神经网络辅助医院实时推荐系统

Q1 Earth and Planetary Sciences
Om Adideva Paranjay, Rajeshkumar
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引用次数: 7

摘要

在过去几年中,医疗保健提供者、医院和诊所的数量惊人。在这种情况下,为合适的疾病找到合适的医院可能是一个相当大的挑战。受到这一挑战的启发,这项工作试图建立一个可以根据用户需求自动推荐医院的模型。过去在医生推荐方面有重要的工作。我们提出的工作旨在更具包容性,并为患者提供基于神经网络驱动分类的自动医院推荐系统。我们建议一个模型考虑几个独特的参数,包括地理位置。为优化其可用性,我们设计了综合会诊推荐医院、专科推荐医院、大流行推荐治疗医院等系统。在这项工作中,我们采用神经网络,并在几种不同的可用监督算法之间进行比较分析,以确定一种最适合的神经架构,可以在应用领域中发挥最佳作用。根据我们的分析结果,我们用上下文相关数据训练选定的神经网络。在推荐系统的图像中,我们开发了一个网站,该网站在后端使用经过训练的神经网络,并以最终用户可解释的方式显示推荐结果。我们强调为网站后端选择正确的神经模型的过程。为了方便网站的实时运行,我们使用了托管在Google Firebase和医院端边缘设备上的实时数据库。此外,我们建议两种医院侧数据更新工具。这些工具将确保医院能够将现实世界中快速变化的参数更新为最新值,从而保持系统的精度。我们用测试数据对网站进行测试,发现网站在规定的格式下推荐医院有足够的精度。该模型是在该领域可用数据有限的情况下设计的,但随着质量的提高和数据的丰富,可以很容易地提高模型的性能和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neural Network Aided Real-Time Hospital Recommendation System
Over the past few years, there have been an overwhelming number of healthcare providers, hospitals and clinics. In such a situation, finding the right hospital for the right ailment can be a considerable challenge. Inspired by this challenge, this work attempts to build a model that can automatically recommend hospitals based on user requirements. In the past there have been important works in physician recommendation.  Our proposed work aims to be more inclusive and provide an automated hospital recommendation system to patients based on neural networks driven classification. We suggest a model that considers several unique parameters, including geographical location. To optimize its usefulness, we design a system that recommends hospitals for general consultation, specialty hospitals, and in view of the pandemic, hospitals recommended for treatment of COVID-19. In this work, we adopt Neural Networks and undertake a comparative analysis between several different available supervised algorithms to identify one best suited neural architecture that can work best in the applied fields. Based on our results from the analysis, we train the selected neural network with context relevant data. In the image of the recommendation system, we develop a website that uses the trained neural network on its backend and displays the recommendation results in a manner interpretable by the end user. We highlight the process of choosing the right neural model for the backend of the website.  To facilitate the working of the website in real-time, we use real time databases hosted on Google Firebase and edge devices on hospital ends. Additionally, we suggest two hospital side data updation tools. These tools would ensure that hospitals can update the parameters which change quickly in the real world to their latest values so as to maintain the precision of the system. We test the website with test data and find that the website recommends hospitals with sufficient precision in the specified format. The model has been designed with the limited amount of data available in this field, but its performance and utility can be easily improved with better quality and more abundant data.
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来源期刊
Indonesian Journal of Science and Technology
Indonesian Journal of Science and Technology Engineering-Engineering (all)
CiteScore
11.20
自引率
0.00%
发文量
10
审稿时长
16 weeks
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