Litcius/Paper detail

<p>On the Role of Artificial Intelligence in Genomics to Enhance Precision Medicine</p>

Óscar Álvarez-Machancoses, Enrique J. deAndrés‐Galiana, Ana Cernea, Javier Fernández Sánchez de la Viña, Juan Luis Fernández‐Martínez

2020Pharmacogenomics and Personalized Medicine34 citationsDOIOpen Access PDF

Abstract

The complexity of orphan diseases, which are those that do not have an effective treatment, together with the high dimensionality of the genetic data used for their analysis and the high degree of uncertainty in the understanding of the mechanisms and genetic pathways which are involved in their development, motivate the use of advanced techniques of artificial intelligence and in-depth knowledge of molecular biology, which is crucial in order to find plausible solutions in drug design, including drug repositioning. Particularly, we show that the use of robust deep sampling methodologies of the altered genetics serves to obtain meaningful results and dramatically decreases the cost of research and development in drug design, influencing very positively the use of precision medicine and the outcomes in patients. The target-centric approach and the use of strong prior hypotheses that are not matched against reality (disease genetic data) are undoubtedly the cause of the high number of drug design failures and attrition rates. Sampling and prediction under uncertain conditions cannot be avoided in the development of precision medicine.

Topics & Concepts

Precision medicineMedicineDrug developmentArtificial intelligenceSampling (signal processing)Machine learningGenomicsAttritionComputational biologyDrugComputer scienceGeneticsPharmacologyBiologyPathologyGenomeFilter (signal processing)DentistryComputer visionGeneComputational Drug Discovery MethodsGenetics, Bioinformatics, and Biomedical Researchvaccines and immunoinformatics approaches