6533b7d1fe1ef96bd125d896
RESEARCH PRODUCT
Quantitative Analysis of Dynamic Association in Live Biological Fluorescent Samples
Heikki HuttunenKalle RutanenAnita MäkiVarpu MarjomäkiLassi PaavolainenPekka Ruusuvuorisubject
Computer and Information SciencesFluorescence-lifetime imaging microscopyMatching (graph theory)Cell SurvivalImage ProcessingAssociation (object-oriented programming)SciencerakkulatBioinformaticsTime-Lapse ImagingFluorescenceImage (mathematics)cellular structuresfluorescence imagingCell Line TumorMolecular Cell BiologyalgoritmitHumansComputer SimulationkuvantamismenetelmätPhysicsta113MicroscopyvesiclesMultidisciplinarySoftware Toolsbusiness.industryCytoplasmic VesiclesQRta1182Biology and Life SciencesSoftware EngineeringColocalizationExperimental dataPattern recognitionCell BiologyObject (computer science)imaging techniquesMolecular ImagingfluoresenssimikroskopiaSignal ProcessingEngineering and TechnologyMedicineArtificial intelligenceCellular Structures and OrganellesbusinessVesicle localizationResearch Articledescription
Determining vesicle localization and association in live microscopy may be challenging due to non-simultaneous imaging of rapidly moving objects with two excitation channels. Besides errors due to movement of objects, imaging may also introduce shifting between the image channels, and traditional colocalization methods cannot handle such situations. Our approach to quantifying the association between tagged proteins is to use an object-based method where the exact match of object locations is not assumed. Point-pattern matching provides a measure of correspondence between two point-sets under various changes between the sets. Thus, it can be used for robust quantitative analysis of vesicle association between image channels. Results for a large set of synthetic images shows that the novel association method based on point-pattern matching demonstrates robust capability to detect association of closely located vesicles in live cell-microscopy where traditional colocalization methods fail to produce results. In addition, the method outperforms compared Iterated Closest Points registration method. Results for fixed and live experimental data shows the association method to perform comparably to traditional methods in colocalization studies for fixed cells and to perform favorably in association studies for live cells. peerReviewed
year | journal | country | edition | language |
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2014-01-01 | PLoS ONE |