Research Center for Information Technology Innovation, Academia Sinica, Taipei City, Taiwan, ROC.
Department of Information Management, National Taiwan University, Taipei City, Taiwan, ROC.
Comput Methods Programs Biomed. 2022 Jun;221:106861. doi: 10.1016/j.cmpb.2022.106861. Epub 2022 May 10.
Previously, doctors interpreted computed tomography (CT) images based on their experience in diagnosing kidney diseases. However, with the rapid increase in CT images, such interpretations were required considerable time and effort, producing inconsistent results. Several novel neural network models were proposed to automatically identify kidney or tumor areas in CT images for solving this problem. In most of these models, only the neural network structure was modified to improve accuracy. However, data pre-processing was also a crucial step in improving the results. This study systematically discussed the necessary pre-processing methods before processing medical images in a neural network model. The experimental results were shown that the proposed pre-processing methods or models significantly improve the accuracy rate compared with the case without data pre-processing. Specifically, the dice score was improved from 0.9436 to 0.9648 for kidney segmentation and 0.7294 for all types of tumor detections. The performance was suitable for clinical applications with lower computational resources based on the proposed medical image processing methods and deep learning models. The cost efficiency and effectiveness were also achieved for automatic kidney volume calculation and tumor detection accurately.
以前,医生根据诊断肾脏疾病的经验来解读计算机断层扫描(CT)图像。然而,随着 CT 图像的快速增加,这种解读需要相当多的时间和精力,并且产生的结果不一致。为了解决这个问题,提出了几种新的神经网络模型,以自动识别 CT 图像中的肾脏或肿瘤区域。在这些模型中,大多数只修改了神经网络结构以提高准确性。但是,数据预处理也是提高结果的关键步骤。本研究系统地讨论了在神经网络模型中处理医学图像之前所需的预处理方法。实验结果表明,与没有数据预处理的情况相比,所提出的预处理方法或模型显著提高了准确率。具体来说,肾脏分割的骰子分数从 0.9436 提高到 0.9648,所有类型的肿瘤检测的分数从 0.7294 提高到 0.9648。基于所提出的医学图像处理方法和深度学习模型,该性能适用于具有较低计算资源的临床应用,可以准确地进行自动肾脏体积计算和肿瘤检测。实现了成本效益和有效性。