Explainable Health Risk Predictor with Transformer-based Medicare Claim Encoder
In 2019, The Centers for Medicare and Medicaid Services (CMS) launched an Artificial Intelligence (AI) Health Outcomes Challenge seeking solutions to predict risk in value-based care for incorporation into CMS Innovation Center payment and service delivery models. Recently, modern language models ha...
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Zusammenfassung: | In 2019, The Centers for Medicare and Medicaid Services (CMS) launched an
Artificial Intelligence (AI) Health Outcomes Challenge seeking solutions to
predict risk in value-based care for incorporation into CMS Innovation Center
payment and service delivery models. Recently, modern language models have
played key roles in a number of health related tasks. This paper presents, to
the best of our knowledge, the first application of these models to patient
readmission prediction. To facilitate this, we create a dataset of 1.2 million
medical history samples derived from the Limited Dataset (LDS) issued by CMS.
Moreover, we propose a comprehensive modeling solution centered on a deep
learning framework for this data. To demonstrate the framework, we train an
attention-based Transformer to learn Medicare semantics in support of
performing downstream prediction tasks thereby achieving 0.91 AUC and 0.91
recall on readmission classification. We also introduce a novel data
pre-processing pipeline and discuss pertinent deployment considerations
surrounding model explainability and bias. |
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DOI: | 10.48550/arxiv.2105.09428 |