Litcius/Paper detail

Imaging data analysis using non-negative matrix factorization

Toru Aonishi, Ryoichi Maruyama, Tsubasa Ito, Hiroyoshi Miyakawa, Masanori Murayama, Keisuke Ota

2021Neuroscience Research36 citationsDOIOpen Access PDF

Abstract

The rapid progress of imaging devices such as two-photon microscopes has made it possible to measure the activity of thousands to tens of thousands of cells at single-cell resolution in a wide field of view (FOV) data. However, it is not possible to manually identify thousands of cells in such wide FOV data. Several research groups have developed machine learning methods for automatically detecting cells from wide FOV data. Many of the recently proposed methods using dynamic activity information rather than static morphological information are based on non-negative matrix factorization (NMF). In this review, we outline cell-detection methods related to NMF. For the purpose of raising issues on NMF cell detection, we introduce our current development of a non-NMF method that is capable of detecting about 17,000 cells in ultra-wide FOV data.

Topics & Concepts

Non-negative matrix factorizationComputer scienceMatrix decompositionArtificial intelligenceComputer visionField (mathematics)Image (mathematics)Matrix (chemical analysis)Pattern recognition (psychology)PhysicsMathematicsPure mathematicsEigenvalues and eigenvectorsMaterials scienceComposite materialQuantum mechanicsCell Image Analysis TechniquesSingle-cell and spatial transcriptomicsAdvanced Fluorescence Microscopy Techniques