about
Development and prospective multicenter evaluation of the long noncoding RNA MALAT-1 as a diagnostic urinary biomarker for prostate cancer.Safety and efficacy of retrograde intrarenal surgery for renal stones in patients with a solitary kidney: a single-center experience.Prostate cancer antigen 3 moderately improves diagnostic accuracy in Chinese patients undergoing first prostate biopsy.The development of Wilms tumor: from WT1 and microRNA to animal models.A feed-forward regulatory loop between androgen receptor and PlncRNA-1 promotes prostate cancer progression.Indirect comparison between abiraterone acetate and enzalutamide for the treatment of metastatic castration-resistant prostate cancer: a systematic review.A novel urinary long non-coding RNA transcript improves diagnostic accuracy in patients undergoing prostate biopsy.Clinical utility of a novel urine-based gene fusion TTTY15-USP9Y in predicting prostate biopsy outcome.Whole-genome and Transcriptome Sequencing of Prostate Cancer Identify New Genetic Alterations Driving Disease Progression.Single-Stage Bilateral Versus Unilateral Retrograde Intrarenal Surgery for Management of Renal Stones: A Matched-Pair Analysis.How can plasma RNA be used to diagnose prostate cancer?Renal function changes after percutaneous nephrolithotomy in patients with renal calculi with a solitary kidney compared to bilateral kidneysThe Long Noncoding RNA TTTY15, Which Is Located on the Y Chromosome, Promotes Prostate Cancer Progression by Sponging let-7Direct Lateral Access to Renal Artery During Transperitoneal Laparoscopic Partial Nephrectomy: Surgical Technique and Comparative OutcomesThe previously uncharacterized lncRNA APP promotes prostate cancer progression by acting as a competing endogenous RNARecognition of Invasive Prostate Cancer Using a GHRL Polypeptide Probe Targeting GHSR in a Mouse Model in Vivo
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P50
description
investigador
@es
researcher
@en
name
Xiao-Lei Shi
@en
type
label
Xiao-Lei Shi
@en
prefLabel
Xiao-Lei Shi
@en
P31
P496
0000-0001-7078-8057