Cascades Neural Network based Segmentation of Fluorescence Microscopy Cell Nuclei

Abstract

The visual extraction of cellular, nuclear and tissue components from medical images is very vital in the diagnosis routine of different health related abnormalities and diseases. The objective of this work is to modify and efficiently combine different image processing methods supported by cascaded artificial neural networks in an automated system to perform segmentation analysis of medical microscopy images to extract nuclei located in either simple or complex clusters. The proposed system is applied on a publicly available data sets of microscopy nuclei cells. A GUI is designed and presented in this work to ease the analysis and screening of these images. The proposed system shows promising performance and reduced computational time cost. It is hoped that thus system and the corresponding GUI will construct platform base for several biomedical studies in the field of cellular imaging where further complex investigations and modelling of microscopy images could take place.

Authors and Affiliations

Sofyan M. A. Hayajneh, Mohammad H. Alomari, Bassam Al-Shargabi

Keywords

Related Articles

The Reality of Applying Security in Web Applications in Academia

Web applications are used in academic institutions, such as universities, for variety of purposes. Since these web pages contain critical information, securing educational systems is as important as securing any banking...

Encryption Algorithms for Color Images: A Brief Review of Recent Trends

The recent years have witnessed rapid developments in the field of image encryption algorithms for secure color image processing. Image encryption algorithms have been classified in different ways in the past. This paper...

Genetic algorithms to optimize base station sitting in WCDMA networks

In UMTS network, radio planning cannot only be based on signal predictions, but it must also consider the traffic distribution, the power control mechanism as well as the power limits and the signal quality constraints....

Combination of Neural Networks and Fuzzy Clustering Algorithm to Evalution Training Simulation-Based Training

With the advancement of computer technology, computer simulation in the field of education are more realistic and more effective. The definition of simulation is to create a virtual environment that accurately and real e...

Enhanced e-Learning Experience using Case based Reasoning Methodology

In recent year’s improvement in innovation includes new limits for verifying data that will incite essential changes in eLearning. The user can see e-learning material subject to the reference given to them and select th...

Download PDF file
  • EP ID EP316661
  • DOI 10.14569/IJACSA.2018.090537
  • Views 97
  • Downloads 0

How To Cite

Sofyan M. A. Hayajneh, Mohammad H. Alomari, Bassam Al-Shargabi (2018). Cascades Neural Network based Segmentation of Fluorescence Microscopy Cell Nuclei. International Journal of Advanced Computer Science & Applications, 9(5), 275-285. https://europub.co.uk/articles/-A-316661