Department of Radiology, Guigang People's Hospital, Guigang 537100, Guangxi, China.
Department of Hepatobiliary Pancreatic Surgery, Guigang People's Hospital, Guigang 537100, Guangxi, China.
Contrast Media Mol Imaging. 2021 Sep 17;2021:4997329. doi: 10.1155/2021/4997329. eCollection 2021.
The study aimed to explore the application value of picture archiving and communication system (PCAS) of MRI images based on radial basis function (RBF) neural network algorithm combined with the radiology information system (RIS).
551 patients who required MRI examination in a hospital from May 2016 to May 2021 were selected as research subjects. Patients were divided into two groups according to their own wishes. Those who were willing to use the RBF neural network algorithm-based PCAS of MRI images combined with RIS were set as the combined group, involving a total of 278 cases; those who were unwilling were set as the regular group, involving a total of 273 cases. The RBF neural network algorithm-based PCAS of MRI images combined with RIS was trained and tested for classification performance and then used for comparison analysis.
The actual output (0.031259-0.038515) of all test samples was almost the same as the target output (0.000000) ( 0.05). In the first 50,000 learnings, the iteration error of the RBF neural network dropped rapidly and finally stabilized at 0.038. The classification accuracy of the RBF neural network algorithm-based PCAS of MRI images combined with RIS for the head was 94.28%, that of abdomen was 97.22%, and it was 93.10% for knee joint, showing no statistically significant differences ( 0.05), and the total classification accuracy was as high as 95%. The time spent in the examination in the combined group was about 2 hours, and that in the regular group was about 4 hours ( 0.05). The satisfaction of the combined group (96.76%) was significantly higher than that of the control group (46.89%) ( 0.05).
The RBF neural network has good classification performance for MRI images. To incorporate intelligent algorithms into the medical information system can optimize the system. RBF has good application prospects in the medical information system, and it is worthy of continuous exploration.
本研究旨在探讨基于径向基函数(RBF)神经网络算法的磁共振成像(MRI)图像的图片存档与通信系统(PCAS)与放射信息系统(RIS)结合的应用价值。
选取 2016 年 5 月至 2021 年 5 月在我院行 MRI 检查的 551 例患者作为研究对象。根据患者的自身意愿将其分为两组,愿意使用基于 RBF 神经网络算法的 MRI 图像 PCAS 联合 RIS 的患者纳入联合组,共 278 例;不愿意使用的患者纳入常规组,共 273 例。对基于 RBF 神经网络算法的 MRI 图像 PCAS 联合 RIS 进行分类性能的训练和测试,然后进行对比分析。
所有测试样本的实际输出(0.031259-0.038515)与目标输出(0.000000)( 0.05)几乎相同。在前 50000 次学习中,RBF 神经网络的迭代误差迅速下降,最终稳定在 0.038。基于 RBF 神经网络算法的 MRI 图像 PCAS 联合 RIS 对头的分类准确率为 94.28%,对腹部的分类准确率为 97.22%,对膝关节的分类准确率为 93.10%,差异均无统计学意义( 0.05),总分类准确率高达 95%。联合组检查时间约 2 小时,常规组约 4 小时( 0.05)。联合组的满意度(96.76%)明显高于常规组(46.89%)( 0.05)。
RBF 神经网络对 MRI 图像具有良好的分类性能。将智能算法纳入医疗信息系统可以优化系统。RBF 在医疗信息系统中有很好的应用前景,值得进一步探索。