Tafintseva Valeria, Nippolainen Ervin, Virtanen Vesa, Solheim Johanne Heitmann, Zimmermann Boris, Saarakkala Simo, Kröger Heikki, Kohler Achim, Töyräs Juha, Afara Isaac O, Shaikh Rubina
Faculty of Science and Technology, Norwegian University of Life Sciences, Ås, Norway.
Department of Technical Physics, University of Eastern Finland, Kuopio, Finland.
Appl Spectrosc. 2025 Mar;79(3):385-395. doi: 10.1177/00037028241285583. Epub 2024 Nov 8.
Vibrational spectroscopy methods such as mid-infrared (MIR), near-infrared (NIR), and Raman spectroscopies have been shown to have great potential for in vivo biomedical applications, such as arthroscopic evaluation of joint injuries and degeneration. Considering that these techniques provide complementary chemical information, in this study, we hypothesized that combining the MIR, NIR, and Raman data from human osteochondral samples can improve the detection of cartilage degradation. This study evaluated 272 osteochondral samples from 18 human knee joins, comprising both healthy and damaged tissue according to the reference Osteoarthritis Research Society International grading system. We established the one-block and multi-block classification models using partial least squares discriminant analysis (PLSDA), random forest, and support vector machine (SVM) algorithms. Feature modeling by principal component analysis was tested for the SVM (PCA-SVM) models. The best one-block models were built using MIR and Raman data, discriminating healthy cartilage from damaged with an accuracy of 77.5% for MIR and 77.8% for Raman using the PCA-SVM algorithm, whereas the NIR data did not perform as well achieving only 68.5% accuracy for the best model using PCA-SVM. The multi-block approach allowed an improvement with an accuracy of 81.4% for the best model by PCA-SVM. Fusing three blocks using MIR, NIR, and Raman by multi-block PLSDA significantly improved the performance of the single-block models to 79.1% correct classification. The significance was proven by statistical testing using analysis of variance. Thus, the study suggests the potential and the complementary value of the fusion of different spectroscopic techniques and provides valuable data analysis tools for the diagnostics of cartilage health.
振动光谱法,如中红外(MIR)、近红外(NIR)和拉曼光谱法,已被证明在体内生物医学应用中具有巨大潜力,例如关节损伤和退变的关节镜评估。考虑到这些技术提供互补的化学信息,在本研究中,我们假设将来自人类骨软骨样本的MIR、NIR和拉曼数据相结合可以改善软骨退变的检测。本研究评估了来自18个人类膝关节的272个骨软骨样本,根据国际骨关节炎研究学会参考分级系统,样本包括健康组织和受损组织。我们使用偏最小二乘判别分析(PLSDA)、随机森林和支持向量机(SVM)算法建立了单块和多块分类模型。对SVM(PCA-SVM)模型测试了主成分分析的特征建模。使用MIR和拉曼数据建立了最佳单块模型,使用PCA-SVM算法区分健康软骨和受损软骨时,MIR的准确率为77.5%,拉曼的准确率为77.8%,而NIR数据表现不佳,使用PCA-SVM的最佳模型准确率仅为68.5%。多块方法使最佳PCA-SVM模型的准确率提高到81.4%。通过多块PLSDA融合MIR、NIR和拉曼三个数据块显著提高了单块模型的性能,正确分类率达到79.1%。通过方差分析的统计检验证明了其显著性。因此,该研究表明了不同光谱技术融合的潜力和互补价值,并为软骨健康诊断提供了有价值的数据分析工具。