Gleason score

格里森分数
  • 文章类型: Journal Article
    目的:评价18F-PSMA-1007PET/CT和盆腔MRI对原发性前列腺癌的诊断效能差异。以及两种方法与组织病理学参数和血清PSA水平的相关性。
    方法:回顾性收集2018年至2023年在我科接受18F-PSMA-1007PET/CT显像的41例疑似前列腺癌患者。所有患者均行18F-PSMA-1007PET/CT和MRI扫描。敏感性,将MRI和18F-PSMA-1007PET/CT结果与活检结果进行比较,计算MRI和18F-PSMA-1007PET/CT在前列腺癌诊断中的PPV和诊断准确性。采用Spearman检验计算18F-PSMA-1007PET/CT,MRI参数,组织病理学指标,和血清PSA水平。
    结果:与组织病理学结果相比,灵敏度,18F-PSMA-1007PET/CT诊断前列腺癌的PPV和诊断准确率分别为95.1%,100.0%和95.1%,分别。敏感性,MRI诊断前列腺癌的诊断准确率为82.9%,100.0%和82.9%,分别。格里森(Gs)评分之间存在轻度至中度正相关,Ki-67指数,血清PSA程度和18F-PSMA-1007PET/CT参数(p<0.05)。AMACR(P504S)的表达与18F-PSMA-1007PET/CT参数呈中度负相关(p<0.05)。血清PSA水平和Gs评分与MRI参数呈中度正相关(p<0.05)。组织病理学参数与MRI参数无相关性(p>0.05)。
    结论:与MRI相比,18F-PSMA-1007PET/CT对前列腺恶性肿瘤的检出具有较高的敏感度和诊断准确性。此外,Ki-67指数和AMACR(P504S)表达仅与18F-PSMA-1007PET/CT参数相关.Gs评分和血清PSA水平与18F-PSMA-1007PET/CT和MRI参数相关。18F-PSMA-1007PET/CT检查可为临床诊断提供一定的参考价值,评估,和治疗恶性前列腺肿瘤。
    OBJECTIVE: To evaluate the difference in the diagnostic efficacy of 18F-PSMA-1007 PET/CT and pelvic MRI in primary prostate cancer, as well as the correlation between the two methods and histopathological parameters and serum PSA levels.
    METHODS: A total of 41 patients with suspected prostate cancer who underwent 18F-PSMA-1007 PET/CT imaging in our department from 2018 to 2023 were retrospectively collected. All patients underwent 18F-PSMA-1007 PET/CT and MRI scans. The sensitivity, PPV and diagnostic accuracy of MRI and 18F-PSMA-1007 PET/CT in the diagnosis of prostate cancer were calculated after comparing the results of MRI and 18F-PSMA-1007 PET/CT with biopsy. The Spearman test was used to calculate the correlation between 18F-PSMA-1007 PET/CT, MRI parameters, histopathological indicators, and serum PSA levels.
    RESULTS: Compared with histopathological results, the sensitivity, PPV and diagnostic accuracy of 18F-PSMA-1007 PET/CT in the diagnosis of prostate cancer were 95.1%, 100.0% and 95.1%, respectively. The sensitivity, PPV and diagnostic accuracy of MRI in the diagnosis of prostate cancer were 82.9%, 100.0% and 82.9%, respectively. There was a mild to moderately positive correlation between Gleason (Gs) score, Ki-67 index, serum PSA level and 18F-PSMA-1007 PET/CT parameters (p < 0.05). There was a moderately negative correlation between the expression of AMACR (P504S) and 18F-PSMA-1007 PET/CT parameters (p < 0.05). The serum PSA level and the Gs score were moderately positively correlated with the MRI parameters (p < 0.05). There was no correlation between histopathological parameters and MRI parameters (p > 0.05).
