Department of Radiotherapy, Fudan University Shanghai Cancer Center, No.270 Dong'an Road, Xuhui district, Shanghai, 200032, China.
Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China.
J Transl Med. 2022 Feb 2;20(1):66. doi: 10.1186/s12967-022-03262-5.
To develop and validate a survival model with clinico-biological features and F- FDG PET/CT radiomic features via machine learning, and for predicting the prognosis from the primary tumor of colorectal cancer.
A total of 196 pathologically confirmed patients with colorectal cancer (stage I to stage IV) were included. Preoperative clinical factors, serum tumor markers, and PET/CT radiomic features were included for the recurrence-free survival analysis. For the modeling and validation, patients were randomly divided into the training (n = 137) and validation (n = 59) set, while the 78 stage III patients [training (n = 55), and validation (n = 23)] was divided for the further experiment. After selecting features by the log-rank test and variable-hunting methods, random survival forest (RSF) models were built on the training set to analyze the prognostic value of selected features. The performance of models was measured by C-index and was tested on the validation set with bootstrapping. Feature importance and the Pearson correlation were also analyzed.
Radiomics signature (containing four PET/CT features and four clinical factors) achieved the best result for prognostic prediction of 196 patients (C-index 0.780, 95% CI 0.634-0.877). Moreover, four features (including two clinical features and two radiomics features) were selected for prognostic prediction of the 78 stage III patients (C-index was 0.820, 95% CI 0.676-0.900). K-M curves of both models significantly stratified low-risk and high-risk groups (P < 0.0001). Pearson correlation analysis demonstrated that selected radiomics features were correlated with tumor metabolic factors, such as SUVmean, SUVmax.
This study presents integrated clinico-biological-radiological models that can accurately predict the prognosis in colorectal cancer using the preoperative F-FDG PET/CT radiomics in colorectal cancer. It is of potential value in assisting the management and decision making for precision treatment in colorectal cancer. Trial registration The retrospectively registered study was approved by the Ethics Committee of Fudan University Shanghai Cancer Center (No. 1909207-14-1910) and the data were analyzed anonymously.
通过机器学习开发和验证具有临床生物学特征和 F-FDG PET/CT 放射组学特征的生存模型,并预测结直肠癌原发灶的预后。
共纳入 196 例经病理证实的结直肠癌患者(I 期至 IV 期)。将术前临床因素、血清肿瘤标志物和 PET/CT 放射组学特征纳入无复发生存分析。对于建模和验证,患者被随机分为训练集(n=137)和验证集(n=59),而 78 例 III 期患者[训练集(n=55)和验证集(n=23)]进一步分为实验。通过对数秩检验和变量搜索方法选择特征后,在训练集上构建随机生存森林(RSF)模型,以分析所选特征的预后价值。使用 bootstrap 在验证集上测量模型的性能,并通过 C 指数进行测试。还分析了特征重要性和 Pearson 相关性。
放射组学特征(包含 4 个 PET/CT 特征和 4 个临床因素)在 196 例患者的预后预测中取得了最佳结果(C 指数 0.780,95%CI 0.634-0.877)。此外,四个特征(包括两个临床特征和两个放射组学特征)被选择用于预测 78 例 III 期患者的预后(C 指数为 0.820,95%CI 0.676-0.900)。两个模型的 K-M 曲线均显著对低危和高危组进行分层(P<0.0001)。Pearson 相关性分析表明,所选放射组学特征与肿瘤代谢因素,如 SUVmean、SUVmax 相关。
本研究提出了一种整合临床生物学-放射影像学的模型,可使用术前 F-FDG PET/CT 放射组学准确预测结直肠癌的预后。它在辅助结直肠癌的精准治疗管理和决策方面具有潜在价值。
这项回顾性注册研究得到了复旦大学附属肿瘤医院伦理委员会的批准(编号 1909207-14-1910),并对数据进行了匿名分析。