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AI-Based Digital Pathology Platform Aids Lung Cancer Diagnosis and Treatment

A 3D model of human lungs.
Credit: Robina Weermeijer / Unsplash.
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Summary

Researchers at the University of Cologne have developed an AI-based digital pathology platform that enables faster, more accurate analysis of lung cancer tissue sections. The platform provides new insights into patients' diseases and treatments by utilizing advanced AI algorithms. A validation study will be conducted in collaboration with institutes in Germany, Austria, and Japan.

Key Takeaways

  • AI-Powered Analysis: The platform uses AI algorithms to analyze digitized tissue sections, enhancing diagnostic accuracy and extracting additional information about the cancer.
  • Clinical Tools: It can improve diagnosis quality and offer insights into patient treatment responses, advancing personalized care.
  • Global Collaboration: The platform’s effectiveness will be validated in a study with institutes in Germany, Austria, and Japan.
  • A team of researchers from the University of Cologne’s Faculty of Medicine and University Hospital Cologne, led by Dr Yuri Tolkach and Professor Dr Reinhard Büttner, has created a digital pathology platform based on artificial intelligence. The platform uses new algorithms developed by the team and enables fully automated analysis of tissue sections from lung cancer patients. The platform makes it possible to analyse digitized tissue samples on the computer for lung tumours more quickly and accurately than before. The study ‘Next generation lung cancer pathology: development and validation of diagnostic and prognostic algorithms’ has been published in the journal Cell Reports Medicine.


    Lung cancer is one of the most common tumours/cancers in humans and has a very high mortality rate. Today, the choice of treatment for patients with lung cancer is determined by pathological examination. Pathologists can also identify molecularly specific genetic changes that allow for personalized therapy. Over the past few years, pathology has undergone a digital transformation. As a result, microscopes are no longer needed. Typical tissue sections are digitized and then analysed on a computer screen. Digitalization is crucial for the application of advanced analytical methods based on artificial intelligence. By using artificial intelligence, additional information about the cancer can be extracted from pathological tissue sections – something that would not be possible without AI technology.

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    “We also show how the platform could be used to develop new clinical tools. The new tools can not only improve the quality of diagnosis, but also provide new types of information about the patient’s disease, such as how the patient is responding to treatment,” explained physician Dr Yuri Tolkach from the Institute of General Pathology and Pathological Anatomy at University Hospital Cologne, who led the study.


    In order to prove the broad applicability of the platform, the research team will conduct a validation study together with five pathological institutes in Germany, Austria and Japan.


    Reference: Kludt C, Wang Y, Ahmad W, et al. Next-generation lung cancer pathology: Development and validation of diagnostic and prognostic algorithms. Cell Rep Med. doi: 10.1016/j.xcrm.2024.101697


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