R-Index: A Robust Metric for IVIM Parameter Estimation on Clinical MRI Scanners
Yan Dai, Xun Jia, Yen-peng Liao, Jie Deng

TL;DR
This paper introduces the R-index, a new robust metric for IVIM parameter estimation in clinical MRI that reduces collinearity and improves reproducibility under low SNR conditions.
Contribution
The study proposes the R-index, a novel metric that enhances IVIM parameter estimation robustness by mitigating collinearity and reducing uncertainty in clinical MRI settings.
Findings
The R-index significantly reduces estimation deviation compared to traditional IVIM parameters.
Parameter collinearity was confirmed with 32% of voxels showing significant correlations.
The R-index improves reproducibility of IVIM measurements at low SNR.
Abstract
Background: Intravoxel Incoherent Motion (IVIM) model characterizes both water diffusion and perfusion in tissues, providing quantitative biomarkers valuable for tumor tissue characterization. However, parameter estimation based on this model is challenging due to its ill-posed nature, resulting in poor reproducibility, particularly at low signal to noise ratios (SNRs) in a clinic scenario. Purpose: This study analyzes the uncertainty of IVIM model fitting, quantifies parameter collinearity, and introduces a new index with enhanced robustness to enhance clinical applicability of the IVIM model. Study Type: Prospective. Population: One healthy volunteer. Field Strength/Sequence: 1.5T; single-shot EPI DWI. Assessment: The probability distributions of estimated IVIM parameters were evaluated across a clinically relevant range. Collinearity among parameters was assessed and a new metric,…
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Taxonomy
TopicsMRI in cancer diagnosis · Glioma Diagnosis and Treatment · Advanced MRI Techniques and Applications
