论文标题
学习通用的肺超声生物标志物,用于从下游任务中解耦提取特征
Learning Generic Lung Ultrasound Biomarkers for Decoupling Feature Extraction from Downstream Tasks
论文作者
论文摘要
当代人工神经网络(ANN)是经过训练的端到端,共同学习特征和分类器,以完成感兴趣的任务。尽管非常有效,但这种范式在组装带注释的特定任务数据集和培训大规模网络方面施加了巨大的成本。我们建议通过引入Visual BioMarker分类的辅助预任务来解除从下游肺超声任务中学习的特征学习。我们证明,通过培训模型来预测生物标记标签,可以从超声视频中学习一个内容丰富,简洁且可解释的功能空间。值得注意的是,可以从弱视频尺度监督注释的数据中培训生物标志物功能提取器。这些功能可以由针对各种临床任务的各种下游专家模型(诊断,肺严重程度,S/F比)使用。至关重要的是,特定于任务的专家模型的准确性与直接训练有关此类目标任务的端到端模型相当,同时训练成本大大降低。
Contemporary artificial neural networks (ANN) are trained end-to-end, jointly learning both features and classifiers for the task of interest. Though enormously effective, this paradigm imposes significant costs in assembling annotated task-specific datasets and training large-scale networks. We propose to decouple feature learning from downstream lung ultrasound tasks by introducing an auxiliary pre-task of visual biomarker classification. We demonstrate that one can learn an informative, concise, and interpretable feature space from ultrasound videos by training models for predicting biomarker labels. Notably, biomarker feature extractors can be trained from data annotated with weak video-scale supervision. These features can be used by a variety of downstream Expert models targeted for diverse clinical tasks (Diagnosis, lung severity, S/F ratio). Crucially, task-specific expert models are comparable in accuracy to end-to-end models directly trained for such target tasks, while being significantly lower cost to train.