Suppr超能文献

机器学习增强近红外光谱:软骨缺损的体内随访。

Machine learning augmented near-infrared spectroscopy: In vivo follow-up of cartilage defects.

机构信息

Department of Applied Physics, University of Eastern Finland, Kuopio, Finland; Diagnostic Imaging Center, Kuopio University Hospital, Kuopio, Finland.

Department of Clinical Sciences, Faculty of Veterinary Medicine, Utrecht University, Utrecht, the Netherlands.

出版信息

Osteoarthritis Cartilage. 2021 Mar;29(3):423-432. doi: 10.1016/j.joca.2020.12.007. Epub 2020 Dec 30.

Abstract

OBJECTIVE

To assess the potential of near-infrared spectroscopy (NIRS) for in vivo arthroscopic monitoring of cartilage defects.

METHOD

Sharp and blunt cartilage grooves were induced in the radiocarpal and intercarpal joints of Shetland ponies and monitored at baseline (0 weeks) and at three follow-up timepoints (11, 23, and 39 weeks) by measuring near-infrared spectra in vivo at and around the grooves. The animals were sacrificed after 39 weeks and the joints were harvested. Spectra were reacquired ex vivo to ensure reliability of in vivo measurements and for reference analyses. Additionally, cartilage thickness and instantaneous modulus were determined via computed tomography and mechanical testing, respectively. The relationship between the ex vivo spectra and cartilage reference properties was determined using convolutional neural network.

RESULTS

In an independent test set, the trained networks yielded significant correlations for cartilage thickness (ρ = 0.473) and instantaneous modulus (ρ = 0.498). These networks were used to predict the reference properties at baseline and at follow-up time points. In the radiocarpal joint, cartilage thickness increased significantly with both groove types after baseline and remained swollen. Additionally, at 39 weeks, a significant difference was observed in cartilage thickness between controls and sharp grooves. For the instantaneous modulus, a significant decrease was observed with both groove types in the radiocarpal joint from baseline to 23 and 39 weeks.

CONCLUSION

NIRS combined with machine learning enabled determination of cartilage properties in vivo, thereby providing longitudinal evaluation of post-intervention injury development. Additionally, radiocarpal joints were found more vulnerable to cartilage degeneration after damage than intercarpal joints.

摘要

目的

评估近红外光谱(NIRS)在关节镜下监测软骨缺损的体内潜力。

方法

在设得兰矮种马的桡腕关节和腕中关节中诱导锐性和钝性软骨沟槽,并在基线(0 周)和三个随访时间点(11、23 和 39 周)通过测量沟槽处和周围的近红外光谱进行体内监测。在 39 周后处死动物并采集关节。进行离体再获取光谱以确保体内测量的可靠性和参考分析。此外,通过计算机断层扫描和机械测试分别确定软骨厚度和瞬时弹性模量。使用卷积神经网络确定离体光谱与软骨参考特性之间的关系。

结果

在独立测试集中,经过训练的网络对软骨厚度(ρ=0.473)和瞬时弹性模量(ρ=0.498)具有显著相关性。这些网络用于预测基线和随访时间点的参考特性。在桡腕关节中,两种类型的沟槽在基线后均显著增加了软骨厚度,并保持肿胀状态。此外,在 39 周时,在对照和锐性沟槽之间观察到软骨厚度存在显著差异。对于瞬时弹性模量,在桡腕关节中,两种类型的沟槽均从基线到 23 和 39 周时显著降低。

结论

NIRS 结合机器学习可实现体内软骨特性的测定,从而提供了干预后损伤发展的纵向评估。此外,与腕中关节相比,桡腕关节在受到损伤后更容易发生软骨退化。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验