Segmentation of catheter tubes and lines in chest x-rays using deep learning models
Akhil Kasturi,
Ali Vosoughi,
Nathan Hadjiyski
et al.
Abstract:Catheter tubes and lines are one of the most common abnormal findings on a chest X-ray. Misplaced catheters can cause serious complications, such as pneumothorax, cardiac perforation, or thrombosis, and for this reason, assessment of catheter position is of utmost importance. In order to prevent these problems, radiologists usually examine chest X-rays to evaluate their positions after insertion and throughout intensive care. However, this process is both time-consuming and prone to human error. Efficient and … Show more
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