机器学习模型预测良性前列腺增生的内镜下前列腺摘除术后尿失禁:一项EAU-Endourology研究。

IF 5.8 2区 医学 Q1 ONCOLOGY
Khi Yung Fong, Vineet Gauhar, Thomas R W Herrmann, Carlotta Nedbal, Dmitry Enikeev, Jeremy Yuen-Chun Teoh, Sarvajit Biligere, Steffi Kar Kei Yuen, Daniele Castellani, Bhaskar Kumar Somani, Patrick Juliebø-Jones, Valerie Huei Li Gan, Edwin Jonathan Aslim, Ee Jean Lim
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引用次数: 0

摘要

背景:到目前为止,机器学习(ML)和人工智能(AI)已经在医疗保健环境中展示了强大的功能。我们的目的是建立一个人工智能模型来预测良性前列腺增生(BPH)摘除手术后尿失禁。方法:数据来自两个BPH注册中心,分为训练数据集和验证数据集。使用以下特征作为尿失禁的预测因素:年龄、前列腺体积、术前IPSS、生活质量评分、Qmax和尿后残留;术前留置导尿管,早期根尖释放(EAR),去核类型(2瓣,3瓣或整体)和激光能量类型。使用训练数据集构建了六种机器学习模型,并将其应用于验证数据集以评估其准确性。结果:两个数据库共分析了3828例患者。中位年龄为68岁,中位前列腺体积为85.5 cc,术前留置导尿管5.4%。最常见的去核类型为2瓣型,最常见的能量类型为铥光纤激光器,EAR的发生率为34.0%。在测试的6种ML模型中,手动微调的极端梯度增强效果最好,准确率为86.2%,灵敏度为96.8%,特异性为23.7%,PPV为88.2%,NPV为55.9%。结论:我们在此提出一种预测前列腺增生症术后尿失禁的ML模型。它的主要优势是高灵敏度和PPV,这意味着如果使用该模型预测患者失禁,这可能反映最终的结果。这使得临床医生更加关注随访,以方便地发现和处理术后尿失禁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning models to predict postoperative incontinence after endoscopic enucleation of the prostate for benign prostatic hyperplasia: An EAU-Endourology study.

Background: Machine learning (ML) and artificial intelligence (AI) have demonstrated powerful functionality in the healthcare setting thus far. We aimed to construct an AI model to predict postoperative incontinence after enucleation surgery for benign prostatic hyperplasia (BPH).

Methods: Data were taken from two BPH registries and split into training and validation datasets. The following characteristics were used as predictors of incontinence: age, prostate volume, preoperative IPSS, QoL score, Qmax and post-void residual; presence of preoperative indwelling catheter, early apical release (EAR), enucleation type (2-lobe, 3-lobe, or en-bloc), and laser energy type. Six types of ML models were constructed using the training dataset and applied to the validation dataset to assess their accuracy.

Results: 3828 patients from both databases were analyzed. Median age was 68, median prostate volume was 85.5 cc. 5.4% had a preoperative indwelling catheter. The commonest enucleation type was 2-lobe, the commonest energy type was Thulium fiber laser, and EAR was performed in 34.0%. Of the six ML models tested, extreme gradient boosting with manual fine tuning was the best-performing with an accuracy of 86.2%, sensitivity of 96.8%, specificity of 23.7%, PPV of 88.2%, and NPV of 55.9%.

Conclusions: We hereby present an ML model for incontinence prediction post-surgery for BPH. Its main strengths are high sensitivity and PPV, meaning that if a patient is predicted to be incontinent using this model, this is likely to reflect the eventual outcome. This allows clinicians to pay closer attention on follow-up to detect and manage postoperative incontinence expediently.

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来源期刊
Prostate Cancer and Prostatic Diseases
Prostate Cancer and Prostatic Diseases 医学-泌尿学与肾脏学
CiteScore
10.00
自引率
6.20%
发文量
142
审稿时长
6-12 weeks
期刊介绍: Prostate Cancer and Prostatic Diseases covers all aspects of prostatic diseases, in particular prostate cancer, the subject of intensive basic and clinical research world-wide. The journal also reports on exciting new developments being made in diagnosis, surgery, radiotherapy, drug discovery and medical management. Prostate Cancer and Prostatic Diseases is of interest to surgeons, oncologists and clinicians treating patients and to those involved in research into diseases of the prostate. The journal covers the three main areas - prostate cancer, male LUTS and prostatitis. Prostate Cancer and Prostatic Diseases publishes original research articles, reviews, topical comment and critical appraisals of scientific meetings and the latest books. The journal also contains a calendar of forthcoming scientific meetings. The Editors and a distinguished Editorial Board ensure that submitted articles receive fast and efficient attention and are refereed to the highest possible scientific standard. A fast track system is available for topical articles of particular significance.
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