Zhang Lechao, Xue Jianxia, Xie Yi, Huang Danfei, Xie Zhonghao, Zhu Libin, Chen Xiaoqing, Cui Guihua, Ali Shujat, Huang Guangzao, Chen Xiaojing
College of Optoelectronic Engineering, Changchun University of Science and Technology, Changchun, China.
Zhongshan Research Institute, Changchun University of Science and Technology, Zhongshan, China.
J Biophotonics. 2024 Feb;17(2):e202300315. doi: 10.1002/jbio.202300315. Epub 2023 Dec 9.
Acquiring large amounts of hyperspectral data of small intestinal tissue with real labels in the clinic is difficult, and the data shows inter-patient variability. Building an automatic identification model using a small dataset presents a crucial challenge in obtaining a strong generalization of the model. This study aimed to explore the performance of hyperspectral imaging and transfer learning techniques in the automatic identification of normal and ischemic necrotic sites in small intestinal tissue. Hyperspectral data of small intestinal tissues were collected from eight white rabbit samples. The transfer component analysis (TCA) method was performed to transfer learning on hyperspectral data between different samples and the variability of data distribution between samples was reduced. The results showed that the TCA transfer learning method improved the accuracy of the classification model with less training data. This study provided a reliable method for single-sample modelling to detect necrotic sites in small intestinal tissue .
在临床上获取带有真实标签的大量小肠组织高光谱数据很困难,并且数据显示出患者间的变异性。使用小数据集构建自动识别模型在获得强大的模型泛化能力方面提出了关键挑战。本研究旨在探索高光谱成像和迁移学习技术在自动识别小肠组织正常和缺血坏死部位方面的性能。从小肠组织的八个白兔样本中收集了高光谱数据。进行了迁移成分分析(TCA)方法,以在不同样本之间对高光谱数据进行迁移学习,并减少样本之间数据分布的变异性。结果表明,TCA迁移学习方法在较少训练数据的情况下提高了分类模型的准确性。本研究为检测小肠组织坏死部位的单样本建模提供了一种可靠的方法。