Department of Radiology, 584878Xiangyang No. 1 People's Hospital, Hubei University of Medicine, Xiangyang, China.
Department of Urology, 584878Xiangyang No. 1 People's Hospital, Hubei University of Medicine, Xiangyang, China.
Technol Cancer Res Treat. 2023 Jan-Dec;22:15330338231166766. doi: 10.1177/15330338231166766.
To build a combined model that integrates clinical data, contrast-enhanced ultrasound, and magnetic resonance perfusion-weighted imaging-based radiomics for predicting the possibility of biochemical recurrence of prostate carcinoma and develop a nomogram tool.
We retrospectively analyzed the clinical, ultrasound, and magnetic resonance imaging data of 206 patients pathologically confirmed with prostate carcinoma and receiving radical prostatectomy at Xiangyang No. 1 People's Hospital from February 2015 to August 2021. Based on one to 7 years of follow-up (prostate specific antigen [PSA] level≥0.2 ng/mL, indicative of prostate carcinoma-biochemical recurrence), the patients were divided into biochemical recurrence group (n = 77) and normal group (n = 129). The training and testing sets were formed by dividing the patients at a 7:3 ratio. In training set, The magnetic resonance perfusion-weighted imaging-based radiomics radscore was generated using lasso regression. Several predictive models were built based on the patients' clinical imaging data. The predictive efficacy (area under the curve) of these models was compared using the MedCalc software. The decision curve analysis was conducted using the R to compare the net benefit. Finally, an external validation was carried out on the testing set, and the nomogram tool was developed for predicting prostate carcinoma-biochemical recurrence.
The univariate analysis confirmed that Tumor diameter, tumor node metastasis classification stage of tumor, lymph node metastasis or distance metastasis, Gleason grade, preoperative PSA, ultrasound (peak intensity, arrival time, and elastography grade), and magnetic resonance imaging-radscore1/2 were predictors of prostate carcinoma-biochemical recurrence. On the training set, the combined model based on the above factors had the highest predictive efficacy for prostate carcinoma-biochemical recurrence (area under the curve: 0.91; odds ratio 0.02, 95% confidence interval: 0.85-0.95). The predictive performance of the combined model was significantly higher than that of the model based on general clinical data (area under the curve: 0.74; odds ratio 0.04, 95% confidence interval: 0.67-0.81, < .05), contrast-enhanced ultrasound (area under the curve: 0.61; odds ratio 0.05 95% confidence interval: 0.53-0.69, < .05), and the magnetic resonance imaging-based radiomics model (area under the curve: 0.85; odds ratio 0.03, 95% confidence interval: 0.78-0.91, = .01). The decision curve analysis also indicated the maximum net benefit derived from the combined model, which agreed with the validation results on the testing set. The nomogram tool developed based on the combined model achieved a good performance in clinical applications.
The magnetic resonance imaging texture parameters extracted by magnetic resonance perfusion-weighted imaging Lasso regression could help increase the accuracy of the predictive model. The combined model and the nomogram tool provide support for the clinical screening of the populations at a risk for biochemical recurrence.
构建一种整合临床数据、增强超声和磁共振灌注加权成像放射组学的综合模型,用于预测前列腺癌生化复发的可能性,并开发列线图工具。
我们回顾性分析了 206 例经病理证实患有前列腺癌并于 2015 年 2 月至 2021 年 8 月在襄阳市第一人民医院接受根治性前列腺切除术的患者的临床、超声和磁共振成像数据。根据 1 至 7 年的随访(前列腺特异性抗原 [PSA]水平≥0.2ng/mL,提示前列腺癌生化复发),患者被分为生化复发组(n=77)和正常组(n=129)。通过 7:3 的比例将患者分为训练集和测试集。在训练集中,使用lasso 回归生成基于磁共振灌注加权成像的放射组学 radscore。基于患者的临床成像数据构建了几种预测模型。使用 MedCalc 软件比较这些模型的预测效能(曲线下面积)。使用 R 进行决策曲线分析以比较净收益。最后,在测试集上进行外部验证,并开发预测前列腺癌生化复发的列线图工具。
单因素分析证实,肿瘤直径、肿瘤淋巴结转移分期、淋巴结转移或远处转移、Gleason 分级、术前 PSA、超声(峰值强度、到达时间和弹性成像分级)和磁共振成像-radscore1/2 是前列腺癌生化复发的预测因素。在训练集中,基于上述因素的联合模型对前列腺癌生化复发具有最高的预测效能(曲线下面积:0.91;比值比 0.02,95%置信区间:0.85-0.95)。联合模型的预测性能明显高于基于一般临床数据的模型(曲线下面积:0.74;比值比 0.04,95%置信区间:0.67-0.81, <.05)、增强超声(曲线下面积:0.61;比值比 0.05,95%置信区间:0.53-0.69, <.05)和基于磁共振成像的放射组学模型(曲线下面积:0.85;比值比 0.03,95%置信区间:0.78-0.91, = .01)。决策曲线分析也表明,联合模型获得的最大净收益,与测试集的验证结果一致。基于联合模型开发的列线图工具在临床应用中表现良好。
磁共振灌注加权成像 Lasso 回归提取的磁共振成像纹理参数有助于提高预测模型的准确性。联合模型和列线图工具为生化复发风险人群的临床筛查提供了支持。