Wang Xihai, Lu Zaiming
Department of Radiology, Shengjing Hospital, China Medical University, Shenyang, China.
Front Oncol. 2021 Apr 13;11:638124. doi: 10.3389/fonc.2021.638124. eCollection 2021.
To investigate radiomics features extracted from PET and CT components of F-FDG PET/CT images integrating clinical factors and metabolic parameters of PET to predict progression-free survival (PFS) in advanced high-grade serous ovarian cancer (HGSOC).
A total of 261 patients were finally enrolled in this study and randomly divided into training (n=182) and validation cohorts (n=79). The data of clinical features and metabolic parameters of PET were reviewed from hospital information system(HIS). All volumes of interest (VOIs) of PET/CT images were semi-automatically segmented with a threshold of 42% of maximal standard uptake value (SUVmax) in PET images. A total of 1700 (850×2) radiomics features were separately extracted from PET and CT components of PET/CT images. Then two radiomics signatures (RSs) were constructed by the least absolute shrinkage and selection operator (LASSO) method. The RSs of PET (PET_RS) and CT components(CT_RS) were separately divided into low and high RS groups according to the optimum cutoff value. The potential associations between RSs with PFS were assessed in training and validation cohorts based on the Log-rank test. Clinical features and metabolic parameters of PET images (PET_MP) with P-value <0.05 in univariate and multivariate Cox regression were combined with PET_RS and CT_RS to develop prediction nomograms (Clinical, Clinical+ PET_MP, Clinical+ PET_RS, Clinical+ CT_RS, Clinical+ PET_MP + PET_RS, Clinical+ PET_MP + CT_RS) by using multivariate Cox regression. The concordance index (C-index), calibration curve, and net reclassification improvement (NRI) was applied to evaluate the predictive performance of nomograms in training and validation cohorts.
In univariate Cox regression analysis, six clinical features were significantly associated with PFS. Ten PET radiomics features were selected by LASSO to construct PET_RS, and 1 CT radiomics features to construct CT_RS. PET_RS and CT_RS was significantly associated with PFS both in training (P <0.00 for both RSs) and validation cohorts (P=0.01 for both RSs). Because there was no PET_MP significantly associated with PFS in training cohorts. Only three models were constructed by 4 clinical features with P-value <0.05 in multivariate Cox regression and RSs (Clinical, Clinical+ PET_RS, Clinical+ CT_RS). Clinical+ PET_RS model showed higher prognostic performance than other models in training cohort (C-index=0.70, 95% CI 0.68-0.72) and validation cohort (C-index=0.70, 95% CI 0.66-0.74). Calibration curves of each model for prediction of 1-, 3-year PFS indicated Clinical +PET_RS model showed excellent agreements between estimated and the observed 1-, 3-outcomes. Compared to the basic clinical model, Clinical+ PET_MS model resulted in greater improvement in predictive performance in the validation cohort.
PET_RS can improve diagnostic accuracy and provide complementary prognostic information compared with the use of clinical factors alone or combined with CT_RS. The newly developed radiomics nomogram is an effective tool to predict PFS for patients with advanced HGSOC.
研究从F-FDG PET/CT图像的PET和CT成分中提取的影像组学特征,并结合PET的临床因素和代谢参数,以预测晚期高级别浆液性卵巢癌(HGSOC)的无进展生存期(PFS)。
本研究最终纳入261例患者,随机分为训练组(n = 182)和验证组(n = 79)。从医院信息系统(HIS)中回顾PET的临床特征和代谢参数数据。PET/CT图像的所有感兴趣体积(VOIs)在PET图像中以最大标准摄取值(SUVmax)的42%为阈值进行半自动分割。从PET/CT图像的PET和CT成分中分别提取了总共1700个(850×2)影像组学特征。然后通过最小绝对收缩和选择算子(LASSO)方法构建了两个影像组学特征(RSs)。根据最佳截断值,将PET的RS(PET_RS)和CT成分的RS(CT_RS)分别分为低RS组和高RS组。基于对数秩检验在训练组和验证组中评估RSs与PFS之间的潜在关联。将单变量和多变量Cox回归中P值<0.05的PET图像的临床特征和代谢参数(PET_MP)与PET_RS和CT_RS相结合,通过多变量Cox回归建立预测列线图(临床、临床+PET_MP、临床+PET_RS、临床+CT_RS、临床+PET_MP+PET_RS、临床+PET_MP+CT_RS)。应用一致性指数(C-index)、校准曲线和净重新分类改善(NRI)来评估训练组和验证组中列线图的预测性能。
在单变量Cox回归分析中,六个临床特征与PFS显著相关。通过LASSO选择了10个PET影像组学特征来构建PET_RS,1个CT影像组学特征来构建CT_RS。PET_RS和CT_RS在训练组(两个RSs的P均<0.00)和验证组(两个RSs的P = 0.01)中均与PFS显著相关。由于训练组中没有PET_MP与PFS显著相关。在多变量Cox回归和RSs中,仅由4个P值<0.05的临床特征构建了三个模型(临床、临床+PET_RS、临床+CT_RS)。临床+PET_RS模型在训练组(C-index = 0.70,95%CI 0.68 - 0.72)和验证组(C-index = 0.70,95%CI 0.66 - 0.74)中显示出比其他模型更高的预后性能。各模型预测1年、3年PFS的校准曲线表明,临床+PET_RS模型在估计结果和观察到的1年、3年结果之间显示出极好的一致性。与基本临床模型相比,临床+PET_MS模型在验证组中的预测性能有更大的提高。
与单独使用临床因素或与CT_RS联合使用相比,PET_RS可以提高诊断准确性并提供补充的预后信息。新开发的影像组学列线图是预测晚期HGSOC患者PFS的有效工具。