2020
DOI: 10.48550/arxiv.2002.02582
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Quantifying the Value of Lateral Views in Deep Learning for Chest X-rays

Mohammad Hashir,
Hadrien Bertrand,
Joseph Paul Cohen

Abstract: Most deep learning models in chest X-ray prediction utilize the posteroanterior (PA) view due to the lack of other views available. PadChest is a large-scale chest X-ray dataset that has almost 200 labels and multiple views available. In this work, we use PadChest to explore multiple approaches to merging the PA and lateral views for predicting the radiological labels associated with the X-ray image. We find that different methods of merging the model utilize the lateral view differently. We also find that inc… Show more

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