COVID-MobileXpert: On-Device COVID-19 Patient Triage and Follow-up using Chest X-rays
Xin Li, Chengyin Li, Dongxiao Zhu

TL;DR
COVID-MobileXpert is a lightweight, on-device deep learning app that uses chest X-rays for rapid COVID-19 screening and patient follow-up, employing a novel knowledge transfer framework for high accuracy.
Contribution
The paper introduces a novel three-player knowledge transfer framework enabling on-device COVID-19 diagnosis from chest X-rays with limited data and computational resources.
Findings
Effective on-device COVID-19 triage demonstrated
High accuracy with small COVID-19 datasets
Potential for rapid deployment in clinical settings
Abstract
During the COVID-19 pandemic, there has been an emerging need for rapid, dedicated, and point-of-care COVID-19 patient disposition techniques to optimize resource utilization and clinical workflow. In view of this need, we present COVID-MobileXpert: a lightweight deep neural network (DNN) based mobile app that can use chest X-ray (CXR) for COVID-19 case screening and radiological trajectory prediction. We design and implement a novel three-player knowledge transfer and distillation (KTD) framework including a pre-trained attending physician (AP) network that extracts CXR imaging features from a large scale of lung disease CXR images, a fine-tuned resident fellow (RF) network that learns the essential CXR imaging features to discriminate COVID-19 from pneumonia and/or normal cases with a small amount of COVID-19 cases, and a trained lightweight medical student (MS) network to perform…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Lung Cancer Diagnosis and Treatment · Machine Learning in Healthcare
