A tissue-fraction estimation-based segmentation method for quantitative dopamine transporter SPECT
Ziping Liu, Hae Sol Moon, Zekun Li, Richard Laforest, Joel S., Perlmutter, Scott A. Norris, Abhinav K. Jha

TL;DR
This paper introduces a novel automated segmentation method for DaT-SPECT images that accounts for tissue-fraction effects, improving accuracy in measuring dopamine transporter uptake relevant to Parkinson's disease.
Contribution
It proposes a tissue-fraction estimation-based segmentation approach that outperforms existing methods in accuracy and reliability for DaT-SPECT image analysis.
Findings
Achieved high Dice similarity coefficients (~0.80) in segmentation.
Significantly outperformed other methods with p < 0.01.
Produced reliable quantification with NRMSE < 20%.
Abstract
Quantitative measures of dopamine transporter (DaT) uptake in caudate, putamen, and globus pallidus (GP) have potential as biomarkers for measuring the severity of Parkinson disease. Reliable quantification of this uptake requires accurate segmentation of the considered regions. However, segmentation of these regions from DaT-SPECT images is challenging, a major reason being partial-volume effects (PVEs), which arise from the limited system resolution and reconstruction of images over finite-sized voxel grids. The latter leads to tissue-fraction effects (TFEs). Thus, there is an important need for methods that can account for the PVEs, including the TFEs, and accurately segment DaT-SPECT images. The purpose of this study is to design and objectively evaluate a fully automated tissue-fraction estimation-based segmentation method that segments the caudate, putamen, and GP from DaT-SPECT…
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