iCut: an Integrative Cut Algorithm Enables Accurate Segmentation of Touching Cells
نویسندگان
چکیده
Individual cells play essential roles in the biological processes of the brain. The number of neurons changes during both normal development and disease progression. High-resolution imaging has made it possible to directly count cells. However, the automatic and precise segmentation of touching cells continues to be a major challenge for massive and highly complex datasets. Thus, an integrative cut (iCut) algorithm, which combines information regarding spatial location and intervening and concave contours with the established normalized cut, has been developed. iCut involves two key steps: (1) a weighting matrix is first constructed with the abovementioned information regarding the touching cells and (2) a normalized cut algorithm that uses the weighting matrix is implemented to separate the touching cells into isolated cells. This novel algorithm was evaluated using two types of data: the open SIMCEP benchmark dataset and our micro-optical imaging dataset from a Nissl-stained mouse brain. It has achieved a promising recall/precision of 91.2 ± 2.1%/94.1 ± 1.8% and 86.8 ± 4.1%/87.5 ± 5.7%, respectively, for the two datasets. As quantified using the harmonic mean of recall and precision, the accuracy of iCut is higher than that of some state-of-the-art algorithms. The better performance of this fully automated algorithm can benefit studies of brain cytoarchitecture.
منابع مشابه
GPU Enabled Parallel Touching Cell Segmentation Using Mean Shift Based Seed Detection and Repulsive Level Set
Automated image analysis of histopathology specimens could potentially provide support for the early detection of breast cancer. Automated segmentation of cells in the digitized tissue microarray (TMA) is a prerequisite for quantitative analysis. However touching cells bring significant challenges for traditional segmentation algorithms. In this paper, we propose a novel algorithm to separate t...
متن کاملLine Profile Based Segmentation Algorithm for Touching Corn Kernels
Image segmentation of touching objects plays a key role in providing accurate classification for computer vision technologies. A new line profile based imaging segmentation algorithm has been developed to provide a robust and accurate segmentation of a group of touching corns. The performance of the line profile based algorithm has been compared to a watershed based imaging segmentation algorit...
متن کاملA Novel Approach of Segmenting Touching and Kerned Characters
Character segmentation is a critical step of OCR system. In this paper we discussed segmentation approaches of touching and kerned characters.A non-linear segmentation pathbased algorithm for segmenting touching and kerned characters is put forward. First, touching and kerned characters are extracted and segregated with other characters by using character projections and recognition results.The...
متن کاملVarious Techniques for Classification and Segmentation of Cervical Cell Images - A Review
Pap smear test plays an important role for the early diagnosis of cervical cancer in which human cells taken from the cervix of patient are analysed for pre-cancerous changes. The manual analysis of these cells by expert cytologist is labor intensive and time consuming job. The automatic and accurate detection of cervical cells are two critical preprocessing steps for automatic Pap smear image ...
متن کاملSegmentation of Touching Cell Nuclei Using a Two-Stage Graph Cut Model
Methods based on combinatorial graph cut algorithms received a lot of attention in the recent years for their robustness as well as reasonable computational demands. These methods are built upon an underlying Maximum a Posteriori estimation of Markov Random Fields and are suitable to solve accurately many different problems in image analysis, including image segmentation. In this paper we prese...
متن کامل