Aplikasi Teknik Fusion Dengan Fitur Stacks Imagej Untuk Optimalisasi Citra Mri Tumor Otak

Authors

  • Nur Wahyu Tajuddin
  • Dr. dr. Bambang Satoto
  • Rini Indrati

DOI:

https://doi.org/10.55314/tjp.v5i1.771

Abstract

Penulis

Nur Wahyu Tajuddin, S.Tr.Kes., M.Tr.ID

Dr. dr. Bambang Satoto, Sp.Rad (K)., M.Kes

Rini Indrati, S.Si.,M.Kes

 

ISBN

xxxxxxxxxxxxxx

 

Editor

Junior Hendri Wijaya

 

Penata Letak

Iman Amanda Permatasari

 

Layout dan Desain Cover

Wendi Firnanda

 

Penerbit

The Journal Publishing

Anggota IKAPI

 

vi+71 Hlm; 14,8 cm x 21 cm.

Cetakan I, Juli 2024

 

Alamat Penerbit

Jalan Lemahdadi, Bangunjiwo, Kasihan, Bantul Regency, Special Region of Yogyakarta 55184, DIY

Contact Person 0823-2679-6566

 

Deskripsi : 

Buku dengan judul "Aplikasi Teknik Fusion Dengan Fitur Stacks Imagej Untuk Optimalisasi Citra Mri Tumor Otak" berisi panduan penggunaan teknik fusion ImageJ dengan pemanfaatan fitur stacks pada citra MRI Tumor Otak. Fusion merupakan proses menggabungkan informasi dari dua citra atau lebih untuk memberikan informasi yang lebih lengkap dan akurat. Teknik fusion pada MRI tumor otak digunakan untuk visualisasi komprehensif tumor otak dengan menggabungkan citra sekuen Axial T2-Flair dan Axial T1 + Kontras. Fusion pada MRI tumor otak mampu memperlihatkan lokasi, ukuran dan karakteristik tumor secara jelas.

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Published

2024-07-08