More than just sound: Harnessing metadata to improve neural network classifiers for medical auscultation

不仅仅是声音:利用元数据改进用于医学听诊的神经网络分类器

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Abstract

Label-efficient algorithms are of central importance for machine learning applications in many medical fields, where obtaining expert annotations is often expensive and time-consuming. Soni et al. show how contrastive learning can help build classifiers for one of the oldest and most revered methods of clinical medicine: auscultation of heart and lung sounds.

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