Artificial intelligence-based analysis of lung ultrasound imaging has been demonstrated as an effective technique for rapid diagnostic decision support throughout the COVID-19 pandemic. However, such techniques can require days- or weeks-long training processes and hyper-parameter tuning to develop intelligent deep learning image analysis models. This work focuses on leveraging 'off-the-shelf' pre-trained models as deep feature extractors for scoring disease severity with minimal training time. We propose using pre-trained initializations of existing methods ahead of simple and compact neural networks to reduce reliance on computational capacity. This reduction of computational capacity is of critical importance in time-limited or resource-constrained circumstances, such as the early stages of a pandemic. On a dataset of 49 patients, comprising over 20,000 images, we demonstrate that the use of existing methods as feature extractors results in the effective classification of COVID-19-related pneumonia severity while requiring only minutes of training time. Our methods can achieve an accuracy of over 0.93 on a 4-level severity score scale and provides comparable per-patient region and global scores compared to expert annotated ground truths. These results demonstrate the capability for rapid deployment and use of such minimally-adapted methods for progress monitoring, patient stratification and management in clinical practice for COVID-19 patients, and potentially in other respiratory diseases.
翻译:对肺部超声成像的人工智能分析已被证明是在整个COVID-19大流行期间快速诊断决策支持的有效技术,但是,这种技术可能需要数日或数周的培训过程和超参数调整,以开发智能深学习图像分析模型;这项工作侧重于利用“现成”的预培训模型,作为在培训时间最少的情况下取得病情严重性分数的深精精精精精精精精精精精精精精精精精选模型;我们提议在简单和紧凑的神经网络之前,先采用预先培训的初始化方法,以减少对计算能力的依赖;在时间有限或资源紧张的情况下,例如流行病的早期阶段,这种计算能力的减少至关重要;关于49名病人的数据集,包括20 000多幅图像,我们表明,使用现有方法作为特效提取器,可以有效分类与COVI-19相关的肺炎严重性病情严重性,而只需要几分钟的培训时间;我们提出的方法可以达到4级重度分数超过0.93的准确度,并且提供与专家附加注释的地面真象的可比的每个病人和全球得分数;这些结果显示,在迅速部署和进行临床管理方面的潜在的病人的临床控制方法,以及采用这种最起码的诊断方法的能力。