Detection of Megakaryocyte Cell Structure Through Artificial Intelligence Tools

Authors

  • Shaima Ibraheem Jabbar Medical Instruments Technologies, Al-Furat Alawsat Technical University, Babylon Technical Institute-Iraq.
  • Abathar Qahtan Aladi Babylon Health Directory Mirjan Teaching Hospital

DOI:

https://doi.org/10.29194/NJES.26040337

Keywords:

Megakaryocyte Images, Artificial Intelligence, Fuzzy C-Means Technique, Fuzzy Inference Technique

Abstract

Recent research has focused on analysing megakaryocyte images to extract the information needed to track the progression of nervous system diseases. Segmentation is a fundamental step in describing and analysing the core contents of megakaryocytes, including the cytoplasm and nucleus. In this study, 45 megakaryocyte images were obtained. A new segmentation image technique was proposed, called the updating fuzzy c-means technique, through the intelligent selection of the centres of each cluster to separate cell components. The first step of this technique (fuzzification) was based on a knowledge analysis of the local parameters (entropy, contrast and standard deviation) that had a substantial influence on the grey-level distribution between the cytoplasm and nucleus. The second important step was the construction of fuzzy rules in terms of the variation in these local parameters to control the intelligent pick-out or update the centroid of each cluster and obtain a successful separation of the cytoplasm and nucleus. The final step was defuzzification to obtain the output images. The results revealed the superiority of the proposed method over recent technique. The accuracy of the segmented nucleus was greater than 7.46%; in the case of the cytoplasm, the accuracy was higher at 18%. These results indicated that this technique may be applied on other biomedical images.

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Published

01-05-2024

How to Cite

[1]
S. I. Jabbar and A. Q. Aladi, “Detection of Megakaryocyte Cell Structure Through Artificial Intelligence Tools”, NJES, vol. 26, no. 4, pp. 337–342, May 2024, doi: 10.29194/NJES.26040337.

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