Alberto Paderno, Elmer Jeto Ataide Gomes, Leonard Gilberg, Leander Maerkisch, Bianca Teodorescu, Ali Murat Koç, Mathias Meyer
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Data extraction included study characteristics, methodologies, and key findings.</p><p><strong>Results: </strong>Fourteen studies met the inclusion criteria. Three main approaches were identified: fully automated deep learning solutions, hybrid approaches combining deep learning and conventional machine learning, and non-automated solutions using manual segmentation followed by AI analysis. Studies demonstrated high accuracy in bone mineral density prediction (86-96%) and classification of normal versus osteoporotic subjects (AUC 0.927-0.984). However, significant heterogeneity was observed in methodologies, workflows, and ground truth selection.</p><p><strong>Conclusions: </strong>The review highlights AI's promising potential in enhancing opportunistic screening for osteoporosis using CT scans. While the field is still in its early stages, with most solutions at the proof-of-concept phase, the evidence supports increased efforts to incorporate AI into radiologic workflows. Addressing knowledge gaps, such as standardizing benchmarks and increasing external validation, will be crucial for advancing the clinical application of these AI-enhanced screening methods. 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引用次数: 0
摘要
目的:这篇范围综述旨在评估目前关于人工智能(AI)增强型机会性筛查方法的研究,这些方法通过评估CT扫描中的椎体骨小梁结构来对骨质疏松症和骨质疏松症风险进行分层:系统检索了 PubMed、Scopus 和 Web of Science 数据库中 2018 年至 2023 年 12 月间发表的研究。纳入标准包括关注使用人工智能技术对骨质疏松症/骨质疏松进行分类或使用椎体 CT 扫描确定骨矿密度的文章。数据提取包括研究特点、方法和主要发现:结果:14 项研究符合纳入标准。确定了三种主要方法:全自动深度学习解决方案、深度学习与传统机器学习相结合的混合方法,以及使用人工分割后再进行人工智能分析的非自动化解决方案。研究表明,骨矿密度预测(86%-96%)和正常与骨质疏松受试者分类(AUC 0.927-0.984)的准确率很高。然而,在方法论、工作流程和地面实况选择方面观察到了明显的异质性:综述强调了人工智能在利用 CT 扫描加强骨质疏松症机会性筛查方面的巨大潜力。虽然该领域仍处于早期阶段,大多数解决方案还处于概念验证阶段,但有证据支持加大力度将人工智能纳入放射工作流程。缩小知识差距,如实现基准标准化和增加外部验证,对于推动这些人工智能增强型筛查方法的临床应用至关重要。这些技术的整合能以较低的经济成本改善骨质疏松症的早期检测。
Artificial intelligence-enhanced opportunistic screening of osteoporosis in CT scan: a scoping Review.
Purpose: This scoping review aimed to assess the current research on artificial intelligence (AI)--enhanced opportunistic screening approaches for stratifying osteoporosis and osteopenia risk by evaluating vertebral trabecular bone structure in CT scans.
Methods: PubMed, Scopus, and Web of Science databases were systematically searched for studies published between 2018 and December 2023. Inclusion criteria encompassed articles focusing on AI techniques for classifying osteoporosis/osteopenia or determining bone mineral density using CT scans of vertebral bodies. Data extraction included study characteristics, methodologies, and key findings.
Results: Fourteen studies met the inclusion criteria. Three main approaches were identified: fully automated deep learning solutions, hybrid approaches combining deep learning and conventional machine learning, and non-automated solutions using manual segmentation followed by AI analysis. Studies demonstrated high accuracy in bone mineral density prediction (86-96%) and classification of normal versus osteoporotic subjects (AUC 0.927-0.984). However, significant heterogeneity was observed in methodologies, workflows, and ground truth selection.
Conclusions: The review highlights AI's promising potential in enhancing opportunistic screening for osteoporosis using CT scans. While the field is still in its early stages, with most solutions at the proof-of-concept phase, the evidence supports increased efforts to incorporate AI into radiologic workflows. Addressing knowledge gaps, such as standardizing benchmarks and increasing external validation, will be crucial for advancing the clinical application of these AI-enhanced screening methods. Integration of such technologies could lead to improved early detection of osteoporotic conditions at a low economic cost.
期刊介绍:
An international multi-disciplinary journal which is a joint initiative between the International Osteoporosis Foundation and the National Osteoporosis Foundation of the USA, Osteoporosis International provides a forum for the communication and exchange of current ideas concerning the diagnosis, prevention, treatment and management of osteoporosis and other metabolic bone diseases.
It publishes: original papers - reporting progress and results in all areas of osteoporosis and its related fields; review articles - reflecting the present state of knowledge in special areas of summarizing limited themes in which discussion has led to clearly defined conclusions; educational articles - giving information on the progress of a topic of particular interest; case reports - of uncommon or interesting presentations of the condition.
While focusing on clinical research, the Journal will also accept submissions on more basic aspects of research, where they are considered by the editors to be relevant to the human disease spectrum.