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纹理分析和机器学习预测面肩肱型肌营养不良症大腿肌肉非定量 MRI 的 T2 水和脂肪分数。

Texture analysis and machine learning to predict water T2 and fat fraction from non-quantitative MRI of thigh muscles in Facioscapulohumeral muscular dystrophy.

机构信息

Department of Neuroradiology, IRCCS Mondino Foundation, Pavia, Italy; Department of Radiology, Desio Hospital, ASST Monza, Desio, Italy.

Department of Neuroradiology, IRCCS Mondino Foundation, Pavia, Italy; Department of Mathematics, University of Pavia, Pavia, Italy.

出版信息

Eur J Radiol. 2021 Jan;134:109460. doi: 10.1016/j.ejrad.2020.109460. Epub 2020 Dec 2.

DOI:10.1016/j.ejrad.2020.109460
PMID:33296803
Abstract

PURPOSE

Quantitative MRI (qMRI) plays a crucial role for assessing disease progression and treatment response in neuromuscular disorders, but the required MRI sequences are not routinely available in every center. The aim of this study was to predict qMRI values of water T2 (wT2) and fat fraction (FF) from conventional MRI, using texture analysis and machine learning.

METHOD

Fourteen patients affected by Facioscapulohumeral muscular dystrophy were imaged at both thighs using conventional and quantitative MR sequences. Muscle FF and wT2 were calculated for each muscle of the thighs. Forty-seven texture features were extracted for each muscle on the images obtained with conventional MRI. Multiple machine learning regressors were trained to predict qMRI values from the texture analysis dataset.

RESULTS

Eight machine learning methods (linear, ridge and lasso regression, tree, random forest (RF), generalized additive model (GAM), k-nearest-neighbor (kNN) and support vector machine (SVM) provided mean absolute errors ranging from 0.110 to 0.133 for FF and 0.068 to 0.115 for wT2. The most accurate methods were RF, SVM and kNN to predict FF, and tree, RF and kNN to predict wT2.

CONCLUSION

This study demonstrates that it is possible to estimate with good accuracy qMRI parameters starting from texture analysis of conventional MRI.

摘要

目的

定量磁共振成像(qMRI)在评估神经肌肉疾病的疾病进展和治疗反应方面起着至关重要的作用,但并非每个中心都常规提供所需的 MRI 序列。本研究的目的是使用纹理分析和机器学习从常规 MRI 预测水 T2(wT2)和脂肪分数(FF)的 qMRI 值。

方法

14 名患有面肩肱型肌营养不良症的患者在大腿的两侧进行了常规和定量 MRI 扫描。计算了大腿各肌肉的肌肉 FF 和 wT2。从常规 MRI 获得的图像上为每个肌肉提取了 47 个纹理特征。训练了多个机器学习回归器,以便从纹理分析数据集预测 qMRI 值。

结果

8 种机器学习方法(线性、岭和套索回归、树、随机森林(RF)、广义加性模型(GAM)、k-最近邻(kNN)和支持向量机(SVM))的平均绝对误差范围为 0.110 到 0.133,用于 FF 和 0.068 到 0.115,用于 wT2。预测 FF 最准确的方法是 RF、SVM 和 kNN,预测 wT2 最准确的方法是树、RF 和 kNN。

结论

本研究表明,从常规 MRI 的纹理分析开始,有可能准确估计 qMRI 参数。

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