4.6 Article

Minimizing Probability Graph Connectivity Cost for Discontinuous Filamentary Structures Tracing in Neuron Image

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2022.3147512

关键词

Costs; Convolutional neural networks; Feature extraction; Neurites; Image segmentation; Three-dimensional displays; Bioinformatics; Neuron tracing; discontinuous filamentary structure; graph connectivity cost; CNN; precise

资金

  1. National Natural Science Foundation of China [81771913]
  2. Science Fund for Creative Research Group of China [61721092]
  3. Hubei Key Laboratory of Intelligent Robot Foundation [HBIRL202112]
  4. WNLO

向作者/读者索取更多资源

In this paper, a graph connectivity theoretical method for precise filamentary structure tracing in neuron image is proposed. The method uses CNN technique and linear programming function to trace broken traces from noisy background, and it achieves good results in experiments.
Neuron tracing from optical image is critical in understanding brain function in diseases. A key problem is to trace discontinuous filamentary structures from noisy background, which is commonly encountered in neuronal and some medical images. Broken traces lead to cumulative topological errors, and current methods were hard to assemble various fragmentary traces for correct connection. In this paper, we propose a graph connectivity theoretical method for precise filamentary structure tracing in neuron image. First, we build the initial subgraphs of signals via a region-to-region based tracing method on CNN predicted probability. CNN technique removes noise interference, whereas its prediction for some elongated fragments is still incomplete. Second, we reformulate the global connection problem of individual or fragmented subgraphs under heuristic graph restrictions as a dynamic linear programming function via minimizing graph connectivity cost, where the connected cost of breakpoints are calculated using their probability strength via minimum cost path. Experimental results on challenging neuronal images proved that the proposed method outperformed existing methods and achieved similar results of manual tracing, even in some complex discontinuous issues. Performances on vessel images indicate the potential of the method for some other tubular objects tracing.

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