Artificial Intelligence for Individualized Radiological Dialogue: The Impact of RadioBot on Precision-Driven Medical Practices.

IF 3 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
Amato Infante, Alessandro Perna, Sabrina Chiloiro, Giammaria Marziali, Matia Martucci, Luigi Demarchis, Biagio Merlino, Luigi Natale, Simona Gaudino
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引用次数: 0

Abstract

Background/Objectives: Radiology often presents communication challenges due to its technical complexity, particularly for patients, trainees, and non-specialist clinicians. This study aims to evaluate the effectiveness of RadioBot, an AI-powered chatbot developed on the Botpress platform, in enhancing radiological communication through natural language processing (NLP). Methods: RadioBot was designed to provide context-sensitive responses based on guidelines from the American College of Radiology (ACR) and the Radiological Society of North America (RSNA). It addresses queries related to imaging indications, contraindications, preparation, and post-procedural care. A structured evaluation was conducted with twelve participants-patients, residents, and radiologists-who assessed the chatbot using a standardized quality and satisfaction scale. Results: The chatbot received high satisfaction scores, particularly from patients (mean = 4.425) and residents (mean = 4.250), while radiologists provided more critical feedback (mean = 3.775). Users appreciated the system's clarity, accessibility, and its role in reducing informational bottlenecks. The perceived usefulness of the chatbot inversely correlated with the user's level of expertise, serving as an educational tool for novices and a time-saving reference for experts. Conclusions: RadioBot demonstrates strong potential in improving radiological communication and supporting clinical workflows, especially with patients where it plays an important role in personalized medicine by framing radiology data within each individual's cognitive and emotional context, which improves understanding and reduces associated diagnostic anxiety. Despite limitations such as occasional contextual incoherence and limited multimodal capabilities, the system effectively disseminates radiological knowledge. Future developments should focus on enhancing personalization based on user specialization and exploring alternative platforms to optimize performance and user experience.

Abstract Image

Abstract Image

个性化放射对话的人工智能:RadioBot对精确驱动医疗实践的影响。
背景/目的:放射学由于其技术的复杂性,特别是对患者、实习生和非专业临床医生来说,经常面临沟通方面的挑战。本研究旨在评估在Botpress平台上开发的人工智能聊天机器人RadioBot在通过自然语言处理(NLP)加强放射学交流方面的有效性。方法:根据美国放射学会(ACR)和北美放射学会(RSNA)的指南,设计RadioBot以提供上下文敏感的反应。它解决了与成像适应症、禁忌症、准备和术后护理相关的问题。对12名参与者(患者、住院医生和放射科医生)进行了结构化评估,他们使用标准化的质量和满意度量表评估聊天机器人。结果:聊天机器人获得了很高的满意度得分,尤其是患者(平均= 4.425)和住院医生(平均= 4.250),而放射科医生提供了更多的批评反馈(平均= 3.775)。用户赞赏系统的清晰性、可访问性及其在减少信息瓶颈方面的作用。聊天机器人的可用性与用户的专业水平呈负相关,可以作为新手的教育工具,也可以为专家节省时间。结论:RadioBot在改善放射学交流和支持临床工作流程方面显示出强大的潜力,特别是在患者中,它通过在每个人的认知和情绪背景下构建放射学数据,在个性化医疗中发挥重要作用,从而提高理解并减少相关的诊断焦虑。尽管存在一些局限性,例如偶尔的上下文不连贯和有限的多模式能力,该系统有效地传播了放射学知识。未来的发展应侧重于增强基于用户专业化的个性化,并探索优化性能和用户体验的替代平台。
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来源期刊
Journal of Personalized Medicine
Journal of Personalized Medicine Medicine-Medicine (miscellaneous)
CiteScore
4.10
自引率
0.00%
发文量
1878
审稿时长
11 weeks
期刊介绍: Journal of Personalized Medicine (JPM; ISSN 2075-4426) is an international, open access journal aimed at bringing all aspects of personalized medicine to one platform. JPM publishes cutting edge, innovative preclinical and translational scientific research and technologies related to personalized medicine (e.g., pharmacogenomics/proteomics, systems biology). JPM recognizes that personalized medicine—the assessment of genetic, environmental and host factors that cause variability of individuals—is a challenging, transdisciplinary topic that requires discussions from a range of experts. For a comprehensive perspective of personalized medicine, JPM aims to integrate expertise from the molecular and translational sciences, therapeutics and diagnostics, as well as discussions of regulatory, social, ethical and policy aspects. We provide a forum to bring together academic and clinical researchers, biotechnology, diagnostic and pharmaceutical companies, health professionals, regulatory and ethical experts, and government and regulatory authorities.
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