    CONCLUSIONS: Compared with MRI, 18F-PSMA-1007 PET/CT has higher sensitivity and diagnostic accuracy in the detection of malignant prostate tumors. In addition, the Ki-67 index and AMACR (P504S) expression were only correlated with 18F-PSMA-1007 PET/CT parameters. Gs score and serum PSA level were correlated with 18F-PSMA-1007 PET/CT and MRI parameters. 18F-PSMA-1007 PET/CT examination can provide certain reference values for the clinical diagnosis, evaluation, and treatment of malignant prostate tumors.
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  • 文章类型: Journal Article
    背景:这项工作旨在研究异常脂质代谢在前列腺癌(PCa)发展中的潜在作用。
    方法:采用回顾性研究设计。回顾性分析2020年1月至2023年6月在我院行直肠前列腺穿刺活检的520例患者的临床资料。将患者分为前PCa组(112例)和良性前列腺增生(BPH)组(408例)。对两组患者进行了单变量和多变量逻辑回归分析,并根据Gleason评分和TNM分期进行进一步比较。
    结果:低密度脂蛋白胆固醇(LDL-C)水平可能是PCa的独立危险因素,并且与PCa的风险显著相关(比值比(OR)=1.363,p=0.030)。根据Gleason评分将PCa患者进一步分为低风险组和高风险组。单因素分析(p=0.047)和逻辑回归分析(OR=2.249,p=0.036)显示LDL-C是影响Gleason评分的重要因素。根据TNM分期将PCa患者分为四组。单因素方差分析(ANOVA)分析(p=0.015)和有序logistic回归分析(OR=2.414,p=0.007)表明LDL-C是影响TNM分期的重要因素。
    结论:这项研究揭示了LDL-C在PCa发展中的重要作用,强调其作为独立风险因素的影响。因此,LDL-C可以促进PCa细胞的增殖和侵袭。
    BACKGROUND: This work aimed to investigate the potential role of abnormal lipid metabolism in the development of prostate cancer (PCa).
    METHODS: A retrospective study design was used. The clinical data of 520 patients who underwent rectal prostate biopsy in our hospital from January 2020 to June 2023 were analysed. The patients were enrolled and divided into the anterior PCa group including 112 patients and benign prostatic hyperplasia (BPH) group including 408 patients. Univariate and multivariate logistic regression analyses were performed for the two patient groups, and further comparisons were made according to the Gleason score and TNM staging.
    RESULTS: Low-density lipoprotein cholesterol (LDL-C) level may be an independent risk factor for PCa, and it was significantly associated with the risk of PCa (odds ratio (OR) = 1.363, p = 0.030). Patients with PCa were further divided into the low risk group and the high risk group according to the Gleason score. Univariate analysis (p = 0.047) and logistic regression analysis (OR = 2.249, p = 0.036) revealed that LDL-C was a significant factor influencing the Gleason score. Patients with PCa were categorised into four groups based on TNM staging. One-way analysis of variance (ANOVA) analysis (p = 0.015) and ordinal logistic regression analysis (OR = 2.414, p = 0.007) demonstrated that LDL-C was a significant factor influencing TNM staging.
    CONCLUSIONS: This study revealed the important role of LDL-C in the development of PCa, highlighting its influence as an independent risk factor. Thus, LDL-C may promote the proliferation and invasion of PCa cells.
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  • 文章类型: Journal Article
    目的:Gleason评分(GS)和阳性针头是前列腺癌(PCa)的关键侵袭性指标。本研究旨在探讨磁共振成像(MRI)影像组学模型在预测PCa系统活检的GS和阳性针中的有用性。
    方法:回顾性收集来自2个中心的218例经病理证实的PCa患者。选择小视场高分辨率T2加权成像和对比后延迟序列来提取影像组学特征。然后,方差分析和递归特征消除被用来去除冗余特征。基于MRI和各种分类器构建了预测GS和阳性针头的影像组学模型,包括支持向量机,线性判别分析,逻辑回归(LR),和LR使用最小绝对收缩和选择运算符。用受试者工作特性的曲线下面积(AUC)评估模型。
    结果:选择11个特征作为GS预测的主要特征子集,而这5个特征被选择用于阳性针头预测。选择LR作为分类器来构建影像组学模型。对于GS预测,在培训中,影像组学模型的AUC分别为0.811、0.814和0.717,内部验证,和外部验证集,分别。对于阳性针头预测,训练中的AUC分别为0.806、0.811和0.791,内部验证,和外部验证集,分别。
    结论:MRI影像组学模型适用于预测PCa系统活检的GS和阳性针头。该模型可用于使用非侵入性识别侵袭性PCa,可重复,和准确的诊断方法。
    OBJECTIVE: The Gleason score (GS) and positive needles are crucial aggressive indicators of prostate cancer (PCa). This study aimed to investigate the usefulness of magnetic resonance imaging (MRI) radiomics models in predicting GS and positive needles of systematic biopsy in PCa.
