Application of deep learning for diagnosis of shoulder diseases in older adults: a narrative review.

IF 0.2 Q3 MEDICINE, GENERAL & INTERNAL
Ewha Medical Journal Pub Date : 2025-01-01 Epub Date: 2025-01-31 DOI:10.12771/emj.2025.e6
Sung Min Rhee
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引用次数: 0

Abstract

Shoulder diseases pose a significant health challenge for older adults, often causing pain, functional decline, and decreased independence. This narrative review explores how deep learning (DL) can address diagnostic challenges by automating tasks such as image segmentation, disease detection, and motion analysis. Recent research highlights the effectiveness of DL-based convolutional neural networks and machine learning frameworks in diagnosing various shoulder pathologies. Automated image analysis facilitates the accurate assessment of rotator cuff tear size, muscle degeneration, and fatty infiltration in MRI or CT scans, frequently matching or surpassing the accuracy of human experts. Convolutional neural network-based systems are also adept at classifying fractures and joint conditions, enabling the rapid identification of common causes of shoulder pain from plain radiographs. Furthermore, advanced techniques like pose estimation provide precise measurements of the shoulder joint's range of motion and support personalized rehabilitation plans. These automated approaches have also been successful in quantifying local osteoporosis, utilizing machine learning-derived indices to classify bone density status. DL has demonstrated significant potential to improve diagnostic accuracy, efficiency, and consistency in the management of shoulder diseases in older patients. Machine learning-based assessments of imaging data and motion parameters can help clinicians optimize treatment plans and improve patient outcomes. However, to ensure their generalizability, reproducibility, and effective integration into routine clinical workflows, large-scale, prospective validation studies are necessary. As data availability and computational resources increase, the ongoing development of DL-driven applications is expected to further advance and personalize musculoskeletal care, benefiting both healthcare providers and the aging population.

Abstract Image

Abstract Image

深度学习在老年人肩关节疾病诊断中的应用综述
肩部疾病对老年人构成了重大的健康挑战,通常会导致疼痛、功能衰退和独立性下降。本文探讨了深度学习(DL)如何通过自动化任务(如图像分割、疾病检测和运动分析)来解决诊断挑战。最近的研究强调了基于dl的卷积神经网络和机器学习框架在诊断各种肩部病变方面的有效性。自动图像分析有助于在MRI或CT扫描中准确评估肩袖撕裂大小,肌肉变性和脂肪浸润,经常匹配或超过人类专家的准确性。基于卷积神经网络的系统还擅长对骨折和关节状况进行分类,能够从x线平片中快速识别肩部疼痛的常见原因。此外,姿势估计等先进技术提供了肩关节活动范围的精确测量,并支持个性化的康复计划。这些自动化方法在量化局部骨质疏松症方面也取得了成功,利用机器学习衍生的指标对骨密度状态进行分类。DL在提高老年患者肩关节疾病的诊断准确性、效率和一致性方面具有显著的潜力。基于机器学习的成像数据和运动参数评估可以帮助临床医生优化治疗计划并改善患者的预后。然而,为了确保它们的普遍性、可重复性和有效地整合到常规临床工作流程中,大规模的前瞻性验证研究是必要的。随着数据可用性和计算资源的增加,dl驱动应用程序的持续发展有望进一步推进和个性化肌肉骨骼护理,使医疗保健提供者和老龄化人口都受益。
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
Ewha Medical Journal
Ewha Medical Journal MEDICINE, GENERAL & INTERNAL-
自引率
33.30%
发文量
28
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