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整合临床和基于影像的参数预测前列腺切除术后早期尿失禁恢复:简化列线图方法。

Integrating clinical and image-based parameters for prediction of early post-prostatectomy incontinence recovery: simplified nomogram approach.

机构信息

Division of Urology, Department of Surgery, Linkou Branch, Chang Gung Memorial Hospital, No.5, Fusing St., Gueishan Dist, Taoyuan, Taiwan.

Department of Medicine, Chang Gung University, Taoyuan, Taiwan.

出版信息

BMC Cancer. 2024 Oct 31;24(1):1344. doi: 10.1186/s12885-024-13072-1.

Abstract

PURPOSE

This study aimed to develop a novel model that combines both clinical and image-based parameters to predict early recovery of urinary incontinence after robotic-assisted radical prostatectomy (RARP) more easily and precisely.

MATERIALS AND METHODS

We retrospectively enrolled data from patients who underwent RARP performed by a single surgeon. Clinical parameters were collected through medical chart review. All patients received cystography one week after RARP to evaluate the anastomosis healing condition. All cystography images were analyzed by a single radiologist who was blinded to the clinical status of the patients. Multivariate analysis was performed to select significant predictors for early post-prostatectomy incontinence (PPI) recovery, defined as being pad-free within four weeks after surgery.

RESULTS

A total of 293 patients were enrolled in this study. Among them, 26.7% experienced immediate dryness after surgery, while 47.6% achieved being pad-free within one month. The overall continence rate was over 90% six months after surgery. In univariate analysis, factors associated with early PPI recovery were BMI, T stage, NVB preservation, surgical margin status, downward bladder neck, and bladder neck angle on cystography. BMI, NVB preservation, and downward bladder neck remained significant in multivariate analysis (p-values = 0.041, 0.027, and 0.023, respectively). A nomogram model was established based on these three predictors.

CONCLUSION

This is the first model to combine preoperative clinical factors, peri-surgical factors, and postoperative image-based factors to predict PPI recovery after RARP. This model can assist clinicians in taking optimal actions for PPI and also reduce patient anxiety.

摘要

目的

本研究旨在开发一种新的模型,将临床和基于图像的参数结合起来,以便更轻松、更准确地预测机器人辅助根治性前列腺切除术(RARP)后尿失禁的早期恢复情况。

材料和方法

我们回顾性地纳入了由同一位外科医生进行 RARP 的患者数据。通过病历回顾收集临床参数。所有患者在 RARP 后一周进行膀胱造影术,以评估吻合口愈合情况。所有膀胱造影图像均由一位对患者临床状况一无所知的放射科医生进行分析。进行多变量分析以选择对早期前列腺切除术后失禁(PPI)恢复有显著预测意义的参数,定义为术后四周内无尿垫。

结果

本研究共纳入 293 例患者。其中,26.7%的患者术后立即干燥,47.6%的患者在一个月内无尿垫。术后六个月的总体控尿率超过 90%。单因素分析显示,与早期 PPI 恢复相关的因素有 BMI、T 分期、保留神经血管束、手术切缘状态、膀胱颈向下和膀胱颈角度。多因素分析显示,BMI、保留神经血管束和膀胱颈向下在统计学上仍有意义(p 值分别为 0.041、0.027 和 0.023)。根据这三个预测因素建立了一个列线图模型。

结论

这是第一个将术前临床因素、围手术期因素和术后基于图像的因素结合起来预测 RARP 后 PPI 恢复的模型。该模型可以帮助临床医生采取最佳措施治疗 PPI,并减轻患者的焦虑。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d1b8/11529020/8c24dd86e98d/12885_2024_13072_Fig1_HTML.jpg

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