Blood cancers such as acute myeloid leukemia (AML) are life-threatening conditions that require rapid and accurate diagnosis. A standard diagnostic method is the microscopic analysis of peripheral blood smears. However, this procedure is still performed manually in most laboratories, relying on trained cytologists to classify hundreds of white blood cells by eye. This process is time-consuming, costly, and prone to human error. At the same time, the number of trained experts is decreasing while diagnostic demand is rising.
The LeukoScreen project set out to explore how artificial intelligence (AI) can support clinical diagnosis by automating the evaluation of blood smear images. The goal was to shorten the time from sample collection to diagnosis and treatment, reduce the burden on healthcare professionals, and make expert-level cytological assessment more broadly available – including in low-resource settings.
To achieve this, the project developed cAItomorph, a transformer-based AI model trained on a real-world dataset from the Munich Leukemia Laboratory (MLL), one of Europe’s leading diagnostic centers for blood cancers. The project focused not only on technical performance but also on explainability and clinical utility. It aimed to demonstrate that state-of-the-art AI can identify a wide range of hematological malignancies based on peripheral blood cell morphology, even under the noisy and heterogeneous conditions of routine diagnostics.