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Disease Risk Prediction by Using Convolutional Neural Network

机译:使用卷积神经网络预测疾病风险预测

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Data analysis plays a significant role in handling a large amount of data in the healthcare. The previous medical researches based on handling and assimilate a huge amount of hospital data instead of prediction. Due to an enormous amount of data growth in the biomedical and healthcare field the accurate analysis of medical data becomes propitious for earlier detection of disease and patient care. However, the accuracy decreases when the medical data is partially missing. To overcome the problem of missing medical data, we perform data cleaning and imputation to transform the incomplete data to complete data. We are working on heart disease prediction on the basis of the dataset with help of Naive bayes and KNN algorithm. To extend this work, we propose the disease risk prediction using structured data. We use convolutional neural network based unimodel disease risk prediction algorithm. The prediction accuracy of CNN-UDRP algorithm reaches more than 65%. Moreover, this system answers the question related to disease which people face in their life.
机译:数据分析在处理医疗保健中的大量数据方面发挥着重要作用。基于处理和吸收大量医院数据而不是预测的先前医学研究。由于生物医学和医疗保健领域的数据增长巨大的数据增长,医学数据的准确分析对于早期的疾病和患者护理有缺乏。但是,当医疗数据部分丢失时,精度会降低。为了克服缺少医疗数据的问题,我们执行数据清洁和归档,以将不完整的数据转换为完整的数据。我们正在使用Naive Bayes和Knn算法的数据集进行心脏病预测。为了扩展这项工作,我们建议使用结构化数据提出疾病风险预测。我们使用基于卷积神经网络的非典型疾病风险预测算法。 CNN-UDRP算法的预测精度达到65%以上。此外,该系统回答了与人们面临的疾病有关的问题。

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