Back to Search Start Over

Determination of optimal regularization factor in Bayesian penalized likelihood reconstruction of brain PET images using [

Authors :
Kei, Wagatsuma
Kenta, Miwa
Yuto, Kamitaka
Emiya, Koike
Tensho, Yamao
Tokiya, Yoshii
Rinya, Kobayashi
Shogo, Nezu
Yuta, Sugamata
Noriaki, Miyaji
Etsuko, Imabayashi
Kenji, Ishibashi
Jun, Toyohara
Kenji, Ishii
Source :
Medical physicsREFERENCES. 49(5)
Publication Year :
2022

Abstract

The Bayesian penalized likelihood (BPL) reconstruction algorithm, Q.Clear, can achieve a higher signal-to-noise ratio on images and more accurate quantitation than ordered subset-expectation maximization (OSEM). The reconstruction parameter (β) in BPL requires optimization according to the radiopharmaceutical tracer. The present study aimed to define the optimal β value in BPL required to diagnose Alzheimer disease from brain positron emission tomography (PET) images acquired usingImages generated from Hoffman 3D brain and cylindrical phantoms were acquired using a Discovery PET/computed tomography (CT) 710 and reconstructed using OSEM + time-of-flight (TOF) under clinical conditions and BPL + TOF (β = 20-1000). Contrast was calculated from images generated by the Hoffman 3D brain phantom, and noise and uniformity were calculated from those generated by the cylindrical phantom. Five cognitively healthy controls and five patients with Alzheimer disease were assessed using [The contrast in BPL satisfied the Japanese Society of Nuclear Medicine (JSNM) criterion of ≥55% and exceeded that of OSEM at ranges of β = 20-450 and 20-600 for [The BPL achieved better image contrast and less image noise than OSEM, while maintaining quantitative standardized uptake value ratios (SUVR) due to full convergence, more rigorous noise control, and edge preservation. The optimal β values for [

Details

ISSN :
24734209
Volume :
49
Issue :
5
Database :
OpenAIRE
Journal :
Medical physicsREFERENCES
Accession number :
edsair.pmid..........033f2063f432c2b0131d7c44b022dcc1