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arxiv: 1905.02283 · v1 · pith:VEEITO6Onew · submitted 2019-05-06 · 💻 cs.CL · cs.CV· eess.IV

Caveats in Generating Medical Imaging Labels from Radiology Reports

classification 💻 cs.CL cs.CVeess.IV
keywords medicalimaginglabelsradiologyreportreportswhatacquiring
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Acquiring high-quality annotations in medical imaging is usually a costly process. Automatic label extraction with natural language processing (NLP) has emerged as a promising workaround to bypass the need of expert annotation. Despite the convenience, the limitation of such an approximation has not been carefully examined and is not well understood. With a challenging set of 1,000 chest X-ray studies and their corresponding radiology reports, we show that there exists a surprisingly large discrepancy between what radiologists visually perceive and what they clinically report. Furthermore, with inherently flawed report as ground truth, the state-of-the-art medical NLP fails to produce high-fidelity labels.

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