KAYRA: A Microservice Architecture for AI-Assisted Karyotyping with Cloud and On-Premise Deployment
Attila Pint\'er, Javier Rico, Attila R\'epai, Jalal Al-Afandi, Adrienn \'Eva Borsy, Andr\'as Kozma, Hajnalka Andrikovics, Gy\"orgy Cserey

TL;DR
KAYRA is a flexible, containerized microservice system for AI-assisted karyotyping, achieving high accuracy in clinical settings with both cloud and on-premise deployment options.
Contribution
This work introduces a multi-model, microservice architecture for karyotyping that supports clinical deployment and demonstrates superior accuracy over existing methods.
Findings
Segmentation accuracy of 98.91% on chromosomes
Classification accuracy of 89.1% on a clinical dataset
System outperforms older density-thresholding and modern AI references
Abstract
We present KAYRA, an end-to-end karyotyping system that operates inside the operational constraints of a clinical cytogenetic laboratory. KAYRA is architected as a containerized microservice pipeline whose ML stack combines an EfficientNet-B5 + U-Net semantic segmenter, a Mask R-CNN (ResNet-50 + FPN) instance detector, and a ResNet-18 classifier, orchestrated through a cascaded ROI-narrowing strategy that focuses each downstream model on the chromosome-bearing region. The same container images are deployed both as a cloud service and as an on-premise installation, supporting clinical environments where patient-data egress is not permitted as well as those where it is. A pilot clinical evaluation against two commercial reference karyotyping systems on 459 chromosomes from 10 metaphase spreads shows segmentation accuracy of 98.91 % (vs. 78.21 % / 40.52 %), classification accuracy of 89.1…
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