核心概念
Automated NLP algorithms effectively extract sleep information from clinical notes of Alzheimer's patients.
摘要
The study focuses on using NLP algorithms to automate the extraction of sleep-related concepts from clinical notes of Alzheimer's patients. A rule-based NLP algorithm outperformed machine learning models and LLM-based algorithms in accuracy. Sleep information is sparsely documented in clinical notes, posing challenges for data extraction. The study highlights the importance of understanding the association between sleep and cognitive function in older adults with AD. Automated systems for extracting sleep information can aid in research on lifestyle factors affecting cognitive health.
统计
Rule-based NLP algorithm achieved an F1 score across all sleep concepts.
PPV for daytime sleepiness and sleep duration was 1.00.
Machine learning models had varying PPV scores, with SVM showing robustness.
LLAMA2-SFT demonstrated remarkable performance, especially in complex concepts like night wakings.
引用
"The rule-based NLP algorithm consistently achieved the best performance for all sleep concepts."
"Sleep information is infrequently recorded in clinical notes for patients with AD."
"Machine learning models showed varied performances across different sleep concepts."
"LLAMA2-SFT exhibited remarkable performance, closely rivaling the rule-based NLP algorithm."