» Articles » PMID: 20656653

Segmenting Clustered Nuclei Using H-minima Transform-based Marker Extraction and Contour Parameterization

Overview
Date 2010 Jul 27
PMID 20656653
Citations 33
Authors
Affiliations
Soon will be listed here.
Abstract

In this letter, we present a novel watershed-based method for segmentation of cervical and breast cell images. We formulate the segmentation of clustered nuclei as an optimization problem. A hypothesis concerning the nuclei, which involves a priori knowledge with respect to the shape of nuclei, is tested to solve the optimization problem. We first apply the distance transform to the clustered nuclei. A marker extraction scheme based on the H-minima transform is introduced to obtain the optimal segmentation result from the distance map. In order to estimate the optimal h-value, a size-invariant segmentation distortion evaluation function is defined based on the fitting residuals between the segmented region boundaries and fitted models. Ellipsoidal modeling of contours is introduced to adjust nuclei contours for more effective analysis. Experiments on a variety of real microscopic cell images show that the proposed method yields more accurate segmentation results than the state-of-the-art watershed-based methods.

Citing Articles

DeepSeeded: Volumetric Segmentation of Dense Cell Populations with a Cascade of Deep Neural Networks in Bacterial Biofilm Applications.

Toma T, Wang Y, Gahlmann A, Acton S Expert Syst Appl. 2024; 238(Pt D).

PMID: 38646063 PMC: 11027476. DOI: 10.1016/j.eswa.2023.122094.


A Review of Particle Size Analysis with X-ray CT.

Behnsen J, Black K, Houghton J, Worden R Materials (Basel). 2023; 16(3).

PMID: 36770266 PMC: 9920517. DOI: 10.3390/ma16031259.


A novel deep learning segmentation model for organoid-based drug screening.

Wang X, Wu C, Zhang S, Yu P, Li L, Guo C Front Pharmacol. 2023; 13:1080273.

PMID: 36588731 PMC: 9794595. DOI: 10.3389/fphar.2022.1080273.


Marker-controlled watershed with deep edge emphasis and optimized H-minima transform for automatic segmentation of densely cultivated 3D cell nuclei.

Kaseva T, Omidali B, Hippelainen E, Makela T, Wilppu U, Sofiev A BMC Bioinformatics. 2022; 23(1):289.

PMID: 35864453 PMC: 9306214. DOI: 10.1186/s12859-022-04827-3.


Extending U-Net Network for Improved Nuclei Instance Segmentation Accuracy in Histopathology Images.

Rahmon G, Toubal I, Palaniappan K IEEE Appl Imag Pattern Recognit Workshop. 2022; 2021.

PMID: 35506043 PMC: 9060239. DOI: 10.1109/aipr52630.2021.9762213.