OtherOpen Access
Research on the Generalization of a Blood Donor Recruitment Framework Based on Machine Learning
Authors
Author Affiliations
Southeast University, Jiangsu Province Blood Center, Yancheng Central Blood Station
Published InResearch Square
Year2025
Abstract
Background Recruiting blood donors is essential for public health; however, existing traditional methods are often inefficient, due to its reliance on large-scale messaging campaigns to achieve acceptable success rates. Recent studies have shown that machine learning–based recruitment strategies can significantly outperform traditional approaches. Methods Recruitment framework was developed and validated using donation and SMS data from Nanjing, China, then fine-tuned with 10% of data from Suzhou and Yangzhou, thereby demonstrating cross-center applicability. Optimized multi-layer perceptron (MLP) and random forest (RF) models were prospectively compared with conventional recruitment approaches across all three cities. Results In Nanjing, the recall reached 0·72 for MLP and 0·70 for RF. Fine-tuned models generalized well, achieving recall of 0·63 and 0·67 in Suzhou, and 0·58 and…
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