Gao Zhongxiu, Xu Xinchen, Sun Han, Li Tiannv, Ding Wei, Duan Ying, Tang Lijun, Gu Yingying
Department of Nuclear Medicine, The First Affiliated Hospital of Nanjing Medical University, Nanjing, China.
Department of Nuclear Medicine, Central Hospital of Xuzhou, Xuzhou, China.
Quant Imaging Med Surg. 2024 Aug 1;14(8):5473-5489. doi: 10.21037/qims-24-291. Epub 2024 Jul 9.
Synthetic magnetic resonance imaging (SyMRI) is a fast, standardized, and robust novel quantitative technique that has the potential to circumvent the subjectivity of interpretation in prostate multiparametric magnetic resonance imaging (mpMRI) and the limitations of existing MRI quantification techniques. Our study aimed to evaluate the potential utility of SyMRI in the diagnosis and aggressiveness assessment of prostate cancer (PCA).
We retrospectively analyzed 309 patients with suspected PCA who had undergone mpMRI and SyMRI, and pathologic results were obtained by biopsy or PCA radical prostatectomy (RP). Pathological types were classified as PCA, benign prostatic hyperplasia (BPH), or peripheral zone (PZ) inflammation. According to the Gleason Score (GS), PCA was divided into groups of intermediate-to-high risk (GS ≥4+3) and low-risk (GS ≤3+4). Patients with biopsy-confirmed low-risk PCA were further divided into upgraded and nonupgraded groups based on the GS changes of the RP results. The values of the apparent diffusion coefficient (ADC), T1, T2 and proton density (PD) of these lesions were measured on ADC and SyMRI parameter maps by two physicians; these values were compared between PCA and BPH or inflammation, between the intermediate-to-high-risk and low-risk PCA groups, and between the upgraded and nonupgraded PCA groups. The risk factors affecting GS grades were identified via univariate analysis. The effects of confounding factors were excluded through multivariate logistic regression analysis, and independent predictive factors were calculated. Subsequently, the ADC+Sy(T2+PD) combined models for predicting PCA risk grade or GS upgrade were constructed through data processing analysis. The diagnostic performance of each parameter and the ADC+Sy(T2+PD) model was analyzed. The calibration curve was calculated by the bootstrapping internal validation method (200 bootstrap resamples).
The T1, T2, and PD values of PCA were significantly lower than those of BPH or inflammation (P≤0.001) in both the PZ or transitional zone. Among the 178 patients with PCA, intermediate-to-high-risk PCA group had significantly higher T1, T2, and PD values but lower ADC values compared with the low-risk group (P<0.05), and the diagnostic efficacy of each single parameter was similar (P>0.05). The ADC+Sy(T2+PD) model showed the best performance, with an area under the curve (AUC) 0.110 [AUC =0.818; 95% confidence interval (CI): 0.754-0.872] higher than that of ADC alone (AUC =0.708; 95% CI: 0.635-0.774) (P=0.003). Among the 68 patients initially classified as PCA in the low-risk group by biopsy, PCA in the postoperative upgraded GS group had significantly higher T1, T2, and PD values but lower ADC values than did those in the nonupgraded group (P<0.01). In addition, the ADC+Sy(T2+PD) model better predicted the upgrade of GS, with a significant increase in AUC of 0.204 (AUC =0.947; 95% CI: 0.864-0.987) compared with ADC alone (AUC =0.743; 95% CI: 0.622-0.841) (P<0.001).
Quantitative parameters (T1, T2, and PD) derived from SyMRI can help differentiate PCA from non-PCA. Combining SyMRI parameters with ADC significantly improved the ability to differentiate between intermediate-to-high risk PCA from low-risk PCA and could predict the upgrade of low-risk PCA as confirmed by biopsy.
合成磁共振成像(SyMRI)是一种快速、标准化且强大的新型定量技术,有潜力规避前列腺多参数磁共振成像(mpMRI)解释的主观性以及现有MRI定量技术的局限性。我们的研究旨在评估SyMRI在前列腺癌(PCA)诊断和侵袭性评估中的潜在效用。
我们回顾性分析了309例接受mpMRI和SyMRI检查的疑似PCA患者,并通过活检或PCA根治性前列腺切除术(RP)获得病理结果。病理类型分为PCA、良性前列腺增生(BPH)或外周带(PZ)炎症。根据Gleason评分(GS),PCA分为中高风险组(GS≥4+3)和低风险组(GS≤3+4)。活检确诊为低风险PCA的患者根据RP结果的GS变化进一步分为升级组和未升级组。两名医生在ADC和SyMRI参数图上测量这些病变的表观扩散系数(ADC)、T1、T2和质子密度(PD)值;比较PCA与BPH或炎症之间、中高风险与低风险PCA组之间以及升级与未升级PCA组之间的这些值。通过单因素分析确定影响GS分级的危险因素。通过多因素逻辑回归分析排除混杂因素的影响,并计算独立预测因素。随后,通过数据处理分析构建用于预测PCA风险分级或GS升级的ADC+Sy(T2+PD)联合模型。分析每个参数和ADC+Sy(T2+PD)模型的诊断性能。校准曲线通过自举内部验证方法(200次自举重采样)计算。
在PZ或移行带中,PCA的T1、T2和PD值均显著低于BPH或炎症(P≤0.001)。在178例PCA患者中,中高风险PCA组的T1、T2和PD值显著高于低风险组,但ADC值较低(P<0.05),且各单一参数的诊断效能相似(P>0.05)。ADC+Sy(T2+PD)模型表现最佳,曲线下面积(AUC)为0.818 [AUC =0.818;95%置信区间(CI):0.754-0.872],高于单独的ADC(AUC =0.708;95% CI:0.635-0.774)(P=0.003)。在68例活检初诊为低风险组PCA的患者中,术后GS升级组的PCA的T1、T2和PD值显著高于未升级组,但ADC值较低(P<0.01)。此外,ADC+Sy(T2+PD)模型能更好地预测GS升级,与单独的ADC相比,AUC显著增加0.204(AUC =0.947;95% CI:0.864-0.987)(AUC =0.743;95% CI:0.622-0.841)(P<0.001)。
SyMRI得出的定量参数(T1、T2和PD)有助于区分PCA与非PCA。将SyMRI参数与ADC相结合可显著提高区分中高风险PCA与低风险PCA的能力,并能预测活检确诊的低风险PCA的升级。