Artificial intelligence effectivity in fracture detection

IF 0.2 Q4 MEDICINE, GENERAL & INTERNAL
V. Boginskis, S. Zadoroznijs, I. Cernavska, D. Beikmane, J. Sauka
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引用次数: 0

Abstract

The scientific study aimed to explore the practical implementation of artificial intelligence (AI) technologies in radiology and traumatology for fracture detection, as well as evaluate their overall effectiveness in modern medicine. In recent years, AI has gained significant traction in the healthcare industry, enabling the analysis of patients' clinical data and facilitating disease diagnosis, monitoring, risk assessment, and surgical intervention possibilities. The relevance of the scientific work is in the gradual expansion of practical applications of artificial intelligence technologies in medicine, particularly in radiology for diagnosing fractures. The study aimed to investigate the practical effectiveness of AI technology in fracture detection on example of Hospital of Traumatology and Orthopaedics in Riga, Latvia. The methodological approach combined system analysis of AI system implementation in modern medical institutions for creating X-ray images with a clinical study of fracture diagnosis experience at the Hospital of Orthopedics and Traumatology in Riga, Latvia. Fractures were detected by radiologists, attending physicians, and the AI program, with comparisons made between them. Results were analyzed to assess the program's efficacy. The results of the study demonstrated the high effectiveness of AI technologies in fracture detection. The application of these systems in clinical practice led to a significant reduction in diagnostic errors (by 2-3 times) and an increase in diagnostic accuracy (from 78.1% to 85.2%). Moreover, AI systems proved to be capable of detecting fractures that were not initially identified during routine examinations by paramedics and medical practitioners. This emphasized the practicality of expanding the use of these systems in clinical practice. The practical significance of the obtained results is in their potential use in the development of software systems based on AI, aimed at enhancing fracture diagnosis in medical institutions. These findings provided valuable insights for further advancements in AI-based technologies for fracture detection.
人工智能在裂缝检测中的有效性
这项科学研究旨在探索人工智能(AI)技术在放射学和创伤学骨折检测中的实际应用,并评估其在现代医学中的整体有效性。近年来,人工智能在医疗保健行业获得了显著的吸引力,可以分析患者的临床数据,促进疾病诊断、监测、风险评估和手术干预的可能性。科学工作的相关性在于逐渐扩大人工智能技术在医学中的实际应用,特别是在诊断骨折的放射学方面。本研究以拉脱维亚里加创伤骨科医院为例,探讨人工智能技术在骨折检测中的实际效果。方法学方法结合了人工智能系统在现代医疗机构中实现的系统分析,用于创建x射线图像,并结合了拉脱维亚里加骨科和创伤医院骨折诊断经验的临床研究。骨折由放射科医生、主治医生和人工智能程序检测,并对它们进行比较。对结果进行分析,以评估程序的有效性。研究结果表明,人工智能技术在裂缝检测中的有效性。这些系统在临床实践中的应用显著减少了诊断错误率(减少了2-3倍),并提高了诊断准确性(从78.1%提高到85.2%)。此外,人工智能系统被证明能够检测到护理人员和医疗从业人员在常规检查中最初未发现的骨折。这强调了在临床实践中扩大这些系统使用的实用性。所获得的结果的实际意义在于它们在基于AI的软件系统开发中的潜在应用,旨在提高医疗机构的骨折诊断。这些发现为基于人工智能的裂缝检测技术的进一步发展提供了有价值的见解。
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来源期刊
Medical Perspectives-Medicni Perspektivi
Medical Perspectives-Medicni Perspektivi MEDICINE, GENERAL & INTERNAL-
CiteScore
0.40
自引率
0.00%
发文量
85
审稿时长
9 weeks
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