Implementing machine learning methods for imaging flow cytometry
Sadao Ota, Issei Sato, Ryoichi Horisaki
Abstract
In this review, we focus on the applications of machine learning methods for analyzing image data acquired in imaging flow cytometry technologies. We propose that the analysis approaches can be categorized into two groups based on the type of data, raw imaging signals or features explicitly extracted from images, being analyzed by a trained model. We hope that this categorization is helpful for understanding uniqueness, differences and opportunities when the machine learning-based analysis is implemented in recently developed 'imaging' cell sorters.
Topics & Concepts
Computer scienceArtificial intelligenceCategorizationFocus (optics)Machine learningRaw dataPattern recognition (psychology)Computer visionPhysicsProgramming languageOpticsCell Image Analysis TechniquesSingle-cell and spatial transcriptomicsMicrofluidic and Bio-sensing Technologies