Department of Computer Science and Engineering, SITAMS, Chittoor, 517127, Andhra Pradesh, India; School of Computing Science and Engineering, VIT University, Vellore, 632014, Tamil Nadu, India.
School of Computing Science and Engineering, VIT University, Vellore, 632014, Tamil Nadu, India; Department of Information Technology, Sreenidhi Institute of Science and Technology, Yamnapet, Ghatkesr, Hyderabad, 501301, Telengana, India.
Comput Biol Med. 2017 Nov 1;90:125-136. doi: 10.1016/j.compbiomed.2017.09.011. Epub 2017 Sep 19.
Enormous data growth in multiple domains has posed a great challenge for data processing and analysis techniques. In particular, the traditional record maintenance strategy has been replaced in the healthcare system. It is vital to develop a model that is able to handle the huge amount of e-healthcare data efficiently. In this paper, the challenging tasks of selecting critical features from the enormous set of available features and diagnosing heart disease are carried out. Feature selection is one of the most widely used pre-processing steps in classification problems. A modified differential evolution (DE) algorithm is used to perform feature selection for cardiovascular disease and optimization of selected features. Of the 10 available strategies for the traditional DE algorithm, the seventh strategy, which is represented by DE/rand/2/exp, is considered for comparative study. The performance analysis of the developed modified DE strategy is given in this paper. With the selected critical features, prediction of heart disease is carried out using fuzzy AHP and a feed-forward neural network. Various performance measures of integrating the modified differential evolution algorithm with fuzzy AHP and a feed-forward neural network in the prediction of heart disease are evaluated in this paper. The accuracy of the proposed hybrid model is 83%, which is higher than that of some other existing models. In addition, the prediction time of the proposed hybrid model is also evaluated and has shown promising results.
多领域的巨量数据增长对数据处理和分析技术提出了巨大的挑战。特别是,医疗保健系统已经取代了传统的记录维护策略。开发一种能够高效处理大量电子医疗保健数据的模型至关重要。在本文中,我们执行了从大量可用特征中选择关键特征和诊断心脏病的挑战性任务。特征选择是分类问题中最广泛使用的预处理步骤之一。我们使用改进的差分进化(DE)算法来执行心血管疾病的特征选择和所选特征的优化。在传统 DE 算法的 10 种可用策略中,考虑了第七种策略,即 DE/rand/2/exp 来进行比较研究。本文给出了所开发的改进型 DE 策略的性能分析。使用选定的关键特征,使用模糊层次分析法和前馈神经网络进行心脏病预测。本文评估了在心脏病预测中集成改进型差分进化算法、模糊层次分析法和前馈神经网络的各种性能指标。所提出的混合模型的准确率为 83%,高于一些其他现有模型。此外,还评估了所提出的混合模型的预测时间,结果也很有前景。