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Showing 1–10 of 10 results
Advanced filters: Author: Narmin Ghaffari Laleh Clear advanced filters
  • Medical image classification remains a challenging process in deep learning. Here, the authors evaluate a large vision language foundation model (GPT-4V) with in-context learning for cancer image processing and show that such models can learn from examples and reach performance similar to specialized neural networks while reducing the gap to current state-of-the art pathology foundation models.

    • Dyke Ferber
    • Georg Wölflein
    • Jakob Nikolas Kather
    ResearchOpen Access
    Nature Communications
    Volume: 15, P: 1-12
  • Schmatko et al. review the application of artificial intelligence to digitized histopathology for cancer diagnosis, prognosis and classification and discuss its potential utility in the clinic and broader implications for cancer research and care.

    • Artem Shmatko
    • Narmin Ghaffari Laleh
    • Jakob Nikolas Kather
    Reviews
    Nature Cancer
    Volume: 3, P: 1026-1038
  • Combined hepatocellular-cholangiocarcinomas (cHCC-CCA) are challenging to diagnose, as they exhibit features of hepatocellular carcinoma (HCC) and intrahepatic cholangiocarcinoma (ICCA). Here, the authors use deep learning to re-classify cHCC-CCA tumours into HCC or ICCA based on histopathology images.

    • Julien Calderaro
    • Narmin Ghaffari Laleh
    • Jakob Nikolas Kather
    ResearchOpen Access
    Nature Communications
    Volume: 14, P: 1-10
  • A decentralized, privacy-preserving machine learning framework used to train a clinically relevant AI system identifies actionable molecular alterations in patients with colorectal cancer by use of routine histopathology slides collected in real-world settings.

    • Oliver Lester Saldanha
    • Philip Quirke
    • Jakob Nikolas Kather
    ResearchOpen Access
    Nature Medicine
    Volume: 28, P: 1232-1239
  • Artificial Intelligence can support diagnostic workflows in oncology, but they are vulnerable to adversarial attacks. Here, the authors show that convolutional neural networks are highly susceptible to white- and black-box adversarial attacks in clinically relevant classification tasks.

    • Narmin Ghaffari Laleh
    • Daniel Truhn
    • Jakob Nikolas Kather
    ResearchOpen Access
    Nature Communications
    Volume: 13, P: 1-10
  • This Review provides an introductory guide to artificial intelligence (AI)-based tools for non-computational cancer researchers. Here, Perez-Lopez et al. outline the general principles of AI for image analysis, natural language processing and drug discovery, as well as how researchers can get started with each of them.

    • Raquel Perez-Lopez
    • Narmin Ghaffari Laleh
    • Jakob Nikolas Kather
    Reviews
    Nature Reviews Cancer
    Volume: 24, P: 427-441
  • Saldanha, Zhu et al. present an integrated pipeline combining weakly supervised learning with local artificial intelligence (AI) model training via swarm learning (SL) to circumvent a need for centralized data sharing. Deploying SL internationally with on-site data processing addresses challenges such as data privacy and annotation variability enabling AI training across international datasets while preserving data privacy.

    • Oliver Lester Saldanha
    • Jiefu Zhu
    • Jakob Nikolas Kather
    ResearchOpen Access
    Communications Medicine
    Volume: 5, P: 1-12
  • The text-guided diffusion model GLIDE (Guided Language to Image Diffusion for Generation and Editing) is the state of the art in text-to-image generative artificial intelligence (AI). GLIDE has rich representations, but medical applications of this model have not been systematically explored. If GLIDE had useful medical knowledge, it could be used for medical image analysis tasks, a domain in which AI systems are still highly engineered towards a single use-case. Here we show that the publicly available GLIDE model has reasonably strong representations of key topics in cancer research and oncology, in particular the general style of histopathology images and multiple facets of diseases, pathological processes and laboratory assays. However, GLIDE seems to lack useful representations of the style and content of radiology data. Our findings demonstrate that domain-agnostic generative AI models can learn relevant medical concepts without explicit training. Thus, GLIDE and similar models might be useful for medical image processing tasks in the future - particularly with additional domain-specific fine-tuning.

    • Jakob Nikolas Kather
    • Narmin Ghaffari Laleh
    • Daniel Truhn
    Comments & OpinionOpen Access
    npj Digital Medicine
    Volume: 5, P: 1-5
  • Clusmann et al. describe how large language models such as ChatGPT could be used in medical practice, research and education. These models could democratize medical knowledge and facilitate access to healthcare, but there are also potential limitations to be considered.

    • Jan Clusmann
    • Fiona R. Kolbinger
    • Jakob Nikolas Kather
    ReviewsOpen Access
    Communications Medicine
    Volume: 3, P: 1-8