    METHODS: A total of 218 patients with pathologically proven PCa were retrospectively recruited from 2 centers. Small-field-of-view high-resolution T2-weighted imaging and post-contrast delayed sequences were selected to extract radiomics features. Then, analysis of variance and recursive feature elimination were applied to remove redundant features. Radiomics models for predicting GS and positive needles were constructed based on MRI and various classifiers, including support vector machine, linear discriminant analysis, logistic regression (LR), and LR using the least absolute shrinkage and selection operator. The models were evaluated with the area under the curve (AUC) of the receiver-operating characteristic.
    RESULTS: The 11 features were chosen as the primary feature subset for the GS prediction, whereas the 5 features were chosen for positive needle prediction. LR was chosen as classifier to construct the radiomics models. For GS prediction, the AUC of the radiomics models was 0.811, 0.814, and 0.717 in the training, internal validation, and external validation sets, respectively. For positive needle prediction, the AUC was 0.806, 0.811, and 0.791 in the training, internal validation, and external validation sets, respectively.
    CONCLUSIONS: MRI radiomics models are suitable for predicting GS and positive needles of systematic biopsy in PCa. The models can be used to identify aggressive PCa using a noninvasive, repeatable, and accurate diagnostic method.
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  • 文章类型: Journal Article
    多标准优化(MCO)功能已在商业放射治疗(RT)治疗计划系统上可用,以提高计划质量;但是,没有研究比较Eclipse和RayStationMCO在前列腺RT计划中的功能。这项研究的目的是比较前列腺RTMCO计划质量在帕累托最优和最终可交付计划之间的差异,以及最终可交付计划的剂量学影响。总的来说,前列腺癌患者的25个计算机断层扫描数据集用于基于Eclipse(16.1版)和RayStation(12A版)的基于MCO的计划,其剂量为计划目标体积的98%,选择76Gy处方(PTV76D98%)和50%直肠(直肠D50%)作为权衡标准。根据PTV76D98%和直肠D50%的百分比差异确定帕累托最佳和最终可交付计划的差异。他们的最终可交付计划在PTV76和包括直肠在内的其他结构接受的剂量方面进行比较。和PTV76均匀性指数(HI)和合格性指数(CI),使用t检验。两个系统都显示帕累托最优计划和最终可交付计划之间存在差异(Eclipse:-0.89%(PTV76D98%)和-2.49%(直肠D50%);RayStation:3.56%(PTV76D98%)和-1.96%(直肠D50%))。PTV76D98%的平均值在统计学上有显著不同,HI和CI,以及直肠接受的平均剂量(日食:76.07Gy,0.06,1.05和39.36Gy;RayStation:70.43Gy,注意到0.11、0.87和51.65Gy),分别(p<0.001)。基于EclipseMCO的前列腺RT计划质量优于RayStation。
    Multi-criteria optimization (MCO) function has been available on commercial radiotherapy (RT) treatment planning systems to improve plan quality; however, no study has compared Eclipse and RayStation MCO functions for prostate RT planning. The purpose of this study was to compare prostate RT MCO plan qualities in terms of discrepancies between Pareto optimal and final deliverable plans, and dosimetric impact of final deliverable plans. In total, 25 computed tomography datasets of prostate cancer patients were used for Eclipse (version 16.1) and RayStation (version 12A) MCO-based plannings with doses received by 98% of planning target volume having 76 Gy prescription (PTV76D98%) and 50% of rectum (rectum D50%) selected as trade-off criteria. Pareto optimal and final deliverable plan discrepancies were determined based on PTV76D98% and rectum D50% percentage differences. Their final deliverable plans were compared in terms of doses received by PTV76 and other structures including rectum, and PTV76 homogeneity index (HI) and conformity index (CI), using a t-test. Both systems showed discrepancies between Pareto optimal and final deliverable plans (Eclipse: -0.89% (PTV76D98%) and -2.49% (Rectum D50%); RayStation: 3.56% (PTV76D98%) and -1.96% (Rectum D50%)). Statistically significantly different average values of PTV76D98%,HI and CI, and mean dose received by rectum (Eclipse: 76.07 Gy, 0.06, 1.05 and 39.36 Gy; RayStation: 70.43 Gy, 0.11, 0.87 and 51.65 Gy) are noted, respectively (p < 0.001). Eclipse MCO-based prostate RT plan quality appears better than that of RayStation.
