Exploring the network's world: From omics-driven machine learning workflow for drug target identification to quantification of signaling model diversity

Publication date

2024-03-07



Abstract

The drug discovery process is challenging, time-consuming, and extremely expensive. Drug repurposing is a strategy for identifying new uses for existing drugs, aiming to simplify the process. While machine learning approaches have shown promise, they often need more mechanistic understanding, which is necessary for robust drug target identification and repurposing strategies. Mechanistic models provide crucial insights into the underlying biological mechanisms, complementing machine learning techniques. However, inferring mechanistic signaling networks from omics data poses challenges due to non-identifiability, resulting in multiple valid solutions consistent with the data. In this talk, we will explore the applications of neural networks and multilayer biological networks for drug repurposing opportunities and network inference problems applied to signaling pathways. In the first part, we present a novel machine learning and network-based workflow to identify drug targets for cystinosis, the most common cause of inherited tubular dysfunction and kidney disease in children and currently lacks effective therapies. This approach allows us to recapitulate the disease mechanisms in the context of renal tubular physiology and identify candidate drug targets for further validation using a cross-species workflow and disease-relevant screening technologies. In the second part of the presentation, we shift our focus toward quantifying signaling model diversity through solver-agnostic solution sampling with CORNETO, which is an ongoing effort that aims to unify network inference problems via constrained optimization. Mechanistic signaling networks can be inferred from omics data and prior knowledge using combinatorial optimization and mathematical solvers to find the optimal network. However, this problem is in general, non-identifiable, and several solutions may be equally valid. Ignoring the existence of these alternative solutions leads to an incomplete picture of the hypothesis space of consistent mechanistic signaling networks. To alleviate this issue, we implemented an algorithm to explore the space of alternative solutions and to conduct sensitivity analysis on the optimal solution.

Document Type

Conference report

Language

English

Publisher

Barcelona Supercomputing Center

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Rights

http://creativecommons.org/licenses/by-nc-nd/4.0/

Open Access

Attribution-NonCommercial-NoDerivatives 4.0 International

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