Computer Science and Engineering, KPR Institute of Engineering and Technology, Coimbatore, Tamilnadu, India.
Computer Science and Engineering, VIT - AP University, India.
Curr Gene Ther. 2024;24(3):217-238. doi: 10.2174/0115665232262165231201113932.
Segmentation of medical images plays a key role in the correct identification and management of different diseases. In this study, we present a new segmentation method that meets the difficulties posed by sophisticated organ shapes in computed tomography (CT) images, particularly targeting lung, breast, and gastric cancers.
Our suggested methods, Resio-Inception U-Net and Deep Cluster Recognition (RIUDCR), use a Residual Inception Architecture, which combines the power of residual connections and inception blocks to achieve cutting-edge segmentation performance while reducing the risk of overfitting.
We present mathematical equations and functions that describe the design, including the encoding and decoding steps within the UC-Net system. Furthermore, we provide strong testing results that show the effectiveness of our method. Through thorough testing on varied datasets, our method regularly beats current techniques, achieving amazing precision and stability in organ task segmentation. These results show the promise of our residual inception architecture in better medical picture analysis.
In summary, our research not only shows a state-of-the-art segment methodology but also reinforces its usefulness through thorough testing. The inclusion of residual inception architecture in medical picture segmentation offers good possibilities for improving the identification and management of disease planning.
医学图像分割在正确识别和管理不同疾病方面起着关键作用。在这项研究中,我们提出了一种新的分割方法,该方法针对 CT 图像中复杂的器官形状提出了挑战,特别是针对肺癌、乳腺癌和胃癌。
我们提出的方法 Resio-Inception U-Net 和 Deep Cluster Recognition(RIUDCR)使用了残差 Inception 架构,该架构结合了残差连接和 inception 块的优势,实现了前沿的分割性能,同时降低了过拟合的风险。
我们提出了描述设计的数学方程和函数,包括 UC-Net 系统中的编码和解码步骤。此外,我们提供了强大的测试结果,展示了我们方法的有效性。通过在不同数据集上的彻底测试,我们的方法经常优于当前技术,在器官任务分割中实现了惊人的精度和稳定性。这些结果表明,残差 inception 架构在更好的医学图像分析中有很大的应用潜力。
总之,我们的研究不仅展示了一种最先进的分割方法,而且通过彻底的测试证明了其有效性。将残差 inception 架构应用于医学图像分割为提高疾病规划的识别和管理提供了很好的可能性。