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Deciphering the Language of DNA to Identify Regulatory Elements and Classify Transcripts Into Functional Classes

Description du projet

Décoder le langage de l’ADN

Les séquences génomiques ressemblent au langage humain dans le sens où les nucléotides et les codons transmettent des informations tout comme les phonèmes et les syllabes constituent des unités du langage parlé. Une séquence génomique peut porter le code d’une protéine, ou bien transmettre un message structural ou régulateur. Des scientifiques du projet LanguageOfDNA, financé par l’UE, utiliseront des algorithmes conçus pour le traitement de langages humains afin de classifier des transcriptions d’ARN et des régions génomiques non traduites. Grâce à l’établissement de modèles du langage ADN/ARN, ils seront capables d’interpréter toute séquence génomique et de contribuer à la définition fonctionnelle du génome humain.

Objectif

The genomics era dawned about two decades ago with the completion of a multi-billion project sequencing the complete human genome. Today a similar task is within reach of any modestly equipped lab, due to the advances in sequencing techniques. Thousands of new species are now having their genome sequenced per year. A volume of produced genomic data challenges the interpretation capacity of classical statistical methods, opening the doors for novel machine learning approaches.

A genomic sequence can be conceptually seen as a close parallel to a human language. Both utilize information (nucleotides/codons and phonemes/syllables) to encode and transmit a signal that can be faithfully decoded, with attention to error minimization, at the receiving end. Genomic messages are a product of multiple and often contradictory evolutionary pressures and are aimed to be decoded at the same time by many different actors in variable ways. For example, a genomic sequence could encode for a protein product, thus displaying a three-nucleotide / codon-based language model. However, it has also subtexts of the regulation (a codon sequence can include motifs aimed at RNA binding proteins), structural information (functional RNA folding patterns pressuring sequences to a specific direction) and so on.

The main challenge of applying machine learning models to the identification of genomic function is to find creative ways to untangle these multiple layers of subtexts and focus on each type of message separately. We will adapt algorithms recently developed for the processing of human languages and use them for the classification of RNA transcripts into functional classes and the classification of untranslated functional genomic regions (enhancers, transcription factor binding sites). We will create ready-to-use datasets to benchmark existing and future methods in this field and make all DNA/RNA language models publicly available.

Coordinateur

Masarykova univerzita
Contribution nette de l'UE
€ 156 980,64
Adresse
Zerotinovo namesti 9
601 77 Brno
Tchéquie

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Région
Česko Jihovýchod Jihomoravský kraj
Type d’activité
Higher or Secondary Education Establishments
Liens
Coût total
€ 156 980,64