TY - JOUR
T1 - Vectorization of optically sectioned brain microvasculature
T2 - Learning aids completion of vascular graphs by connecting gaps and deleting open-ended segments
AU - Kaufhold, John P.
AU - Tsai, Philbert S.
AU - Blinder, Pablo
AU - Kleinfeld, David
N1 - Funding Information: We thank Mahnaz Maddah for making available her 3D Chamfer 3,4,5 path length distance transform. We thank the anonymous reviewers for their careful read and insightful comments which substantially improved the quality and overall readability of this manuscript. We thank Uygar Sumbul and Sebastian Seung for their helpful discussions on using convolutional networks for topology preservation in dendritic trees. This work was supported by grants from the National Institutes of Health (EB003832, MH085499, and OD006831).
PY - 2012/8
Y1 - 2012/8
N2 - A graph of tissue vasculature is an essential requirement to model the exchange of gasses and nutriments between the blood and cells in the brain. Such a graph is derived from a vectorized representation of anatomical data, provides a map of all vessels as vertices and segments, and may include the location of nonvascular components, such as neuronal and glial somata. Yet vectorized data sets typically contain erroneous gaps, spurious endpoints, and spuriously merged strands. Current methods to correct such defects only address the issue of connecting gaps and further require manual tuning of parameters in a high dimensional algorithm. To address these shortcomings, we introduce a supervised machine learning method that (1) connects vessel gaps by "learned threshold relaxation"; (2) removes spurious segments by "learning to eliminate deletion candidate strands"; and (3) enforces consistency in the joint space of learned vascular graph corrections through "consistency learning." Human operators are only required to label individual objects they recognize in a training set and are not burdened with tuning parameters. The supervised learning procedure examines the geometry and topology of features in the neighborhood of each vessel segment under consideration. We demonstrate the effectiveness of these methods on four sets of microvascular data, each with >8003 voxels, obtained with all optical histology of mouse tissue and vectorization by state-of-the-art techniques in image segmentation. Through statistically validated sampling and analysis in terms of precision recall curves, we find that learning with bagged boosted decision trees reduces equal-error error rates for threshold relaxation by 5-21% and strand elimination performance by 18-57%. We benchmark generalization performance across datasets; while improvements vary between data sets, learning always leads to a useful reduction in error rates. Overall, learning is shown to more than halve the total error rate, and therefore, human time spent manually correcting such vectorizations.
AB - A graph of tissue vasculature is an essential requirement to model the exchange of gasses and nutriments between the blood and cells in the brain. Such a graph is derived from a vectorized representation of anatomical data, provides a map of all vessels as vertices and segments, and may include the location of nonvascular components, such as neuronal and glial somata. Yet vectorized data sets typically contain erroneous gaps, spurious endpoints, and spuriously merged strands. Current methods to correct such defects only address the issue of connecting gaps and further require manual tuning of parameters in a high dimensional algorithm. To address these shortcomings, we introduce a supervised machine learning method that (1) connects vessel gaps by "learned threshold relaxation"; (2) removes spurious segments by "learning to eliminate deletion candidate strands"; and (3) enforces consistency in the joint space of learned vascular graph corrections through "consistency learning." Human operators are only required to label individual objects they recognize in a training set and are not burdened with tuning parameters. The supervised learning procedure examines the geometry and topology of features in the neighborhood of each vessel segment under consideration. We demonstrate the effectiveness of these methods on four sets of microvascular data, each with >8003 voxels, obtained with all optical histology of mouse tissue and vectorization by state-of-the-art techniques in image segmentation. Through statistically validated sampling and analysis in terms of precision recall curves, we find that learning with bagged boosted decision trees reduces equal-error error rates for threshold relaxation by 5-21% and strand elimination performance by 18-57%. We benchmark generalization performance across datasets; while improvements vary between data sets, learning always leads to a useful reduction in error rates. Overall, learning is shown to more than halve the total error rate, and therefore, human time spent manually correcting such vectorizations.
KW - Anatomy
KW - Gap filling
KW - Neurovascular coupling
KW - Skeleton
KW - Two photon microscopy
UR - http://www.scopus.com/inward/record.url?scp=84866066337&partnerID=8YFLogxK
U2 - 10.1016/j.media.2012.06.004
DO - 10.1016/j.media.2012.06.004
M3 - مقالة
SN - 1361-8415
VL - 16
SP - 1241
EP - 1258
JO - Medical Image Analysis
JF - Medical Image Analysis
IS - 6
ER -