Medalyze: Lightweight Medical Report Summarization Application Using FLAN-T5-Large
Nguyen, Van-Tinh, Pham, Hoang-Duong, To, Thanh-Hai, Do, Cong-Tuan Hung, Dong, Thi-Thu-Trang, Le, Vu-Trung Duong, Hoang, Van-Phuc
–arXiv.org Artificial Intelligence
Understanding medical texts presents significant challenges due to complex terminology and context-specific language. This paper introduces Medalyze, an AI-powered application designed to enhance the comprehension of medical texts using three specialized FLAN-T5-Large models. These models are fine-tuned for (1) summarizing medical reports, (2) extracting health issues from patient-doctor conversations, and (3) identifying the key question in a passage. Medalyze is deployed across a web and mobile platform with real-time inference, leveraging scalable API and YugabyteDB. Experimental evaluations demonstrate the system's superior summarization performance over GPT-4 in domain-specific tasks, based on metrics like BLEU, ROUGE-L, BERTScore, and SpaCy Similarity. Medalyze provides a practical, privacy-preserving, and lightweight solution for improving information accessibility in healthcare.
arXiv.org Artificial Intelligence
May-26-2025
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