Department of Information Technology, Vardhaman College of Engineering, Kacharam, Hyderabad, Telangana, India.
Department of Computational Intelligence, School of Computing, SRM Institute of Science and Technology, Kattangalathur, Chennai, Tamil Nadu, India.
J Digit Imaging. 2023 Aug;36(4):1489-1506. doi: 10.1007/s10278-023-00834-9. Epub 2023 May 23.
IoT in healthcare systems is currently a viable option for providing higher-quality medical care for contemporary e-healthcare. Using an Internet of Things (IoT)-based smart healthcare system, a trustworthy breast cancer classification method called Feedback Artificial Crow Search (FACS)-based Shepherd Convolutional Neural Network (ShCNN) is developed in this research. To choose the best routes, the secure routing operation is first carried out using the recommended FACS while taking fitness measures such as distance, energy, link quality, and latency into account. Then, by merging the Crow Search Algorithm (CSA) and Feedback Artificial Tree, the produced FACS is put into practice (FAT). After the completion of routing phase, the breast cancer categorization process is started at the base station. The feature extraction step is then introduced to the pre-processed input mammography image. As a result, it is possible to successfully get features including area, mean, variance, energy, contrast, correlation, skewness, homogeneity, Gray Level Co-occurrence Matrix (GLCM), and Local Gabor Binary Pattern (LGBP). The quality of the image is next enhanced through data augmentation, and finally, the developed FACS algorithm's ShCNN is used to classify breast cancer. The performance of FACS-based ShCNN is examined using six metrics, including energy, delay, accuracy, sensitivity, specificity, and True Positive Rate (TPR), with the maximum energy of 0.562 J, the least delay of 0.452 s, the highest accuracy of 91.56%, the higher sensitivity of 96.10%, the highest specificity of 91.80%, and the maximum TPR of 99.45%.
物联网在医疗系统中是为当代电子医疗提供更高质量医疗服务的一种可行选择。本研究中提出了一种基于物联网的智能医疗保健系统,使用称为基于反馈人工 Crow 搜索(FACS)的 Shepherd 卷积神经网络(ShCNN)的可信乳腺癌分类方法。为了选择最佳路线,首先使用推荐的 FACS 进行安全路由操作,同时考虑距离、能量、链路质量和延迟等适应性因素。然后,通过合并 Crow Search Algorithm(CSA)和 Feedback Artificial Tree,实现所产生的 FACS(FAT)。路由阶段完成后,在基站开始乳腺癌分类过程。然后将特征提取步骤引入预处理的输入乳房 X 光图像。结果,可以成功获取包括面积、均值、方差、能量、对比度、相关性、偏度、同质性、灰度共生矩阵(GLCM)和局部 Gabor 二进制模式(LGBP)在内的特征。接下来,通过数据增强来提高图像质量,最后使用开发的 FACS 算法的 ShCNN 对乳腺癌进行分类。使用包括能量、延迟、准确性、灵敏度、特异性和真阳性率(TPR)在内的六个指标来检查基于 FACS 的 ShCNN 的性能,最大能量为 0.562 J,最小延迟为 0.452 s,最高准确率为 91.56%,灵敏度最高为 96.10%,特异性最高为 91.80%,真阳性率最高为 99.45%。