Can AI Become a Neurologist's Assistant? Exploring ChatGPT's Potential in Scoring Neurological Exams

Author Name : Rima Dixit

Neurology

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Abstract

Neurological exams rely on subjective scoring through standardized scales. This review examines a study exploring ChatGPT, a large language model (LLM), as a potential tool for neuro-score calculation. We analyze the LLM's performance on established scales like the Glasgow Coma Scale (GCS), intracranial hemorrhage (ICH) score, and the Hunt and Hess (H&H) classification. While the study highlights promise, limitations require further investigation.

Introduction

Neurological exams are crucial for diagnosing and monitoring neurological conditions. Standardized scales like the Glasgow Coma Scale (GCS) and Hunt and Hess (H&H) classification guide scoring various aspects of neurological function. However, these assessments can be subjective and time-consuming. This review explores a recent study investigating the feasibility of using ChatGPT, a large language model (LLM), as a tool to assist with neuro-score calculation.

ChatGPT: A Potential Ally in Neuro-Exam Scoring?

The study by Chen et al. (2023) evaluated ChatGPT's ability to interpret textual descriptions of neurological exams and assign scores using established scales. The LLM was presented with patient cases detailing various neurological presentations, with increasing complexity in phrasing. The results were promising:

  • Accuracy: ChatGPT demonstrated a good level of accuracy in assigning scores on the GCS, ICH, and H&H scales, particularly for straightforward cases.

  • Adaptability: The LLM exhibited some ability to handle variations in phrasing within the case descriptions.

Limitations and Considerations

While the study suggests potential, it also highlights limitations:

  • Complexity Challenges: ChatGPT struggled with cases involving complex or ambiguous language.

  • Black Box Effect: The LLM's reasoning process remains unclear, raising concerns about interpretability and potential biases.

  • Real-World Applicability: The controlled environment of the study may not reflect the complexities of real-world clinical practice.

The Road Ahead: Refining AI for Neurological Assessment

Despite these limitations, the study opens doors for further exploration. Future research could focus on:

  • Training on Larger and More Diverse Datasets: Exposing ChatGPT to a wider range of cases could improve its ability to handle complexity.

  • Explainable AI Techniques: Understanding the LLM's reasoning process would bolster trust and reliability.

  • Integration with Clinical Workflows: Exploring the seamless integration of AI tools within existing clinical workflows is crucial for practical application.

Conclusion

ChatGPT's potential as a neuro-score calculator warrants further investigation. While concerns remain about interpretability and real-world applicability, this study paves the way for AI-assisted neurological assessment. As technology continues to evolve, AI could become a valuable tool for neurologists, allowing them to focus on patient interaction and complex decision-making.


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