IVCVLGFeb 13, 2023

DEPAS: De-novo Pathology Semantic Masks using a Generative Model

arXiv:2302.06513v12 citationsh-index: 15
Originality Incremental advance
AI Analysis

This work addresses the problem of biased datasets in digital pathology for researchers and clinicians by providing a scalable method to generate synthetic images with controlled semantic information, though it is incremental as it builds on existing generative approaches.

The paper tackles the challenge of generating synthetic histological images by introducing DEPAS, a scalable generative model that creates high-resolution semantic masks for tissues like skin, prostate, and lung, enabling control over features such as cell types and producing photorealistic images for cancer analysis with different staining techniques.

The integration of artificial intelligence into digital pathology has the potential to automate and improve various tasks, such as image analysis and diagnostic decision-making. Yet, the inherent variability of tissues, together with the need for image labeling, lead to biased datasets that limit the generalizability of algorithms trained on them. One of the emerging solutions for this challenge is synthetic histological images. However, debiasing real datasets require not only generating photorealistic images but also the ability to control the features within them. A common approach is to use generative methods that perform image translation between semantic masks that reflect prior knowledge of the tissue and a histological image. However, unlike other image domains, the complex structure of the tissue prevents a simple creation of histology semantic masks that are required as input to the image translation model, while semantic masks extracted from real images reduce the process's scalability. In this work, we introduce a scalable generative model, coined as DEPAS, that captures tissue structure and generates high-resolution semantic masks with state-of-the-art quality. We demonstrate the ability of DEPAS to generate realistic semantic maps of tissue for three types of organs: skin, prostate, and lung. Moreover, we show that these masks can be processed using a generative image translation model to produce photorealistic histology images of two types of cancer with two different types of staining techniques. Finally, we harness DEPAS to generate multi-label semantic masks that capture different cell types distributions and use them to produce histological images with on-demand cellular features. Overall, our work provides a state-of-the-art solution for the challenging task of generating synthetic histological images while controlling their semantic information in a scalable way.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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