Lu Xiangfu, Pan Chenxi, Yao Luhan, Wan Jiayu, Xu Xiaolong, Wang Wei, Wang Xiangying, Liu Xiaoyun, Jin Zhonghua, Wang Hongyu, He Yi, Yang Bo
Department of Urology, 967 th hospital of PLA Joint Logistics Support Force, No.80 Shengli Road, Dalian, 116014, PR China.
State key laboratory of fine chemicals, Frontiers Science Center for Smart Materials Oriented Chemical Engineering, School of Bioengineering, Dalian University of Technology, Dalian, 116023, PR China.
Clin Proteomics. 2025 May 29;22(1):21. doi: 10.1186/s12014-025-09543-7.
Identifying the population at risk of rapid progression from hormone-sensitive prostate cancer (HSPC) to lethal castration-resistant prostate cancer (CRPC) is a challenge. This work has highlighted important prognostic insights based on proteomics data, magnetic resonance imaging (MRI) and histopathological specimens. We retrospectively developed a multi-omics-based model based on 77 patients with HSPC. In order to identify the features related to survival time under each mode, we used the Boruta algorithm for feature screening. In order to demonstrate the effectiveness of our selected features, we used six machine learning methods to validate the classification of the selected features for each mode. A total of 63 proteome signatures, 60 HE signatures, 56 T2WI signatures, and 54 ADC signatures were identified as features related to the speed of HSPC progression. Ultimately, 30 multi-omics-based features were determined by the least absolute shrinkage and selection operator (LASSO) method and multivariate cox regression. In order to stratify patients with significant disparities in progress, a nomogram model was developed, of which the C-index was 0.906. Accordingly, the developed model could help identify patients who are at a high risk of rapid CRPC progression, and aid clinicians in guiding personalized clinical management and decision-making.
识别从激素敏感性前列腺癌(HSPC)快速进展为致命性去势抵抗性前列腺癌(CRPC)的高危人群是一项挑战。这项工作基于蛋白质组学数据、磁共振成像(MRI)和组织病理学标本突出了重要的预后见解。我们回顾性地基于77例HSPC患者开发了一种基于多组学的模型。为了识别每种模式下与生存时间相关的特征,我们使用Boruta算法进行特征筛选。为了证明我们所选特征的有效性,我们使用六种机器学习方法来验证每种模式下所选特征的分类。总共63个蛋白质组特征、60个苏木精-伊红(HE)特征、56个T2加权成像(T2WI)特征和54个表观扩散系数(ADC)特征被确定为与HSPC进展速度相关的特征。最终,通过最小绝对收缩和选择算子(LASSO)方法和多变量cox回归确定了30个基于多组学的特征。为了对进展存在显著差异的患者进行分层,开发了一种列线图模型,其C指数为0.906。因此,所开发的模型有助于识别CRPC快速进展高危患者,并协助临床医生指导个性化临床管理和决策。