Salimi Mohsen, Vadipour Pouria, Houshi Shakiba, Yazdanpanah Fereshteh, Seifi Sharareh
Research Center of Thoracic Oncology (RCTO), National Research Institute of Tuberculosis and Lung Diseases (NRITLD), Shahid Beheshti University of Medical Sciences, Tehran, Iran.
Western Michigan University Homer Stryker M.D. School of Medicine, Kalamazoo, MI, USA.
Abdom Radiol (NY). 2025 Mar 27. doi: 10.1007/s00261-025-04892-1.
Biochemical recurrence (BCR) following prostate cancer (PCa) treatment is a significant indicator of metastasis and mortality. Early prediction of BCR can guide treatment decisions, and optimize patient management strategies. MRI is essential for the diagnosis and surveillance of PCa. This study aimed to assess the accuracy and quality of MRI radiomics-based machine learning (ML) models for predicting post-treatment BCR in PCa.
A systematic literature search was conducted across five electronic databases (PubMed, Scopus, Embase, Web of Science, and IEEE) up to December 23, 2024, to identify studies developing ML models based on MRI-derived radiomics features for the prediction of BCR in PCa. Studies were assessed for quality using the QUADAS-2 and METRICS tools. A meta-analysis of radiomics, clinical, and clinical-radiomics models in validation cohorts was performed to pool sensitivity, specificity, and area under the curve (AUC) using a bivariate random-effects model.
A total of 24 studies were incorporated into the systematic review, with 14 included in the meta-analysis. The pooled AUC, sensitivity, and specificity for radiomics-based ML models were 0.75, 72%, and 78%, respectively. Clinical-radiomics models showed the highest performance with a pooled AUC of 0.88, sensitivity of 85%, and specificity of 79%. QUADAS-2 revealed significant methodological biases, particularly in the index test and flow and timing domains. The mean METRICS score across studies was 65.68%, ranging from 43.8 to 82.2%, showing overall good quality but highlighting methodological gaps in some domains.
MRI-based radiomics demonstrates potential for predicting BCR in PCa, especially when integrated with clinical variables. However, it is still far from widespread clinical use, necessitating further standardization and key methodological improvements for better generalizability and robustness. Future studies should adopt multi-center designs and conduct thorough external validation to enhance applicability across diverse patient populations.
前列腺癌(PCa)治疗后的生化复发(BCR)是转移和死亡率的重要指标。BCR的早期预测可指导治疗决策,并优化患者管理策略。MRI对PCa的诊断和监测至关重要。本研究旨在评估基于MRI影像组学的机器学习(ML)模型预测PCa治疗后BCR的准确性和质量。
截至2024年12月23日,在五个电子数据库(PubMed、Scopus、Embase、Web of Science和IEEE)中进行了系统的文献检索,以识别基于MRI衍生的影像组学特征开发的用于预测PCa中BCR的ML模型的研究。使用QUADAS-2和METRICS工具评估研究质量。对验证队列中的影像组学、临床和临床-影像组学模型进行荟萃分析,使用双变量随机效应模型汇总敏感性、特异性和曲线下面积(AUC)。
共有24项研究纳入系统评价,14项纳入荟萃分析。基于影像组学的ML模型的汇总AUC、敏感性和特异性分别为0.75、72%和78%。临床-影像组学模型表现最佳,汇总AUC为0.88,敏感性为85%,特异性为79%。QUADAS-2显示出显著的方法学偏差,特别是在索引测试以及流程和时间领域。各研究的METRICS平均得分65.68%,范围为43.8%至82.2%,总体质量良好,但突出了某些领域的方法学差距。
基于MRI的影像组学在预测PCa的BCR方面显示出潜力,尤其是与临床变量相结合时。然而,它距离广泛的临床应用仍有很大差距,需要进一步标准化和关键方法改进,以提高通用性和稳健性。未来的研究应采用多中心设计并进行全面的外部验证,以增强在不同患者群体中的适用性。