Deep Learning and Explainable Artificial Intelligence for Biomedical Applications – Nadezhda Koriakina

  • Date: 14 October 2024, 14:15–15:00
  • Location: Theatrum Visuale, room 100155, building 10, Ångström Laboratory
  • Type: Seminar
  • Lecturer: Nadezhda Koriakina
  • Organiser: Centre for Image Analysis
  • Contact person: Natasa Sladoje

We live in an era of a rapidly evolving field of AI, where AI technologies have turned into an indispensable tool in a multitude of domains, including biomedical image analysis. Digital cytology, a field that deals with biomedical image data, could substantially benefit from AI technologies. AI techniques offer great potential to support medical experts in detecting diseases such as cancer, by alleviating the load on professionals and uncovering patterns that could go unnoticed by humans. However, AI algorithms come with ethical considerations and potential hazards that require attention and management. Recognising this problem is especially important in applications that handle patient data, given the serious consequences that could arise from mistakes. Another existing problem is that patient data often pose unique challenges that add complexity to the development of AI algorithms intended for handling such information.
My PhD thesis comprises four papers that include methodologies for image classification of data with challenging properties, such as scarcity of fine-grained labels and complex data composition. Importantly, we explore those AI methods that are capable of addressing the lack of interpretability and trust in AI.
Our findings indicate that while image cytology data analysis comes with challenges, AI methods can play an important role in assisting medical experts by providing information that might prove valuable to them.

Speaker: Nadezhda Koriakina

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