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Better understanding the phenotypic effects of drugs through shared targets in genetic disease networks

Affiliation
Department of Molecular Biology and Biochemistry ,University of Malaga ,Malaga ,Spain
Díaz-Santiago, Elena;
Affiliation
Department of Molecular Biology and Biochemistry ,University of Malaga ,Malaga ,Spain
Moya-García, Aurelio A.;
Affiliation
Department of Molecular Biology and Biochemistry ,University of Malaga ,Malaga ,Spain
Pérez-García, Jesús;
Affiliation
Laboratory of Inherited Metabolic Diseases and Newborn Screening ,Malaga Regional University Hospital ,Malaga ,Spain
Yahyaoui, Raquel;
Affiliation
Department of Structural and Molecular Biology ,University College London ,London ,United Kingdom
Orengo, Christine;
Affiliation
Computational Systems Biology Group ,Systems Biology Department ,National Centre for Biotechnology (CNB-CSIC) ,Madrid ,Spain
Pazos, Florencio;
Affiliation
Department of Molecular Biology and Biochemistry ,University of Malaga ,Malaga ,Spain
Perkins, James R.;
Affiliation
Department of Molecular Biology and Biochemistry ,University of Malaga ,Malaga ,Spain
Ranea, Juan A. G.

Introduction Most drugs fail during development and there is a clear and unmet need for approaches to better understand mechanistically how drugs exert both their intended and adverse effects. Gaining traction in this field is the use of disease data linking genes with pathological phenotypes and combining this with drugtarget interaction data. Methods We introduce methodology to associate drugs with effects, both intended and adverse, using a tripartite network approach that combines drug-target and target-phenotype data, in which targets can be represented as proteins and protein domains. Results We were able to detect associations for over 140,000 ChEMBL drugs and 3,800 phenotypes, represented as Human Phenotype Ontology (HPO) terms. The overlap of these results with the SIDER databases of known drug side effects was up to 10 times higher than random, depending on the target type, disease database and score threshold used. In terms of overlap with drug-phenotype pairs extracted from the literature, the performance of our methodology was up to 17.47 times greater than random. The top results include phenotype-drug associations that represent intended effects, particularly for cancers such as chronic myelogenous leukemia, which was linked with nilotinib. They also include adverse side effects, such as blurred vision being linked with tetracaine. Discussion This work represents an important advance in our understanding of how drugs cause intended and adverse side effects through their action on disease causing genes and has potential applications for drug development and repositioning.

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License Holder: Copyright © 2025 Díaz-Santiago, Moya-García, Pérez-García, Yahyaoui, Orengo, Pazos, Perkins and Ranea.

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