Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:4115-4119. doi: 10.1109/EMBC46164.2021.9629828.
Topological Data Analysis (TDA) has emerged recently as a robust tool to extract and compare the structure of datasets. TDA identifies features in data (e.g., connected components and holes) and assigns a quantitative measure to these features. Several studies reported that topological features extracted by TDA tools provide unique information about the data, discover new insights, and determine which feature is more related to the outcome. On the other hand, the overwhelming success of deep neural networks in learning patterns and relationships has been proven on various data applications including images. To capture the characteristics of both worlds, we propose TDA-Net, a novel ensemble network that fuses topological and deep features for the purpose of enhancing model generalizability and accuracy. We apply the proposed TDA-Net to a critical application, which is the automated detection of COVID-19 from CXR images. Experimental results showed that the proposed network achieved excellent performance and suggested the applicability of our method in practice.
拓扑数据分析(TDA)最近作为一种强大的工具出现,用于提取和比较数据集的结构。TDA 识别数据中的特征(例如,连通分量和空洞),并为这些特征分配定量度量。一些研究报告称,TDA 工具提取的拓扑特征提供了有关数据的独特信息,发现了新的见解,并确定了哪个特征与结果更相关。另一方面,深度神经网络在学习模式和关系方面的巨大成功已在包括图像在内的各种数据应用中得到证明。为了结合这两个领域的特点,我们提出了 TDA-Net,这是一种新颖的集成网络,融合了拓扑和深度特征,旨在提高模型的泛化能力和准确性。我们将提出的 TDA-Net 应用于一个关键应用,即从 CXR 图像中自动检测 COVID-19。实验结果表明,所提出的网络取得了优异的性能,表明我们的方法在实际中的适用性。