The mechanistic functional landscape of retinitis pigmentosa: a machine learning-driven approach to therapeutic target discovery.

TitleThe mechanistic functional landscape of retinitis pigmentosa: a machine learning-driven approach to therapeutic target discovery.
Publication TypeJournal Article
Year of Publication2024
AuthorsEsteban-Medina, M, Loucera, C, Rian, K, Velasco, S, Olivares-González, L, Rodrigo, R, Dopazo, J, Peña-Chilet, M
JournalJ Transl Med
Volume22
Issue1
Pagination139
Date Published2024 Feb 06
ISSN1479-5876
KeywordsAnimals; Mice; Retinitis pigmentosa; Signal Transduction
Abstract

BACKGROUND: Retinitis pigmentosa is the prevailing genetic cause of blindness in developed nations with no effective treatments. In the pursuit of unraveling the intricate dynamics underlying this complex disease, mechanistic models emerge as a tool of proven efficiency rooted in systems biology, to elucidate the interplay between RP genes and their mechanisms. The integration of mechanistic models and drug-target interactions under the umbrella of machine learning methodologies provides a multifaceted approach that can boost the discovery of novel therapeutic targets, facilitating further drug repurposing in RP.METHODS: By mapping Retinitis Pigmentosa-related genes (obtained from Orphanet, OMIM and HPO databases) onto KEGG signaling pathways, a collection of signaling functional circuits encompassing Retinitis Pigmentosa molecular mechanisms was defined. Next, a mechanistic model of the so-defined disease map, where the effects of interventions can be simulated, was built. Then, an explainable multi-output random forest regressor was trained using normal tissue transcriptomic data to learn causal connections between targets of approved drugs from DrugBank and the functional circuits of the mechanistic disease map. Selected target genes involvement were validated on rd10 mice, a murine model of Retinitis Pigmentosa.RESULTS: A mechanistic functional map of Retinitis Pigmentosa was constructed resulting in 226 functional circuits belonging to 40 KEGG signaling pathways. The method predicted 109 targets of approved drugs in use with a potential effect over circuits corresponding to nine hallmarks identified. Five of those targets were selected and experimentally validated in rd10 mice: Gabre, Gabra1 (GABARα1 protein), Slc12a5 (KCC2 protein), Grin1 (NR1 protein) and Glr2a. As a result, we provide a resource to evaluate the potential impact of drug target genes in Retinitis Pigmentosa.CONCLUSIONS: The possibility of building actionable disease models in combination with machine learning algorithms to learn causal drug-disease interactions opens new avenues for boosting drug discovery. Such mechanistically-based hypotheses can guide and accelerate the experimental validations prioritizing drug target candidates. In this work, a mechanistic model describing the functional disease map of Retinitis Pigmentosa was developed, identifying five promising therapeutic candidates targeted by approved drug. Further experimental validation will demonstrate the efficiency of this approach for a systematic application to other rare diseases.

DOI10.1186/s12967-024-04911-7
Alternate JournalJ Transl Med
PubMed ID38321543
PubMed Central IDPMC10848380
Grant ListPIP-0087-2021 / / Consejería de Salud y Consumo, Junta de Andalucía /
P18-RT-3471 / / Consejería de Salud y Consumo, Junta de Andalucía /
PAIDI2020-DOC_00350 / / Consejería de Salud y Consumo, Junta de Andalucía /
GA 813533 / / H2020 Marie Skłodowska-Curie Actions /
PID2020-117979RB-I00 / / Ministerio de Ciencia e Innovación /
ACCI2018/29 / / Instituto de Salud Carlos III /
PI2020/01305 / / Instituto de Salud Carlos III /
PI22/00082 / / Instituto de Salud Carlos III /
IMP/00019 / / Instituto de Salud Carlos III /
ACIF/2021/430 / / Conselleria de Innovación, Universidades, Ciencia y Sociedad Digital, Generalitat Valenciana /