JISARA

Journal of Information Systems Applied Research and Analytics

Volume 19

V19 N1 Pages 4-14

Apr 2026


One Health: AI in Healthcare Summarization


Chiazam Izuchukwu
Georgia Southern University
Atlanta, GA USA

Hayden Wimmer
Georgia Southern University
Atlanta, GA USA

Loreen Powell
Marywood University
Scranton, PA USA

Abstract: The research uses a One Health text document as our main dataset. Two summarization methods were employed in this study, with the first being recursive (summary of the summary), which was repeated twice to achieve a progressively concise word count, and the second a controlled and direct summary of the original document, which was repeated to accomplish the same set word count. Performance metrics like ROUGE, BLEU, and BERT scores were calculated to assess the effectiveness of both methods. Additionally, the results from both summarization methods and summaries generated by ChatGPT and Google NotebookLM provide a comparative analysis between traditional LLM-based summarization and conversational AI. This study goes beyond automated metrics by incorporating human evaluation and assessing readability and coherence with the original document to ensure a qualitative validation of the results.

Download this article: JISARA - V19 N1 Page 4.pdf


Recommended Citation: Izuchukwu , C., Wimmer, H., Powell, L.M., (2026). One Health: AI in Healthcare Summarization. Journal of Information Systems Applied Research and Analytics 19(1) pp 4-14. https://doi.org/10.62273/TDBT3523