Department of Electrical Engineering, Chalmers University of Technology, Gothenburg, Sweden
Department of Electrical Engineering, Chalmers University of Technology, Gothenburg, Sweden.
BMJ Open. 2023 May 22;13(5):e069660. doi: 10.1136/bmjopen-2022-069660.
Stroke is a time-critical condition and one of the leading causes of mortality and disability worldwide. To decrease mortality and improve patient outcome by improving access to optimal treatment, there is an emerging need to improve the accuracy of the methods used to identify and characterise stroke in prehospital settings and emergency departments (EDs). This might be accomplished by developing computerised decision support systems (CDSSs) that are based on artificial intelligence (AI) and potential new data sources such as vital signs, biomarkers and image and video analysis. This scoping review aims to summarise literature on existing methods for early characterisation of stroke by using AI.
The review will be performed with respect to the Arksey and O'Malley's model. Peer-reviewed articles about AI-based CDSSs for the characterisation of stroke or new potential data sources for stroke CDSSs, published between January 1995 and April 2023 and written in English, will be included. Studies reporting methods that depend on mobile CT scanning or with no focus on prehospital or ED care will be excluded. Screening will be done in two steps: title and abstract screening followed by full-text screening. Two reviewers will perform the screening process independently, and a third reviewer will be involved in case of disagreement. Final decision will be made based on majority vote. Results will be reported using a descriptive summary and thematic analysis.
The methodology used in the protocol is based on information publicly available and does not need ethical approval. The results from the review will be submitted for publication in a peer-reviewed journal. The findings will be shared at relevant national and international conferences and meetings in the field of digital health and neurology.
中风是一种时间敏感性疾病,也是全球范围内导致死亡和残疾的主要原因之一。为了通过改善获得最佳治疗的机会来降低死亡率并改善患者预后,需要提高在院前和急诊环境中识别和描述中风的方法的准确性。这可以通过开发基于人工智能 (AI) 的计算机化决策支持系统 (CDSS) 和潜在的新数据源(如生命体征、生物标志物以及图像和视频分析)来实现。本范围综述旨在总结使用 AI 早期描述中风的现有方法的文献。
本综述将按照 Arksey 和 O'Malley 的模型进行。将纳入 1995 年 1 月至 2023 年 4 月期间发表的、关于 AI 为基础的中风 CDSS 或中风 CDSS 的新潜在数据源的同行评审文章,语言为英文。将排除依赖移动 CT 扫描的研究或没有关注院前或急诊护理的研究。筛选将分两步进行:标题和摘要筛选,然后是全文筛选。两名评审员将独立进行筛选过程,如果有分歧,将邀请第三名评审员参与。最终决定将基于多数票做出。结果将使用描述性摘要和主题分析进行报告。
本方案中使用的方法学基于公开信息,不需要伦理批准。综述结果将提交给同行评审期刊发表。研究结果将在数字健康和神经病学领域的相关国家和国际会议和会议上分享。