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Article
Letter to the editor for the article “Urosepsis 30-day mortality, morbidity, and their risk factors: SERPENS study, a prospective, observational multi-center study”
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Article
Letter to the editor for the article“Tumor margin irregularity degree is an important preoperative predictor of adverse pathology for clinical T1/2 renal cell carcinoma and the construction of predictive model”
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Article
Letter to the editor for the article “ Causal associations of immune cells with benign prostatic hyperplasia: insights from a Mendelian randomization study”
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Article
Letter to the editor for the article “Combination of urinary biomarkers and machine-learning models provided a higher predictive accuracy to predict long-term treatment outcomes of patients with interstitial cystitis/bladder pain syndrome”
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Article
Letter to the editor for the article “A nomogram clinical prediction model for predicting urinary infection stones: development and validation in a retrospective study”
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Article
Letter to the editor for the article “Patient's self‑reported quality of life as a prognostic factor in metastatic renal cell carcinoma initially treated with TKI: nomogram proposal”
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Article
Letter to the editor for the article “Cancer-specifc mortality in non-metastatic T1a renal cell carcinoma treated with radiotherapy versus partial nephrectomy”
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Article
Letter to the editor for the article “Health-related quality of life following salvage radical prostatectomy for recurrent prostate cancer after radiotherapy or focal therapy”
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Article
Letter to the Editor: “Basal metabolic rate and the risk of urolithiasis: a two‑sample Mendelian randomization study”
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Article
Letter to the editor for the article “Evaluation of histological variants of upper tract urothelial carcinoma as prognostic factor after radical nephroureterectomy”
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Article
Letter to the editor for the article “identification of biomarkers and potential therapeutic targets of kidney stone disease using bioinformatics”