Categorization of collagen type I and II blend hydrogel using multipolarization SHG imaging with ResNet regression

使用 ResNet 回归的多极化 SHG 成像对 I 型和 II 型胶原蛋白混合水凝胶进行分类

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作者:Anupama Nair, Chun-Yu Lin, Feng-Chun Hsu, Ta-Hsiang Wong, Shu-Chun Chuang, Yi-Shan Lin, Chung-Hwan Chen, Paul Campagnola, Chi-Hsiang Lien, Shean-Jen Chen

Abstract

Previously, the discrimination of collagen types I and II was successfully achieved using peptide pitch angle and anisotropic parameter methods. However, these methods require fitting polarization second harmonic generation (SHG) pixel-wise information into generic mathematical models, revealing inconsistencies in categorizing collagen type I and II blend hydrogels. In this study, a ResNet approach based on multipolarization SHG imaging is proposed for the categorization and regression of collagen type I and II blend hydrogels at 0%, 25%, 50%, 75%, and 100% type II, without the need for prior time-consuming model fitting. A ResNet model, pretrained on 18 progressive polarization SHG images at 10° intervals for each percentage, categorizes the five blended collagen hydrogels with a mean absolute error (MAE) of 0.021, while the model pretrained on nonpolarization images exhibited 0.083 MAE. Moreover, the pretrained models can also generally regress the blend hydrogels at 20%, 40%, 60%, and 80% type II. In conclusion, the multipolarization SHG image-based ResNet analysis demonstrates the potential for an automated approach using deep learning to extract valuable information from the collagen matrix.

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