Payan Neree, Presles Benoit, Coutant Charles, Desmoulins Isabelle, Ladoire Sylvain, Beltjens Françoise, Brunotte François, Vrigneaud Jean-Marc, Cochet Alexandre
Department of Nuclear Medicine, Georges-François Leclerc Cancer Centre, Dijon, France.
IFTIM, ICMUB Laboratory, UMR CNRS 6302, University of Burgundy, Dijon, France.
EJNMMI Res. 2024 Jul 4;14(1):60. doi: 10.1186/s13550-024-01115-4.
The aim of this study is to investigate the added value of combining tumour blood flow (BF) and metabolism parameters, including texture features, with clinical parameters to predict, at baseline, the pathological complete response (pCR) to neoadjuvant chemotherapy (NAC) in patients with newly diagnosed breast cancer (BC).
One hundred and twenty-eight BC patients underwent a F-FDG PET/CT before any treatment. Tumour BF and metabolism parameters were extracted from first-pass dynamic and delayed PET images, respectively. Standard and texture features were extracted from BF and metabolic images. Prediction of pCR was performed using logistic regression, random forest and support vector classification algorithms. Models were built using clinical (C), clinical and metabolic (C+M) and clinical, metabolic and tumour BF (C+M+BF) information combined. Algorithms were trained on 80% of the dataset and tested on the remaining 20%. Univariate and multivariate features selections were carried out on the training dataset. A total of 50 shuffle splits were performed. The analysis was carried out on the whole dataset (HER2 and Triple Negative (TN)), and separately in HER2 (N=76) and TN (N=52) tumours.
In the whole dataset, the highest classification performances were observed for C+M models, significantly (p-value<0.01) higher than C models and better than C+M+BF models (mean balanced accuracy of 0.66, 0.61, and 0.64 respectively). For HER2 tumours, equal performances were noted for C and C+M models, with performances higher than C+M+BF models (mean balanced accuracy of 0.64, and 0.61 respectively). Regarding TN tumours, the best classification results were reported for C+M models, with better performances than C and C+M+BF models but not significantly (mean balanced accuracy of 0.65, 0.63, and 0.62 respectively).
Baseline clinical data combined with global and texture tumour metabolism parameters assessed by F-FDG PET/CT provide a better prediction of pCR after NAC in patients with BC compared to clinical parameters alone for TN, and HER2 and TN tumours together. In contrast, adding BF parameters to the models did not improve prediction, regardless of the tumour subgroup analysed.
本研究旨在探讨将肿瘤血流(BF)和代谢参数(包括纹理特征)与临床参数相结合,在基线时预测新诊断乳腺癌(BC)患者接受新辅助化疗(NAC)后的病理完全缓解(pCR)的附加价值。
128例BC患者在任何治疗前均接受了F-FDG PET/CT检查。分别从首过动态和延迟PET图像中提取肿瘤BF和代谢参数。从BF和代谢图像中提取标准特征和纹理特征。使用逻辑回归、随机森林和支持向量分类算法进行pCR预测。使用临床(C)、临床和代谢(C+M)以及临床、代谢和肿瘤BF(C+M+BF)信息组合构建模型。算法在80%的数据集上进行训练,并在其余20%的数据集上进行测试。在训练数据集上进行单变量和多变量特征选择。总共进行了50次随机分割。对整个数据集(HER2和三阴性(TN))进行分析,并分别在HER2(N=76)和TN(N=52)肿瘤中进行分析。
在整个数据集中,C+M模型的分类性能最高,显著高于C模型(p值<0.01),且优于C+M+BF模型(平均平衡准确率分别为0.66、0.61和0.64)。对于HER2肿瘤,C和C+M模型的性能相当,均高于C+M+BF模型(平均平衡准确率分别为0.64和0.61)。对于TN肿瘤,C+M模型的分类结果最佳,性能优于C和C+M+BF模型,但差异不显著(平均平衡准确率分别为0.65、0.63和0.62)。
与单独的临床参数相比,基线临床数据与通过F-FDG PET/CT评估的整体和纹理肿瘤代谢参数相结合,能更好地预测BC患者NAC后的pCR,无论是TN肿瘤,还是HER2和TN肿瘤一起。相比之下,无论分析的肿瘤亚组如何,在模型中添加BF参数均未改善预测效果。