A Deep Learning Framework for Prediction of Cardiopulmonary Arrest

Sirisha Potluri, Bikash Chandra Sahoo, S. Satapathy, Shruti Mishra, Janjhyam Venkata Naga Ramesh, S. Mohanty
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Abstract

INTRODUCTION: The cardiopulmonary arrest is a major issue in any country. Gone are the days when it used to happen to those who are aged but now it is a major concern emerging among adolescents as well. According to the World Health Organization (WHO), cardiac arrest and stroke is still a major concern and remains a public health crisis. In past years India has witnessed many cases of heart related issues which used to occur predominantly among people having high cholesterol. But now the scenario has changed, and cases have been observed in people having normal cholesterol levels. There are several factors involved in heart stroke such as age, sex, blood pressure, etc. which are used by doctors to monitor and diagnose the same. OBJECTIVES: This paper focuses on different predictive models and ways to improve the accuracy of prediction by analyzing datasets on how they affect the accuracy of certain algorithms. METHODS: The factors contributing to heart issues can be used as a beacon to predict the stroke and help an individual to further consult a doctor beforehand. The idea is to target the datasets and the prediction algorithms of deep learning including advanced ones to improvise it and attain a better result. RESULTS: This paper brings out the comparative analysis among neural network techniques like ANN, Transfer Learning, MAML and LRP in which ANN showed the best result by giving the highest accuracy of 94%. CONCLUSION: Furthermore, it discusses a new attribute called “gamma prime fibrinogen” which could be used in the future to boost prediction performance.
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预测心肺骤停的深度学习框架
导言:心肺骤停在任何国家都是一个重大问题。过去,心肺骤停只发生在老年人身上,但现在,青少年中也出现了心肺骤停。据世界卫生组织(WHO)称,心脏骤停和中风仍然是一个重大问题,也仍然是一个公共卫生危机。过去几年,印度发生了许多心脏相关疾病的病例,这些疾病主要发生在高胆固醇人群中。但现在情况发生了变化,胆固醇水平正常的人中也出现了病例。心脏中风涉及多种因素,如年龄、性别、血压等,医生会根据这些因素进行监测和诊断。目的:本文通过分析数据集如何影响某些算法的准确性,重点探讨不同的预测模型和提高预测准确性的方法。方法:导致心脏问题的因素可作为预测中风的信标,帮助个人提前咨询医生。我们的想法是针对深度学习的数据集和预测算法(包括高级算法)进行改进,以获得更好的结果。结果:本文对 ANN、迁移学习、MAML 和 LRP 等神经网络技术进行了比较分析,其中 ANN 的准确率最高,达到 94%,显示出最佳效果。结论:此外,本文还讨论了一种名为 "γ原纤维蛋白原 "的新属性,未来可用于提高预测性能。
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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