论文标题

基于数据有效的深度学习智能手机应用于使用胸部X射线检测肺部疾病的应用

A Data-Efficient Deep Learning Based Smartphone Application For Detection Of Pulmonary Diseases Using Chest X-rays

论文作者

Shalu, Hrithwik, P, Harikrishnan, Das, Akash, Mandal, Megdut, Sali, Harshavardhan M, Kadiwala, Juned

论文摘要

本文介绍了基于智能手机应用程序疾病诊断的范式,这些诊断可能会完全彻底改变提供医疗服务的方式。尽管主要旨在在冠状病毒大流行期间提供有关提供医疗服务的问题,但也可以扩展该模型以识别患者从广泛的肺部疾病中捕获的确切疾病。该应用程序输入从移动摄像机捕获的胸部X射线图像,然后将其传递到云平台中的AI体系结构,并以最先进的状态诊断疾病。拥有智能手机的医生可以利用该应用程序来节省标准COVID-19测试进行初步诊断的大量时间。通过使用数据增强生成对抗网络(DAGAN)和基于注意力机制的卷积暹罗网络,通过使用数据增强生成对抗网络(DAGAN)和模型体系结构来有效地解决了训练数据和阶级失衡问题的稀缺性。在两个不同的分类方案(二进制/多类)下,对后端模型的可公开数据集进行了测试,并具有最小和嘈杂的数据。该模型在两种方案上实现了99.30%和98.40%的峰顶测试精度,这对用户完全可靠。最重要的是,引入了半寿命培训方案,这有助于随着数据的积累,随着时间的推移会随着时间的推移提高应用程序性能。总体而言,通过模型架构解决了复杂模型和数据效率低下的普遍性问题。通过半实时培训的基于应用程序的设置有助于便于社会获得可靠的医疗保健,并有助于对最小数据设置中稀有疾病的无效研究。

This paper introduces a paradigm of smartphone application based disease diagnostics that may completely revolutionise the way healthcare services are being provided. Although primarily aimed to assist the problems in rendering the healthcare services during the coronavirus pandemic, the model can also be extended to identify the exact disease that the patient is caught with from a broad spectrum of pulmonary diseases. The app inputs Chest X-Ray images captured from the mobile camera which is then relayed to the AI architecture in a cloud platform, and diagnoses the disease with state of the art accuracy. Doctors with a smartphone can leverage the application to save the considerable time that standard COVID-19 tests take for preliminary diagnosis. The scarcity of training data and class imbalance issues were effectively tackled in our approach by the use of Data Augmentation Generative Adversarial Network (DAGAN) and model architecture based as a Convolutional Siamese Network with attention mechanism. The backend model was tested for robustness us-ing publicly available datasets under two different classification scenarios(Binary/Multiclass) with minimal and noisy data. The model achieved pinnacle testing accuracy of 99.30% and 98.40% on the two respective scenarios, making it completely reliable for its users. On top of that a semi-live training scenario was introduced, which helps improve the app performance over time as data accumulates. Overall, the problems of generalisability of complex models and data inefficiency is tackled through the model architecture. The app based setting with semi live training helps in ease of access to reliable healthcare in the society, as well as help ineffective research of rare diseases in a minimal data setting.

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