Artificial Intelligence-Assisted Standard Plane Detection in Hip Ultrasound for Developmental Dysplasia of the Hip: A Novel Real-Time Deep Learning Approach.

IF 2.1 3区 医学 Q2 ORTHOPEDICS
Muhammed Furkan Darilmaz, Mehmet Demirel, Hüseyin Oktay Altun, Mevlüt Can Adiyaman, Fuat Bilgili, Hayati Durmaz, Yavuz Sağlam
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Abstract

Developmental dysplasia of the hip (DDH) includes a range of conditions caused by inadequate hip joint development. Early diagnosis is essential to prevent long-term complications. Ultrasound, particularly the Graf method, is commonly used for DDH screening, but its interpretation is highly operator-dependent and lacks standardization, especially in identifying the correct standard plane. This variability often leads to misdiagnosis, particularly among less experienced users. This study presents AI-SPS, an AI-based instant standard plane detection software for real-time hip ultrasound analysis. Using 2,737 annotated frames, including 1,737 standard and 1,000 non-standard examples extracted from 45 clinical ultrasound videos, we trained and evaluated two object detection models: SSD-MobileNet V2 and YOLOv11n. The software was further validated on an independent set of 934 additional frames (347 standard and 587 non-standard) from the same video sources. YOLOv11n achieved an accuracy of 86.3%, precision of 0.78, recall of 0.88, and F1-score of 0.83, outperforming SSD-MobileNet V2, which reached an accuracy of 75.2%. These results indicate that AI-SPS can detect the standard plane with expert-level performance and improve consistency in DDH screening. By reducing operator variability, the software supports more reliable ultrasound assessments. Integration with live systems and Graf typing may enable a fully automated DDH diagnostic workflow. Level of Evidence: Level III, diagnostic study.

人工智能辅助标准平面检测髋关节发育不良超声:一种新的实时深度学习方法。
髋关节发育不良(DDH)包括一系列由髋关节发育不足引起的疾病。早期诊断对于预防长期并发症至关重要。超声,特别是Graf方法,通常用于DDH筛查,但其解释高度依赖于操作者,缺乏标准化,特别是在确定正确的标准平面方面。这种可变性经常导致误诊,特别是在经验不足的用户中。本研究提出了AI-SPS,一种基于人工智能的即时标准平面检测软件,用于实时髋关节超声分析。使用2737个带注释的帧,包括从45个临床超声视频中提取的1737个标准和1000个非标准样本,我们训练并评估了两种目标检测模型:SSD-MobileNet V2和YOLOv11n。该软件在来自同一视频源的934帧(347帧标准帧和587帧非标准帧)的独立集上进一步验证。YOLOv11n的准确率为86.3%,精密度为0.78,召回率为0.88,f1得分为0.83,优于SSD-MobileNet V2的准确率为75.2%。这些结果表明,AI-SPS能够达到专家级水平的标准平面检测,提高了DDH筛选的一致性。通过减少操作员的可变性,该软件支持更可靠的超声评估。与实时系统和Graf类型的集成可以实现完全自动化的DDH诊断工作流程。证据等级:III级,诊断性研究。
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来源期刊
Journal of Orthopaedic Research®
Journal of Orthopaedic Research® 医学-整形外科
CiteScore
6.10
自引率
3.60%
发文量
261
审稿时长
3-6 weeks
期刊介绍: The Journal of Orthopaedic Research is the forum for the rapid publication of high quality reports of new information on the full spectrum of orthopaedic research, including life sciences, engineering, translational, and clinical studies.
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