Ghani, Muhammad UsmanArgunsach, Ali OzgurIsraely, InbalUnay, DevrimTasdizen, TolgaCetin, Mujdat2023-06-162023-06-162016978-1-4799-2349-6978-1-4799-2350-21945-7928https://doi.org/10.1109/ISBI.2016.7493278https://hdl.handle.net/20.500.14365/195713th IEEE International Symposium on Biomedical Imaging (ISBI) -- APR 13-16, 2016 -- Prague, CZECH REPUBLICDendritic spines are one of the key functional components of neurons. Their morphological changes are correlated with neuronal activity. Neuroscientists study spine shape variations to understand their relation with neuronal activity. Currently this analysis performed manually, the availability of reliable automated tools would assist neuroscientists and accelerate this research. Previously, morphological features based spine analysis has been performed and reported in the literature. In this paper, we explore the idea of using and comparing manifold learning techniques for classifying spine shapes. We start with automatically segmented data and construct our feature vector by stacking and concatenating the columns of images. Further, we apply unsupervised manifold learning algorithms and compare their performance in the context of dendritic spine classification. We achieved 85.95% accuracy on a dataset of 242 automatically segmented mushroom and stubby spines. We also observed that ISOMAP implicitly computes prominent features suitable for classification purposes.eninfo:eu-repo/semantics/closedAccessDendritic SpinesClassificationManifold LearningISOMAPMicroscopic ImagingNeuroimagingOn Comparison of Manifold Learning Techniques for Dendritic Spine ClassificationConference Object10.1109/ISBI.2016.74932782-s2.0-84978396705