An automated approach for tracking individual nephrons through three-dimensional histological image sets of mouse and rat kidneys is presented. In a previous study, the available images were tracked manually through the image sets in order to explore renal microarchitecture. The purpose of the current research is to reduce the time and effort required to manually trace nephrons by creating an automated, intelligent system as a standard tool for such datasets. The algorithm is robust enough to isolate closely packed nephrons and track their convoluted paths despite a number of nonideal, interfering conditions such as local image distortions, artefacts, and interstitial tissue interference. The system comprises image preprocessing, feature extraction, and a custom graph-based tracking algorithm, which is validated by a rule base and a machine learning algorithm. A study of a selection of automatically tracked nephrons, when compared with manual tracking, yields a 95% tracking accuracy for structures in the cortex, while those in the medulla have lower accuracy due to narrower diameter and higher density. Limited manual intervention is introduced to improve tracking, enabling full nephron paths to be obtained with an average of 17 manual corrections per mouse nephron and 58 manual corrections per rat nephron.
Towards Automated Three-Dimensional Tracking of Nephrons through Stacked Histological Image Sets
C. Bhikha,A. Andreasen,E. Christensen,Robyn F. R. Letts,Adam Pantanowitz,D. Rubin,J. Thomsen,Xiaoyue Zhai
Published 2015 in Comput. Math. Methods Medicine
ABSTRACT
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- Publication year
2015
- Venue
Comput. Math. Methods Medicine
- Publication date
2015-06-15
- Fields of study
Biology, Medicine, Computer Science, Engineering
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- External record
- Source metadata
Semantic Scholar, PubMed
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