Perbandingan Hasil Pengukuran Stroke Hemoragik Pada Modalitas CT-Scan Dengan Metode Software Volume Evaluation Dan Metode Segmentasi Otsu Thresholding

Authors

  • Ahmad Ali Bisri
  • Sidin Haryanto
  • Dwi Rochmayanti

DOI:

https://doi.org/10.55314/tjp.v5i1.758

Abstract

Penulis

Ahmad Ali Bisri, S.TTRI., M.Tr.ID

Sidin Haryanto, SKM., MPd., Ph.D

Dwi Rochmayanti, S.ST., M.Eng

 

ISBN

xxx-xxx-xxxx-xx-x

 

Editor

Diana Michel

 

Penata Letak

Iman Amanda Permatasari

 

Layout dan Desain Cover

Wendi Firnanda

 

Penerbit

The Journal Publishing

Anggota IKAPI

 

70 Hlm; 15 cm x 23 cm

Cetakan I, Mei 2024

 

Deskripsi : 

Kelainan pada stroke dinilai dengan menggunakan modalitas seperti MRI dan CT-Scan menilai struktur anatomi, fungsi fisiologis dan patologi. Modalitas CT-Scan yaitu modalitas diagnostik ruang gawat darurat yang paling umum digunakan untuk pasien dengan cidera kepala atau pasien dengan gejala stroke. Abnormalitas paling kritis dan sensitif terhadap waktu mudah mendeteksi pada CT-scan, yaitu perdarahan intracranial, penekana intracranial dan diagnosis stroke.

Kemajuan teknologi, khusus di bidang pemerosesan citra digital, komputer mengidentifikasi kerusakan otak traumatis atau pendarahan otak dengan mencari ciri-ciri yang sering ditemukan pada otak. Agar sistem selanjutnya mengidentifikasi jenis kerusakan berdasarkan karakteristik, perhitungan kompleks, dan volume area pendarahan otak

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Published

2024-05-26