Yulu Gong, Houze Liu, Lianwei Li, Jingxiao Tian, Hanzhe Li
{"title":"Deep Learning-Based Medical Image Registration Algorithm: Enhancing Accuracy with Dense Connections and Channel Attention Mechanisms","authors":"Yulu Gong, Houze Liu, Lianwei Li, Jingxiao Tian, Hanzhe Li","doi":"10.53469/jtpes.2024.04(02).01","DOIUrl":null,"url":null,"abstract":"In critical clinical medical image analysis applications, such as surgical navigation and tumor monitoring, image registration is crucial. Recognizing the potential for enhanced accuracy in existing unsupervised image registration techniques for single-modal imagery, this research introduces an innovative deep learning-based image registration algorithm. Its novelty resides in integrating short and long connections to create a densely connected structure, markedly refining the feature map interconnectivity within the U-Net architecture. This advancement addresses the significant semantic gap issues arising from disparities in feature map sampling depths. Moreover, the algorithm incorporates a channel attention mechanism within the U-shaped network's decoder, significantly mitigating image noise and facilitating the generation of smoother deformation fields. This enhancement not only boosts the model's detail sensitivity but also markedly increases image registration precision, particularly evident when processing single-modal brain MRI datasets, thereby proving the algorithm's efficacy and utility. Extensive clinical application-based training and testing have underscored this algorithm's substantial contributions to medical image registration accuracy enhancement. Overall, by leveraging deep learning technologies and innovative algorithmic structures, this study addresses pivotal challenges in medical image registration, offering more precise and dependable support for clinical applications like surgical navigation and tumor surveillance.","PeriodicalId":489516,"journal":{"name":"Journal of Theory and Practice of Engineering Science","volume":"578 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-02-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of Theory and Practice of Engineering Science","FirstCategoryId":"0","ListUrlMain":"https://doi.org/10.53469/jtpes.2024.04(02).01","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
In critical clinical medical image analysis applications, such as surgical navigation and tumor monitoring, image registration is crucial. Recognizing the potential for enhanced accuracy in existing unsupervised image registration techniques for single-modal imagery, this research introduces an innovative deep learning-based image registration algorithm. Its novelty resides in integrating short and long connections to create a densely connected structure, markedly refining the feature map interconnectivity within the U-Net architecture. This advancement addresses the significant semantic gap issues arising from disparities in feature map sampling depths. Moreover, the algorithm incorporates a channel attention mechanism within the U-shaped network's decoder, significantly mitigating image noise and facilitating the generation of smoother deformation fields. This enhancement not only boosts the model's detail sensitivity but also markedly increases image registration precision, particularly evident when processing single-modal brain MRI datasets, thereby proving the algorithm's efficacy and utility. Extensive clinical application-based training and testing have underscored this algorithm's substantial contributions to medical image registration accuracy enhancement. Overall, by leveraging deep learning technologies and innovative algorithmic structures, this study addresses pivotal challenges in medical image registration, offering more precise and dependable support for clinical applications like surgical navigation and tumor surveillance.
在手术导航和肿瘤监测等关键临床医学图像分析应用中,图像配准至关重要。认识到现有单模态图像无监督图像配准技术在提高准确性方面的潜力,这项研究引入了一种基于深度学习的创新图像配准算法。该算法的新颖之处在于整合了短连接和长连接以创建密集连接结构,明显改善了 U-Net 架构内的特征图互连性。这一进步解决了因特征图采样深度不同而产生的重大语义差距问题。此外,该算法还在 U 型网络的解码器中加入了信道注意机制,大大减轻了图像噪声,有利于生成更平滑的形变场。这一改进不仅提高了模型的细节灵敏度,还显著提高了图像配准精度,这在处理单模态脑磁共振成像数据集时尤为明显,从而证明了该算法的有效性和实用性。基于临床应用的广泛培训和测试凸显了该算法对提高医学图像配准精度的巨大贡献。总之,通过利用深度学习技术和创新算法结构,这项研究解决了医学图像配准中的关键难题,为手术导航和肿瘤监测等临床应用提供了更精确、更可靠的支持。