Prediction of Insufficient Accuracy for Patient's Length of Stay using Feed Forward Neural Network by comparing Deep Belief Network

Chandragiri Vasanth Kumar, Saravanan. M.S, R. Surendran
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Abstract

The research is to study the patient's length of stay in intensive care unit (ICU) admissions each year with their cost and health expenditure. Forecasting in the clinical Decision Support System (DSS) is being developed in the study to anticipate and enhance hospital equipment for patients' health analysis. The most crucial examination is to give appropriate technology and quality drugs to analyze the patient's health, which is then recorded in electronic medical records. To achieve the best exactness, this research study employed the innovative Feed Forward Neural Network and Deep Belief Network to accomplish the operations. The study gathered 47 samples from two groups of calculation with a G-power of 80% and their Patient electronic health records investigations were collected from a variety of online sources, with recent research findings and a 0.05% threshold, confidence interval of 95% mean and standard deviation. The unique Feed Forward Neural Network approach obtained 93.65% accuracy in predicting ICU analysis; consequently, The Deep Belief Network method in machine learning should be upgraded for improved accuracy in health prediction in this study. This study discovered a 90.07% accuracy for ICU analysis utilizing the Deep Belief Network method, with a significant value of two-tailed tests of 0.006 (p0.05) and a 95% confidence range. This study reveals that the innovative Feed Forward Neural Network method outperforms the Deep Belief Network algorithm for ICU analysis of patients.
前馈神经网络与深度信念网络对比预测患者住院时间准确性不足
该研究旨在研究患者每年在重症监护病房(ICU)住院的时间与费用和卫生支出。临床决策支持系统(DSS)的预测正在研究中发展,以预测和提高医院设备的病人健康分析。最关键的检查是提供适当的技术和高质量的药物来分析患者的健康状况,然后将其记录在电子病历中。为了达到最佳的准确性,本研究采用创新的前馈神经网络和深度信念网络来完成操作。该研究从两组计算中收集了47个样本,g功率为80%,他们的患者电子健康记录调查是从各种在线来源收集的,最近的研究结果和0.05%的阈值,置信区间为95%的平均值和标准差。独特的前馈神经网络方法预测ICU分析准确率达到93.65%;因此,应该对机器学习中的深度信念网络方法进行升级,以提高本研究中健康预测的准确性。本研究发现,使用深度信念网络方法进行ICU分析的准确率为90.07%,双尾检验显著值为0.006 (p0.05),置信范围为95%。本研究表明,创新的前馈神经网络方法在ICU患者分析方面优于深度信念网络算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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