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Machine learning for small interfering RNAs: a concise review of recent developments

Minhyeok Lee

2023Frontiers in Genetics16 citationsDOIOpen Access PDF

Abstract

The advent of machine learning and its subsequent integration into small interfering RNA (siRNA) research heralds a new epoch in the field of RNA interference (RNAi). This review emphasizes the urgency and relevance of assimilating the plethora of contributions and advancements in this domain, particularly focusing on the period of 2019-2023. Given the rapid progression of deep learning technologies, our synthesis of recent research is paramount to staying apprised of the state-of-the-art methods being utilized. It not only offers a comprehensive insight into the confluence of machine learning and siRNA but also serves as a beacon, guiding future explorations in this intersectional research field. Our rigorous examination of studies promises a discerning perspective on the contemporary landscape of machine learning applications in siRNA design and function. This review is an effort to foster further discourse and propel academic inquiry in this multifaceted domain.

Topics & Concepts

Relevance (law)Field (mathematics)Computer scienceSmall interfering RNAFunction (biology)Domain (mathematical analysis)Perspective (graphical)RNA interferenceDeep learningData scienceEngineering ethicsArtificial intelligenceBiologyRNAPolitical scienceEngineeringGeneBiochemistryLawEvolutionary biologyPure mathematicsMathematical analysisMathematicsRNA Interference and Gene DeliveryAdvanced biosensing and bioanalysis techniquesMicroRNA in disease regulation
Machine learning for small interfering RNAs: a concise review of recent developments | Litcius