ABO-BTI: An Open-Source ABO Blood Typing Image Dataset for Medical AI Applications
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Vysoká škola báňská - Technická univerzita Ostrava
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Abstract
Accurate blood type classification is cru-
cial for safe transfusions and clinical decision-making,
yet existing research is limited by the lack of stan-
dardized, publicly available datasets for training and
evaluating machine learning models. To address this
gap, we introduce ABO-BTI (ABO Blood Typing Im-
age), the first open-source dataset dedicated to blood
type classification using high-resolution agglutination
images. The dataset comprises 144 cases, with 432
images standardized to a resolution of 1280×590 pix-
els after processing. This study evaluates the effective-
ness of deep learning for blood type identification us-
ing the ABO-BTI database. Three models, ResNet50,
MobileNetV2, and a proposed deep learning architec-
ture, were trained and tested on the dataset to as-
sess its suitability for machine learning applications.
The proposed model achieved an accuracy of 96.51%,
significantly outperforming MobileNetV2 (12.64%) and
ResNet50 (72.41%). Comparative analysis with tradi-
tional machine learning methods further demonstrated
that deep learning provides competitive performance
while reducing reliance on handcrafted feature extrac-
tion. These results highlight ABO-BTI as a valuable
benchmark for advancing AI-driven blood type classifi-
cation. The findings also suggest the potential integra-
tion of deep learning-based classification into embed-
ded systems for real-time blood typing in point of care
and emergency settings. By providing a standardized
dataset and demonstrating the viability of deep learn-
ing models, this study lays the foundation for future re-
search in automated blood classification, with implica-
tions for both clinical applications and AI-driven med-
ical diagnostics.
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Subject(s)
Blood type classification, ABO-BTI dataset, deep learning, machine learning, agglutination images, biomedical image analysis, ResNet50, MobileNetV2, automated blood typing, transfu- sion medicine, AI in healthcare, convolutional neural networks, medical imaging
Citation
Advances in electrical and electronic engineering. 2025, vol. 23, no. 4, pp. 335 – 353 : ill.