Department of Physics and Mathematics, University of Eastern Finland, PO Box 1627, 70211 Kuopio, Finland.
Analyst. 2010 Dec;135(12):3147-55. doi: 10.1039/c0an00500b. Epub 2010 Oct 29.
Bone consists of an organic and an inorganic matrix. During development, bone undergoes changes in its composition and structure. In this study we apply three different cluster analysis algorithms [K-means (KM), fuzzy C-means (FCM) and hierarchical clustering (HCA)], and discriminant analysis (DA) on infrared spectroscopic data from developing cortical bone with the aim of comparing their ability to correctly classify the samples into different age groups. Cortical bone samples from the mid-diaphysis of the humerus of New Zealand white rabbits from three different maturation stages (newborn (NB), immature (11 days-1 month old), mature (3-6 months old)) were used. Three clusters were obtained by KM, FCM and HCA methods on different spectral regions (amide I, phosphate and carbonate). The newborn samples were well separated (71-100% correct classifications) from the other age groups by all bone components. The mature samples (3-6 months old) were well separated (100%) from those of other age groups by the carbonate spectral region, while by the phosphate and amide I regions some samples were assigned to another group (43-71% correct classifications). The greatest variance in the results for all algorithms was observed in the amide I region. In general, FCM clustering performed better than the other methods, and the overall error was lower. The discriminate analysis results showed that by combining the clustering results from all three spectral regions, the ability to predict the correct age group for all samples increased (from 29-86% to 77-91%). This study is the first to compare several clustering methods on infrared spectra of bone. Fuzzy C-means clustering performed best, and its ability to study the degree of memberships of samples to each cluster might be beneficial in future studies of medical diagnostics.
骨由有机和无机基质组成。在发育过程中,骨的组成和结构会发生变化。本研究应用三种不同的聚类分析算法[K-均值(KM)、模糊 C-均值(FCM)和层次聚类(HCA)]和判别分析(DA)对发育中的皮质骨的红外光谱数据进行分析,旨在比较它们正确将样品分类到不同年龄组的能力。使用了来自三个不同成熟阶段(新生(NB)、未成熟(11 天至 1 个月大)、成熟(3-6 个月大))的新西兰白兔肱骨中段皮质骨的骨样本。KM、FCM 和 HCA 方法在不同光谱区域(酰胺 I、磷酸盐和碳酸盐)上获得了三个聚类。所有骨成分均将新生样本(71-100%正确分类)与其他年龄组很好地分开。成熟样本(3-6 个月大)通过碳酸盐光谱区域与其他年龄组完全分开,而磷酸盐和酰胺 I 区域的一些样本被分配到另一个组(43-71%正确分类)。所有算法的结果中,酰胺 I 区域的方差最大。总体而言,FCM 聚类的表现优于其他方法,整体误差较低。判别分析结果表明,通过组合所有三个光谱区域的聚类结果,提高了预测所有样本正确年龄组的能力(从 29-86%提高到 77-91%)。本研究首次比较了几种聚类方法在骨的红外光谱上的应用。模糊 C-均值聚类表现最好,其研究样本对每个聚类的隶属程度的能力可能有助于未来的医学诊断研究。