CliniXPromt: Enhancing the Comprehensibility of Electronic Health
Records using GPT-3 and Chain of Thought
Abstract
This paper presents an innovative method for enhance the
comprehensibility of Electronic Health Records (EHRs), making it
accessible to individuals without specialized clinical knowledge. Our
approach entails predicting medical professionals’ impressions,
identifying intricate medical terminol- ogy, and clarifying these
complex terms. To achieve this, we fine-tuned GPT-3 for predicting
doctors’ impressions and integrated the Chain Of Thought (COT) prompting
technique to identify and elucidate intricate medical terms. The
assessment was conducted using Rouge scores and cosine similarity
scores. The outcomes reveal that our proposed approach yields a cosine
similarity score surpassing 75, indicative of the model’s exceptional
performance. The comparative analysis demonstrates the superiority of
our approach concerning doctors’ impressions, detection of complex
terminology, and provision of explanations. Furthermore, this work is
pioneering in addressing and resolving intricate terminology in EHRs,
marking a novel contribution to the field.