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利用人工智能预测缺血性阴茎异常勃起男性的手术分流。

Using Artificial Intelligence to Predict Surgical Shunts in Men with Ischemic Priapism.

机构信息

Department of Urology, Jackson Memorial Hospital and University of Miami Miller School of Medicine, Miami, Florida.

Department of Computer Science and Engineering, University of Minnesota - Twin Cities, Minneapolis, Minnesota.

出版信息

J Urol. 2020 Nov;204(5):1033-1038. doi: 10.1097/JU.0000000000001183. Epub 2020 Jun 9.

Abstract

PURPOSE

Ischemic priapism is a urological emergency that requires prompt intervention to preserve erectile function. Characteristics that influence escalation to surgical intervention remain unclear. We identified factors and developed machine learning models to predict which men presenting with ischemic priapism will require shunting.

MATERIALS AND METHODS

We identified men with ischemic priapism admitted to the emergency department of our large county hospital between January 2010 and June 2019. We collected patient demographics, etiology, duration of priapism prior to intervention, interventions attempted and escalation to shunting. Machine learning models were trained and tested using R to predict which patients require surgical shunting.

RESULTS

A total of 334 encounters of ischemic priapism were identified. The majority resolved with intracavernosal phenylephrine injection and/or cavernous aspiration (78%). Shunting was required in 10% of men. Median duration of priapism before intervention was longer for men requiring shunting than for men who did not (48 vs 7 hours, p=0.030). Patients with sickle cell disease as the etiology were less likely to require shunting compared to all other etiologies (2.2% vs 15.2%, p=0.035).

CONCLUSIONS

Men with longer duration of priapism before treatment more often underwent shunting. However, phenylephrine injection and aspiration remained effective for priapism lasting more than 36 hours. Having sickle cell disease as the etiology of priapism was protective against requiring shunting. We developed artificial intelligence models that performed with 87.2% accuracy and created an online probability calculator to determine which patients with ischemic priapism may require shunting.

摘要

目的

缺血性阴茎异常勃起是一种需要紧急干预以保护勃起功能的泌尿科急症。影响升级为手术干预的特征尚不清楚。我们确定了一些因素,并开发了机器学习模型,以预测哪些出现缺血性阴茎异常勃起的男性需要分流。

材料和方法

我们确定了 2010 年 1 月至 2019 年 6 月期间在我们大型县医院急诊科就诊的缺血性阴茎异常勃起患者。我们收集了患者的人口统计学、病因、干预前阴茎异常勃起的持续时间、尝试的干预措施以及升级为分流术。使用 R 训练和测试机器学习模型,以预测哪些患者需要手术分流。

结果

共确定了 334 例缺血性阴茎异常勃起的就诊。大多数患者通过阴茎海绵体内注射苯肾上腺素和/或海绵体抽吸(78%)得到解决。10%的男性需要分流。需要分流的男性干预前阴茎异常勃起的持续时间中位数长于无需分流的男性(48 小时比 7 小时,p=0.030)。与所有其他病因相比,镰状细胞病作为病因的患者较少需要分流(2.2%比 15.2%,p=0.035)。

结论

治疗前阴茎异常勃起持续时间较长的男性更常接受分流术。然而,苯肾上腺素注射和抽吸对持续超过 36 小时的阴茎异常勃起仍然有效。镰状细胞病作为阴茎异常勃起的病因具有保护作用,可避免需要分流。我们开发了人工智能模型,其准确率为 87.2%,并创建了一个在线概率计算器,以确定哪些缺血性阴茎异常勃起患者可能需要分流。

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