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Advancements in Machine Learning for Microrobotics in Biomedicine

Amar Salehi, Soleiman Hosseinpour, Nasrollah Tabatabaei, Mahmoud Soltani Firouz, Niloufar Zadebana, Richard Nauber, Mariana Medina‐Sánchez

2024Advanced Intelligent Systems17 citationsDOIOpen Access PDF

Abstract

Microrobotics, particularly in the field of biomedicine, has garnered considerable attention due to its potential for noninvasive medical interventions enabled by the small size of microrobots. However, controlling and imaging them present unique challenges compared to their macroscale counterparts, primarily due to the intricate anatomical spaces and dynamic environments within the human body. Existing imaging modalities also face limitations, hindering real‐time visualization and control of microrobots in deep tissue. Machine learning (ML) algorithms offer promising solutions to these challenges by enabling adaptive motion control and enhancing image resolution through robust data analysis and decision‐making capabilities. In this review, a comprehensive overview of recent advancements in ML‐based techniques for microrobotic research is provided, emphasizing their applications in imaging and control in biomedical contexts. Additionally, current obstacles and potential future directions for ML algorithms in microrobotics, particularly regarding their translation to clinical settings, are discussed.

Topics & Concepts

BiomedicineComputer scienceArtificial intelligenceBiologyGeneticsMicro and Nano RoboticsMicrofluidic and Bio-sensing TechnologiesMolecular Communication and Nanonetworks