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  • 文章类型: Journal Article
    本研究的目的是探讨血清高敏C反应蛋白/白蛋白比值在原发性前列腺活检中的临床意义。
    对2010年至2018年在我们的情况下进行首次经直肠或会阴前列腺活检的1679例患者的临床资料进行了回顾性分析。病理诊断为前列腺癌(PCa)和良性前列腺增生(BPH)的819例和860例,分别。比较了PCa和BPH患者之间的HAR差异以及HAR升高和正常组之间的前列腺活检阳性率差异。前列腺活检结果采用logistic回归分析,并建立了预测前列腺癌的模型。受试者特征曲线(ROC)用于确定模型的预测有效性。使用净重新分类改进(NRI)和综合辨别改进(IDI)评估了整合到HAR中的临床模型增加分类功效的潜力。根据格里森评分(GS)分类系统,前列腺癌患者被分成低,中间,高GS组。然后比较各组之间的HAR差异。使用卡方检验比较正常人群中高GSPCa和转移性PCa的患病率以及前列腺癌患者中高HAR的患病率。
    PCa患者的中位数HAR(上四分位数到下四分位数)为0.0379(10-3),BPH患者的中位HAR(0.0137(10-3)),差异有统计学意义(p<0.05)。HAR升高的患者和正常组,分别,前列腺活检阳性率为52%(435/839)和46%(384/840),差异有统计学意义(p<0.05)。Logistic回归分析显示HAR(OR=3.391,95CI2.082~4.977,P<0.05),PSA密度(PSAD)(OR=7.248,95CI5.005~10.495,P<0.05)和年龄(OR=1.076,95CI1.056~1.096,P<0.05)是前列腺穿刺活检结果的独立预测因子。建立了两种预测模型:基于年龄和PSAD的临床模型,以及将HAR添加到临床模型中的预测模型。两个模型的ROC曲线下面积(AUC)为0.814(95CI0.78-0.83)和0.815(95CI0.79-0.84),分别。与AUC为0.746(95CI0.718-0.774)的单一血液总PSA(tPSA)相比,他们都是优越的。然而,两种模型间差异无统计学意义(p<0.05)。我们评估了集成到HAR的能力中的预测模型,以使用NRI和IDI提高分类效率,NRI>0,IDI>0,差异有统计学意义(P>0.05)。对于由于活检而患有前列腺癌的个体,不同GS组之间的HAR存在统计学上的显著差异(p<0.05)。高GS和转移性患者的发生率在HAR升高组中有统计学意义(p<0.05)(90.1%和39.3%,分别)高于HAR正常组(84.4%和12.0%)。
    阳性的前列腺活检结果受到HAR的影响,随着PCa发现率增加的独立因素。在最近通过前列腺活检诊断为前列腺癌的患者中,HAR升高的患者发生高GS以及转移性PCa的风险更大。
    UNASSIGNED: The purpose of this study was to investigate the clinical significance of serum high sensitive C-reactive protein/albumin ratio in primary prostate biopsy.
