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Main Authors: Gupta, Shashi Kant, Basu, Aditya, Taylor, Bradley, Kothari, Anai, Singh, Hrituraj
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.06680
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author Gupta, Shashi Kant
Basu, Aditya
Taylor, Bradley
Kothari, Anai
Singh, Hrituraj
author_facet Gupta, Shashi Kant
Basu, Aditya
Taylor, Bradley
Kothari, Anai
Singh, Hrituraj
contents Retrieving information from EHR systems is essential for answering specific questions about patient journeys and improving the delivery of clinical care. Despite this fact, most EHR systems still rely on keyword-based searches. With the advent of generative large language models (LLMs), retrieving information can lead to better search and summarization capabilities. Such retrievers can also feed Retrieval-augmented generation (RAG) pipelines to answer any query. However, the task of retrieving information from EHR real-world clinical data contained within EHR systems in order to solve several downstream use cases is challenging due to the difficulty in creating query-document support pairs. We provide a blueprint for creating such datasets in an affordable manner using large language models. Our method results in a retriever that is 30-50 F-1 points better than propriety counterparts such as Ada and Mistral for oncology data elements. We further compare our model, called Onco-Retriever, against fine-tuned PubMedBERT model as well. We conduct an extensive manual evaluation on real-world EHR data along with latency analysis of the different models and provide a path forward for healthcare organizations to build domain-specific retrievers.
format Preprint
id arxiv_https___arxiv_org_abs_2404_06680
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Onco-Retriever: Generative Classifier for Retrieval of EHR Records in Oncology
Gupta, Shashi Kant
Basu, Aditya
Taylor, Bradley
Kothari, Anai
Singh, Hrituraj
Computation and Language
Retrieving information from EHR systems is essential for answering specific questions about patient journeys and improving the delivery of clinical care. Despite this fact, most EHR systems still rely on keyword-based searches. With the advent of generative large language models (LLMs), retrieving information can lead to better search and summarization capabilities. Such retrievers can also feed Retrieval-augmented generation (RAG) pipelines to answer any query. However, the task of retrieving information from EHR real-world clinical data contained within EHR systems in order to solve several downstream use cases is challenging due to the difficulty in creating query-document support pairs. We provide a blueprint for creating such datasets in an affordable manner using large language models. Our method results in a retriever that is 30-50 F-1 points better than propriety counterparts such as Ada and Mistral for oncology data elements. We further compare our model, called Onco-Retriever, against fine-tuned PubMedBERT model as well. We conduct an extensive manual evaluation on real-world EHR data along with latency analysis of the different models and provide a path forward for healthcare organizations to build domain-specific retrievers.
title Onco-Retriever: Generative Classifier for Retrieval of EHR Records in Oncology
topic Computation and Language
url https://arxiv.org/abs/2404.06680