在公开的加州大学旧金山分校胶质瘤数据集上评估使用动脉自旋标记灌注磁共振成像识别胶质瘤亚型的图像分类模型。

IF 2.8 3区 医学 Q2 Medicine
K Amador, H Kniep, J Fiehler, N D Forkert, T Lindner
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引用次数: 0

摘要

目的:胶质瘤是一种复杂的癌症,包括各种亚型和突变,它们可能具有不同的代谢特征,这些特征有可能通过灌注成像进行研究和识别。因此,这项工作旨在利用放射组学和机器学习分析动脉自旋标记磁共振成像数据,自动区分胶质瘤亚型和突变:本研究使用了加州大学旧金山分校胶质瘤数据库中的495个动脉自旋标记(ASL)灌注成像数据集。这些数据集经过分割以划分肿瘤体积,并根据肿瘤分级、病理诊断和 IDH 状态进行分类。灌注图像数据是使用伪连续 ASL 从 3T MRI 扫描仪上获得的。肿瘤体积分割后,使用 PyRadiomics 提取每个 ASL 数据集的高级纹理特征,然后使用由 ReliefF 特征排序和逻辑模型树分类算法组成的机器学习框架进行分析:评估结果表明,使用 25.4 ± 37.21 个特征对肿瘤分级进行分类的准确率为 55.76%(SD = 4.28,95% CI:53.90-57.65),对三个终点进行分类的准确率为 62.53%(SD = 2.86,95% CI:61.27-63.78),而病理诊断则使用了 47.3 ± 32.72 个选定特征:对胶质瘤患者的ASL灌注数据进行放射组学和机器学习分析,具有辅助胶质瘤诊断和治疗的潜力,主要用于鉴别胶质母细胞瘤和星形细胞瘤,而在肿瘤分级和突变状态方面的性能似乎有限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of an Image-based Classification Model to Identify Glioma Subtypes Using Arterial Spin Labeling Perfusion MRI On the Publicly Available UCSF Glioma Dataset.

Purpose: Glioma is a complex cancer comprising various subtypes and mutations, which may have different metabolic characteristics that can potentially be investigated and identified using perfusion imaging. Therefore, the aim of this work was to use radiomics and machine learning analysis of arterial spin labeling MRI data to automatically differentiate glioma subtypes and mutations.

Methods: A total of 495 Arterial Spin Labeling (ASL) perfusion imaging datasets from the UCSF Glioma database were used in this study. These datasets were segmented to delineate the tumor volume and classified according to tumor grade, pathological diagnosis, and IDH status. Perfusion image data was obtained from a 3T MRI scanner using pseudo-continuous ASL. High level texture features were extracted for each ASL dataset using PyRadiomics after tumor volume segmentation and then analyzed using a machine learning framework consisting of ReliefF feature ranking and logistic model tree classification algorithms.

Results: The results of the evaluation revealed balanced accuracies for the three endpoints ranging from 55.76% (SD = 4.28, 95% CI: 53.90-57.65) for the tumor grade using 25.4 ± 37.21 features, 62.53% (SD = 2.86, 95% CI: 61.27-63.78) for the mutation status with 23.3 ± 29.17 picked features, and 80.97% (SD = 1.83, 95% CI: 80.17-81.78) for the pathological diagnosis which used 47.3 ± 32.72 selected features.

Conclusions: Radiomics and machine learning analysis of ASL perfusion data in glioma patients hold potential for aiding in the diagnosis and treatment of glioma, mainly for discerning glioblastoma from astrocytoma, while performance for tumor grading and mutation status appears limited.

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来源期刊
Clinical Neuroradiology
Clinical Neuroradiology Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.90
自引率
3.60%
发文量
0
期刊介绍: Clinical Neuroradiology provides current information, original contributions, and reviews in the field of neuroradiology. An interdisciplinary approach is accomplished by diagnostic and therapeutic contributions related to associated subjects. The international coverage and relevance of the journal is underlined by its being the official journal of the German, Swiss, and Austrian Societies of Neuroradiology.
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