Chen Chung-Hsin, Huang Hsiang-Po, Chang Kai-Hsiung, Lee Ming-Shyue, Lee Cheng-Fan, Lin Chih-Yu, Lin Yuan Chi, Huang William J, Liao Chun-Hou, Yu Chih-Chin, Chung Shiu-Dong, Tsai Yao-Chou, Wu Chia-Chang, Ho Chen-Hsun, Hsiao Pei-Wen, Pu Yeong-Shiau
Department of Urology, National Taiwan University Hospital and College of Medicine, Taipei, Taiwan.
Graduate Institute of Medical Genomics and Proteomics, College of Medicine, National Taiwan University, Taipei, Taiwan.
World J Mens Health. 2025 Apr;43(2):376-386. doi: 10.5534/wjmh.230344. Epub 2024 May 22.
Biomarkers predicting clinically significant prostate cancer (sPC) before biopsy are currently lacking. This study aimed to develop a non-invasive urine test to predict sPC in at-risk men using urinary metabolomic profiles.
Urine samples from 934 at-risk subjects and 268 treatment-naïve PC patients were subjected to liquid chromatography/mass spectrophotometry (LC-MS)-based metabolomics profiling using both C18 and hydrophilic interaction liquid chromatography (HILIC) column analyses. Four models were constructed (training cohort [n=647]) and validated (validation cohort [n=344]) for different purposes. Model I differentiates PC from benign cases. Models II, III, and a Gleason score model (model GS) predict sPC that is defined as National Comprehensive Cancer Network (NCCN)-categorized favorable-intermediate risk group or higher (Model II), unfavorable-intermediate risk group or higher (Model III), and GS ≥7 PC (model GS), respectively. The metabolomic panels and predicting models were constructed using logistic regression and Akaike information criterion.
The best metabolomic panels from the HILIC column include 25, 27, 28 and 26 metabolites in Models I, II, III, and GS, respectively, with area under the curve (AUC) values ranging between 0.82 and 0.91 in the training cohort and between 0.77 and 0.86 in the validation cohort. The combination of the metabolomic panels and five baseline clinical factors that include serum prostate-specific antigen, age, family history of PC, previously negative biopsy, and abnormal digital rectal examination results significantly increased AUCs (range 0.88-0.91). At 90% sensitivity (validation cohort), 33%, 34%, 41%, and 36% of unnecessary biopsies were avoided in Models I, II, III, and GS, respectively. The above results were successfully validated using LC-MS with the C18 column.
Urinary metabolomic profiles with baseline clinical factors may accurately predict sPC in men with elevated risk before biopsy.
目前缺乏在活检前预测具有临床意义的前列腺癌(sPC)的生物标志物。本研究旨在开发一种非侵入性尿液检测方法,利用尿液代谢组学谱来预测高危男性中的sPC。
对934名高危受试者和268名未经治疗的前列腺癌患者的尿液样本进行基于液相色谱/质谱(LC-MS)的代谢组学分析,采用C18和亲水相互作用液相色谱(HILIC)柱分析。为不同目的构建了四个模型(训练队列[n = 647])并进行验证(验证队列[n = 344])。模型I区分前列腺癌与良性病例。模型II、III和一个Gleason评分模型(模型GS)分别预测被定义为美国国立综合癌症网络(NCCN)分类的低-中危组或更高(模型II)、高-中危组或更高(模型III)以及Gleason评分≥7的前列腺癌(模型GS)的sPC。使用逻辑回归和赤池信息准则构建代谢组学面板和预测模型。
HILIC柱的最佳代谢组学面板在模型I、II、III和GS中分别包含25、27、28和26种代谢物,训练队列中的曲线下面积(AUC)值在0.82至0.91之间,验证队列中的AUC值在0.77至0.86之间。代谢组学面板与五个基线临床因素(包括血清前列腺特异性抗原、年龄、前列腺癌家族史、先前活检阴性以及直肠指检结果异常)的组合显著提高了AUC值(范围为0.88 - 0.91)。在90%的灵敏度(验证队列)下,模型I、II、III和GS分别避免了33%、34%、41%和36%的不必要活检。使用C18柱的LC-MS成功验证了上述结果。
结合基线临床因素的尿液代谢组学谱可以准确预测活检前高危男性中的sPC。