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Classifying Heart Disease in Medical Data Using Deep Learning Methods

机译:使用深度学习方法对医疗数据进行分类

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Recent days, heart ailments assume a fundamental role in the world. The physician gives different name for heart disease, for example, cardiovascular failure, heart failure and so on. Among the automated techniques to discover the coronary illness, this research work uses Named Entity Recognition (NER) algorithm to discover the equivalent words for the coronary illness content to mine the significance in clinical reports and different applications. The Heart sickness text information given by the physician is taken for the preprocessing and changes the text information to the ideal meaning, at that point the resultant text data taken as input for the prediction of heart disease. This experimental work utilizes the NER to discover the equivalent words of the coronary illness text data and currently uses the two strategies namely Optimal Deep Learning and Whale Optimization which are consolidated and proposed another strategy Optimal Deep Neural Network (ODNN) for predicting the illness. For the prediction, weights and ranges of the patient affected information by means of chosen attributes are picked for the experiment. The outcome is then characterized with the Deep Neural Network and Artificial Neural Network to discover the accuracy of the algorithms. The performance of the ODNN is assessed by means for classification methods, for example, precision, recall and f-measure values.
机译:最近几天,心脏病疾病在世界上担任基本作用。医生给出了不同名称的心脏病,例如心血管失败,心力衰竭等。在发现冠状动脉疾病的自动化技术中,该研究工作使用命名实体识别(NER)算法发现冠状动脉内含量的等效词,以挖掘临床报告和不同应用中的重要性。由医生给出的心脏病疾病文本信息用于预处理并将文本信息改为理想的含义,在该点,所得文本数据被视为用于预测心脏病的输入。该实验工作利用了NER来发现冠状动脉疾病文本数据的等同词,目前使用这两种策略即最佳的深度学习和鲸鱼优化,这些策略是整合的,并提出了另一种策略最佳的深层神经网络(ODNN)来预测疾病。对于通过所选属性来挑选患者影响信息的预测,重量和范围,用于实验。然后,该结果具有深度神经网络和人工神经网络,以发现算法的准确性。通过对分类方法的方式评估ODNN的性能,例如精度,召回和F测量值。

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