Incorporating Artificial Intelligence into Fracture Risk Assessment: Using Clinical Imaging to Predict the Unpredictable.

IF 4.2
Endocrinology and metabolism (Seoul, Korea) Pub Date : 2025-08-01 Epub Date: 2025-08-04 DOI:10.3803/EnM.2025.2518
Sung Hye Kong
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Abstract

Artificial intelligence (AI) is increasingly being explored as a complementary tool to traditional fracture risk assessment methods. Conventional approaches, such as bone mineral density measurement and established clinical risk calculators, provide populationlevel stratification but often fail to capture the structural nuances of bone fragility. Recent advances in AI-particularly deep learning techniques applied to imaging-enable opportunistic screening and individualized risk estimation using routinely acquired radiographs and computed tomography (CT) data. These models demonstrate improved discrimination for osteoporotic fracture detection and risk prediction, supporting applications such as time-to-event modeling and short-term prognosis. CT- and radiograph-based models have shown superiority over conventional metrics in diverse cohorts, while innovations like multitask learning and survival plots contribute to enhanced interpretability and patient-centered communication. Nevertheless, challenges related to model generalizability, data bias, and automation bias persist. Successful clinical integration will require rigorous external validation, transparent reporting, and seamless embedding into electronic medical systems. This review summarizes recent advances in AI-driven fracture assessment, critically evaluates their clinical promise, and outlines a roadmap for translation into real-world practice.

将人工智能纳入骨折风险评估:利用临床影像学预测不可预测。
人工智能(AI)作为传统压裂风险评估方法的补充工具正被越来越多地探索。传统的方法,如骨密度测量和已建立的临床风险计算器,提供了人口水平的分层,但往往不能捕捉到骨脆弱性的结构细微差别。人工智能的最新进展,特别是应用于成像的深度学习技术,可以利用常规获得的x光片和计算机断层扫描(CT)数据进行机会性筛查和个性化风险评估。这些模型在骨质疏松性骨折检测和风险预测方面表现出更好的辨别能力,支持诸如事件时间建模和短期预后等应用。基于CT和x线摄影的模型在不同的队列中显示出优于传统指标的优势,而多任务学习和生存图等创新有助于增强可解释性和以患者为中心的沟通。然而,与模型泛化、数据偏差和自动化偏差相关的挑战仍然存在。成功的临床整合需要严格的外部验证、透明的报告和无缝嵌入电子医疗系统。本文总结了人工智能驱动骨折评估的最新进展,批判性地评估了它们的临床前景,并概述了将其转化为现实世界实践的路线图。
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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