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A Novel Feature Selection Based Classification Algorithm for Real-Time Medical Disease Prediction

机译:基于新型特征选择的实时医学疾病预测分类算法

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In the current medical databases, feature extraction and disease prediction are the essential requirements to Chronic Obstructive Pulmonary Disease (COPD) and Alzheimer's diseases. Most of the medical databases have heterogeneous features with different levels of severity patterns. Feature extraction and classification of high risk patterns may have potential benefits for decision making. In the medical applications, data classification algorithms are used to detect the disease severity that can help in early prediction of new type of disease patterns. Also, machine learning algorithms are more accurate, high true positive rate and reliable for heterogeneous features. Traditional classification models such as Na?ve Bayes, SVM, Feed forward neural networks, Regression models, etc are used to classify the homogeneous disease datasets with limited feature space. As the size of the Alzheimer's disease patterns and its categories are increasing, traditional data classification models are failed to process the disease patterns due to inconsistent, class imbalance, and sparsity issues, which may affect the disease prediction rate and error rate. Therefore, an efficient classification model for predicting the severity level of the heterogeneous feature types is essential with high true positivity and low error rate. In this paper, a novel feature selection based classification model is proposed to improve the disease classification rate and testing the new type of disease patterns for real-time patient disease prediction. In the proposed model, a novel probabilistic based feature selection measure for classification algorithm is designed and implemented for real-time patient disease prediction using the training datasets. Experimental results show that the proposed feature selection based classification algorithm is better than the traditional algorithms in terms of true positive rate, error rate and F-measure are concerned.
机译:在目前的医疗数据库中,特征提取和疾病预测是对慢性阻塞性肺病(COPD)和阿尔茨海默病的基本要求。大多数医疗数据库具有异质特征,具有不同程度的严重程度模式。特征提取和高风险模式的分类可能具有决策的潜在益处。在医学应用中,数据分类算法用于检测疾病严重程度,可以帮助早期预测新型疾病模式。此外,机器学习算法更准确,高真正的阳性率和对异构特征可靠。传统的分类模型,如Na ve贝雷斯,SVM,饲料前进神经网络,回归模型等,用于分类具有有限特征空间的均匀疾病数据集。随着阿尔茨海默氏病的规模及其类别的增加,由于不一致,阶级不平衡和稀疏问题,传统的数据分类模型未能处理疾病模式,这可能会影响疾病预测率和错误率。因此,用于预测异构特征类型的严重性水平的有效分类模型,具有高真正的积极性和低差错率。本文提出了一种新颖的特征选择的分类模型,提高疾病分类率并测试了用于实时患者疾病预测的新型疾病模式。在所提出的模型中,设计了用于使用训练数据集的实时患者疾病预测的分类算法的新颖的基于概率的特征选择度量。实验结果表明,基于特征选择的分类算法优于传统算法,在真正的阳性率,错误率和F测量方面优于传统算法。

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