Pasini Giovanni, Stefano Alessandro, Mantarro Cristina, Richiusa Selene, Comelli Albert, Russo Giorgio Ivan, Sabini Maria Gabriella, Cosentino Sebastiano, Ippolito Massimo, Russo Giorgio
Institute of Bioimaging and Complex Biological Systems - National Research Council (IBSBC - CNR), Contrada, Pietrapollastra-Pisciotto, 90015, Cefalù, Italy.
Department of Mechanical and Aerospace Engineering, Sapienza University of Rome, Eudossiana 18, 00184, Rome, Italy.
J Imaging Inform Med. 2025 Jun;38(3):1388-1402. doi: 10.1007/s10278-024-01281-w. Epub 2024 Sep 30.
The aim of this study is to investigate the role of [F]-PSMA-1007 PET in differentiating high- and low-risk prostate cancer (PCa) through a robust radiomics ensemble model. This retrospective study included 143 PCa patients who underwent [F]-PSMA-1007 PET/CT imaging. PCa areas were manually contoured on PET images and 1781 image biomarker standardization initiative (IBSI)-compliant radiomics features were extracted. A 30 times iterated preliminary analysis pipeline, comprising of the least absolute shrinkage and selection operator (LASSO) for feature selection and fivefold cross-validation for model optimization, was adopted to identify the most robust features to dataset variations, select candidate models for ensemble modelling, and optimize hyperparameters. Thirteen subsets of selected features, 11 generated from the preliminary analysis plus two additional subsets, the first based on the combination of robust and fine-tuning features, and the second only on fine-tuning features were used to train the model ensemble. Accuracy, area under curve (AUC), sensitivity, specificity, precision, and f-score values were calculated to provide models' performance. Friedman test, followed by post hoc tests corrected with Dunn-Sidak correction for multiple comparisons, was used to verify if statistically significant differences were found in the different ensemble models over the 30 iterations. The model ensemble trained with the combination of robust and fine-tuning features obtained the highest average accuracy (79.52%), AUC (85.75%), specificity (84.29%), precision (82.85%), and f-score (78.26%). Statistically significant differences (p < 0.05) were found for some performance metrics. These findings support the role of [F]-PSMA-1007 PET radiomics in improving risk stratification for PCa, by reducing dependence on biopsies.
本研究旨在通过一个强大的放射组学集成模型,探讨[F]-PSMA-1007 PET在鉴别高风险和低风险前列腺癌(PCa)中的作用。这项回顾性研究纳入了143例接受[F]-PSMA-1007 PET/CT成像的PCa患者。在PET图像上手动勾勒出PCa区域,并提取1781个符合图像生物标志物标准化倡议(IBSI)的放射组学特征。采用一个30次迭代的初步分析流程,包括用于特征选择的最小绝对收缩和选择算子(LASSO)以及用于模型优化的五折交叉验证,以识别对数据集变化最稳健的特征,选择用于集成建模的候选模型,并优化超参数。所选特征的13个子集,11个由初步分析生成,另外两个子集,第一个基于稳健特征和微调特征的组合,第二个仅基于微调特征,用于训练模型集成。计算准确率、曲线下面积(AUC)、敏感性、特异性、精确率和F分数值以评估模型性能。使用Friedman检验,随后进行经Dunn-Sidak校正的事后检验以进行多重比较,以验证在30次迭代中不同集成模型是否存在统计学显著差异。使用稳健特征和微调特征组合训练的模型集成获得了最高的平均准确率(79.52%)、AUC(85.75%)、特异性(84.29%)、精确率(82.85%)和F分数(78.26%)。在一些性能指标上发现了统计学显著差异(p < 0.05)。这些发现支持了[F]-PSMA-1007 PET放射组学在通过减少对活检的依赖来改善PCa风险分层中的作用。