Abeer Z Al-Marridi, Ahmed Bensaid, Samawiyah M Ulde, Tariq Khwaileh
{"title":"ReviewGenie:一种用于系统评论的新型自动化系统-语音和语言障碍的探索性研究。","authors":"Abeer Z Al-Marridi, Ahmed Bensaid, Samawiyah M Ulde, Tariq Khwaileh","doi":"10.1186/s13643-025-02895-z","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>Systematic reviews (SRs) are a cornerstone in providing high-quality evidence that guides policy and practice across various disciplines. Despite their critical role, SRs require substantial financial investment and are constrained by time-consuming manual processes. Existing solutions primarily focus on semi-automating the title and abstract screening stages, yet these approaches still face limitations in terms of efficiency and practicality. The SR process comprises several stages beyond abstract screening, each of which is resource-intensive. To overcome these challenges, this paper introduces ReviewGenie, a novel system that automates SR stages up to and including abstract screening, utilizing artificial intelligence.</p><p><strong>Method: </strong>The SR process involves eight key stages, beginning with the definition of search keywords and the selection of target databases, and culminating in full screening. While the initial and final stages require human expertise, the intermediate stages can be automated. ReviewGenie automates all intermediary stages, including database searching, data retrieval, cleaning, deduplication, filtering, and abstract screening. The system is domain-agnostic, as evidenced by a case study focused on databases related to speech and language disorders.</p><p><strong>Results: </strong>ReviewGenie significantly reduces the workload across various stages of the SR process, delivering notable time and cost savings while enhancing efficiency and accuracy. In the case study, where the article-fetching stage involved tens of thousands of publications, ReviewGenie achieved a 2.62% improvement in duplicate detection in less than a second, compared to the 1 to 3 h typically required for manual deduplication of 100 records. This process included cleaning abstracts before removing duplicates. Additionally, ReviewGenie reduced the number of articles from 28,674 to 3520 using an automatic filtering approach executed in seconds. This substantial reduction underscores the effectiveness of our automated method in preparing datasets for the abstract screening stage. Moreover, the artificial intelligence-driven abstract screening method resulted in cost savings exceeding $6230 compared to manual methods.</p><p><strong>Conclusions: </strong>ReviewGenie represents a significant advancement in reducing the burden on researchers conducting comprehensive systematic reviews. By automating intermediate stages, ReviewGenie enhances efficiency, accuracy, and cost-effectiveness, establishing itself as an indispensable tool for SRs across various disciplines.</p>","PeriodicalId":22162,"journal":{"name":"Systematic Reviews","volume":"14 1","pages":"167"},"PeriodicalIF":3.9000,"publicationDate":"2025-08-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12359888/pdf/","citationCount":"0","resultStr":"{\"title\":\"ReviewGenie: a novel automated system for systematic reviews-an exploratory study in speech and language disorders.\",\"authors\":\"Abeer Z Al-Marridi, Ahmed Bensaid, Samawiyah M Ulde, Tariq Khwaileh\",\"doi\":\"10.1186/s13643-025-02895-z\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Systematic reviews (SRs) are a cornerstone in providing high-quality evidence that guides policy and practice across various disciplines. Despite their critical role, SRs require substantial financial investment and are constrained by time-consuming manual processes. Existing solutions primarily focus on semi-automating the title and abstract screening stages, yet these approaches still face limitations in terms of efficiency and practicality. The SR process comprises several stages beyond abstract screening, each of which is resource-intensive. To overcome these challenges, this paper introduces ReviewGenie, a novel system that automates SR stages up to and including abstract screening, utilizing artificial intelligence.</p><p><strong>Method: </strong>The SR process involves eight key stages, beginning with the definition of search keywords and the selection of target databases, and culminating in full screening. While the initial and final stages require human expertise, the intermediate stages can be automated. ReviewGenie automates all intermediary stages, including database searching, data retrieval, cleaning, deduplication, filtering, and abstract screening. The system is domain-agnostic, as evidenced by a case study focused on databases related to speech and language disorders.</p><p><strong>Results: </strong>ReviewGenie significantly reduces the workload across various stages of the SR process, delivering notable time and cost savings while enhancing efficiency and accuracy. In the case study, where the article-fetching stage involved tens of thousands of publications, ReviewGenie achieved a 2.62% improvement in duplicate detection in less than a second, compared to the 1 to 3 h typically required for manual deduplication of 100 records. This process included cleaning abstracts before removing duplicates. Additionally, ReviewGenie reduced the number of articles from 28,674 to 3520 using an automatic filtering approach executed in seconds. This substantial reduction underscores the effectiveness of our automated method in preparing datasets for the abstract screening stage. Moreover, the artificial intelligence-driven abstract screening method resulted in cost savings exceeding $6230 compared to manual methods.</p><p><strong>Conclusions: </strong>ReviewGenie represents a significant advancement in reducing the burden on researchers conducting comprehensive systematic reviews. 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ReviewGenie: a novel automated system for systematic reviews-an exploratory study in speech and language disorders.
Background: Systematic reviews (SRs) are a cornerstone in providing high-quality evidence that guides policy and practice across various disciplines. Despite their critical role, SRs require substantial financial investment and are constrained by time-consuming manual processes. Existing solutions primarily focus on semi-automating the title and abstract screening stages, yet these approaches still face limitations in terms of efficiency and practicality. The SR process comprises several stages beyond abstract screening, each of which is resource-intensive. To overcome these challenges, this paper introduces ReviewGenie, a novel system that automates SR stages up to and including abstract screening, utilizing artificial intelligence.
Method: The SR process involves eight key stages, beginning with the definition of search keywords and the selection of target databases, and culminating in full screening. While the initial and final stages require human expertise, the intermediate stages can be automated. ReviewGenie automates all intermediary stages, including database searching, data retrieval, cleaning, deduplication, filtering, and abstract screening. The system is domain-agnostic, as evidenced by a case study focused on databases related to speech and language disorders.
Results: ReviewGenie significantly reduces the workload across various stages of the SR process, delivering notable time and cost savings while enhancing efficiency and accuracy. In the case study, where the article-fetching stage involved tens of thousands of publications, ReviewGenie achieved a 2.62% improvement in duplicate detection in less than a second, compared to the 1 to 3 h typically required for manual deduplication of 100 records. This process included cleaning abstracts before removing duplicates. Additionally, ReviewGenie reduced the number of articles from 28,674 to 3520 using an automatic filtering approach executed in seconds. This substantial reduction underscores the effectiveness of our automated method in preparing datasets for the abstract screening stage. Moreover, the artificial intelligence-driven abstract screening method resulted in cost savings exceeding $6230 compared to manual methods.
Conclusions: ReviewGenie represents a significant advancement in reducing the burden on researchers conducting comprehensive systematic reviews. By automating intermediate stages, ReviewGenie enhances efficiency, accuracy, and cost-effectiveness, establishing itself as an indispensable tool for SRs across various disciplines.
期刊介绍:
Systematic Reviews encompasses all aspects of the design, conduct and reporting of systematic reviews. The journal publishes high quality systematic review products including systematic review protocols, systematic reviews related to a very broad definition of health, rapid reviews, updates of already completed systematic reviews, and methods research related to the science of systematic reviews, such as decision modelling. At this time Systematic Reviews does not accept reviews of in vitro studies. The journal also aims to ensure that the results of all well-conducted systematic reviews are published, regardless of their outcome.