Non-invasively identifying candidates of active surveillance for prostate cancer using magnetic resonance imaging radiomics.

IF 3.2 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Visual Computing for Industry Biomedicine and Art Pub Date : 2024-07-05 DOI:10.1186/s42492-024-00167-6
Yuwei Liu, Litao Zhao, Jie Bao, Jian Hou, Zhaozhao Jing, Songlu Liu, Xuanhao Li, Zibing Cao, Boyu Yang, Junkang Shen, Ji Zhang, Libiao Ji, Zhen Kang, Chunhong Hu, Liang Wang, Jiangang Liu
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Abstract

Active surveillance (AS) is the primary strategy for managing patients with low or favorable-intermediate risk prostate cancer (PCa). Identifying patients who may benefit from AS relies on unpleasant prostate biopsies, which entail the risk of bleeding and infection. In the current study, we aimed to develop a radiomics model based on prostate magnetic resonance images to identify AS candidates non-invasively. A total of 956 PCa patients with complete biopsy reports from six hospitals were included in the current multicenter retrospective study. The National Comprehensive Cancer Network (NCCN) guidelines were used as reference standards to determine the AS candidacy. To discriminate between AS and non-AS candidates, five radiomics models (i.e., eXtreme Gradient Boosting (XGBoost) AS classifier (XGB-AS), logistic regression (LR) AS classifier, random forest (RF) AS classifier, adaptive boosting (AdaBoost) AS classifier, and decision tree (DT) AS classifier) were developed and externally validated using a three-fold cross-center validation based on five classifiers: XGBoost, LR, RF, AdaBoost, and DT. Area under the receiver operating characteristic curve (AUC), accuracy (ACC), sensitivity (SEN), and specificity (SPE) were calculated to evaluate the performance of these models. XGB-AS exhibited an average of AUC of 0.803, ACC of 0.693, SEN of 0.668, and SPE of 0.841, showing a better comprehensive performance than those of the other included radiomic models. Additionally, the XGB-AS model also presented a promising performance for identifying AS candidates from the intermediate-risk cases and the ambiguous cases with diagnostic discordance between the NCCN guidelines and the Prostate Imaging-Reporting and Data System assessment. These results suggest that the XGB-AS model has the potential to help identify patients who are suitable for AS and allow non-invasive monitoring of patients on AS, thereby reducing the number of annual biopsies and the associated risks of bleeding and infection.

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利用磁共振成像放射组学,无创识别前列腺癌主动监测的候选者。
主动监测(AS)是管理低危或中危前列腺癌(PCa)患者的主要策略。要确定哪些患者可能从主动监测中获益,需要进行令人不愉快的前列腺活检,而这种活检有出血和感染的风险。在目前的研究中,我们旨在开发一种基于前列腺磁共振图像的放射组学模型,以非侵入性的方式识别AS候选者。本项多中心回顾性研究共纳入了来自六家医院的 956 名具有完整活检报告的 PCa 患者。研究以美国国立综合癌症网络(NCCN)指南为参考标准来确定AS候选者。为了区分强直性脊柱炎和非强直性脊柱炎候选者,研究人员开发了五种放射组学模型(即极梯度提升(XGBoost)强直性脊柱炎分类器(XGB-AS)、逻辑回归(LR)强直性脊柱炎分类器、随机森林(RF)强直性脊柱炎分类器、自适应提升(AdaBoost)强直性脊柱炎分类器和决策树(DT)强直性脊柱炎分类器),并根据五种分类器进行了三倍交叉中心验证:XGBoost、LR、RF、AdaBoost 和 DT。通过计算接收者操作特征曲线下面积(AUC)、准确率(ACC)、灵敏度(SEN)和特异性(SPE)来评估这些模型的性能。XGB-AS 的平均 AUC 值为 0.803,ACC 值为 0.693,SEN 值为 0.668,SPE 值为 0.841,显示出比其他放射性原子模型更好的综合性能。此外,XGB-AS 模型在从中级风险病例和 NCCN 指南与前列腺成像报告和数据系统评估诊断不一致的模糊病例中识别 AS 候选病例方面也表现出色。这些结果表明,XGB-AS 模型有可能帮助识别适合接受前列腺手术的患者,并对接受前列腺手术的患者进行无创监测,从而减少每年活检的次数以及相关的出血和感染风险。
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