Motion‐compensated image reconstruction for improved kidney function assessment using dynamic contrast‐enhanced MRI

Author:

Ariyurek Cemre12ORCID,Koçanaoğulları Aziz12,Afacan Onur12,Kurugol Sila12

Affiliation:

1. Quantitative Intelligent Imaging Lab (QUIN), Department of Radiology Boston Children's Hospital Boston Massachusetts USA

2. Harvard Medical School Boston Massachusetts USA

Abstract

AbstractAccurately measuring renal function is crucial for pediatric patients with kidney conditions. Traditional methods have limitations, but dynamic contrast‐enhanced magnetic resonance imaging (DCE‐MRI) provides a safe and efficient approach for detailed anatomical evaluation and renal function assessment. However, motion artifacts during DCE‐MRI can degrade image quality and introduce misalignments, leading to unreliable results. This study introduces a motion‐compensated reconstruction technique for DCE‐MRI data acquired using golden‐angle radial sampling. Our proposed method achieves three key objectives: (1) identifying and removing corrupted data (outliers) using a Gaussian process model fitting with a ‐space center navigator, (2) efficiently clustering the data into motion phases and performing interphase registration, and (3) utilizing a novel formulation of motion‐compensated radial reconstruction. We applied the proposed motion correction (MoCo) method to DCE‐MRI data affected by varying degrees of motion, including both respiratory and bulk motion. We compared the outcomes with those obtained from the conventional radial reconstruction. Our evaluation encompassed assessing the quality of images, concentration curves, and tracer kinetic model fitting, and estimating renal function. The proposed MoCo reconstruction improved the temporal signal‐to‐noise ratio for all subjects, with a 21.8% increase on average, while total variation values of the aorta, right, and left kidney concentration were improved for each subject, with 32.5%, 41.3%, and 42.9% increases on average, respectively. Furthermore, evaluation of tracer kinetic model fitting indicated that the median standard deviation of the estimated filtration rate ( ), mean normalized root‐mean‐squared error (nRMSE), and chi‐square goodness‐of‐fit of tracer kinetic model fit were decreased from 0.10 to 0.04, 0.27 to 0.24, and, 0.43 to 0.27, respectively. The proposed MoCo technique enabled more reliable renal function assessment and improved image quality for detailed anatomical evaluation in the case of bulk and respiratory motion during the acquisition of DCE‐MRI.

Funder

National Institute of Biomedical Imaging and Bioengineering

National Institute of Neurological Disorders and Stroke

Publisher

Wiley

Reference43 articles.

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