Radboud University Medical Center, Nijmegen, the Netherlands.
Radboud University Medical Center, Nijmegen, the Netherlands.
Eur J Radiol. 2023 Aug;165:110928. doi: 10.1016/j.ejrad.2023.110928. Epub 2023 Jun 15.
The guidelines for prostate cancer recommend the use of MRI in the prostate cancer pathway. Due to the variability in prostate MR image quality, the reliability of this technique in the detection of prostate cancer is highly variable in clinical practice. This leads to the need for an objective and automated assessment of image quality to ensure an adequate acquisition and hereby to improve the reliability of MRI. The aim of this study is to investigate the feasibility of Blind/referenceless image spatial quality evaluator (Brisque) and radiomics in automated image quality assessment of T2-weighted (T2W) images.
Anonymized axial T2W images from 140 patients were scored for quality using a five-point Likert scale (low, suboptimal, acceptable, good, very good quality) in consensus by two readers. Images were dichotomized into clinically acceptable (very good, good and acceptable quality images) and clinically unacceptable (low and suboptimal quality images) in order to train and verify the model. Radiomics and Brisque features were extracted from a central cuboid volume including the prostate. A reduced feature set was used to fit a Linear Discriminant Analysis (LDA) model to predict image quality. Two hundred times repeated 5-fold cross-validation was used to train the model and test performance by assessing the classification accuracy, the discrimination accuracy as receiver operating curve - area under curve (ROC-AUC), and by generating confusion matrices.
Thirty-four images were classified as clinically unacceptable and 106 were classified as clinically acceptable. The accuracy of the independent test set (mean ± standard deviation) was 85.4 ± 5.5%. The ROC-AUC was 0.856 (0.851 - 0.861) (mean; 95% confidence interval).
Radiomics AI can automatically detect a significant portion of T2W images of suboptimal image quality. This can help improve image quality at the time of acquisition, thus reducing repeat scans and improving diagnostic accuracy.
前列腺癌指南建议在前列腺癌途径中使用 MRI。由于前列腺磁共振图像质量的可变性,该技术在临床实践中检测前列腺癌的可靠性差异很大。这导致需要对图像质量进行客观和自动化评估,以确保获得足够的采集,并由此提高 MRI 的可靠性。本研究旨在探讨盲/无参考图像空间质量评估器(Brisque)和放射组学在 T2 加权(T2W)图像自动图像质量评估中的可行性。
由两位读者通过共识对 140 名患者的匿名轴向 T2W 图像进行五分制(低、次优、可接受、好、极好质量)评分。为了训练和验证模型,将图像分为临床可接受(极好、好和可接受质量的图像)和临床不可接受(低和次优质量的图像)。从包括前列腺的中央立方体体积中提取放射组学和 Brisque 特征。使用简化的特征集拟合线性判别分析(LDA)模型,以预测图像质量。通过 200 次重复的 5 折交叉验证来训练模型并通过评估分类准确性、接收器工作曲线-曲线下面积(ROC-AUC)的判别准确性以及生成混淆矩阵来测试性能。
34 张图像被归类为临床不可接受,106 张图像被归类为临床可接受。独立测试集(平均值±标准差)的准确率为 85.4±5.5%。ROC-AUC 为 0.856(0.851-0.861)(平均值;95%置信区间)。
放射组学 AI 可以自动检测出大量次优图像质量的 T2W 图像。这有助于在采集时提高图像质量,从而减少重复扫描并提高诊断准确性。