Literature DB >> 24710154

Active structured learning for cell tracking: algorithm, framework, and usability.

Xinghua Lou, Martin Schiegg, Fred A Hamprecht.   

Abstract

One distinguishing property of life is its temporal dynamics, and it is hence only natural that time lapse experiments play a crucial role in modern biomedical research areas such as signaling pathways, drug discovery or developmental biology. Such experiments yield a very large number of images that encode complex cellular activities, and reliable automated cell tracking emerges naturally as a prerequisite for further quantitative analysis. However, many existing cell tracking methods are restricted to using only a small number of features to allow for manual tweaking. In this paper, we propose a novel cell tracking approach that embraces a powerful machine learning technique to optimize the tracking parameters based on user annotated tracks. Our approach replaces the tedious parameter tuning with parameter learning and allows for the use of a much richer set of complex tracking features, which in turn affords superior prediction accuracy. Furthermore, we developed an active learning approach for efficient training data retrieval, which reduces the annotation effort to only 17%. In practical terms, our approach allows life science researchers to inject their expertise in a more intuitive and direct manner. This process is further facilitated by using a glyph visualization technique for ground truth annotation and validation. Evaluation and comparison on several publicly available benchmark sequences show significant performance improvement over recently reported approaches. Code and software tools are provided to the public.

Mesh:

Year:  2014        PMID: 24710154     DOI: 10.1109/TMI.2013.2296937

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  6 in total

Review 1.  Machine learning applications in cell image analysis.

Authors:  Andrey Kan
Journal:  Immunol Cell Biol       Date:  2017-03-15       Impact factor: 5.126

2.  Convolutional Deep Belief Networks for Single-Cell/Object Tracking in Computational Biology and Computer Vision.

Authors:  Bineng Zhong; Shengnan Pan; Hongbo Zhang; Tian Wang; Jixiang Du; Duansheng Chen; Liujuan Cao
Journal:  Biomed Res Int       Date:  2016-10-26       Impact factor: 3.411

3.  A review for cell and particle tracking on microscopy images using algorithms and deep learning technologies.

Authors:  Hui-Jun Cheng; Ching-Hsien Hsu; Che-Lun Hung; Chun-Yuan Lin
Journal:  Biomed J       Date:  2021-10-07       Impact factor: 7.892

4.  Computational Image Analysis Reveals Intrinsic Multigenerational Differences between Anterior and Posterior Cerebral Cortex Neural Progenitor Cells.

Authors:  Mark R Winter; Mo Liu; David Monteleone; Justin Melunis; Uri Hershberg; Susan K Goderie; Sally Temple; Andrew R Cohen
Journal:  Stem Cell Reports       Date:  2015-09-03       Impact factor: 7.765

5.  Robust Individual-Cell/Object Tracking via PCANet Deep Network in Biomedicine and Computer Vision.

Authors:  Bineng Zhong; Shengnan Pan; Cheng Wang; Tian Wang; Jixiang Du; Duansheng Chen; Liujuan Cao
Journal:  Biomed Res Int       Date:  2016-08-25       Impact factor: 3.411

6.  Multicell migration tracking within angiogenic networks by deep learning-based segmentation and augmented Bayesian filtering.

Authors:  Mengmeng Wang; Lee-Ling Sharon Ong; Justin Dauwels; H Harry Asada
Journal:  J Med Imaging (Bellingham)       Date:  2018-06-13
  6 in total

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