AI-PEDURO - 儿科泌尿学中的人工智能:活范围审查协议和在线资料库。

IF 2 3区 医学 Q2 PEDIATRICS
Adree Khondker, Jethro C C Kwong, Mandy Rickard, Lauren Erdman, Andrew T Gabrielson, David-Dan Nguyen, Jin Kyu Kim, Tariq Abbas, Nicolas Fernandez, Katherine Fischer, Lisette A 't Hoen, Daniel T Keefe, Caleb P Nelson, Bernarda Viteri, Hsin-Hsiao Scott Wang, John Weaver, Priyank Yadav, Armando J Lorenzo
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引用次数: 0

摘要

背景:人工智能(AI)和机器学习(ML)方法正越来越多地应用于小儿泌尿外科领域,数据库越来越广泛,临床实践中的应用兴趣也越来越浓厚。小儿泌尿外科文献中已发表了 30 多个 ML 模型,但其中许多模型缺乏当代报告框架所要求的高质量项目。例如,大多数研究缺乏多机构验证、时间验证和临床环境验证,导致开发的模型数量与临床环境中部署的模型数量之间存在巨大差异,这种现象被称为人工智能鸿沟。此外,小儿泌尿外科是泌尿外科的一个独特亚专科,病情发生频率低,表型复杂,临床管理可依赖的证据质量较低:建立儿科泌尿外科人工智能(AI-PEDURO)合作组织,该组织将开展一项活范围审查,并为该领域的模型创建一个在线存储库(www.aipeduro.com),促进儿科泌尿外科人工智能模型的证据综合。方法与分析:范围界定审查将遵循 PRISMA-ScR 指南。我们将纳入通过四个数据库的标准化检索方法确定的 ML 模型、手工检索论文和用户提交的模型。如果检索到的记录涉及小儿泌尿科疾病的预测、分类或风险分层的 ML 算法,则将纳入检索记录。结果将以表格形式列出,并对文献中的趋势进行评估。根据数据可用性,模型将分为临床疾病部分(如肾积水、尿道下裂、膀胱输尿管反流)。将使用 APPRAISE-AI 工具进行风险评估。检索到的模型卡片(以表格形式简要概括模型特征)将上传到在线资料库,供临床医生、患者和数据科学家开放访问,并将链接到每篇文章的数字对象标识符(DOI):我们希望这份活范围综述和在线资料库能为儿科泌尿科医生评估疾病特异性 ML 模型的范围、有效性和可信度提供有价值的参考,从而鼓励合作、外部验证、临床测试和负责任的部署。此外,该资料库还有助于确定需要进一步研究的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-PEDURO - Artificial intelligence in pediatric urology: Protocol for a living scoping review and online repository.

Background: Artificial intelligence (AI) and machine learning (ML) methods are increasingly being applied in pediatric urology across a growing number of settings, with more extensive databases and wider interest for use in clinical practice. More than 30 ML models have been published in the pediatric urology literature, but many lack items required by contemporary reporting frameworks to be high quality. For example, most studies lack multi-institution validation, validation over time, and validation within the clinical environment, resulting in a large discrepancy between the number of models developed versus the number of models deployed in a clinical setting, a phenomenon known as the AI chasm. Furthermore, pediatric urology is a unique subspecialty of urology with low frequency conditions and complex phenotypes where clinical management can rely on a lower quality of evidence.

Objective: To establish the AI in PEDiatric UROlogy (AI-PEDURO) collaborative, which will carry out a living scoping review and create an online repository (www.aipeduro.com) for models in the field and facilitate an evidence synthesis of AI models in pediatric urology.

Methods and analysis: The scoping review will follow PRISMA-ScR guidelines. We will include ML models identified through standardized search methods of four databases, hand-search papers, and user-submitted models. Retrieved records will be included if they involve ML algorithms for prediction, classification, or risk stratification for pediatric urology conditions. The results will be tabulated and assessed for trends within the literature. Based on data availability, models will be divided into clinical disease sections (e.g. hydronephrosis, hypospadias, vesicoureteral reflux). A risk assessment will be performed using the APPRAISE-AI tool. The retrieved model cards (brief summary model characteristics in table form) will be uploaded to the online repository for open access to clinicians, patients, and data scientists, and will be linked to the Digital Object Identifier (DOI) for each article.

Discussion and conclusion: We hope this living scoping review and online repository will offer a valuable reference for pediatric urologists to assess disease-specific ML models' scope, validity, and credibility to encourage opportunities for collaboration, external validation, clinical testing, and responsible deployment. In addition, the repository may aid in identifying areas in need of further research.

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来源期刊
Journal of Pediatric Urology
Journal of Pediatric Urology PEDIATRICS-UROLOGY & NEPHROLOGY
CiteScore
3.70
自引率
15.00%
发文量
330
审稿时长
4-8 weeks
期刊介绍: The Journal of Pediatric Urology publishes submitted research and clinical articles relating to Pediatric Urology which have been accepted after adequate peer review. It publishes regular articles that have been submitted after invitation, that cover the curriculum of Pediatric Urology, and enable trainee surgeons to attain theoretical competence of the sub-specialty. It publishes regular reviews of pediatric urological articles appearing in other journals. It publishes invited review articles by recognised experts on modern or controversial aspects of the sub-specialty. It enables any affiliated society to advertise society events or information in the journal without charge and will publish abstracts of papers to be read at society meetings.
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