As more and more neuroanatomical data are made available through efforts such as NeuroMorpho.Org and FlyCircuit.org, the need to develop computational tools to facilitate automatic knowledge discovery from such large datasets becomes more urgent. One fundamental question is how best to compare neuron structures, for instance to organize and classify large collection of neurons. We aim to develop a flexible yet powerful framework to support comparison and classification of large collection of neuron structures efficiently. Specifically we propose to use a topological persistence-based feature vectorization framework. Existing methods to vectorize a neuron (i.e, convert a neuron to a feature vector so as to support efficient comparison and/or...
AbstractPersistent cohomology is a powerful technique for discovering topological structure in data....
The advent of automatic tracing and reconstruction technology has led to a surge in the number of ne...
Developing sensitive and reliable methods to distinguish normal and abnormal brain states is a key n...
<div><p>As more and more neuroanatomical data are made available through efforts such as NeuroMorpho...
One of the paramount challenges in neuroscience is to understand the dynamics of individual neurons ...
Neuronal morphology is a fundamental factor influencing information processing within neurons and ne...
Persistent homology (PH) is an algorithmic method that allows one to study shape and higher-order in...
Persistent homology has become the main tool in topological data analysis, using methods from algebr...
Neural circuit mapping is generating datasets of tens of thousands of labeled neurons. New computati...
The study of neuronal cell morphology and function in neurodegenerative disease processes is essenti...
The Brunel network is a neuronal network model composed of excitatory and inhibitory leaky integrate...
Characterizing the identity and types of neurons in the brain, as well as their associated function,...
Persistent cohomology is a powerful technique for discovering topological structure in data. Strateg...
This article proposes the concept of neuromorphological space as the multidimensional space defined ...
The online version of this article (https://doi.org/10.1007/s12021-017-9341-1) contains supplementar...
AbstractPersistent cohomology is a powerful technique for discovering topological structure in data....
The advent of automatic tracing and reconstruction technology has led to a surge in the number of ne...
Developing sensitive and reliable methods to distinguish normal and abnormal brain states is a key n...
<div><p>As more and more neuroanatomical data are made available through efforts such as NeuroMorpho...
One of the paramount challenges in neuroscience is to understand the dynamics of individual neurons ...
Neuronal morphology is a fundamental factor influencing information processing within neurons and ne...
Persistent homology (PH) is an algorithmic method that allows one to study shape and higher-order in...
Persistent homology has become the main tool in topological data analysis, using methods from algebr...
Neural circuit mapping is generating datasets of tens of thousands of labeled neurons. New computati...
The study of neuronal cell morphology and function in neurodegenerative disease processes is essenti...
The Brunel network is a neuronal network model composed of excitatory and inhibitory leaky integrate...
Characterizing the identity and types of neurons in the brain, as well as their associated function,...
Persistent cohomology is a powerful technique for discovering topological structure in data. Strateg...
This article proposes the concept of neuromorphological space as the multidimensional space defined ...
The online version of this article (https://doi.org/10.1007/s12021-017-9341-1) contains supplementar...
AbstractPersistent cohomology is a powerful technique for discovering topological structure in data....
The advent of automatic tracing and reconstruction technology has led to a surge in the number of ne...
Developing sensitive and reliable methods to distinguish normal and abnormal brain states is a key n...