基于语言模型的脓毒症早期预测系统的开发和预期实现

IF 12.4 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Supreeth P. Shashikumar, Sina Mohammadi, Rishivardhan Krishnamoorthy, Avi Patel, Gabriel Wardi, Joseph C. Ahn, Karandeep Singh, Eliah Aronoff-Spencer, Shamim Nemati
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引用次数: 0

摘要

脓毒症是一种对感染的失调宿主反应,具有高死亡率和发病率。早期发现和干预已被证明可以改善患者的预后,但现有的依赖结构化电子健康记录数据的计算模型经常错过来自非结构化临床记录的上下文信息。本研究引入开源大型语言模型(LLM) COMPOSER-LLM,与COMPOSER模型集成以增强脓毒症的早期预测。对于高不确定性的预测,LLM提取额外的背景来评估脓毒症模拟,提高准确性。在2500例患者就诊评估中,COMPOSER- llm的灵敏度为72.1%,阳性预测值为52.9%,F-1评分为61.0%,每患者小时误报0.0087次,优于独立的COMPOSER模型。前瞻性验证也得到了类似的结果。人工图表审查发现,62%的假阳性患者有细菌感染,显示出潜在的临床应用价值。我们的研究结果表明,将法学硕士与传统模型集成可以通过利用非结构化数据来提高预测性能,这代表了医疗保健分析的重大进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Development and prospective implementation of a large language model based system for early sepsis prediction

Development and prospective implementation of a large language model based system for early sepsis prediction

Sepsis is a dysregulated host response to infection with high mortality and morbidity. Early detection and intervention have been shown to improve patient outcomes, but existing computational models relying on structured electronic health record data often miss contextual information from unstructured clinical notes. This study introduces COMPOSER-LLM, an open-source large language model (LLM) integrated with the COMPOSER model to enhance early sepsis prediction. For high-uncertainty predictions, the LLM extracts additional context to assess sepsis-mimics, improving accuracy. Evaluated on 2500 patient encounters, COMPOSER-LLM achieved a sensitivity of 72.1%, positive predictive value of 52.9%, F-1 score of 61.0%, and 0.0087 false alarms per patient hour, outperforming the standalone COMPOSER model. Prospective validation yielded similar results. Manual chart review found 62% of false positives had bacterial infections, demonstrating potential clinical utility. Our findings suggest that integrating LLMs with traditional models can enhance predictive performance by leveraging unstructured data, representing a significant advance in healthcare analytics.

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来源期刊
CiteScore
25.10
自引率
3.30%
发文量
170
审稿时长
15 weeks
期刊介绍: npj Digital Medicine is an online open-access journal that focuses on publishing peer-reviewed research in the field of digital medicine. The journal covers various aspects of digital medicine, including the application and implementation of digital and mobile technologies in clinical settings, virtual healthcare, and the use of artificial intelligence and informatics. The primary goal of the journal is to support innovation and the advancement of healthcare through the integration of new digital and mobile technologies. When determining if a manuscript is suitable for publication, the journal considers four important criteria: novelty, clinical relevance, scientific rigor, and digital innovation.
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