Yıl: 2021 Cilt: 10 Sayı: 1 Sayfa Aralığı: 169 - 173 Metin Dili: İngilizce DOI: 10.5455/medscience.2020.10.213 İndeks Tarihi: 09-06-2021

A novel approach for hepatocellular carcinoma detection with region merging segmentation method

Öz:
We present a noninvasive method for the detection and an advanced segmentation of Hepatocellular carcinoma (HCC) based on Computed Tomography (CT) images.Thisproposed method basically starts with the processing of the data set. 60 CT images are prepared for the segmentation process. Image data is divided into two groups; 50CT images of the HCC, and 10 CT images of the normal liver. The ground truth images are created with the specialist abdominal radiologist. Images are in 256x256 μmsize in JPEG format. For the segmentation part, the Statistical Region Merging method is used. The proposed method consists of three main parts, these are thresholding,segmentation, and estimation of ROC parameters. By using the database and the ground truth, according to the simulation results, the average of the sensitivity, specificity,and accuracy are obtained as 0.7476 %, 0.9723 %, and 0.9502 %, respectively. In conclusion, HCC is the most common primary malignant tumor in the liver. It is consideredan important and life-threatening disease. Early detection of liver cancer has become very important for the patients. The Region Merging Segmentation Method is avery useful liver segmentation technique for detection of the HCC.
Anahtar Kelime:

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA koc m, HARDALAC F, URAL B (2021). A novel approach for hepatocellular carcinoma detection with region merging segmentation method. , 169 - 173. 10.5455/medscience.2020.10.213
Chicago koc mustafa,HARDALAC Fırat,URAL Berkan A novel approach for hepatocellular carcinoma detection with region merging segmentation method. (2021): 169 - 173. 10.5455/medscience.2020.10.213
MLA koc mustafa,HARDALAC Fırat,URAL Berkan A novel approach for hepatocellular carcinoma detection with region merging segmentation method. , 2021, ss.169 - 173. 10.5455/medscience.2020.10.213
AMA koc m,HARDALAC F,URAL B A novel approach for hepatocellular carcinoma detection with region merging segmentation method. . 2021; 169 - 173. 10.5455/medscience.2020.10.213
Vancouver koc m,HARDALAC F,URAL B A novel approach for hepatocellular carcinoma detection with region merging segmentation method. . 2021; 169 - 173. 10.5455/medscience.2020.10.213
IEEE koc m,HARDALAC F,URAL B "A novel approach for hepatocellular carcinoma detection with region merging segmentation method." , ss.169 - 173, 2021. 10.5455/medscience.2020.10.213
ISNAD koc, mustafa vd. "A novel approach for hepatocellular carcinoma detection with region merging segmentation method". (2021), 169-173. https://doi.org/10.5455/medscience.2020.10.213
APA koc m, HARDALAC F, URAL B (2021). A novel approach for hepatocellular carcinoma detection with region merging segmentation method. Medicine Science, 10(1), 169 - 173. 10.5455/medscience.2020.10.213
Chicago koc mustafa,HARDALAC Fırat,URAL Berkan A novel approach for hepatocellular carcinoma detection with region merging segmentation method. Medicine Science 10, no.1 (2021): 169 - 173. 10.5455/medscience.2020.10.213
MLA koc mustafa,HARDALAC Fırat,URAL Berkan A novel approach for hepatocellular carcinoma detection with region merging segmentation method. Medicine Science, vol.10, no.1, 2021, ss.169 - 173. 10.5455/medscience.2020.10.213
AMA koc m,HARDALAC F,URAL B A novel approach for hepatocellular carcinoma detection with region merging segmentation method. Medicine Science. 2021; 10(1): 169 - 173. 10.5455/medscience.2020.10.213
Vancouver koc m,HARDALAC F,URAL B A novel approach for hepatocellular carcinoma detection with region merging segmentation method. Medicine Science. 2021; 10(1): 169 - 173. 10.5455/medscience.2020.10.213
IEEE koc m,HARDALAC F,URAL B "A novel approach for hepatocellular carcinoma detection with region merging segmentation method." Medicine Science, 10, ss.169 - 173, 2021. 10.5455/medscience.2020.10.213
ISNAD koc, mustafa vd. "A novel approach for hepatocellular carcinoma detection with region merging segmentation method". Medicine Science 10/1 (2021), 169-173. https://doi.org/10.5455/medscience.2020.10.213