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首页> 外文期刊>Journal of ambient intelligence and humanized computing >Deep learning based big medical data analytic model for diabetes complication prediction
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Deep learning based big medical data analytic model for diabetes complication prediction

机译:基于深度学习的糖尿病复杂性预测的大医学数据分析模型

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摘要

The revolution in digitization makes the health care sector as a prime source of big data. The analysis of these data could be a great supporting source for deriving new insights, which increases the care and awareness about health. Diabetes together with its complications has been recognized worldwide as a chief public health threat. Predicting diabetic complications is considered as a highly effectual technique for augmenting the survival rate of diabetic patients. While many studies currently use medical images and structured medical records, very limited efforts have been dedicated for applying Data Mining (DM) techniques for unstructured textual medical records, for instance, admission and discharge records. Many DM techniques have been generated for envisaging diabetic complications. But in existing methods, the classification as well as prediction accuracy is not so high. So this paper proposes a model centered on Deep Learning (DL) for predicting complications of Type 2 Diabetes Mellitus. The proposed model follows data collection, pre-training, feature extraction, Deep Belief Network (DBN), validation process, and classification steps for predicting diabetic complications. Finally, the performances proffered by the proposed DL based Big Medical Data Analytics model using DBN as well as the prevailing techniques are contrasted with respect to Precision, accuracy, and Recall. The Training, as well as the Testing process, delineates the pervasiveness of risk with an accuracy of 81.20%. This realistic prediction model will be very much useful for effectively managing diabetes.
机译:数字化的革命使医疗保健部门成为大数据的主要来源。对这些数据的分析可能是导出新见解的伟大支持来源,这增加了对健康的关心和意识。糖尿病以及其并发症的糖尿病在全球范围内被认为是主要的公共卫生威胁。预测糖尿病并发症被认为是增强糖尿病患者的存活率的高度有效技术。虽然许多研究目前使用医学图像和结构化的医疗记录,但非常有限的努力用于应用非结构化文本医疗记录的数据挖掘(DM)技术,例如入场和排放记录。已经产生了许多DM技术用于设想糖尿病并发症。但是在现有方法中,分类以及预测精度并不那么高。因此,本文提出了一种以深入学习(DL)为中心的模型,以预测2型糖尿病的并发症。拟议的模型跟随数据收集,预训练,特征提取,深度信仰网络(DBN),验证过程和预测糖尿病并发症的分类步骤。最后,通过基于DB的基于DL的大医学数据分析模型提供了使用DBN的表演以及普遍的技术与精度,准确性和召回相比,对比。培训以及测试过程界定了风险的普及,准确性为81.20%。这种现实预测模型对于有效管理糖尿病非常有用。

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