Litcius/Paper detail

Deep Learning With Conformal Prediction for Hierarchical Analysis of Large-Scale Whole-Slide Tissue Images

Håkan Wieslander, Philip J. Harrison, Gabriel Skogberg, Sonya Jackson, Markus Fridén, Johan Karlsson, Ola Spjuth, Carolina Wählby

2020IEEE Journal of Biomedical and Health Informatics40 citationsDOIOpen Access PDF

Abstract

With the increasing amount of image data collected from biomedical experiments there is an urgent need for smarter and more effective analysis methods. Many scientific questions require analysis of image sub-regions related to some specific biology. Finding such regions of interest (ROIs) at low resolution and limiting the data subjected to final quantification at full resolution can reduce computational requirements and save time. In this paper we propose a three-step pipeline: First, bounding boxes for ROIs are located at low resolution. Next, ROIs are subjected to semantic segmentation into sub-regions at mid-resolution. We also estimate the confidence of the segmented sub-regions. Finally, quantitative measurements are extracted at full resolution. We use deep learning for the first two steps in the pipeline and conformal prediction for confidence assessment. We show that limiting final quantitative analysis to sub-regions with full confidence reduces noise and increases separability of observed biological effects.

Topics & Concepts

Pipeline (software)Computer scienceArtificial intelligenceSegmentationBounding overwatchMinimum bounding boxImage resolutionLimitingPattern recognition (psychology)Resolution (logic)Image segmentationDeep learningConfidence intervalNoise (video)Data miningImage (mathematics)Computer visionStatisticsMathematicsProgramming languageMechanical engineeringEngineeringCell Image Analysis TechniquesImage Processing Techniques and ApplicationsMolecular Biology Techniques and Applications