Abstract

Advances in medical imaging technology have created opportunities for computer-aided diagnostic tools to assist human practitioners in identifying relevant patterns in massive, multiscale digital pathology slides. This work presents Hierarchical Linear Time Subset Scanning, a novel statistical method for pattern detection. Hierarchical Linear Time Subset Scanning exploits the hierarchical structure inherent in data produced through virtual microscopy in order to accurately and quickly identify regions of interest for pathologists to review. We take a digital image at various resolution levels, identify the most anomalous regions at a coarse level, and continue to analyze the data at increasingly granular resolutions until we accurately identify its most anomalous subregions. We demonstrate the performance of our novel method in identifying cancerous locations on digital slides of prostate biopsy samples and show that our methods detect regions of cancer in minutes with high accuracy, both as measured by the ROC curve (measuring ability to distinguish between benign and cancerous slides) and by the spatial precision-recall curve (measuring ability to pick out the malignant areas on a slide which contains cancer). Existing methods need small scale images (small areas of a slide preselected by the pathologist for analysis, eg, 32 × 32 pixels) and may not work effectively on large, raw digitized images of size 100K × 100K pixels. In this work, we provide a methodology to fill this significant gap by analyzing large digitized images and identifying regions of interest that may be indicative of cancer.

Highlights

  • We demonstrate the performance of our method for identifying regions of interest in digital pathology images, identifying the most anomalous groups of pixels in images of prostate biopsy samples of patients suspected to have prostate cancer

  • We proposed a novel Hierarchical Linear Time Subset Scanning (HLTSS) framework for detecting regions of interest in massive, multi-scale digital pathology slides

  • HLTSS exploits this hierarchical structure inherent in data produced through virtual microscopy in order

Read more

Summary

Introduction

Anatomic pathology is a medical specialty which includes diagnosing a disease from biopsy samples of an organ. Advances in computer aided medical diagnostics have introduced a digital workflow, and use of digital pathology has grown dramatically in the last ten years [1]. Many pathology laboratories are on the path towards modernizing and updating their work flows using these. This is the author manuscript accepted for publication and has undergone full peer review but has not been through the copyediting, typesetting, pagination and proofreading process, which aMendoza College of Business, University of Notre Dame, Notre Dame, IN 46556, U.S.A. bEventmandaPyatlteerandDetteoctidonifLfaebroerantocrye, sH.bJ.

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call