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Active learning of neuron morphology for accurate automated tracing of neurites.
Gala, Rohan; Chapeton, Julio; Jitesh, Jayant; Bhavsar, Chintan; Stepanyants, Armen.
Afiliação
  • Gala R; Department of Physics and Center for Interdisciplinary Research on Complex Systems, Northeastern University Boston, MA, USA.
  • Chapeton J; Department of Physics and Center for Interdisciplinary Research on Complex Systems, Northeastern University Boston, MA, USA.
  • Jitesh J; Department of Physics and Center for Interdisciplinary Research on Complex Systems, Northeastern University Boston, MA, USA.
  • Bhavsar C; Department of Physics and Center for Interdisciplinary Research on Complex Systems, Northeastern University Boston, MA, USA.
  • Stepanyants A; Department of Physics and Center for Interdisciplinary Research on Complex Systems, Northeastern University Boston, MA, USA.
Front Neuroanat ; 8: 37, 2014.
Article em En | MEDLINE | ID: mdl-24904306
ABSTRACT
Automating the process of neurite tracing from light microscopy stacks of images is essential for large-scale or high-throughput quantitative studies of neural circuits. While the general layout of labeled neurites can be captured by many automated tracing algorithms, it is often not possible to differentiate reliably between the processes belonging to different cells. The reason is that some neurites in the stack may appear broken due to imperfect labeling, while others may appear fused due to the limited resolution of optical microscopy. Trained neuroanatomists routinely resolve such topological ambiguities during manual tracing tasks by combining information about distances between branches, branch orientations, intensities, calibers, tortuosities, colors, as well as the presence of spines or boutons. Likewise, to evaluate different topological scenarios automatically, we developed a machine learning approach that combines many of the above mentioned features. A specifically designed confidence measure was used to actively train the algorithm during user-assisted tracing procedure. Active learning significantly reduces the training time and makes it possible to obtain less than 1% generalization error rates by providing few training examples. To evaluate the overall performance of the algorithm a number of image stacks were reconstructed automatically, as well as manually by several trained users, making it possible to compare the automated traces to the baseline inter-user variability. Several geometrical and topological features of the traces were selected for the comparisons. These features include the total trace length, the total numbers of branch and terminal points, the affinity of corresponding traces, and the distances between corresponding branch and terminal points. Our results show that when the density of labeled neurites is sufficiently low, automated traces are not significantly different from manual reconstructions obtained by trained users.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2014 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2014 Tipo de documento: Article