Author:
Yang Kaiwei,Hu Hailong,Wu Junlong,Wang Huina,Guo Zhaoxia,Yu Wei,Yao Lin,Ding Feng,Zhou Tao,Wang Wang,Wang Yunkai,Liu Lei,Guo Jing,Zhu Shuaipeng,Zhang Xinhao,Cao Shanbo,Lou Feng,Niu Yuanjie,Ye Dingwei,He Zhisong
Abstract
AbstractCurrent methods for the early detection and minimal residual disease (MRD) monitoring of urothelial carcinoma (UC) are invasive and/or possess suboptimal sensitivity. We developed an efficient workflow named urine tumor DNA multidimensional bioinformatic predictor (utLIFE). Using UC-specific mutations and large copy number variations, the utLIFE-UC model was developed on a bladder cancer cohort (n = 150) and validated in The Cancer Genome Atlas (TCGA) bladder cancer cohort (n = 674) and an upper tract urothelial carcinoma (UTUC) cohort (n = 22). The utLIFE-UC model could discriminate 92.8% of UCs with 96.0% specificity and was robustly validated in the BLCA_TCGA and UTUC cohorts. Furthermore, compared to cytology, utLIFE-UC improved the sensitivity of bladder cancer detection (p < 0.01). In the MRD cohort, utLIFE-UC could distinguish 100% of patients with residual disease, showing superior sensitivity compared to cytology (p < 0.01) and fluorescence in situ hybridization (FISH, p < 0.05). This study shows that utLIFE-UC can be used to detect UC with high sensitivity and specificity in patients with early-stage cancer or MRD. The utLIFE-UC is a cost-effective, rapid, high-throughput, noninvasive, and promising approach that may reduce the burden of cystoscopy and blind surgery.
Funder
National Natural Science Foundation of China
Shanghai Municipal Health Bureau Project
Publisher
Springer Science and Business Media LLC
Subject
Cancer Research,Oncology,Molecular Medicine
Cited by
6 articles.
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