Article (Scientific journals)
Bioinformatics approaches for studying molecular sex differences in complex diseases.
LOO, Rebecca Ting Jiin; SOUDY, Mohamed; NASTA, Francesco et al.
2024In Briefings in Bioinformatics, 25 (6)
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Keywords :
bioinformatics; biomarker signature modeling; complex diseases; molecular sex differences; pathway and network analysis; personalized medicine; Humans; Male; Female; Gene Regulatory Networks; Computational Biology/methods; Sex Characteristics; Computational Biology; Information Systems; Molecular Biology
Abstract :
[en] Many complex diseases exhibit pronounced sex differences that can affect both the initial risk of developing the disease, as well as clinical disease symptoms, molecular manifestations, disease progression, and the risk of developing comorbidities. Despite this, computational studies of molecular data for complex diseases often treat sex as a confounding variable, aiming to filter out sex-specific effects rather than attempting to interpret them. A more systematic, in-depth exploration of sex-specific disease mechanisms could significantly improve our understanding of pathological and protective processes with sex-dependent profiles. This survey discusses dedicated bioinformatics approaches for the study of molecular sex differences in complex diseases. It highlights that, beyond classical statistical methods, approaches are needed that integrate prior knowledge of relevant hormone signaling interactions, gene regulatory networks, and sex linkage of genes to provide a mechanistic interpretation of sex-dependent alterations in disease. The review examines and compares the advantages, pitfalls and limitations of various conventional statistical and systems-level mechanistic analyses for this purpose, including tailored pathway and network analysis techniques. Overall, this survey highlights the potential of specialized bioinformatics techniques to systematically investigate molecular sex differences in complex diseases, to inform biomarker signature modeling, and to guide more personalized treatment approaches.
Research center :
Luxembourg Centre for Systems Biomedicine (LCSB): Biomedical Data Science (Glaab Group)
Disciplines :
Human health sciences: Multidisciplinary, general & others
Life sciences: Multidisciplinary, general & others
Biotechnology
Author, co-author :
LOO, Rebecca Ting Jiin  ;  University of Luxembourg
SOUDY, Mohamed  ;  University of Luxembourg
NASTA, Francesco  ;  University of Luxembourg > Luxembourg Centre for Systems Biomedicine (LCSB) > Biomedical Data Science
MACCHI, Mirco  ;  University of Luxembourg
GLAAB, Enrico  ;  University of Luxembourg
External co-authors :
no
Language :
English
Title :
Bioinformatics approaches for studying molecular sex differences in complex diseases.
Publication date :
23 September 2024
Journal title :
Briefings in Bioinformatics
ISSN :
1467-5463
eISSN :
1477-4054
Publisher :
Oxford University Press (OUP), England
Volume :
25
Issue :
6
Peer reviewed :
Peer Reviewed verified by ORBi
Focus Area :
Systems Biomedicine
Computational Sciences
Development Goals :
3. Good health and well-being
FnR Project :
FNR17104370 - Rebalancing Sleep-wake Disturbances In Parkinson's Disease With Deep Brain Stimulation, 2022 (01/06/2023-31/05/2026) - Enrico Glaab
FNR17027921 - Predictive Biomarkers In Dystonia: Defining The Paradigm Of Monogenic Dystonia To Implement The Diagnosis And Prognosis Of Undiagnosed Forms, 2022 (01/06/2023-...) - Enrico Glaab
Funders :
Luxembourg Fondation Wivine
FNR - Luxembourg National Research Fund
Funding number :
FNR17027921
Funding text :
We gratefully acknowledge the sponsorship of this work by the Luxembourg Fondation Wivine. EG also acknowledges support by the Luxembourg National Research Fund for the project PreDYT (INTER/EJP RD22/17027921/PreDYT) as part of the European Joint Programme on Rare Diseases and for the projects AD-PLCG2 (INTER/JPND23/17999421/AD-PLCG2) and RECAST (INTER/22/17104370/RECAST) as part of the Joint Programme—Neurodegenerative Disease Research.
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since 20 October 2024

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