Department of Electronics and Communication Engineering, University College of Engineering Villupuram, Villupuram, Tamilnadu, 605103, India.
Department of Electronics and Communication Engineering, University College of Engineering Tindivanam, Tindivanam, Tamilnadu, 604001, India.
J Med Syst. 2018 Dec 18;43(2):21. doi: 10.1007/s10916-018-1139-7.
In this paper, we propose a new Internet of Things (IoT) based predictive modelling by using fuzzy cluster based augmentation and classification for predicting the lung cancer disease through continuous monitoring and also to improve the healthcare by providing medical instructions. Here, the fuzzy clustering method is used and which is based on transition region extraction for effective image segmentation. Moreover, Fuzzy C-Means Clustering algorithm is used to categorize the transitional region features from the feature of lung cancer image. In this work, Otsu thresholding method is used for extracting the transition region from lung cancer image. Moreover, the right edge image and the morphological thinning operation are used for enhancing the performance of segmentation. In addition, the morphological cleaning and the image region filling operations are performed over an edge lung cancer image for getting the object regions. In addition, we also propose a new incremental classification algorithm which combines the existing Association Rule Mining (ARM), the standard Decision Tree (DT) with temporal features and the CNN. The experiments have been conducted by using the standard images that are collected from database and the current health data which are collected from patient through IoT devices. The results proved that the performance of the proposed prediction model which is able to achieve the better accuracy when it is compared with other existing prediction model.
在本文中,我们提出了一种新的基于物联网的预测模型,通过使用模糊聚类增强和分类来预测肺癌疾病,通过连续监测,并提供医疗指导来改善医疗保健。在这里,使用模糊聚类方法,它基于过渡区域提取进行有效的图像分割。此外,还使用模糊 C 均值聚类算法对肺癌图像的特征进行分类。在这项工作中,使用 Otsu 阈值法从肺癌图像中提取过渡区域。此外,还使用右边缘图像和形态细化操作来提高分割性能。此外,还对边缘肺癌图像执行形态清理和图像区域填充操作,以获取对象区域。此外,我们还提出了一种新的增量分类算法,该算法结合了现有的关联规则挖掘(ARM)、具有时间特征的标准决策树(DT)和 CNN。实验是通过使用从数据库收集的标准图像和通过物联网设备从患者收集的当前健康数据进行的。结果表明,与其他现有预测模型相比,所提出的预测模型具有更好的准确性。