CVAug 26, 2015

SPF-CellTracker: Tracking multiple cells with strongly-correlated moves using a spatial particle filter

arXiv:1508.06464v324 citations
Originality Incremental advance
AI Analysis

This addresses a challenging task in bioimage informatics for researchers studying neural activity, but it is incremental as it builds on existing particle filter approaches.

The paper tackled the problem of tracking hundreds of cells in 3D time-lapse images, particularly for neural activity in C. elegans, by developing SPF-CellTracker, which reduced tracking errors like cell-switching and coalescence compared to standard methods.

Tracking many cells in time-lapse 3D image sequences is an important challenging task of bioimage informatics. Motivated by a study of brain-wide 4D imaging of neural activity in C. elegans, we present a new method of multi-cell tracking. Data types to which the method is applicable are characterized as follows: (i) cells are imaged as globular-like objects, (ii) it is difficult to distinguish cells based only on shape and size, (iii) the number of imaged cells ranges in several hundreds, (iv) moves of nearly-located cells are strongly correlated and (v) cells do not divide. We developed a tracking software suite which we call SPF-CellTracker. Incorporating dependency on cells' moves into prediction model is the key to reduce the tracking errors: cell-switching and coalescence of tracked positions. We model target cells' correlated moves as a Markov random field and we also derive a fast computation algorithm, which we call spatial particle filter. With the live-imaging data of nuclei of C. elegans neurons in which approximately 120 nuclei of neurons are imaged, we demonstrate an advantage of the proposed method over the standard particle filter and a method developed by Tokunaga et al. (2014).

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