机器学习
非结构化数据
稳健性(进化)
计算机科学
人工智能
预测能力
健康档案
结果(博弈论)
背景(考古学)
生成语法
数据科学
大数据
数据挖掘
医疗保健
古生物学
生物化学
化学
哲学
数学
数理经济学
认识论
生物
经济
基因
经济增长
作者
Mohammad Noaeen,Somayeh Amini,Shveta Bhasker,Zohreh Ghezelsefli,Aisha Ahmed,Omid Jafarinezhad,Zahra Shakeri Hossein Abad
标识
DOI:10.1109/embc40787.2023.10340232
摘要
The integration of Electronic Health Records (EHRs) with Machine Learning (ML) models has become imperative in examining patient outcomes due to the vast amounts of clinical data they provide. However, critical information regarding social and behavioral factors that affect health, such as social isolation, stress, and mental health complexities, is often recorded in unstructured clinical notes, hindering its accessibility. This has resulted in an over-reliance on clinical data in current EHR-based research, potentially leading to disparities in health outcomes. This study aims to evaluate the impact of incorporating patient-specific context from unstructured EHR data on the accuracy and stability of ML algorithms for predicting mortality, using the MIMIC III database. Results from the study confirmed the significance of incorporating patient-specific information into prediction models, leading to a notable improvement in the discriminatory power and robustness of the ML algorithms. Furthermore, the findings underline the importance of considering non-clinical factors related to a patient's daily life, in addition to clinical factors, when making predictions about patient outcomes. The advent of advanced generative models, such as GPT-4, presents new opportunities for effectively extracting social and behavioral factors from unstructured clinical notes, further enhancing the accuracy and stability of ML algorithms in predicting patient outcomes. The results of our study have significant ramifications for improving ML in clinical decision support and patient outcome predictions, specifically highlighting the potential role of generative models like GPT-4 in advancing ML-based outcome predictions.
科研通智能强力驱动
Strongly Powered by AbleSci AI