QMCVLGIVNov 20, 2022

Karyotype AI for Precision Oncology

arXiv:2211.14312v51 citationsh-index: 22
Originality Highly original
AI Analysis

This addresses the need for faster and more accurate karyotyping in oncology, potentially transforming clinical practice for patients with blood cancers.

The paper tackles the problem of detecting chromosome abnormalities in blood cancers from microscope images, achieving a 94% AUC for key anomalies and reducing analysis time to 15 seconds per image.

We present a machine learning method capable of accurately detecting chromosome abnormalities that cause blood cancers directly from microscope images of the metaphase stage of cell division. The pipeline is built on a series of fine-tuned Vision Transformers. Current state of the art (and standard clinical practice) requires expensive, manual expert analysis, whereas our pipeline takes only 15 seconds per metaphase image. Using a novel pretraining-finetuning strategy to mitigate the challenge of data scarcity, we achieve a high precision-recall score of 94% AUC for the clinically significant del(5q) and t(9;22) anomalies. Our method also unlocks zero-shot detection of rare aberrations based on model latent embeddings. The ability to quickly, accurately, and scalably diagnose genetic abnormalities directly from metaphase images could transform karyotyping practice and improve patient outcomes. We will make code publicly available.

Code Implementations1 repo
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