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"In silico" medicine and "-omics" strategies in nephrology: contributions and relevance to the diagnosis and prevention of Chronic Kidney Disease


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Title: "In silico" medicine and "-omics" strategies in nephrology: contributions and relevance to the diagnosis and prevention of Chronic Kidney Disease
Authors : Checa Ros, Ana
Locascio, Antonella
Steib, Nelia
Okojie, Owahabanum-Joshua
Malte-Weiver, Totte
Bermúdez, Valmore
D'Marco Gascón, Luis Gerardo
Keywords: Aparato urinarioUrinary systemEnfermedadDiseasesNefrologíaNephrologyMedicina preventivaPreventive medicineBig data
Publisher: The Korean Society of Nephrology
Citation: Checa-Ros, A., Locascio, A., Steib, N., Okojie, O.J., Malte-Weier, T., Bermúdez, V. & D'Marco, L. (2024). In silico medicine and -omics strategies in nephrology: contributions and relevance to the diagnosis and prevention of Chronic Kidney Disease. Kidney Research and Clinical Practice, Advance online publication. DOI: https://doi.org/10.23876/j.krcp.23.334
Abstract: Chronic kidney disease (CKD) has been increasing over the last years, with a rate between 0.49% to 0.87% new cases per year. Currently, the number of affected people is around 850 million worldwide. CKD is a slowly progressive disease that leads to irreversible loss of kidney function, end-stage kidney disease, and premature death. Therefore, CKD is considered a global health problem, and this sets the alarm for necessary efficient prediction, management, and disease prevention. At present, modern computer analysis, such as in silico medicine (ISM), denotes an emergent data science that offers interesting promise in the nephrology field. ISM offers reliable computer predictions to suggest optimal treatments in a case-specific manner. In addition, ISM offers the potential to gain a better understanding of the kidney physiology and/or pathophysiology of many complex diseases, together with a multiscale disease modeling. Similarly, -omics platforms (including genomics, transcriptomics, metabolomics, and proteomics), can generate biological data to obtain information on gene expression and regulation, protein turnover, and biological pathway connections in renal diseases. In this sense, the novel patient-centered approach in CKD research is built upon the combination of ISM analysis of human data, the use of in vitro models, and in vivo validation. Thus, one of the main objectives of CKD research is to manage the disease by the identification of new disease drivers, which could be prevented and monitored. This review explores the wide-ranging application of computational medicine and the application of -omics strategies in evaluating and managing kidney diseases.
URI: http://hdl.handle.net/10637/16184
Rights : http://creativecommons.org/licenses/by-nc-nd/4.0/deed.es
Open Access
ISSN: 2211-9132
2211-9140 (Electrónico)
Issue Date: 5-Jul-2024
Center : Universidad Cardenal Herrera-CEU
Appears in Collections:Dpto. Medicina y Cirugía





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