Abstract

Benign prostatic hyperplasia (BPH) is the main cause of lower urinary tract symptoms (LUTS) in aging males. Transurethral resection of the prostate (TURP) surgery is performed by a cystoscope passing through the urethra and scraping off the prostrate piece by piece through a cutting loop. Although TURP is a minimally invasive procedure, bleeding is still the most common complication. Therefore, the evaluation, monitoring, and prevention of interop bleeding during TURP are very important issues. The main idea of this study is to rank bleeding levels during TURP surgery from videos. Generally, to judge bleeding level by human eyes from surgery videos is a difficult task, which requires sufficient experienced urologists. In this study, machine learning-based ranking algorithms are proposed to efficiently evaluate the ranking of blood levels. Based on the visual clarity of the surgical field, the four ranking of blood levels, including score 0: excellent; score 1: acceptable; score 2: slightly bad; and 3: bad, were identified by urologists who have sufficient experience in TURP surgery. The results of extensive experiments show that the revised accuracy can achieve 90, 89, 90, and 91%, respectively. Particularly, the results reveal that the proposed methods were capable of classifying the ranking of bleeding level accurately and efficiently reducing the burden of urologists.

Highlights

  • Benign prostatic hyperplasia (BPH), affecting approximately 210 million men in the word, is the main cause of lower urinary tract symptoms (LUTS) in aging males [1]

  • The TURP surgery is performed by a cystoscope passing through the urethra and scraping off the prostrate piece by piece through a cutting loop

  • With the aim of assessing the ranking of bleeding level, the automated ranking of the bleeding level classification system for TURP surgery is proposed in this work

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Summary

Introduction

Benign prostatic hyperplasia (BPH), affecting approximately 210 million men in the word, is the main cause of lower urinary tract symptoms (LUTS) in aging males [1]. The sequelae of BPH include decreased urinary flow and progression of voiding and storage symptoms, eventually resulting in acute or chronic urinary retention (UR). The evaluation, monitoring, and prevention of interop bleeding during TURP are very important issues. There are currently some studies aimed at the evaluation of bleeding during TURP surgery [10], but these methods have to be operated in the laboratory and cannot be monitored in time. We have published a study on the use of artificial intelligence to evaluate bleeding during TURP and proved it feasible and promising [11]. We handed the TURP surgical videos to experienced urologists and artificial intelligence to evaluate the severity of interop bleeding and compare the relevance of the scoring results between the two groups

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