    UNASSIGNED: Retrospective analysis was done on the clinical data of 1679 patients who had their first transrectal or perineal prostate biopsy at our situation from 2010 to 2018. Prostate cancer (PCa) and benign prostatic hyperplasia (BPH) were the pathologic diagnoses in 819 and 860 cases, respectively. A comparison was made between the HAR differences between PCa and BPH patients as well as the positive prostate biopsy rate differences between groups with increased and normal HAR. The results of the prostate biopsy were examined using logistic regression, and a model for predicting prostate cancer was created. The receiver characteristic curve (ROC) was used to determine the model\'s prediction effectiveness. The clinical models integrated into HAR were evaluated for their potential to increase classification efficacy using net reclassification improvement (NRI) and integrated discrimination improvement (IDI). According to the Gleason score (GS) categorization system, prostate cancer patients were separated into low, middle, and high GS groups. The differences in HAR between the various groups were then compared. The prevalence of high GSPCa and metastatic PCa in normal populations and the prevalence of higher HAR in prostate cancer patients were compared using the chi-square test.
    UNASSIGNED: Patients with PCa had a median HAR (upper quartile to lower quartile) of 0.0379 (10-3), patients with BPH had a median HAR (0.0137 (10-3)), and the difference was statistically significant (p<0.05). Patients with increased HAR and the normal group, respectively, had positive prostate biopsy rates of 52% (435/839)and 46% (384/840), and the difference was statistically significant (p<0.05). Logistic regression analysis showed that HAR (OR=3.391, 95%CI 2.082 ~ 4.977, P < 0.05), PSA density (PSAD) (OR=7.248, 95%CI 5.005 ~ 10.495, P < 0.05) and age (OR=1.076, 95%CI 1.056 ~ 1.096, P < 0.05) was an independent predictor of prostate biopsy results. Two prediction models are built: a clinical model based on age and PSAD, and a prediction model that adds HAR to the clinical model. The two models\' ROC had area under the curves (AUC) of 0.814 (95%CI 0.78-0.83) and 0.815 (95%CI 0.79-0.84), respectively. When compared to a single blood total PSA (tPSA) with an AUC of 0.746 (95%CI 0.718-0.774), they were all superior. Nevertheless, there was no statistically significant difference (p<0.05) between the two models. We assessed the prediction model integrated into HAR\'s capacity to increase classification efficiency using NRI and IDI, and we discovered that NRI>0, IDI>0, and the difference was statistically significant (P>0.05).There was a statistically significant difference in HAR between various GS groups for individuals who had prostate cancer as a consequence of biopsy (p<0.05). The incidence of high GS and metastatic patients was statistically significantly greater (p<0.05) in the HAR elevated group (90.1%and 39.3%, respectively) than in the HAR normal group (84.4% and 12.0%).
    UNASSIGNED: Prostate biopsy results that were positive were impacted by HAR, an independent factor that increased with the rate of PCa discovery. Patients with elevated HAR had a greater risk of high GS as well as metastatic PCa among those with recently diagnosed prostate cancer through prostate biopsy.
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  • 文章类型: Journal Article
    目的:本研究的目的是开发一种基于超声图像预测前列腺癌患者Gleason评分的模型。
    方法:本横断面研究包括来自癌症影像档案数据库的838名前列腺癌患者的经直肠超声图像。将数据随机分为训练集和测试集(比率7:3)。从超声图像中总共提取了103个放射学特征。套索回归用于选择放射学特征。随机森林和广泛学习系统(BLS)方法被用来开发模型。计算曲线下面积(AUC)以评估模型性能。
    结果:筛选后,选择了10个放射学特征。检验集中影像组学特征变量随机森林模型的AUC和准确率分别为0.727(95%CI,0.694-0.760)和0.646(95%CI,0.620-0.673),分别。当PSA和放射学特征变量包括在随机森林模型中时,模型的AUC和准确性分别为0.770(95%CI,0.740-0.800)和0.713(95%CI,0.688-0.738),分别。虽然BLS方法被用来构建模型,模型的AUC和准确性分别为0.726(95%CI,0.693-0.759)和0.698(95%CI,0.673-0.723),分别。在对不同格里森等级的预测中,发现最高AUC-0.847(95%CI,0.749-0.945)可预测Gleason5级(Gleason评分≥9).
