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Related Concept Videos

Light Acquisition02:16

Light Acquisition

In order to produce glucose, plants need to capture sufficient light energy. Many modern plants have evolved leaves specialized for light acquisition. Leaves can be only millimeters in width or tens of meters wide, depending on the environment. Due to competition for sunlight, evolution has driven the evolution of increasingly larger leaves and taller plants, to avoid shading by their neighbors with contaminant elaboration of root architecture and mechanisms to transport water and nutrients.

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Self-contrastive weakly supervised learning framework for prognostic prediction using whole slide images.

Saul Fuster1, Farbod Khoraminia2, Julio Silva-Rodríguez3

  • 1Department of Electrical Engineering and Computer Science, University of Stavanger, Stavanger, Norway.

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|September 30, 2025
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Summary

This study introduces a deep learning framework for automated prognostic prediction from histopathological images. The novel approach shows promise in predicting bladder cancer recurrence and treatment outcomes, highlighting potential for improved patient care.

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Introduction of an Integrated Pathology Image Management, Artificial Intelligence, and Reporting System
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Area of Science:

  • Computational pathology
  • Artificial intelligence in medicine
  • Digital pathology

Background:

  • Automated prognostic prediction from histopathological images is challenging due to weak ground truth labels and the need to predict unobservable future events.
  • Existing methods often struggle with the complexity and variability of histopathological data.

Purpose of the Study:

  • To develop and validate a novel deep learning framework for automated prognostic prediction using histopathological images.
  • To explore the significance of various regions of interest (ROIs) and employ diverse learning methods for real-world clinical applications.

Main Methods:

  • A three-part framework combining convolutional neural network (CNN)-based tissue segmentation for ROI delineation, contrastive learning for feature extraction, and nested multiple instance learning (MIL) for classification.
  • Initial validation on simulated data and a diagnostic task, followed by application to prognostic prediction in bladder cancer.

Main Results:

  • The proposed framework was applied to bladder cancer prognostic prediction.
  • The best models achieved an Area Under the Curve (AUC) of 0.721 for recurrence prediction and 0.678 for treatment outcome prediction on a private data cohort.

Conclusions:

  • The developed deep learning framework demonstrates potential for automated prognostic prediction in histopathology.
  • This research highlights initial findings on the limitations of current histopathological image analysis for predicting treatment outcomes and suggests avenues for future improvement.