Pal Madhumita, Parija Smita, Panda Ganapati, Dhama Kuldeep, Mohapatra Ranjan K
Department of Electronics and Communication Engineering, C. V. Raman Global University, Bidyanagar, Mahura, Janla, Bhubaneswar, Odisha 752054, India.
Division of Pathology, ICAR-Indian Veterinary Research Institute, Izatnagar, Bareilly 243122, Uttar Pradesh, India.
Open Med (Wars). 2022 Jun 17;17(1):1100-1113. doi: 10.1515/med-2022-0508. eCollection 2022.
Cardiovascular disease (CVD) makes our heart and blood vessels dysfunctional and often leads to death or physical paralysis. Therefore, early and automatic detection of CVD can save many human lives. Multiple investigations have been carried out to achieve this objective, but there is still room for improvement in performance and reliability. This study is yet another step in this direction. In this study, two reliable machine learning techniques, multi-layer perceptron (MLP), and -nearest neighbour (K-NN) have been employed for CVD detection using publicly available University of California Irvine repository data. The performances of the models are optimally increased by removing outliers and attributes having null values. Experimental-based results demonstrate that a higher accuracy in detection of 82.47% and an area-under-the-curve value of 86.41% are obtained using the MLP model, unlike the K-NN model. Therefore, the proposed MLP model was recommended for automatic CVD detection. The proposed methodology can also be employed in detecting other diseases. In addition, the performance of the proposed model can be assessed via other standard data sets.
心血管疾病(CVD)会使我们的心脏和血管功能失调,并常常导致死亡或身体瘫痪。因此,早期自动检测心血管疾病可以挽救许多人的生命。为实现这一目标已经进行了多项调查,但在性能和可靠性方面仍有改进空间。本研究是朝着这个方向迈出的又一步。在本研究中,使用公开可用的加利福尼亚大学欧文分校存储库数据,采用了两种可靠的机器学习技术,即多层感知器(MLP)和K近邻(K-NN)来进行心血管疾病检测。通过去除异常值和具有空值的属性,模型的性能得到了最佳提升。基于实验的结果表明,与K-NN模型不同,使用MLP模型可获得82.47%的更高检测准确率和86.41%的曲线下面积值。因此,推荐所提出的MLP模型用于心血管疾病的自动检测。所提出的方法也可用于检测其他疾病。此外,所提出模型的性能可以通过其他标准数据集进行评估。