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arxiv: 2111.09098 · v4 · pith:ZF6M2C3H · submitted 2021-11-12 · cs.CL · cs.LG

Unifying Heterogeneous Electronic Health Records Systems via Text-Based Code Embedding

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classification cs.CL cs.LG
keywords embeddingdescembcodesystemsunifiedableactsadvantage
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EHR systems lack a unified code system forrepresenting medical concepts, which acts asa barrier for the deployment of deep learningmodels in large scale to multiple clinics and hos-pitals. To overcome this problem, we introduceDescription-based Embedding,DescEmb, a code-agnostic representation learning framework forEHR. DescEmb takes advantage of the flexibil-ity of neural language understanding models toembed clinical events using their textual descrip-tions rather than directly mapping each event toa dedicated embedding. DescEmb outperformedtraditional code-based embedding in extensiveexperiments, especially in a zero-shot transfertask (one hospital to another), and was able totrain a single unified model for heterogeneousEHR datasets.

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