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International Journal of New Developments in Engineering and Society, 2025, 9(1); doi: 10.25236/IJNDES.2025.090114.

Research on the Impact of Intelligent Production on the Quality Consistency of Blood Diagnostic Reagents —Taking Anti-A and Anti-B Reagents as Examples

Author(s)

Ruoyun Zou 

Corresponding Author:
Ruoyun Zou
Affiliation(s)

Shanghai Hemo-Pharmaceutical & Biological Co., Ltd., Shanghai, China

Abstract

This study explores the impact of intelligent production on the quality consistency of anti-A and anti-B reagents. Through standardized production processes, real-time quality monitoring, and data analysis systems, intelligent technology reduced the inter-batch variation in agglutination strength from 1.5 levels to 0.2 levels, and the comprehensive error rate decreased by 85.2%. The study analyzed the implementation difficulties and adaptation strategies, and proposed innovative industry standards and multi-party collaboration solutions. Intelligent production not only improved the stability of reagent quality but also provided a reliable guarantee for blood type identification safety, which has significant implications for promoting the advancement of blood diagnostic technology.

Keywords

anti-A and anti-B reagents; intelligent production; quality consistency; blood type identification; batch stability

Cite This Paper

Ruoyun Zou. Research on the Impact of Intelligent Production on the Quality Consistency of Blood Diagnostic Reagents —Taking Anti-A and Anti-B Reagents as Examples. International Journal of New Developments in Engineering and Society(2025), Vol. 9, Issue 1: 106-112. https://doi.org/10.25236/IJNDES.2025.090114.

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