An integrated in silico-in vitro approach for identifying therapeutic targets against osteoarthritis

Journal Article (2022)
Authors

Raphaëlle Lesage (Katholieke Universiteit Leuven)

Mauricio N. Ferrao Blanco (Erasmus MC)

Roberto Narcisi (Erasmus MC)

Tim Welting (Maastricht University Medical Center)

G.J.V.M. van Osch (Erasmus MC, TU Delft - Biomaterials & Tissue Biomechanics)

Liesbet Geris (Katholieke Universiteit Leuven, Université de Liège)

Research Group
Biomaterials & Tissue Biomechanics
Copyright
© 2022 Raphaëlle Lesage, Mauricio N. Ferrao Blanco, Roberto Narcisi, Tim Welting, G.J.V.M. van Osch, Liesbet Geris
To reference this document use:
https://doi.org/10.1186/s12915-022-01451-8
More Info
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Publication Year
2022
Language
English
Copyright
© 2022 Raphaëlle Lesage, Mauricio N. Ferrao Blanco, Roberto Narcisi, Tim Welting, G.J.V.M. van Osch, Liesbet Geris
Research Group
Biomaterials & Tissue Biomechanics
Issue number
1
Volume number
20
DOI:
https://doi.org/10.1186/s12915-022-01451-8
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Abstract

Background: Without the availability of disease-modifying drugs, there is an unmet therapeutic need for osteoarthritic patients. During osteoarthritis, the homeostasis of articular chondrocytes is dysregulated and a phenotypical transition called hypertrophy occurs, leading to cartilage degeneration. Targeting this phenotypic transition has emerged as a potential therapeutic strategy. Chondrocyte phenotype maintenance and switch are controlled by an intricate network of intracellular factors, each influenced by a myriad of feedback mechanisms, making it challenging to intuitively predict treatment outcomes, while in silico modeling can help unravel that complexity. In this study, we aim to develop a virtual articular chondrocyte to guide experiments in order to rationalize the identification of potential drug targets via screening of combination therapies through computational modeling and simulations. Results: We developed a signal transduction network model using knowledge-based and data-driven (machine learning) modeling technologies. The in silico high-throughput screening of (pairwise) perturbations operated with that network model highlighted conditions potentially affecting the hypertrophic switch. A selection of promising combinations was further tested in a murine cell line and primary human chondrocytes, which notably highlighted a previously unreported synergistic effect between the protein kinase A and the fibroblast growth factor receptor 1. Conclusions: Here, we provide a virtual articular chondrocyte in the form of a signal transduction interactive knowledge base and of an executable computational model. Our in silico-in vitro strategy opens new routes for developing osteoarthritis targeting therapies by refining the early stages of drug target discovery. Graphical Abstract: [Figure not available: see fulltext.]