Please use this identifier to cite or link to this item: http://hdl.handle.net/10400.21/13414
Title: Artificial intelligence in epigenetic studies: shedding light on rare diseases
Author: Brasil, Sandra
Neves, Cátia José
Rijoff, Tatiana
Falcão, Marta
Valadão Matias, Gonçalo
Videira, P A
Ferreira, Vanessa dos Reis
Keywords: Epigenetics
Epigenomic
Artificial intelligence
Machine learning
Personalized medicine
Rare diseases (RD)
Issue Date: 5-May-2021
Publisher: FRONTIERS MEDIA SA
Citation: BRASIL, Sandra; [et al] – Artificial intelligence in epigenetic studies: shedding light on rare diseases. Frontiers in Molecular Biosciences. eISSN 2296-889X. Vol. 8 (2021), pp. 1-14
Abstract: More than 7,000 rare diseases (RDs) exist worldwide, affecting approximately 350 million people, out of which only 5% have treatment. The development of novel genome sequencing techniques has accelerated the discovery and diagnosis in RDs. However, most patients remain undiagnosed. Epigenetics has emerged as a promise for diagnosis and therapies in common disorders (e.g., cancer) with several epimarkers and epidrugs already approved and used in clinical practice. Hence, it may also become an opportunity to uncover new disease mechanisms and therapeutic targets in RDs. In this "big data" age, the amount of information generated, collected, and managed in (bio)medicine is increasing, leading to the need for its rapid and efficient collection, analysis, and characterization. Artificial intelligence (AI), particularly deep learning, is already being successfully applied to analyze genomic information in basic research, diagnosis, and drug discovery and is gaining momentum in the epigenetic field. The application of deep learning to epigenomic studies in RDs could significantly boost discovery and therapy development. This review aims to collect and summarize the application of AI tools in the epigenomic field of RDs. The lower number of studies found, specific for RDs, indicate that this is a field open to expansion, following the results obtained for other more common disorders.
Peer review: yes
URI: http://hdl.handle.net/10400.21/13414
DOI: 10.3389/fmolb.2021.648012
Appears in Collections:ISEL - Eng. Elect. Tel. Comp. - Artigos

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