Authors :
Ankit Patil; Soham Nandre; Siddita Varma; Sagar Doli; Manorma
Volume/Issue :
Volume 10 - 2025, Issue 12 - December
Google Scholar :
https://tinyurl.com/2fcj2stv
Scribd :
https://tinyurl.com/4rxs45vy
DOI :
https://doi.org/10.38124/ijisrt/25dec1102
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract :
Blood banks are a critical part of modern health- care, yet many still rely on manual workflows and reactive
decision-making. Such systems struggle to handle fluctuating demand, limited shelf life of blood components, and the
urgency of emergency cases. These limitations often lead to shortages, un- necessary wastage, delays in fulfillment, and
mismatches between donors and recipients. This paper presents a unified AI-driven Blood Bank Donation and
Management System designed to ad- dress these challenges through intelligent donor–recipient match- ing, donor
eligibility prediction, inventory forecasting, emergency demand prediction, routing optimization, and fraud and anomaly
detection. The proposed framework combines machine learning, deep learning, and statistical techniques to support end-
to-end blood bank operations. In addition, the system includes an AI- assisted documentation module to help students and
healthcare professionals generate structured research reports and technical documentation. Experimental simulations
demonstrate improved matching accuracy, reduced wastage, and faster emergency re- sponse, highlighting how AI can
transform traditional blood bank systems into proactive, data-driven healthcare infrastructure.
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Blood banks are a critical part of modern health- care, yet many still rely on manual workflows and reactive
decision-making. Such systems struggle to handle fluctuating demand, limited shelf life of blood components, and the
urgency of emergency cases. These limitations often lead to shortages, un- necessary wastage, delays in fulfillment, and
mismatches between donors and recipients. This paper presents a unified AI-driven Blood Bank Donation and
Management System designed to ad- dress these challenges through intelligent donor–recipient match- ing, donor
eligibility prediction, inventory forecasting, emergency demand prediction, routing optimization, and fraud and anomaly
detection. The proposed framework combines machine learning, deep learning, and statistical techniques to support end-
to-end blood bank operations. In addition, the system includes an AI- assisted documentation module to help students and
healthcare professionals generate structured research reports and technical documentation. Experimental simulations
demonstrate improved matching accuracy, reduced wastage, and faster emergency re- sponse, highlighting how AI can
transform traditional blood bank systems into proactive, data-driven healthcare infrastructure.