The future of precision orthopaedics: personalized data-driven practice.

IF 3.1 Q1 ORTHOPEDICS
Deiary F Kader, Andrew Coppola, Aditya Vijay, Andreas Fontalis, Fares S Haddad
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引用次数: 0

Abstract

Advances in orthopaedic surgery have been significantly shaped by evidence-based medicine (EBM), which relies on randomized controlled trials (RCTs) to standardize care and improve outcomes. However, EBM's one-size-fits-all approach often fails to account for the heterogeneous nature of individual patients, limiting its ability to deliver personalized care. Personalized data-driven practice (PDDP), powered by AI, provides a transformative solution by integrating diverse data sources, including genetic and clinical data, imaging, and wearable device outputs, into patient-specific treatment strategies. This paper examines the complementary roles of EBM and PDDP, highlighting the capacity of AI-driven tools to enhance decision-making in orthopaedics. AI technologies, such as machine learning and Bayesian networks, enable predictive analytics, treatment personalization, and real-time data integration, fostering a shift from reactive to proactive care. However, challenges related to data quality, algorithm transparency, ethical considerations, and infrastructure development must be addressed to ensure robust and equitable implementation. By merging AI-enhanced PDDP with the established principles of EBM, orthopaedic practice can evolve into a hybrid model that enhances patient outcomes while preserving clinician oversight and ethical integrity. This integration heralds a new era of precision orthopaedics, offering a patient-centred approach in the context of big data and AI innovation.

精准骨科的未来:个性化数据驱动的实践。
骨科手术的进步在很大程度上受到循证医学(EBM)的影响,它依赖于随机对照试验(rct)来规范护理和改善结果。然而,EBM的一刀切的方法往往不能考虑到个体患者的异质性,限制了它提供个性化护理的能力。由人工智能驱动的个性化数据驱动实践(PDDP)通过将各种数据源(包括遗传和临床数据、成像和可穿戴设备输出)集成到针对患者的治疗策略中,提供了一种变革性的解决方案。本文探讨了EBM和PDDP的互补作用,强调了人工智能驱动工具增强骨科决策的能力。机器学习和贝叶斯网络等人工智能技术实现了预测分析、个性化治疗和实时数据集成,促进了从被动护理到主动护理的转变。然而,必须解决与数据质量、算法透明度、道德考虑和基础设施发展相关的挑战,以确保稳健和公平的实施。通过将人工智能增强的PDDP与EBM的既定原则相结合,骨科实践可以发展成一种混合模式,在保持临床医生监督和道德诚信的同时,提高患者的治疗效果。这种整合预示着精准骨科的新时代,在大数据和人工智能创新的背景下提供以患者为中心的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Bone & Joint Open
Bone & Joint Open ORTHOPEDICS-
CiteScore
5.10
自引率
0.00%
发文量
0
审稿时长
8 weeks
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