Hybrid Thresholding Method in Detection and Extraction of Brain Hemorrhage on the CT-Scan Image

Authors

  • S Sumijan Universitas Putra Indonesia YPTK Padang
  • Y Yuhandri Universitas Putra Indonesia YPTK Padang
  • Wendi Boy Universitas Putra Indonesia YPTK Padang

DOI:

https://doi.org/10.35134/jcsitech.v7i2.2

Keywords:

CT scan, Hybrid thresholding, Incision area brain Injury, congenital abnormalities, Hemorrhagic Stroke

Abstract

Brain bleeding can occur because of the outbreak of the blood vessels in the brain which culminated into hemorrhagic stroke or stroke due to bleeding. Hemorrhagic Stroke occurs when there is a burst of blood vessels result from some trigger factor. Segmentation techniques to Scanner computed tomography images (CT scan of the brain) is one of the methods used by the radiologist to detect brain bleeding or congenital abnormalities that occur in the brain. This research will determine the area of the brain bleeding on each image slice CT - scan every patient, to detect and extract brain bleeding, so it can calculate the volume of the brain bleeding. The detection and extraction bleeding area of the brain is based on the hybrid thresholding method.

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Published

2021-06-30

How to Cite

Sumijan, S., Yuhandri, Y., & Boy, W. (2021). Hybrid Thresholding Method in Detection and Extraction of Brain Hemorrhage on the CT-Scan Image. Journal of Computer Scine and Information Technology, 7(2), 7–14. https://doi.org/10.35134/jcsitech.v7i2.2