Fisher information analysis of list-mode SPECT emission data for joint estimation of activity and attenuation distribution
Md Ashequr Rahman, Yansong Zhu, Eric Clarkson, Matthew A. Kupinski,, Eric C. Frey, Abhinav K. Jha

TL;DR
This paper investigates whether list-mode SPECT emission data, including scattered photons, can be used to jointly estimate activity and attenuation maps using a Fisher-information-based approach, showing promising results for ASC in SPECT imaging.
Contribution
It introduces a Fisher-information-based method to analyze the information content of list-mode SPECT data for joint activity and attenuation estimation, highlighting the potential of scattered photons.
Findings
Scattered photons contain information for attenuation estimation.
More detected photons reduce the CRB for both parameters.
Better energy resolution lowers the CRB for attenuation.
Abstract
The potential to perform attenuation and scatter compensation (ASC) in single-photon emission computed tomography (SPECT) imaging using only the SPECT emission data is highly significant. In this context, attenuation in SPECT is primarily due to Compton scattering, where the probability of Compton scatter is proportional to the attenuation coefficient of the tissue and the energy of the scattered photon and the scattering angle are related. Given this premise, we investigate whether the SPECT scattered-photon data acquired in list-mode (LM) format and including the energy information can be used to estimate the attenuation map. For this purpose, we propose a Fisher-information-based method that yields the Cramer-Rao bound (CRB) for the task of jointly estimating the activity/attenuation distribution using only the SPECT emission data. The proposed method is applied to analyze the…
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