    结论:基于经直肠超声图像特征的模型显示出预测前列腺癌患者Gleason评分的良好能力。
    结论:本研究使用基于超声的影像组学来预测前列腺癌患者的Gleason评分。
    OBJECTIVE: The aim of this study was to develop a model for predicting the Gleason score of patients with prostate cancer based on ultrasound images.
    METHODS: Transrectal ultrasound images of 838 prostate cancer patients from The Cancer Imaging Archive database were included in this cross-section study. Data were randomly divided into the training set and testing set (ratio 7:3). A total of 103 radiomic features were extracted from the ultrasound image. Lasso regression was used to select radiomic features. Random forest and broad learning system (BLS) methods were utilized to develop the model. The area under the curve (AUC) was calculated to evaluate the model performance.
    RESULTS: After the screening, 10 radiomic features were selected. The AUC and accuracy of the radiomic feature variables random forest model in the testing set were 0.727 (95% CI, 0.694-0.760) and 0.646 (95% CI, 0.620-0.673), respectively. When PSA and radiomic feature variables were included in the random forest model, the AUC and accuracy of the model were 0.770 (95% CI, 0.740-0.800) and 0.713 (95% CI, 0.688-0.738), respectively. While the BLS method was utilized to construct the model, the AUC and accuracy of the model were 0.726 (95% CI, 0.693-0.759) and 0.698 (95% CI, 0.673-0.723), respectively. In predictions for different Gleason grades, the highest AUC of 0.847 (95% CI, 0.749-0.945) was found to predict Gleason grade 5 (Gleason score ≥9).
    CONCLUSIONS: A model based on transrectal ultrasound image features showed a good ability to predict Gleason scores in prostate cancer patients.
    CONCLUSIONS: This study used ultrasound-based radiomics to predict the Gleason score of patients with prostate cancer.
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  • 文章类型: Journal Article
    背景:前列腺癌(PCa)是全球男性最常见的癌症之一,及时诊断和治疗变得越来越重要。MRI越来越多地用于诊断癌症,并区分非临床意义和临床意义的PCa。导致更精确的诊断和治疗。这项研究的目的是提出一种基于影像组学的方法,用于使用多参数MRI(mp-MRI)上的肿瘤异质性来确定PCa的Gleason评分(GS)。
    方法:本研究纳入了26例经活检证实的PCa患者。定量T2值,使用多回波T2图像计算表观扩散系数(ADC)和信号增强率(α),弥散加权成像(DWI)和动态对比增强MRI(DCE-MRI),用于带注释的兴趣区域(ROI)。纹理特征分析后,进行ROI范围扩展和特征过滤。然后将获得的数据放入支持向量机(SVM),K-最近邻(KNN)和其他用于二元分类的分类器。
    结果:区分有临床意义(格里森3+4及以上)和无意义癌症(格里森3+3)的最高分类准确率为73.96%,区分格里森3+4和格里森4+3及以上的最高分类准确率为83.72%。这是使用放射科医生绘制的初始ROI实现的。当使用扩展ROI时,使用SVM将准确性提高到80.67%,使用贝叶斯分类将临床显着和非显着癌症以及Gleason34与Gleason43及以上区分开来为88.42%。分别。
    结论:我们的结果表明了这项研究对使用ROI区域扩展确定前列腺癌GS的研究意义和价值。
    Prostate cancer (PCa) is one of the most common cancers in men worldwide, and its timely diagnosis and treatment are becoming increasingly important. MRI is in increasing use to diagnose cancer and to distinguish between non-clinically significant and clinically significant PCa, leading to more precise diagnosis and treatment. The purpose of this study is to present a radiomics-based method for determining the Gleason score (GS) for PCa using tumour heterogeneity on multiparametric MRI (mp-MRI).
