Dendritic Spine Shape Analysis: A Clustering Perspective
Muhammad Usman Ghani, Ertunc Erdil, Sumeyra Demir Kanik, Ali Ozgur, Argunsah, Anna Felicity Hobbiss, Inbal Israely, Devrim Unay, Tolga Tasdizen,, Mujdat Cetin

TL;DR
This paper explores dendritic spine shape classification through clustering, revealing potential intermediate shapes and challenging the traditional discrete class perspective, using automated, unbiased methods on microscopic images.
Contribution
It introduces a clustering approach for spine shape analysis, addressing subjectivity and the continuum debate in spine classification.
Findings
Four clusters identified across features
Evidence of intermediate spine shapes
Supports continuum of shape variations
Abstract
Functional properties of neurons are strongly coupled with their morphology. Changes in neuronal activity alter morphological characteristics of dendritic spines. First step towards understanding the structure-function relationship is to group spines into main spine classes reported in the literature. Shape analysis of dendritic spines can help neuroscientists understand the underlying relationships. Due to unavailability of reliable automated tools, this analysis is currently performed manually which is a time-intensive and subjective task. Several studies on spine shape classification have been reported in the literature, however, there is an on-going debate on whether distinct spine shape classes exist or whether spines should be modeled through a continuum of shape variations. Another challenge is the subjectivity and bias that is introduced due to the supervised nature of…
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Taxonomy
TopicsCell Image Analysis Techniques · Neuroscience and Neuropharmacology Research · Topological and Geometric Data Analysis
