Background: Electronic health records (EHRs) and routine documentation practices play a vital role in patients' daily care, providing a holistic record of health, diagnoses, and treatment. However, complex and verbose EHR narratives can overwhelm health care providers, increasing the risk of diagnostic inaccuracies. While large language models (LLMs) have showcased their potential in diverse language tasks, their application in health care must prioritize the minimization of diagnostic errors and the prevention of patient harm. Integrating knowledge graphs (KGs) into LLMs offers a promising approach because structured knowledge from KGs could enhance LLMs' diagnostic reasoning by providing contextually relevant medical information.

Objective: This study introduces DR.KNOWS (Diagnostic Reasoning Knowledge Graph System), a model that integrates Unified Medical Language System-based KGs with LLMs to improve diagnostic predictions from EHR data by retrieving contextually relevant paths aligned with patient-specific information.

Methods: DR.KNOWS combines a stack graph isomorphism network for node embedding with an attention-based path ranker to identify and rank knowledge paths relevant to a patient's clinical context. We evaluated DR.KNOWS on 2 real-world EHR datasets from different geographic locations, comparing its performance to baseline models, including QuickUMLS and standard LLMs (Text-to-Text Transfer Transformer and ChatGPT). To assess diagnostic reasoning quality, we designed and implemented a human evaluation framework grounded in clinical safety metrics.

Results: DR.KNOWS demonstrated notable improvements over baseline models, showing higher accuracy in extracting diagnostic concepts and enhanced diagnostic prediction metrics. Prompt-based fine-tuning of Text-to-Text Transfer Transformer with DR.KNOWS knowledge paths achieved the highest ROUGE-L (Recall-Oriented Understudy for Gisting Evaluation-Longest Common Subsequence) and concept unique identifier F-scores, highlighting the benefits of KG integration. Human evaluators found the diagnostic rationales of DR.KNOWS to be aligned strongly with correct clinical reasoning, indicating improved abstraction and reasoning. Recognized limitations include potential biases within the KG data, which we addressed by emphasizing case-specific path selection and proposing future bias-mitigation strategies.

Conclusions: DR.KNOWS offers a robust approach for enhancing diagnostic accuracy and reasoning by integrating structured KG knowledge into LLM-based clinical workflows. Although further work is required to address KG biases and extend generalizability, DR.KNOWS represents progress toward trustworthy artificial intelligence-driven clinical decision support, with a human evaluation framework focused on diagnostic safety and alignment with clinical standards.

Download full-text PDF

Source
http://dx.doi.org/10.2196/58670DOI Listing

Publication Analysis

Top Keywords

diagnostic reasoning
12
diagnostic
11
knowledge graphs
8
large language
8
language models
8
health care
8
kgs llms
8
structured knowledge
8
contextually relevant
8
drknows
8

Similar Publications

Despite growing interest in personalized psychotherapy research, little is known about therapists' current practice of personalizing psychotherapy. This study aimed to examine the extent to which psychotherapists engage in personalized treatment selection (PTS), i.e.

View Article and Find Full Text PDF

Statement Of The Clinical Problem Addressed By The Case: We report an atypical clinical presentation of a rapidly progressive neurologic emergency that required prompt investigation and treatment of impending respiratory failure. We discuss the differential diagnosis, evaluation, emergency management, and treatment options of patients with atypical variants of this disorder.

Brief Description Of Case Presentation: A 56-year-old woman with a history of hypothyroidism, anxiety, and depression presented to the emergency department 3 weeks after an upper respiratory and ear infection with cough, pain with sinus palpation, tingling in her fingers bilaterally and right foot, hives, and an episode of blurry vision on awakening.

View Article and Find Full Text PDF

sp. nov. and sp. nov., isolated from waste landfill.

Int J Syst Evol Microbiol

March 2025

College of Life Science and Technology, Beijing University of Chemical Technology, Beijing 100029, PR China.

Two Gram-stain-positive, oxidase-negative, non-motile and rod-shaped strains (ASV49 and ASV81) were isolated from a waste landfill in Shanghai, China. Phylogenetic analysis based on 16S rRNA gene sequences indicated that the two strains are associated with members of the genus . Strains ASV49 and ASV81 were most closely related to JCM 31396 and CCTCC AA 2018025 with 98.

View Article and Find Full Text PDF

Tuberculosis is a high-mortality infectious disease. Manual sputum smear microscopy is a common and effective method for screening tuberculosis. However, it is time-consuming, labor-intensive, and has low sensitivity.

View Article and Find Full Text PDF

Clinical decision making through game-based learning: Observations within a Radiography Escape Room.

J Med Imaging Radiat Sci

March 2025

School of Dentistry & Medical Sciences, Faculty of Science & Health, Charles Sturt University, Port Macquarie, NSW, Australia.

Introduction: The paper reports observations following the design and implementation of an immersive multi-sensory escape room as a novel professional, game-based workshop to foster clinical decision making in diagnostic radiography.

Methods: The two authors developed an educational Radiography Escape Room. Participants successfully completed tasks within the radiography escape room, with some finishing the tasks within the sixty-minute time frame and subsequently escaping the room.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!