» Articles » PMID: 32746115

Hierarchical Nonlocal Residual Networks for Image Quality Assessment of Pediatric Diffusion MRI With Limited and Noisy Annotations

Overview
Date 2020 Aug 4
PMID 32746115
Citations 3
Authors
Affiliations
Soon will be listed here.
Abstract

Fast and automated image quality assessment (IQA) of diffusion MR images is crucial for making timely decisions for rescans. However, learning a model for this task is challenging as the number of annotated data is limited and the annotation labels might not always be correct. As a remedy, we will introduce in this paper an automatic image quality assessment (IQA) method based on hierarchical non-local residual networks for pediatric diffusion MR images. Our IQA is performed in three sequential stages, i.e., 1) slice-wise IQA, where a nonlocal residual network is first pre-trained to annotate each slice with an initial quality rating (i.e., pass/questionable/fail), which is subsequently refined via iterative semi-supervised learning and slice self-training; 2) volume-wise IQA, which agglomerates the features extracted from the slices of a volume, and uses a nonlocal network to annotate the quality rating for each volume via iterative volume self-training; and 3) subject-wise IQA, which ensembles the volumetric IQA results to determine the overall image quality pertaining to a subject. Experimental results demonstrate that our method, trained using only samples of modest size, exhibits great generalizability, and is capable of conducting rapid hierarchical IQA with near-perfect accuracy.

Citing Articles

A Soft-Reference Breast Ultrasound Image Quality Assessment Method That Considers the Local Lesion Area.

Wang Z, Song Y, Zhao B, Zhong Z, Yao L, Lv F Bioengineering (Basel). 2023; 10(8).

PMID: 37627825 PMC: 10451797. DOI: 10.3390/bioengineering10080940.


A Brief Survey on No-Reference Image Quality Assessment Methods for Magnetic Resonance Images.

Stepien I, Oszust M J Imaging. 2022; 8(6).

PMID: 35735959 PMC: 9224540. DOI: 10.3390/jimaging8060160.


RCTE: A reliable and consistent temporal-ensembling framework for semi-supervised segmentation of COVID-19 lesions.

Ding W, Abdel-Basset M, Hawash H Inf Sci (N Y). 2021; 578:559-573.

PMID: 34305162 PMC: 8294559. DOI: 10.1016/j.ins.2021.07.059.

References
1.
Esses S, Lu X, Zhao T, Shanbhogue K, Dane B, Bruno M . Automated image quality evaluation of T -weighted liver MRI utilizing deep learning architecture. J Magn Reson Imaging. 2017; 47(3):723-728. DOI: 10.1002/jmri.25779. View

2.
Saad M, Bovik A, Charrier C . Blind image quality assessment: a natural scene statistics approach in the DCT domain. IEEE Trans Image Process. 2012; 21(8):3339-52. DOI: 10.1109/TIP.2012.2191563. View

3.
Liu S, Thung K, Lin W, Yap P, Shen D . Real-Time Quality Assessment of Pediatric MRI via Semi-Supervised Deep Nonlocal Residual Neural Networks. IEEE Trans Image Process. 2020; . PMC: 7648726. DOI: 10.1109/TIP.2020.2992079. View

4.
Reuter M, Tisdall M, Qureshi A, Buckner R, van der Kouwe A, Fischl B . Head motion during MRI acquisition reduces gray matter volume and thickness estimates. Neuroimage. 2014; 107:107-115. PMC: 4300248. DOI: 10.1016/j.neuroimage.2014.12.006. View

5.
Esteban O, Birman D, Schaer M, Koyejo O, Poldrack R, Gorgolewski K . MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites. PLoS One. 2017; 12(9):e0184661. PMC: 5612458. DOI: 10.1371/journal.pone.0184661. View