Latent Diffusion Models with Image-Derived Annotations for Enhanced AI-Assisted Cancer Diagnosis in Histopathology
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Published:2024-07-05
Issue:13
Volume:14
Page:1442
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ISSN:2075-4418
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Container-title:Diagnostics
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language:en
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Short-container-title:Diagnostics
Author:
Osorio Pedro1ORCID, Jimenez-Perez Guillermo1ORCID, Montalt-Tordera Javier1ORCID, Hooge Jens1ORCID, Duran-Ballester Guillem1, Singh Shivam1, Radbruch Moritz2, Bach Ute2ORCID, Schroeder Sabrina2, Siudak Krystyna2, Vienenkoetter Julia2, Lawrenz Bettina2, Mohammadi Sadegh1
Affiliation:
1. Decision Science & Advanced Analytics, Bayer AG, 13353 Berlin, Germany 2. Pathology and Clinical Pathology, Bayer AG, 13353 Berlin, Germany
Abstract
Artificial Intelligence (AI)-based image analysis has immense potential to support diagnostic histopathology, including cancer diagnostics. However, developing supervised AI methods requires large-scale annotated datasets. A potentially powerful solution is to augment training data with synthetic data. Latent diffusion models, which can generate high-quality, diverse synthetic images, are promising. However, the most common implementations rely on detailed textual descriptions, which are not generally available in this domain. This work proposes a method that constructs structured textual prompts from automatically extracted image features. We experiment with the PCam dataset, composed of tissue patches only loosely annotated as healthy or cancerous. We show that including image-derived features in the prompt, as opposed to only healthy and cancerous labels, improves the Fréchet Inception Distance (FID) by 88.6. We also show that pathologists find it challenging to detect synthetic images, with a median sensitivity/specificity of 0.55/0.55. Finally, we show that synthetic data effectively train AI models.
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