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基于数据融合的采用黑洞优化的核随机森林用于心脏病预测

Kernel random forest with black hole optimization for heart diseases prediction using data fusion.

作者信息

Alluhaidan Ala Saleh, Maashi Mashael, Negm Noha, Alotaibi Shoayee Dlaim, Alzahrani Ibrahim R, Salama Ahmed S

机构信息

Department of Information Systems, College of Computer and Information Sciences, Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia.

Department of Software Engineering, King Saud University, Riyadh, Saudi Arabia.

出版信息

PeerJ Comput Sci. 2024 Nov 29;10:e2364. doi: 10.7717/peerj-cs.2364. eCollection 2024.

Abstract

In recent years, the Internet of Things has played a dominant role in various real-time problems and given solutions via sensor signals. Monitoring the patient health status of Internet of Medical Things (IoMT) facilitates communication between wearable sensor devices and patients through a wireless network. Heart illness is one of the reasons for the increasing death rate in the world. Diagnosing the disease is done by the fusion of multi-sensor device signals. Much research has been done in predicting the disease and treating it correctly. However, the issues are accuracy, consumption time, and inefficiency. To overcome these issues, this paper proposed an efficient algorithm for fusing the multi-sensor signals from wearable sensor devices, classifying the medical signal data and predicting heart disease using the hybrid technique of kernel random forest with the Black Hole Optimization algorithm (KRF-BHO). This KRF-BHO is used for sensor data fusion, while XG-Boost is used to classify echocardiogram images. Accuracy in the training phase with multi-sensor data fusion data set of proposed work KRF-BHO with XGBoost classifier is 94.12%; in the testing phase, the accuracy rate is 95.89%. Similarly, for the Cleveland Dataset, the proposed work KRF-BHO with XGBoost classifier is 95.78%; in the testing phase, the accuracy rate is 96.21%.

摘要

近年来,物联网在各种实时问题中发挥了主导作用,并通过传感器信号提供解决方案。监测医疗物联网(IoMT)的患者健康状况有助于可穿戴传感器设备与患者之间通过无线网络进行通信。心脏病是全球死亡率上升的原因之一。通过多传感器设备信号的融合来诊断疾病。在预测疾病并进行正确治疗方面已经开展了大量研究。然而,存在准确性、消耗时间和效率低下等问题。为了克服这些问题,本文提出了一种高效算法,用于融合来自可穿戴传感器设备的多传感器信号,对医学信号数据进行分类,并使用核随机森林与黑洞优化算法(KRF-BHO)的混合技术预测心脏病。该KRF-BHO用于传感器数据融合,而XG-Boost用于对超声心动图图像进行分类。在所提出工作的多传感器数据融合数据集的训练阶段,使用XGBoost分类器的KRF-BHO的准确率为94.12%;在测试阶段,准确率为95.89%。同样,对于克利夫兰数据集,使用XGBoost分类器的所提出工作KRF-BHO为95.78%;在测试阶段,准确率为96.21%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cbdb/11622926/f9944eae9646/peerj-cs-10-2364-g001.jpg

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