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Main Authors: Huang, Jingwei, Nezafati, Kuroush, Villanueva-Miranda, Ismael, Gu, Zifan, Xu, Yueshuang, Navar, Ann Marie, Wanyan, Tingyi, Zhou, Qin, Yao, Bo, Rong, Ruichen, Zhan, Xiaowei, Xiao, Guanghua, Peterson, Eric D., Yang, Donghan M., Shi, Wenqi, Xie, Yang
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.16543
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author Huang, Jingwei
Nezafati, Kuroush
Villanueva-Miranda, Ismael
Gu, Zifan
Xu, Yueshuang
Navar, Ann Marie
Wanyan, Tingyi
Zhou, Qin
Yao, Bo
Rong, Ruichen
Zhan, Xiaowei
Xiao, Guanghua
Peterson, Eric D.
Yang, Donghan M.
Shi, Wenqi
Xie, Yang
author_facet Huang, Jingwei
Nezafati, Kuroush
Villanueva-Miranda, Ismael
Gu, Zifan
Xu, Yueshuang
Navar, Ann Marie
Wanyan, Tingyi
Zhou, Qin
Yao, Bo
Rong, Ruichen
Zhan, Xiaowei
Xiao, Guanghua
Peterson, Eric D.
Yang, Donghan M.
Shi, Wenqi
Xie, Yang
contents This study introduces a LLMs powered multiagent ensemble method to address challenges in hallucination and data labeling, particularly in large-scale EHR datasets. Manual labeling of such datasets requires domain expertise and is labor-intensive, time-consuming, expensive, and error-prone. To overcome this bottleneck, we developed an ensemble LLMs method and demonstrated its effectiveness in two real-world tasks: (1) labeling a large-scale unlabeled ECG dataset in MIMIC-IV; (2) identifying social determinants of health (SDOH) from the clinical notes of EHR. Trading off benefits and cost, we selected a pool of diverse open source LLMs with satisfactory performance. We treat each LLM's prediction as a vote and apply a mechanism of majority voting with minimal winning threshold for ensemble. We implemented an ensemble LLMs application for EHR data labeling tasks. By using the ensemble LLMs and natural language processing, we labeled MIMIC-IV ECG dataset of 623,566 ECG reports with an estimated accuracy of 98.2%. We applied the ensemble LLMs method to identify SDOH from social history sections of 1,405 EHR clinical notes, also achieving competitive performance. Our experiments show that the ensemble LLMs can outperform individual LLM even the best commercial one, and the method reduces hallucination errors. From the research, we found that (1) the ensemble LLMs method significantly reduces the time and effort required for labeling large-scale EHR data, automating the process with high accuracy and quality; (2) the method generalizes well to other text data labeling tasks, as shown by its application to SDOH identification; (3) the ensemble of a group of diverse LLMs can outperform or match the performance of the best individual LLM; and (4) the ensemble method substantially reduces hallucination errors. This approach provides a scalable and efficient solution to data-labeling challenges.
format Preprint
id arxiv_https___arxiv_org_abs_2410_16543
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Large Language Models Powered Multiagent Ensemble for Mitigating Hallucination and Efficient Atrial Fibrillation Annotation of ECG Reports
Huang, Jingwei
Nezafati, Kuroush
Villanueva-Miranda, Ismael
Gu, Zifan
Xu, Yueshuang
Navar, Ann Marie
Wanyan, Tingyi
Zhou, Qin
Yao, Bo
Rong, Ruichen
Zhan, Xiaowei
Xiao, Guanghua
Peterson, Eric D.
Yang, Donghan M.
Shi, Wenqi
Xie, Yang
Artificial Intelligence
I.2
This study introduces a LLMs powered multiagent ensemble method to address challenges in hallucination and data labeling, particularly in large-scale EHR datasets. Manual labeling of such datasets requires domain expertise and is labor-intensive, time-consuming, expensive, and error-prone. To overcome this bottleneck, we developed an ensemble LLMs method and demonstrated its effectiveness in two real-world tasks: (1) labeling a large-scale unlabeled ECG dataset in MIMIC-IV; (2) identifying social determinants of health (SDOH) from the clinical notes of EHR. Trading off benefits and cost, we selected a pool of diverse open source LLMs with satisfactory performance. We treat each LLM's prediction as a vote and apply a mechanism of majority voting with minimal winning threshold for ensemble. We implemented an ensemble LLMs application for EHR data labeling tasks. By using the ensemble LLMs and natural language processing, we labeled MIMIC-IV ECG dataset of 623,566 ECG reports with an estimated accuracy of 98.2%. We applied the ensemble LLMs method to identify SDOH from social history sections of 1,405 EHR clinical notes, also achieving competitive performance. Our experiments show that the ensemble LLMs can outperform individual LLM even the best commercial one, and the method reduces hallucination errors. From the research, we found that (1) the ensemble LLMs method significantly reduces the time and effort required for labeling large-scale EHR data, automating the process with high accuracy and quality; (2) the method generalizes well to other text data labeling tasks, as shown by its application to SDOH identification; (3) the ensemble of a group of diverse LLMs can outperform or match the performance of the best individual LLM; and (4) the ensemble method substantially reduces hallucination errors. This approach provides a scalable and efficient solution to data-labeling challenges.
title Large Language Models Powered Multiagent Ensemble for Mitigating Hallucination and Efficient Atrial Fibrillation Annotation of ECG Reports
topic Artificial Intelligence
I.2
url https://arxiv.org/abs/2410.16543