A constituent-based preprocessing approach for characterising cartilage using NIR absorbance measurements

Biomed Phys Eng Express. 2016 Feb;2(1):017002. doi: 10.1088/2057-1976/2/1/017002. Epub 2016 Jan 18.

Abstract

Near-infrared spectroscopy is a widely adopted technique for characterising biological tissues. The high dimensionality of spectral data, however, presents a major challenge for analysis. Here, we present a second-derivative Beer's law-based technique aimed at projecting spectral data onto a lower dimension feature space characterised by the constituents of the target tissue type. This is intended as a preprocessing step to provide a physically-based, low dimensionality input to predictive models. Testing the proposed technique on an experimental set of 145 bovine cartilage samples before and after enzymatic degradation, produced a clear visual separation between the normal and degraded groups. Reduced proteoglycan and collagen concentrations, and increased water concentrations were predicted by simple linear fitting following degradation (all [Formula: see text]). Classification accuracy using the Mahalanobis distance was [Formula: see text] between these groups.

Keywords: cartilage; near infrared spectroscopy; osteoarthritis.