Classification of neurons has been a studied topic in neuroscience for several years and with the increase of data, new methods are encouraged to help with the classification. This study compares different machine learning algorithms to see which are better suited for classification of large data sets of morphological reconstructions in multidimensional feature space. Ten algorithms were compared on a data set of over 10 000 samples of mice neurons. Further, each classifiers ability to classify each available cell type were also investigated. The results show that Random Forest had the best overall mean accuracy followed by Multi-layer Perceptron with 83% and 78% respectively. However, observing the classification of individual cell types a...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
The classification of biological neuron types and networks poses challenges to the full understandin...
We report a morphology-based approach for the automatic identification of outlier neurons, as well a...
For the last decade, the use of machine learning in neuroscientific research has become a popular to...
An ongoing problem regarding the automatic classification of neurons by their morphology is the lack...
In this report, we study the topological differences and similarities between human and rodent neuro...
Neuronal morphology is primarily responsible for the structure of the connectivity among the neurons...
The advent of automatic tracing and reconstruction technology has led to a surge in the number of ne...
Automated annotation and identification tools for quantitative study of the brain are in demand. Rob...
Retinal ganglion cells of different species have been categorised using different paradigms and resu...
[Background] The challenge of classifying cortical interneurons is yet to be solved. Data-driven cla...
ABSTRACT: In the study of neural circuits, it becomes essential to discern the different neuronal ce...
Abstract-Accurate morphological characterization of the multiple neuronal classes of the brain would...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
dimensional classification. It introduces a novel classifier, the class bridge decomposable multid...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
The classification of biological neuron types and networks poses challenges to the full understandin...
We report a morphology-based approach for the automatic identification of outlier neurons, as well a...
For the last decade, the use of machine learning in neuroscientific research has become a popular to...
An ongoing problem regarding the automatic classification of neurons by their morphology is the lack...
In this report, we study the topological differences and similarities between human and rodent neuro...
Neuronal morphology is primarily responsible for the structure of the connectivity among the neurons...
The advent of automatic tracing and reconstruction technology has led to a surge in the number of ne...
Automated annotation and identification tools for quantitative study of the brain are in demand. Rob...
Retinal ganglion cells of different species have been categorised using different paradigms and resu...
[Background] The challenge of classifying cortical interneurons is yet to be solved. Data-driven cla...
ABSTRACT: In the study of neural circuits, it becomes essential to discern the different neuronal ce...
Abstract-Accurate morphological characterization of the multiple neuronal classes of the brain would...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
dimensional classification. It introduces a novel classifier, the class bridge decomposable multid...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
The classification of biological neuron types and networks poses challenges to the full understandin...
We report a morphology-based approach for the automatic identification of outlier neurons, as well a...