TY - JOUR
T1 - Principal Component Analysis to Determine the Surface Properties That Influence the Self-Cleaning Action of Hydrophobic Plant Leaves
AU - Saubade, Fabien
AU - Pilkington, Lisa I.
AU - Liauw, Christopher M.
AU - Gomes, Luciana C.
AU - McClements, Jake
AU - Peeters, Marloes
AU - El Mohtadi, Mohamed
AU - Mergulhão, Filipe J.
AU - Whitehead, Kathryn A.
N1 - Funding Information:
This work was supported by the European Union’s Horizon 2020 Research and Innovation Programme under grant agreement no. 952471.
Funding Information:
This work was supported by the European Union's Horizon 2020 Research and Innovation Programme under grant agreement no. 952471.
Publisher Copyright:
© 2021 American Chemical Society.
PY - 2021/7/13
Y1 - 2021/7/13
N2 - It is well established that many leaf surfaces display self-cleaning properties. However, an understanding of how the surface properties interact is still not achieved. Consequently, 12 different leaf types were selected for analysis due to their water repellency and self-cleaning properties. The most hydrophobic surfaces demonstrated splitting of the νs CH2 and ν CH2 bands, ordered platelet-like structures, crystalline waxes, high-surface-roughness values, high-total-surface-free energy and apolar components of surface energy, and low polar and Lewis base components of surface energy. The surfaces that exhibited the least roughness and high polar and Lewis base components of surface energy had intracuticular waxes, yet they still demonstrated the self-cleaning action. Principal component analysis demonstrated that the most hydrophobic species shared common surface chemistry traits with low intra-class variability, while the less hydrophobic leaves had highly variable surface-chemistry characteristics. Despite this, we have shown through partial least squares regression that the leaf water contact angle (i.e., hydrophobicity) can be predicted using attenuated total reflectance Fourier transform infrared spectroscopy surface chemistry data with excellent ability. This is the first time that such a statistical analysis has been performed on a complex biological system. This model could be utilized to investigate and predict the water contact angles of a range of biological surfaces. An understanding of the interplay of properties is extremely important to produce optimized biomimetic surfaces.
AB - It is well established that many leaf surfaces display self-cleaning properties. However, an understanding of how the surface properties interact is still not achieved. Consequently, 12 different leaf types were selected for analysis due to their water repellency and self-cleaning properties. The most hydrophobic surfaces demonstrated splitting of the νs CH2 and ν CH2 bands, ordered platelet-like structures, crystalline waxes, high-surface-roughness values, high-total-surface-free energy and apolar components of surface energy, and low polar and Lewis base components of surface energy. The surfaces that exhibited the least roughness and high polar and Lewis base components of surface energy had intracuticular waxes, yet they still demonstrated the self-cleaning action. Principal component analysis demonstrated that the most hydrophobic species shared common surface chemistry traits with low intra-class variability, while the less hydrophobic leaves had highly variable surface-chemistry characteristics. Despite this, we have shown through partial least squares regression that the leaf water contact angle (i.e., hydrophobicity) can be predicted using attenuated total reflectance Fourier transform infrared spectroscopy surface chemistry data with excellent ability. This is the first time that such a statistical analysis has been performed on a complex biological system. This model could be utilized to investigate and predict the water contact angles of a range of biological surfaces. An understanding of the interplay of properties is extremely important to produce optimized biomimetic surfaces.
KW - Spectroscopy
KW - Electrochemistry
KW - General Materials Science
KW - Surfaces and Interfaces
KW - Condensed Matter Physics
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U2 - 10.1021/acs.langmuir.1c00853
DO - 10.1021/acs.langmuir.1c00853
M3 - Article (journal)
C2 - 34184901
SN - 0743-7463
VL - 37
SP - 8177
EP - 8189
JO - Langmuir
JF - Langmuir
IS - 27
ER -