Mitigating off-target effects of small RNAs: conventional approaches, network theory and artificial intelligence
- PMID: 39293936
- DOI: 10.1111/bph.17302
Mitigating off-target effects of small RNAs: conventional approaches, network theory and artificial intelligence
Abstract
Three types of highly promising small RNA therapeutics, namely, small interfering RNAs (siRNAs), microRNAs (miRNAs) and the RNA subtype of antisense oligonucleotides (ASOs), offer advantages over small-molecule drugs. These small RNAs can target any gene product, opening up new avenues of effective and safe therapeutic approaches for a wide range of diseases. In preclinical research, synthetic small RNAs play an essential role in the investigation of physiological and pathological pathways as silencers of specific genes, facilitating discovery and validation of drug targets in different conditions. Off-target effects of small RNAs, however, could make it difficult to interpret experimental results in the preclinical phase and may contribute to adverse events of small RNA therapeutics. Out of the two major types of off-target effects we focused on the hybridization-dependent, especially on the miRNA-like off-target effects. Our main aim was to discuss several approaches, including sequence design, chemical modifications and target prediction, to reduce hybridization-dependent off-target effects that should be considered even at the early development phase of small RNA therapy. Because there is no standard way of predicting hybridization-dependent off-target effects, this review provides an overview of all major state-of-the-art computational methods and proposes new approaches, such as the possible inclusion of network theory and artificial intelligence (AI) in the prediction workflows. Case studies and a concise survey of experimental methods for validating in silico predictions are also presented. These methods could contribute to interpret experimental results, to minimize off-target effects and hopefully to avoid off-target-related adverse events of small RNA therapeutics. LINKED ARTICLES: This article is part of a themed issue Non-coding RNA Therapeutics. To view the other articles in this section visit http://onlinelibrary.wiley.com/doi/10.1111/bph.v182.2/issuetoc.
Keywords: bioinformatics; ceRNA network; chemical modifications; functional analysis; machine learning; neural network; post‐transcriptional regulation; risk minimization; target identification.
© 2024 The Author(s). British Journal of Pharmacology published by John Wiley & Sons Ltd on behalf of British Pharmacological Society.
References
REFERENCES
-
- Aartsm‐Rus, A., Garanto, A., Van Roon‐Mom, W., McConnell, E. M., Suslovitch, V., Yan, W. X., Watts, J. K., & Yu, T. W. (2023). Consensus guidelines for the design and in vitro preclinical efficacy testing N‐of‐1 exon skipping antisense oligonucleotides. Nucleic Acid Therapeutics, 33(1), 17–25. https://doi.org/10.1089/nat.2022.0060
-
- Aczél, T., Benczik, B., Ágg, B., Körtési, T., Urbán, P., Bauer, W., Gyenesei, A., Tuka, B., Tajti, J., Ferdinandy, P., Vécsei, L., Bölcskei, K., Kun, J., & Helyes, Z. (2022). Disease‐ and headache‐specific microRNA signatures and their predicted mRNA targets in peripheral blood mononuclear cells in migraineurs: Role of inflammatory signalling and oxidative stress. The Journal of Headache and Pain, 23(1), 113. https://doi.org/10.1186/s10194-022-01478-w
-
- Agarwal, V., Bell, G. W., Nam, J.‐W., & Bartel, D. P. (2015). Predicting effective microRNA target sites in mammalian mRNAs. eLife, 4, e05005. https://doi.org/10.7554/eLife.05005
-
- Ágg, B., Baranyai, T., Makkos, A., Vető, B., Faragó, N., Zvara, Á., Giricz, Z., Veres, D. V., Csermely, P., Arányi, T., Puskás, L. G., Varga, Z. V., & Ferdinandy, P. (2018). MicroRNA interactome analysis predicts post‐transcriptional regulation of ADRB2 and PPP3R1 in the hypercholesterolemic myocardium. Scientific Reports, 8(1), 10134. https://doi.org/10.1038/s41598-018-27740-3
-
- Ágg, B., Császár, A., Szalay‐Bekő, M., Veres, D. V., Mizsei, R., Ferdinandy, P., Csermely, P., & Kovács, I. A. (2019). The EntOptLayout Cytoscape plug‐in for the efficient visualization of major protein complexes in protein–protein interaction and signalling networks. Bioinformatics, 35(21), 4490–4492. https://doi.org/10.1093/bioinformatics/btz257
Publication types
MeSH terms
Substances
Grants and funding
- HUN-REN Hungarian Research Network
- 2020-4.1.1.-TKP2020/Ministry for Innovation and Technology in Hungary
- RRF-2.3.1-21-2022-00003/European Commission
- TKP2021-EGA-23/Nemzeti Kutatási, Fejlesztési és Innovációs Alap
- 2020-1.1.5-GYORSÍTÓSÁV-2021-00011/Nemzeti Kutatási, Fejlesztési és Innovációs Alap
- 2020-1.1.6-JÖVŐ-2021-00013/National Research, Development and Innovation Office of Hungary
- Semmelweis 250+ Excellence Fellowship
- ÚNKP-23-3-I-SE-21/New National Excellence Program of the Ministry for Culture and Innovation
- ÚNKP-23-4-II-SE-34/New National Excellence Program of the Ministry for Culture and Innovation
- R01HL155749/National Heart, Lung and Blood Institute
LinkOut - more resources
Full Text Sources