Singh Yashbir, Farrelly Colleen, Hathaway Quincy A, Choudhary Ashok, Carlsson Gunnar, Erickson Bradley, Leiner Tim
Department of Radiology, Mayo Clinic, Rochester, MN.
Staticlysm LLC, Miami, FL.
Mayo Clin Proc Digit Health. 2023 Sep 30;1(4):519-526. doi: 10.1016/j.mcpdig.2023.08.006. eCollection 2023 Dec.
Convolutional neural networks (CNNs) have played an important role in medical imaging-from diagnostics to research to data integration. This has allowed clinicians to plan operations, diagnose patients earlier, and study rare diseases in more detail. However, data quality, quantity, and imbalance all pose challenges for CNN training and accuracy; in addition, training costs can be high when many types of CNNs are needed in a health care system. Topology and geometry provide tools to ameliorate these challenges for CNNs when they are integrated into the CNN architecture, particularly in the data preprocessing steps or convolution layers. This paper reviews the current integration of geometric tools within CNN architectures to reduce the burden of large training datasets and offset computational costs. This paper also identifies fertile areas for future research into the integration of geometric tools with CNNs.
卷积神经网络(CNN)在医学成像领域发挥了重要作用,涵盖从诊断到研究再到数据整合等方面。这使得临床医生能够规划手术、更早地诊断患者,并更详细地研究罕见疾病。然而,数据质量、数量和不平衡性都给CNN训练和准确性带来了挑战;此外,当医疗保健系统需要多种类型的CNN时,训练成本可能会很高。当拓扑和几何被集成到CNN架构中时,特别是在数据预处理步骤或卷积层中,它们为缓解CNN面临的这些挑战提供了工具。本文回顾了当前几何工具在CNN架构中的整合情况,以减轻大型训练数据集的负担并抵消计算成本。本文还确定了未来将几何工具与CNN整合的研究热点领域。