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Optimized Predictive Framework for Healthcare Through Deep Learning

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摘要 Smart healthcare integrates an advanced wave of information technology using smart devices to collect health-related medical science data.Such data usually exist in unstructured,noisy,incomplete,and heterogeneous forms.Annotating these limitations remains an open challenge in deep learning to classify health conditions.In this paper,a long short-term memory(LSTM)based health condition prediction framework is proposed to rectify imbalanced and noisy data and transform it into a useful form to predict accurate health conditions.The imbalanced and scarce data is normalized through coding to gain consistency for accurate results using synthetic minority oversampling technique.The proposed model is optimized and ne-tuned in an end to end manner to select ideal parameters using tree parzen estimator to build a probabilistic model.The patient’s medication is pigeonholed to plot the diabetic condition’s risk factor through an algorithm to classify blood glucose metrics using a modern surveillance error grid method.The proposed model can efciently train,validate,and test noisy data by obtaining consistent results around 90%over the state of the art machine and deep learning techniques and overcoming the insufciency in training data through transfer learning.The overall results of the proposed model are further tested with secondary datasets to verify model sustainability.
出处 《Computers, Materials & Continua》 SCIE EI 2021年第5期2463-2480,共18页 计算机、材料和连续体(英文)
基金 supported by Researchers Supporting Project number(RSP2020/87),King Saud University,Riyadh,Saudi Arabia.
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