TY - JOUR
T1 - Dendritic tree extraction from noisy maximum intensity projection images in C. elegans
AU - Greenblum, Ayala
AU - Sznitman, Raphael
AU - Fua, Pascal
AU - Arratia, Paulo E.
AU - Oren, Meital
AU - Podbilewicz, Benjamin
AU - Sznitman, Josué
AU - Oren-Suissa, Meital
N1 - Funding Information: The authors would like to thank Julie Grimm and Clari Valansi at the Dept. of Biology, Technion for helpful discussions. JS was supported in part by the European Commission (FP7 Program) through a Career Integration Grant (PCIG09-GA-2011-293604). JS and PA were supported by a US-Israel Binational Science Foundation grant (BSF Nr. 2011323). BP was supported by the Israel Science Foundation, grant 826/08 and BIKURA grant 1542/07, and the European Research Council (ERC) grant 268843.
PY - 2014/6/12
Y1 - 2014/6/12
N2 - Background: Maximum Intensity Projections (MIP) of neuronal dendritic trees obtained from confocal microscopy are frequently used to study the relationship between tree morphology and mechanosensory function in the model organism C. elegans. Extracting dendritic trees from noisy images remains however a strenuous process that has traditionally relied on manual approaches. Here, we focus on automated and reliable 2D segmentations of dendritic trees following a statistical learning framework.Methods: Our dendritic tree extraction (DTE) method uses small amounts of labelled training data on MIPs to learn noise models of texture-based features from the responses of tree structures and image background. Our strategy lies in evaluating statistical models of noise that account for both the variability generated from the imaging process and from the aggregation of information in the MIP images. These noisy models are then used within a probabilistic, or Bayesian framework to provide a coarse 2D dendritic tree segmentation. Finally, some post-processing is applied to refine the segmentations and provide skeletonized trees using a morphological thinning process.Results: Following a Leave-One-Out Cross Validation (LOOCV) method for an MIP databse with available " ground truth" images, we demonstrate that our approach provides significant improvements in tree-structure segmentations over traditional intensity-based methods. Improvements for MIPs under various imaging conditions are both qualitative and quantitative, as measured from Receiver Operator Characteristic (ROC) curves and the yield and error rates in the final segmentations. In a final step, we demonstrate our DTE approach on previously unseen MIP samples including the extraction of skeletonized structures, and compare our method to a state-of-the art dendritic tree tracing software.Conclusions: Overall, our DTE method allows for robust dendritic tree segmentations in noisy MIPs, outperforming traditional intensity-based methods. Such approach provides a useable segmentation framework, ultimately delivering a speed-up for dendritic tree identification on the user end and a reliable first step towards further morphological characterizations of tree arborization.
AB - Background: Maximum Intensity Projections (MIP) of neuronal dendritic trees obtained from confocal microscopy are frequently used to study the relationship between tree morphology and mechanosensory function in the model organism C. elegans. Extracting dendritic trees from noisy images remains however a strenuous process that has traditionally relied on manual approaches. Here, we focus on automated and reliable 2D segmentations of dendritic trees following a statistical learning framework.Methods: Our dendritic tree extraction (DTE) method uses small amounts of labelled training data on MIPs to learn noise models of texture-based features from the responses of tree structures and image background. Our strategy lies in evaluating statistical models of noise that account for both the variability generated from the imaging process and from the aggregation of information in the MIP images. These noisy models are then used within a probabilistic, or Bayesian framework to provide a coarse 2D dendritic tree segmentation. Finally, some post-processing is applied to refine the segmentations and provide skeletonized trees using a morphological thinning process.Results: Following a Leave-One-Out Cross Validation (LOOCV) method for an MIP databse with available " ground truth" images, we demonstrate that our approach provides significant improvements in tree-structure segmentations over traditional intensity-based methods. Improvements for MIPs under various imaging conditions are both qualitative and quantitative, as measured from Receiver Operator Characteristic (ROC) curves and the yield and error rates in the final segmentations. In a final step, we demonstrate our DTE approach on previously unseen MIP samples including the extraction of skeletonized structures, and compare our method to a state-of-the art dendritic tree tracing software.Conclusions: Overall, our DTE method allows for robust dendritic tree segmentations in noisy MIPs, outperforming traditional intensity-based methods. Such approach provides a useable segmentation framework, ultimately delivering a speed-up for dendritic tree identification on the user end and a reliable first step towards further morphological characterizations of tree arborization.
KW - Bayesian probability
KW - C. elegans
KW - Computer vision
KW - Image segmentation
KW - Neuronal arborization
KW - Neuronal dendrites
KW - Statistical learning
UR - http://www.scopus.com/inward/record.url?scp=84903875908&partnerID=8YFLogxK
U2 - https://doi.org/10.1186/1475-925X-13-74
DO - https://doi.org/10.1186/1475-925X-13-74
M3 - مقالة
SN - 1475-925X
VL - 13
JO - BioMedical Engineering Online
JF - BioMedical Engineering Online
IS - 1
M1 - 74
ER -