探讨间质性膀胱炎的机器学习诊断方法

IF 0.8 Q4 UROLOGY & NEPHROLOGY
M. Chancellor, L. Lamb
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引用次数: 6

摘要

间质性膀胱炎/膀胱疼痛综合征(IC/BPS)的诊断很困难,因为IC/BPS没有明确的检测方法。相反,诊断是基于尿液症状,可能建议进行膀胱镜检查。然而,膀胱镜检查的诊断可能会加剧疼痛的副作用,并且在医生中是高度主观的。此外,IC/PBS症状与膀胱癌症、尿路感染或膀胱过度活动的症状重叠。因此,许多患者可能会在数年内得不到正确的诊断和适当的疾病管理。我们目前IC/BPS研究的目标是开发一种基于几种尿蛋白的简单诊断测试,称为IC风险评分(IC-RS)。机器学习(ML)算法使用该信息来确定一个人是否具有IC/BPS;如果他们患有IC/BPS,他们的IC/BPS是否以Hunner病变为特征。我们目前正在进行一项拨款,从美国各地的1000名IC/BPS患者和1000名正常对照者身上采集尿液样本。我们正在使用推特和脸书等社交媒体,并与患者倡导组织合作,从全国各地收集尿液样本。我们希望验证IC-RS并申请监管部门的批准。对IC/BPS进行有效的诊断测试将是帮助泌尿外科患者的一大进步。此外,为IC/BPS开发新药和疗法的制药公司将有更好的方法来确定谁将参与其临床试验,也可能有另一种方法来衡量他们的药物或疗法是否有效。我们将在此回顾导致我们在尿液生物标志物发现研究中采取的步骤,从尿蛋白评估到使用众包利益相关者参与到ML算法IC-RS评分开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward a validated diagnostic test with machine learning algorithm for interstitial cystitis
Diagnosing interstitial cystitis/bladder pain syndrome (IC/BPS) is difficult as there is no definitive test for IC/BPS. Instead, the diagnosis is based on urinary symptoms and cystoscopy may be recommended. However, cystoscopic diagnosis is associated with potentially exacerbating painful side effects and is highly subjective among physicians. Furthermore, IC/PBS symptoms overlap with symptoms of bladder cancer, urinary tract infection, or overactive bladder. As a result, many patients may go years without a correct diagnosis and proper disease management. The goal of our current IC/BPS research is to develop a simple diagnostic test based on several urine proteins called the IC-risk score (IC-RS). A machine learning (ML) algorithm uses this information to determine if a person has IC/BPS or not; if they have IC/BPS, whether their IC/BPS is characterized by Hunner's lesions. We are currently in the middle of a grant to collect urine samples from 1000 patients with IC/BPS and 1,000 normal controls from across the United States. We are using social media such as Twitter and Facebook and working with patient advocacy organizations to collect urine samples from across the country. We hope to validate the IC-RS and apply for regulatory approval. Having a validated diagnostic test for IC/BPS would be a major advancement to help urology patients. In addition, drug companies developing new drugs and therapies for IC/BPS would have a better way to determine who to include in their clinical trials, and possibly another way to measure if their drug or therapy is effective. We will hereby review the steps that have led us in urine biomarker discovery research from urine protein assessment to use crowdsourcing stakeholders participation to ML algorithm IC-RS score development.
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来源期刊
Urological Science
Urological Science UROLOGY & NEPHROLOGY-
CiteScore
1.20
自引率
0.00%
发文量
26
审稿时长
6 weeks
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