MobilePTX: Sparse Coding for Pneumothorax Detection Given Limited Training Examples
Point-of-Care Ultrasound (POCUS) refers to clinician-performed and interpreted ultrasonography at the patient's bedside. Interpreting these images requires a high level of expertise, which may not be available during emergencies. In this paper, we support POCUS by developing classifiers that ca...
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Zusammenfassung: | Point-of-Care Ultrasound (POCUS) refers to clinician-performed and
interpreted ultrasonography at the patient's bedside. Interpreting these images
requires a high level of expertise, which may not be available during
emergencies. In this paper, we support POCUS by developing classifiers that can
aid medical professionals by diagnosing whether or not a patient has
pneumothorax. We decomposed the task into multiple steps, using YOLOv4 to
extract relevant regions of the video and a 3D sparse coding model to represent
video features. Given the difficulty in acquiring positive training videos, we
trained a small-data classifier with a maximum of 15 positive and 32 negative
examples. To counteract this limitation, we leveraged subject matter expert
(SME) knowledge to limit the hypothesis space, thus reducing the cost of data
collection. We present results using two lung ultrasound datasets and
demonstrate that our model is capable of achieving performance on par with SMEs
in pneumothorax identification. We then developed an iOS application that runs
our full system in less than 4 seconds on an iPad Pro, and less than 8 seconds
on an iPhone 13 Pro, labeling key regions in the lung sonogram to provide
interpretable diagnoses. |
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DOI: | 10.48550/arxiv.2212.03282 |