    Twenty-six patients with biopsy-proven PCa were included in this study. The quantitative T2 values, apparent diffusion coefficient (ADC) and signal enhancement rates (α) were calculated using multi-echo T2 images, diffusion-weighted imaging (DWI) and dynamic contrast-enhanced MRI (DCE-MRI), for the annotated region of interests (ROI). After texture feature analysis, ROI range expansion and feature filtering was performed. Then obtained data were put into support vector machine (SVM), K-Nearest Neighbor (KNN) and other classifiers for binary classification.
    The highest classification accuracy was 73.96% for distinguishing between clinically significant (Gleason 3 + 4 and above) and non-significant cancers (Gleason 3 + 3) and 83.72% for distinguishing between Gleason 3 + 4 from Gleason 4 + 3 and above, which was achieved using initial ROIs drawn by the radiologists. The accuracy improved when using expanded ROIs to 80.67% using SVM and 88.42% using Bayesian classification for distinguishing between clinically significant and non-significant cancers and Gleason 3 + 4 from Gleason 4 + 3 and above, respectively.
    Our results indicate the research significance and value of this study for determining the GS for prostate cancer using the expansion of the ROI region.
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  • 文章类型: Journal Article
    目的:探讨中国认知融合靶向活检(COG-TB)中Gleason评分提升(GSU)的相关临床和病理预测因素。
    方法:对2020年1月至2023年9月在我院行COG-TB和前列腺癌根治术(RP)的496例患者的临床病理资料进行回顾性分析。在这项研究中,我们通过单变量和多变量逻辑回归分析筛选了有价值的预测因子,然后构建了预测模型。我们绘制列线图来可视化预测模型。此外,使用受试者工作特征(ROC)曲线评估模型的判别能力.最后,校正曲线和决策曲线分析(DCA)用于评估模型的预测能力和它可以提供的净效益。
    结果:在符合研究条件的496名患者中,279在活检和术后GS上有一致的Gleason评分(GS),191名经验丰富的GSU,和26经历降级。通过多变量逻辑回归分析,确定了GSU的五个危险因素的显着关联,其中包括年龄,前列腺体积,BMI,活检组织中的肿瘤百分比,和肿瘤的位置。通过ROC分析,我们的模型具有良好的判别能力。校准曲线和DCA显示我们的模型被很好地校准并且为患者治疗决策提供了某些益处。
    结论:年龄,前列腺体积,BMI,活检组织中的肿瘤百分比,和肿瘤位置是预测COG-TB中GSU的风险指标。我们的预测模型更适合中国患者,可以帮助准确评估活检GS并制定有效的治疗计划。
    OBJECTIVE: To explore and identify the relevant clinical and pathological predictors leading to biopsy Gleason score upgrading (GSU) in cognitive fusion targeted biopsy (COG-TB) in Chinese patients.
    METHODS: Clinical and pathological information of 496 patients who underwent COG-TB and radical prostatectomy (RP) in our hospital from January 2020 to September 2023 were retrospectively compiled and analyzed. In this study, we screened valuable predictors through univariable and multivariable logistic regression analyses and then constructed predictive models. We draw nomograms to visualize the predictive models. In addition, the discriminatory power of the model was assessed using receiver operating characteristic (ROC) curves. Finally, calibration curves and decision curve analysis (DCA) were used to evaluate the predictive power of the model and the net benefits it could deliver.
    RESULTS: Out of the 496 patients eligible for the study, 279 had a consistent Gleason score (GS) on biopsy and postoperative GS, 191 experienced GSU, and 26 experienced downgrading. Significant associations for GSU were identified for five risk factors through multivariable logistic regression analyses, which included age, prostate volume, BMI, tumor percentage in biopsy tissue, and tumor location. Our model had excellent discriminatory power through ROC analysis. Calibration curves and DCA showed that our model was well calibrated and provided certain benefits for patient treatment decisions.
