基于无服务器数据管道框架的胸部x线图像疾病预测

Vikas Singh, Neha Singh, Mainak Adhikari
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引用次数: 0

摘要

无服务器架构是云计算领域中迅速出现的一种趋势,与传统的基于服务器的方法相比,它承诺提高灵活性、可伸缩性和成本效益。利用机器利用图像数据(如胸部x射线图像)自动分析和预测疾病正在成为各种当代应用的一项具有挑战性的任务。无服务器计算是一种基于用户/应用程序需求提供和管理资源的云计算执行模型。除此之外,现代数据密集型应用程序需要在无服务器平台中管理不同组件之间的数据流。基于此,在本文中,我们开发了一种新的无服务器数据管道框架,用于使用胸部x射线图像预测疾病。该系统利用谷歌无服务器平台上托管的基于深度学习(DL)的图像分类模型进行COVID-19诊断。对于疾病预测,我们在三种流行的深度学习模型(即VGG-16、DenseNet121和ResNet50)上结合了迁移学习技术。实验分析表明,所提出的无服务器数据管道框架在COVID-19疾病诊断中具有较高的准确性、可靠性和速度。仿真结果表明,VGG-16模型优于现有的深度学习模型,准确率达到97.66%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disease Prediction using Chest X-ray Images in Serverless Data pipeline Framework
Serverless architecture is a rapidly emerging trend in the field of cloud computing that promises increased flexibility, scalability, and cost-effectiveness compared to traditional server-based approaches. Leveraging machines to automatically analyze and predict the disease using image data such as chest X-ray images is becoming a challenging task for various contemporary applications. Serverless computing is a cloud computing execution model that provides and manages resources based on the requirements of the users/applications. Besides that, modern data-intensive applications require the power to manage the flow of data between different components in a serverless platform. Motivated by that, in this paper, we develop a new serverless data pipeline framework for predicting disease using chest Xray images. The system utilizes Deep Learning (DL)-based image classification models hosted on Google serverless platform for COVID-19 diagnosis. For disease prediction, we incorporate a transfer learning technique over three popular DL models, namely VGG-16, DenseNet121, and ResNet50. The experimental analysis demonstrates that the proposed serverless data pipeline framework achieves high accuracy, reliability, and speed during COVID-19 disease diagnosis. As per the simulation results, the VGG-16 model outperforms the existing DL models and achieves 97.66% accuracy.
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