A No-Reference Medical Image Quality Assessment Method Based on Automated Distortion Recognition Technology: Application to Preprocessing in MRI-guided Radiotherapy
Zilin Wang, Shengqi Chen, Jianrong Dai, Shirui Qin, Ying Cao, Ruiao, Zhao, Guohua Wu, Yuan Tang, Jiayun Chen

TL;DR
This paper presents a novel no-reference MRI image quality assessment method utilizing automated distortion recognition, significantly improving tumor tracking accuracy in MRI-guided radiotherapy.
Contribution
The study introduces a new no-reference image quality assessment model based on automated distortion recognition, enhancing MRI-guided radiotherapy preprocessing.
Findings
Preprocessing improved image quality and contrast.
The Quality Index (QI) outperformed other metrics in sensitivity.
Tumor tracking accuracy increased with preprocessing.
Abstract
Objective:To develop a no-reference image quality assessment method using automated distortion recognition to boost MRI-guided radiotherapy precision.Methods:We analyzed 106,000 MR images from 10 patients with liver metastasis,captured with the Elekta Unity MR-LINAC.Our No-Reference Quality Assessment Model includes:1)image preprocessing to enhance visibility of key diagnostic features;2)feature extraction and directional analysis using MSCN coefficients across four directions to capture textural attributes and gradients,vital for identifying image features and potential distortions;3)integrative Quality Index(QI)calculation,which integrates features via AGGD parameter estimation and K-means clustering.The QI,based on a weighted MAD computation of directional scores,provides a comprehensive image quality measure,robust against outliers.LOO-CV assessed model generalizability and…
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Taxonomy
TopicsOptical Systems and Laser Technology · Brain Tumor Detection and Classification · Medical Imaging and Analysis
