides the reader with an introduction to blocking and randomization, and insights into how to effectively organize samples during experimental design, with special considerations with respect to proteomics.


Sujet(s)
Protéomique , Plan de recherche , Répartition aléatoire
4.
Gigascience ; 8(8)2019 08 01.
Article de Anglais | MEDLINE | ID: mdl-31363752

RÉSUMÉ

BACKGROUND: Mapping biomedical data to functional knowledge is an essential task in bioinformatics and can be achieved by querying identifiers (e.g., gene sets) in pathway knowledge bases. However, the isoform and posttranslational modification states of proteins are lost when converting input and pathways into gene-centric lists. FINDINGS: Based on the Reactome knowledge base, we built a network of protein-protein interactions accounting for the documented isoform and modification statuses of proteins. We then implemented a command line application called PathwayMatcher (github.com/PathwayAnalysisPlatform/PathwayMatcher) to query this network. PathwayMatcher supports multiple types of omics data as input and outputs the possibly affected biochemical reactions, subnetworks, and pathways. CONCLUSIONS: PathwayMatcher enables refining the network representation of pathways by including proteoforms defined as protein isoforms with posttranslational modifications. The specificity of pathway analyses is hence adapted to different levels of granularity, and it becomes possible to distinguish interactions between different forms of the same protein.


Sujet(s)
Biologie informatique/méthodes , Réseaux de régulation génique , Transduction du signal , Logiciel , Humains , Polymorphisme de nucléotide simple , Cartographie d'interactions entre protéines/méthodes , Maturation post-traductionnelle des protéines
5.
Eur J Mass Spectrom (Chichester) ; 25(6): 451-456, 2019 Dec.
Article de Anglais | MEDLINE | ID: mdl-31189351

RÉSUMÉ

Single amino acids and small endogenous peptides play important roles in maintaining a properly functioning organism. These molecules are however currently only routinely identified in targeted approaches. In a small proof-of-concept mass spectrometry experiment, we found that by combining isobaric tags and peptidomics, and by targeting singly charged molecules, we were able to identify a significant amount of single amino acids and small endogenous peptides using a basic mass-based identification approach. While there is still room for improvement, our simple test indicates that a limited amount of extra work when setting up the mass spectrometry experiment could potentially lead to a wealth of additional information.


Sujet(s)
Acides aminés/composition chimique , Peptides/composition chimique , Spectrométrie de masse , Protéomique
6.
J Proteome Res ; 17(11): 3801-3809, 2018 11 02.
Article de Anglais | MEDLINE | ID: mdl-30251541

RÉSUMÉ

Biochemical pathways are commonly used as a reference to conduct functional analysis on biomedical omics data sets, where experimental results are mapped to knowledgebases comprising known molecular interactions collected from the literature. Due to their central role, the content of the functional knowledgebases directly influences the outcome of pathway analyses. In this study, we investigate the structure of the current pathway knowledge, as exemplified by Reactome, discuss the consequences for biological interpretation, and outline possible improvements in the use of pathway knowledgebases. By providing a view of the underlying protein interaction network, we aim to help pathway analysis users manage their expectations and better identify possible artifacts in the results.


Sujet(s)
Biologie informatique/méthodes , Lymphocytes/métabolisme , Cellules myéloïdes/métabolisme , Cartographie d'interactions entre protéines/méthodes , Protéomique/méthodes , Bases de données de protéines , Humains , Bases de connaissances , Lymphocytes/cytologie , Voies et réseaux métaboliques/physiologie , Cellules myéloïdes/cytologie , Cartes d'interactions protéiques
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