CAFES:利用联合自监督学习进行胸部X光分析,以检测小儿COVID-19。

Abhijeet Parida, Syed Muhammad Anwar, Malhar P Patel, Mathias Blom, Tal Tiano Einat, Alex Tonetti, Yuval Baror, Ittai Dayan, Marius George Linguraru
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引用次数: 0

摘要

胸部 X 光片(CXR)在对各种心脏和肺部相关疾病进行经济有效的临床评估方面发挥着举足轻重的作用。COVID-19 诊断的紧迫性促使其被用于识别儿科患者的肺不张、肺炎和急性呼吸窘迫综合征等疾病。我们提出了一种人工智能驱动的解决方案,用于对儿科 CXR 进行 COVID-19 与非 COVID-19 的二元分类。我们提出了一个联合自监督学习(FSSL)框架,以提高视觉转换器(ViT)在儿科 CXR 中检测 COVID-19 的性能。ViT 在视觉相关的二元分类任务中表现出色,结合对成人 CXR 数据的自我监督预训练,构成了 FSSL 方法的基础。我们在犀牛健康联合计算平台(FCP)上实施我们的策略,该平台可确保分布式数据的隐私性和可扩展性。使用联合 SSL(CAFES)模型进行的胸部 X 光分析,利用了 FSSL 预先训练的 ViT 权重,与完全监督模型相比,在准确检测 COVID-19 方面取得了显著效果。在使用儿科数据诊断 COVID-19 时,我们的 FSSL 预训练 ViT 的精确度-召回曲线下面积 (AUPR) 为 0.952,比完全监督模型高出 0.231 个点。我们的贡献包括:利用视觉转换器从儿科 CXR 中获得有效的 COVID-19 诊断,在成人数据上采用基于分布式联合学习的自监督预训练,以及提高儿科 COVID-19 诊断性能。这种注重隐私的方法符合 HIPAA 准则,为更广泛的医学成像应用铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CAFES: Chest X-ray Analysis using Federated Self-supervised Learning for Pediatric COVID-19 Detection.

Chest X-rays (CXRs) play a pivotal role in cost-effective clinical assessment of various heart and lung related conditions. The urgency of COVID-19 diagnosis prompted their use in identifying conditions like lung opacity, pneumonia, and acute respiratory distress syndrome in pediatric patients. We propose an AI-driven solution for binary COVID-19 versus non-COVID-19 classification in pediatric CXRs. We present a Federated Self-Supervised Learning (FSSL) framework to enhance Vision Transformer (ViT) performance for COVID-19 detection in pediatric CXRs. ViT's prowess in vision-related binary classification tasks, combined with self-supervised pre-training on adult CXR data, forms the basis of the FSSL approach. We implement our strategy on the Rhino Health Federated Computing Platform (FCP), which ensures privacy and scalability for distributed data. The chest X-ray analysis using the federated SSL (CAFES) model, utilizes the FSSL-pre-trained ViT weights and demonstrated gains in accurately detecting COVID-19 when compared with a fully supervised model. Our FSSL-pre-trained ViT showed an area under the precision-recall curve (AUPR) of 0.952, which is 0.231 points higher than the fully supervised model for COVID-19 diagnosis using pediatric data. Our contributions include leveraging vision transformers for effective COVID-19 diagnosis from pediatric CXRs, employing distributed federated learning-based self-supervised pre-training on adult data, and improving pediatric COVID-19 diagnosis performance. This privacy-conscious approach aligns with HIPAA guidelines, paving the way for broader medical imaging applications.

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