ArXiv TLDR

Aycromo: An Open-Source Platform for Automatic Chromosome Detection in Metaphase Images Based on Deep Learning

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2604.24685

Jorge L. A. Lima, Filipe R. Cordeiro

cs.CV

TLDR

Aycromo is an open-source, AI-assisted desktop platform for rapid and accurate chromosome detection, significantly speeding up genetic disease diagnosis.

Key contributions

  • Aycromo: an open-source desktop platform for AI-assisted cytogenetic analysis.
  • Enables loading pre-trained models, benchmarking, and manual correction via a GUI.
  • Built with Electron and ONNX Runtime, eliminating command-line interaction.
  • Achieves 99.40% mAP@50 with YOLOv11, reducing slide analysis to seconds.

Why it matters

Manual chromosome analysis is time-consuming and requires specialists. Existing AI solutions often lack user-friendly interfaces for clinical use. Aycromo bridges this gap by offering an open-source, high-performance platform that drastically speeds up diagnosis, making AI more accessible for cytogeneticists.

Original Abstract

Chromosome analysis is a fundamental step in the diagnosis of genetic diseases, but the manual karyotyping workflow is time-consuming and heavily dependent on expert specialists, often requiring several days per patient. Although Deep Learning models have achieved high performance in chromosome detection, most proposed solutions remain restricted to research prototypes or lack graphical interfaces suitable for clinical use. In this work, we present Aycromo, an open-source desktop platform for AI-assisted cytogenetic analysis. Built on Electron and ONNX Runtime, the tool allows cytogeneticists to load pre-trained models, compare architectures through an integrated benchmarking module, and manually correct detections via an interactive annotation interface, all without command-line interaction. Preliminary experiments on metaphase images from the CRCN-NE dataset demonstrate that YOLOv11 achieves 99.40% mAP@50, while the platform reduces per-slide analysis to seconds

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