Abstract
Integrative measurement analysis of complex subjects, such as polymers is a major challenge to obtain comprehensive understanding of the properties. In this study, we describe analytical strategies to extract and selectively associate compositional information measured by multiple analytical techniques, aiming to reveal their relationships with physical properties of biopolymers derived from hair. Hair samples were analyzed by multiple techniques, including solid-state nuclear magnetic resonance (NMR), time-domain NMR, Fourier transform infrared spectroscopy, and thermogravimetric and differential thermal analysis. The measured data were processed by different processing techniques, such as spectral differentiation and deconvolution, and then converted into a variety of “measurement descriptors” with different compositional information. The descriptors were associated with the mechanical properties of hair by constructing prediction models using machine learning algorithms. Herein, the stepwise model refinement via selection of adopted descriptors based on importance evaluation identified the most contributive descriptors, which provided an integrative interpretation about the compositional factors, such as α-helix keratins in cortex; and bounded water and thermal resistant components in cuticle. These results demonstrated the efficacy of the present strategy to generate and select descriptors from manifold measured data for investigating the nature of sophisticated subjects, such as hair.
Highlights
Integrative measurement analysis of complex subjects, such as polymers is a major challenge to obtain comprehensive understanding of the properties
The hair samples collected from different species were analyzed by several measurement techniques: solid-state nuclear magnetic resonance (NMR), TD-NMR, Fourier transform infrared (FT-IR), and thermogravimetric and differential thermal analysis (TG–DTA)
The associations of multiple measured data of hair with its physical properties was investigated by developing a variety of measurement descriptors with different compositional information and by building prediction models based on machine-learning approaches
Summary
Integrative measurement analysis of complex subjects, such as polymers is a major challenge to obtain comprehensive understanding of the properties. A tensile tester was used to evaluate physical properties of hair, such as breaking force, elastic modulus, extension, and yield strength. Mechanical physical properties (i.e., breaking force, elastic modulus, extension, and yield strength) of the hairs were evaluated using a tensile tester (EZ-L-5 kN; Shimadzu Co. Ltd., Japan).
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