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基于MRI的放射组学和端到端深度学习模型预测胶质瘤ATRX状态:诊断试验准确性研究的系统评价和荟萃分析

MRI-derived radiomics and end-to-end deep learning models for predicting glioma ATRX status: a systematic review and meta-analysis of diagnostic test accuracy studies.

作者信息

Ahmadzadeh Amir Mahmoud, Lomer Nima Broomand, Ashoobi Mohammad Amin, Bathla Girish, Sotoudeh Houman

机构信息

Department of Radiology, School of Medicine, Mashhad University of Medical Sciences, Mashhad, Iran.

Medical Image Processing Group, Department of Radiology, University of Pennsylvania, Philadelphia, PA, 19104, USA.

出版信息

Clin Imaging. 2025 Mar;119:110386. doi: 10.1016/j.clinimag.2024.110386. Epub 2024 Dec 26.

Abstract

We aimed to systematically review and meta-analyze the predictive value of magnetic resonance imaging (MRI)-derived radiomics/end-to-end deep learning (DL) models in predicting glioma alpha thalassemia/mental retardation syndrome X-linked (ATRX) status. We conducted a comprehensive search across four major databases-Web of Science, PubMed, Scopus, and Embase. All the studies that assessed the performance of radiomics and/or end-to-end DL models for predicting glioma ATRX status were included. Quality assessment was performed using the Quality Assessment of Diagnostic Accuracy Studies-2 (QUADAS-2) criteria and the METhodological RadiomICs Score (METRICS). Pooled estimates for performance metrics were calculated. I-squared was used to assess heterogeneity, while subgroup and sensitivity analyses were performed to find its potential sources. Publication bias was assessed using Deeks' funnel plots. Seventeen and eleven studies were included in the systematic review and meta-analysis, respectively. Most of the studies had a low risk of bias and low concern for applicability according to the QUADAS-2. Also, most of them had good quality according to the METRICS. Meta-analysis showed a pooled sensitivity of 0.80 (95%CI: 0.71-0.96), a specificity of 0.82 (95%CI: 0.67-0.93), a positive diagnostic likelihood ratio (DLR) of 6.77 (95%CI: 4.67-9.82), a negative DLR of 0.15 (95%CI: 0.06-0.38), a diagnostic odds ratio of 30.36 (95%CI: 15.87-58.05), and an area under the curve (AUC) of 0.92 (95%CI: 0.89-0.94). Subgroup analysis revealed significant intergroup differences based on several factors. Radiomics models can accurately predict ATRX status in gliomas, enhancing non-invasive tumor characterization and guiding treatment strategies.

摘要

我们旨在系统评价和荟萃分析磁共振成像(MRI)衍生的放射组学/端到端深度学习(DL)模型在预测胶质瘤α地中海贫血/智力发育迟缓综合征X连锁(ATRX)状态方面的预测价值。我们对四个主要数据库——科学网、PubMed、Scopus和Embase进行了全面检索。纳入了所有评估放射组学和/或端到端DL模型预测胶质瘤ATRX状态性能的研究。使用诊断准确性研究质量评估-2(QUADAS-2)标准和放射组学方法评分(METRICS)进行质量评估。计算性能指标的合并估计值。使用I²评估异质性,同时进行亚组分析和敏感性分析以寻找其潜在来源。使用Deeks漏斗图评估发表偏倚。分别有17项和11项研究纳入系统评价和荟萃分析。根据QUADAS-2,大多数研究的偏倚风险较低且适用性问题较少。此外,根据METRICS,它们中的大多数质量良好。荟萃分析显示合并敏感性为0.80(95%CI:0.71-0.96),特异性为0.82(95%CI:0.67-0.93),阳性诊断似然比(DLR)为6.77(95%CI:4.67-9.82),阴性DLR为0.15(95%CI:0.06-0.38),诊断比值比为30.36(95%CI:15.87-58.05),曲线下面积(AUC)为0.92(95%CI:0.89-0.94)。亚组分析显示基于几个因素存在显著的组间差异。放射组学模型可以准确预测胶质瘤中的ATRX状态,增强非侵入性肿瘤特征描述并指导治疗策略。

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