不同预处理方法的核磁共振成像放射组学特征差异对帕金森病运动亚型分类的协调影响

Mehdi Panahi, Mahboube Sadat Hosseini
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引用次数: 0

摘要

本研究旨在评估用于帕金森病(PD)运动亚型分类的多种预处理方法的核磁共振成像衍生放射学特征的可重复性,并评估 ComBat 协调对特征稳定性和机器学习性能的影响。研究人员从帕金森病进展标志物倡议(PPMI)数据库中获取了 140 名帕金森病患者(70 名震颤主导型和 70 名姿势不稳步态困难型)和 70 名健康对照者的 T1 加权 MRI 扫描图像,并使用不同型号的扫描仪进行了采集。使用不同的预处理管道从 16 个脑区提取放射线组学特征。使用包含扫描仪型号和预处理方法的组合批处理变量进行 ComBat 协调。类内相关系数(ICC)和 Kruskal-Wallis 检验评估了协调前后的特征重现性。使用线性支持向量分类器和 L1 正则化进行特征选择。支持向量机分类器用于 PD 亚型分类。ComBat 协调大大提高了所有特征组的特征再现性。协调后,表现出卓越稳健性(ICC ≥ 0.90)的特征百分比从 40.2% 增加到 56.3%。一阶统计特征显示出最高的稳健性,协调后有 71.11% 的特征显示出优异的 ICC。协调后,受预处理方法明显影响的特征比例有所降低。在所有预处理方法中,分类准确率从协调前的 34-75% 大幅提高到协调后的 89-96%。协调后,AUC 值同样从 0.28-0.87 提高到 0.95-0.99。ComBat 协调大大提高了不同预处理方法的放射学特征的可重复性,并改善了 PD 运动亚型分类性能。这项研究强调了协调在脊髓灰质炎放射组学研究中的重要性,并提出了在个性化治疗计划中的潜在临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Harmonization on MRI Radiomics Feature Variability Across Preprocessing Methods for Parkinson's Disease Motor Subtype Classification.

This study aimed to assess the reproducibility of MRI-derived radiomic features across multiple preprocessing methods for classifying Parkinson's disease (PD) motor subtypes and to evaluate the impact of ComBat harmonization on feature stability and machine learning performance. T1-weighted MRI scans from 140 PD patients (70 tremor-dominant and 70 postural instability gait difficulty) and 70 healthy controls were obtained from the Parkinson's Progression Markers Initiative (PPMI) database, acquired using different scanner models. Radiomic features were extracted from 16 brain regions using various preprocessing pipelines. ComBat harmonization was applied using a combined batch variable incorporating both scanner models and preprocessing methods. Intraclass correlation coefficients (ICC) and Kruskal-Wallis tests assessed feature reproducibility before and after harmonization. Feature selection was performed using Linear Support Vector Classifier with L1 regularization. Support vector machine classifiers were used for PD subtype classification. ComBat harmonization significantly improved feature reproducibility across all feature groups. The percentage of features showing excellent robustness (ICC ≥ 0.90) increased from 40.2 to 56.3% after harmonization. First-order statistic features showed the highest robustness, with 71.11% demonstrating excellent ICC after harmonization. The proportion of features significantly affected by preprocessing methods was reduced following harmonization. Classification accuracy improved dramatically, from a range of 34-75% before harmonization to 89-96% after harmonization across all preprocessing methods. AUC values similarly increased from 0.28-0.87 to 0.95-0.99 after harmonization. ComBat harmonization significantly enhanced the reproducibility of radiomic features across preprocessing methods and improved PD motor subtype classification performance. This study highlights the importance of harmonization in radiomics research for PD and suggests potential clinical applications in personalized treatment planning.

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