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Related Concept Videos

Stroke: Introduction and Types01:29

Stroke: Introduction and Types

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A stroke is an acute neurological event caused by the sudden disruption of cerebral blood flow, leading to rapid loss of neuronal function. Neurons depend on continuous oxygen and glucose supply, so even brief interruptions can cause irreversible injury within minutes. Strokes are classified into ischemic and hemorrhagic types.Ischemic StrokeIschemic strokes are most common and occur due to arterial occlusion, depriving brain tissue of oxygen and nutrients. This leads to energy failure, ionic...
55

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Accuracy of Large Language Models to Identify Stroke Subtypes Within Unstructured Electronic Health Record Data.

Dylan Owens1, Danh Q Nguyen1, Michael Dohopolski2,3

  • 1Department of Medicine (D.O., D.Q.N., E.D.P., A.M.N.), UT Southwestern Medical Center, Dallas, TX.

Stroke
|July 25, 2025
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Summary
This summary is machine-generated.

Large language models like GPT-4o can accurately classify stroke types from clinical notes. However, identifying specific ischemic stroke subtypes remains a challenge for AI in healthcare.

Keywords:
International Classification of Diseasesartificial intelligenceelectronic health recordshemorrhagic strokeischemic stroke

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Area of Science:

  • Medical Informatics
  • Artificial Intelligence in Medicine
  • Clinical Data Analysis

Background:

  • Accurate stroke classification from electronic health records is difficult due to limited structured data.
  • Manual review of clinical documentation is often required for precise stroke typing.
  • This study investigates the utility of large language models for automated stroke classification.

Purpose of the Study:

  • To evaluate the accuracy of GPT-4o in classifying stroke types (ischemic vs. hemorrhagic) and ischemic stroke subtypes.
  • To assess the performance of different prompting strategies for GPT-4o in this task.
  • To compare AI-driven classification with expert manual abstraction.

Main Methods:

  • A retrieval-augmented generation framework using GPT-4o was developed for stroke classification.
  • Data from the American Heart Association Get With The Guidelines-Stroke registry was used as the gold standard.
  • Three prompting strategies (zero-shot Chain-of-Thought, expert-guided, instruction-based) were tested on EHR data from two health systems.

Main Results:

  • GPT-4o achieved 98% accuracy in classifying stroke type (ischemic vs. hemorrhagic) in external validation.
  • Sensitivity and specificity for stroke type classification were high (0.98 and 0.97, respectively).
  • Performance varied for ischemic stroke subtypes, with high accuracy for cardioembolism (0.98 specificity) but lower for cryptogenic stroke (0.40 sensitivity).

Conclusions:

  • GPT-4o shows high accuracy for differentiating between ischemic and hemorrhagic stroke types.
  • The model faces limitations in accurately classifying various ischemic stroke subtypes.
  • Zero-shot Chain-of-Thought prompting proved effective, requiring minimal human input.