Department of Radiology, Xiangyang No. 1 People's Hospital, Hubei University of Medicine, Xiangyang 441000, China.
Department of Internal Medicine, Xiangyang No. 1 People's Hospital, Hubei University of Medicine, Xiangyang 441000, China.
Comput Math Methods Med. 2022 Apr 28;2022:8090529. doi: 10.1155/2022/8090529. eCollection 2022.
This study was aimed at developing a model for predicting postoperative biochemical recurrence of prostate cancer (PCa) using clinical data-CEUS-MRI radiomics and at verifying its clinical effectiveness.
The clinical imaging data of 159 patients pathologically confirmed with PCa and who underwent radical prostatectomy in Xiangyang No. 1 People's Hospital and Jiangsu Hospital of Chinese Medicine from March 2016 to December 2020 were retrospectively analyzed. According to the 2-5-year follow-up results, the patients were divided into the biochemical recurrence (BCR) group ( = 59) and the control group ( = 100). The training set and test set were established in the proportion of 7/3; 4 prediction models were established based on the clinical imaging data. In training set, the area under the curve (AUC) and decision curve analysis (DCA) by R was conducted to compare the efficiency of 4 prediction models, and then, external validation was performed using the test set. Finally, a nomogram tool for predicting BCR was developed.
Univariate regression analysis confirmed that the SmallAreaHighGrayLevelEmphasis, RunVariance, Contrast, tumor diameter, clinical T stage, lymph node metastasis, distant metastasis, Gleason score, preoperative PSA, treatment method, CEUS-peak intensity (PI), time to peak (TTP), arrival time (AT), and elastography grade were the influencing factors for predicting BCR. In the training set, the AUC of combinatorial model demonstrated the highest efficiency in predicting BCR [AUC: 0.914 (OR 0.0305, 95% CI: 0.854-0.974)] vs. the general clinical data model, the CEUS model, and the MRI radiomics model. The DCA confirmed the largest net benefits of the combinatorial model. The test set validation gave consistent results. The nomogram tool has been well applied clinically.
The previous clinical and imaging data alone did not perform well for predicting BCR. Our combinatorial model firstly using clinical data-CEUS-MRI radiomics provided an opportunity for clinical screening of BCR and help improve its prognosis.
本研究旨在建立一种基于临床数据-CEUS-MRI 放射组学预测前列腺癌(PCa)术后生化复发的模型,并验证其临床效能。
回顾性分析 2016 年 3 月至 2020 年 12 月在襄阳市第一人民医院和江苏省中医院行根治性前列腺切除术并经病理证实为 PCa 的 159 例患者的临床影像学资料。根据 2-5 年随访结果,将患者分为生化复发(BCR)组(n=59)和对照组(n=100)。训练集和测试集的建立比例为 7/3;基于临床影像学数据建立 4 种预测模型。在训练集中,采用 R 软件进行曲线下面积(AUC)和决策曲线分析(DCA),比较 4 种预测模型的效能,然后采用测试集进行外部验证。最后,开发了一种预测 BCR 的列线图工具。
单因素回归分析证实,小区域高灰度强调度、游程方差、对比、肿瘤直径、临床 T 分期、淋巴结转移、远处转移、Gleason 评分、术前 PSA、治疗方法、CEUS 峰值强度(PI)、达峰时间(TTP)、到达时间(AT)和弹性成像分级是预测 BCR 的影响因素。在训练集中,组合模型预测 BCR 的 AUC 效率最高[AUC:0.914(OR 0.0305,95%CI:0.854-0.974)],优于一般临床数据模型、CEUS 模型和 MRI 放射组学模型。DCA 证实了组合模型的最大净收益。测试集验证结果一致。列线图工具已在临床上得到很好的应用。
仅使用既往临床和影像学数据对预测 BCR 效果不佳。我们的组合模型首次结合临床数据、CEUS 和 MRI 放射组学,为 BCR 的临床筛查提供了机会,并有助于改善其预后。