    CONCLUSIONS: Age, prostate volume, BMI, tumor percentage in biopsy tissue, and tumor location are risk indicators for predicting GSU in COG-TB. Our prediction model is more suitable for Chinese patients and can assist in accurately evaluating biopsy GS and developing effective treatment plans.
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  • 文章类型: Journal Article
    目的:本研究的目的是评估通过认知融合靶向活检(COG-TB)获得的Gleason评分(GS)与经直肠超声引导的系统活检(TRUS-SB)相比,并确定可以预测中国患者队列中Gleason评分升级(GSU)的因素。
    方法:最终纳入245例患者。在2020年至2022年之间,132名患者接受了TRUS-SB,113例患者接受COG-TB治疗。进行卡方检验来分析降级的变化,和谐,以及TRUS-SB和COG-TB之间的升级。进行多变量分析以寻求预测Gleason评分提升的因素。最后,建立了一个利用多变量逻辑回归的模型来预测GSU的可能性。
    结果:TRUS-SB和COG-TB的一致性分别为42.4%和65.5%,分别。TRUS-SB和COG-TB在降级方面表现出显著差异,和谐,和升级。年龄,前列腺体积,体重指数(BMI),活检方式是重要的预测因素。
    结论:COG-TB可显著增加与最终组织病理学的一致性。年龄,前列腺体积,BMI,活检方式是GSU的预测因素。
    OBJECTIVE: The aim of this study is to assess the precision of the Gleason score (GS) obtained through cognitive fusion-targeted biopsy (COG-TB) in comparison to transrectal ultrasonography-guided systematic biopsy (TRUS-SB), and to identify factors that can predict Gleason score upgrading (GSU) in a cohort of Chinese patients.
    METHODS: A final enrollment of 245 patients was recorded. Between 2020 and 2022, 132 patients underwent TRUS-SB, and 113 patients underwent COG-TB. The Chi-square test was performed to analyze the variation in downgrading, concordance, and upgrading between TRUS-SB and COG-TB. Multivariable analyses were performed to seek factors predicting Gleason score upgrading. Finally, a model which utilizes multivariable logistic regression was developed to predict the likelihood of GSU.
    RESULTS: The concordance for TRUS-SB and COG-TB were 42.4% and 65.5%, respectively. TRUS-SB and COG-TB exhibited notable disparities in downgrading, concordance, and upgrading. Age, prostate volume, body mass index (BMI), and the biopsy modality were significant predictive factors.
    CONCLUSIONS: COG-TB can significantly increase concordance with final histopathology. Age, prostate volume, BMI, and the biopsy modality were predictive factors of GSU.
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  • 文章类型: Journal Article
    多参数磁共振成像(mpMRI)的使用已成为指导活检和制定前列腺病变治疗计划的常用技术。虽然这种技术是有效的,诸如影像组学之类的非侵入性方法在提取成像特征以开发用于临床任务的预测模型方面越来越受欢迎.目的是使侵入性过程最小化,以改善前列腺癌(PCa)的管理。本文综述了基于MRI的PCa影像组学的最新研究进展。包括影像组学流程和影响个性化诊断的潜在因素。还讨论了人工智能(AI)与医学成像的集成,符合放射基因组学和多组学的发展趋势。该调查强调需要来自多个机构的更多数据,以避免偏见并推广预测模型。基于AI的影像组学模型被认为是一种有前途的临床工具,具有良好的应用前景。
    The use of multiparametric magnetic resonance imaging (mpMRI) has become a common technique used in guiding biopsy and developing treatment plans for prostate lesions. While this technique is effective, non-invasive methods such as radiomics have gained popularity for extracting imaging features to develop predictive models for clinical tasks. The aim is to minimize invasive processes for improved management of prostate cancer (PCa). This study reviews recent research progress in MRI-based radiomics for PCa, including the radiomics pipeline and potential factors affecting personalized diagnosis. The integration of artificial intelligence (AI) with medical imaging is also discussed, in line with the development trend of radiogenomics and multi-omics. The survey highlights the need for more data from multiple institutions to avoid bias and generalize the predictive model. The AI-based radiomics model is considered a promising clinical tool with good prospects for application.
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