Abstract

The growth of digital pathology over the past decade has opened new research pathways and insights in cancer prediction and prognosis. In particular, there has been a surge in deep learning and computer vision techniques to analyse digital images. Common practice in this area is to use image pre-processing and augmentation to prevent bias and overfitting, creating a more robust deep learning model. This generally requires consultation of documentation for multiple coding libraries, as well as trial and error to ensure that the techniques used on the images are appropriate. Herein we introduce HistoClean; a user-friendly, graphical user interface that brings together multiple image processing modules into one easy to use toolkit. HistoClean is an application that aims to help bridge the knowledge gap between pathologists, biomedical scientists and computer scientists by providing transparent image augmentation and pre-processing techniques which can be applied without prior coding knowledge. In this study, we utilise HistoClean to pre-process images for a simple convolutional neural network used to detect stromal maturity, improving the accuracy of the model at a tile, region of interest, and patient level. This study demonstrates how HistoClean can be used to improve a standard deep learning workflow via classical image augmentation and pre-processing techniques, even with a relatively simple convolutional neural network architecture. HistoClean is free and open-source and can be downloaded from the Github repository here: https://github.com/HistoCleanQUB/HistoClean.

Highlights

  • The growth of digital image analysis in clinical pathology and its subsequent case for use in clinical medicine has been supported by the conception of open-source digital image analysis (DIA) software [1,2,3]

  • We demonstrate the benefit of image pre-processing for deep learning, and introduce HistoClean as an open-source software solution to quickly implement and review these techniques

  • We demonstrate the power of image pre-processing and augmentation and present a novel open-source graphical user interface (GUI) called HistoClean

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Summary

Introduction

The growth of digital image analysis in clinical pathology and its subsequent case for use in clinical medicine has been supported by the conception of open-source digital image analysis (DIA) software [1,2,3]. Use of machine learning from predetermined features allows for the development of DIA algorithms within these software environments. This allows bio-image analysts and consultant histopathologists to answer difficult, specific research questions in human tissue [4]. The subsequent introduction of deep learning has revolutionised the development of DIA algorithms [5]. This has enabled potential solutions to tumour and biomarker detection, as well as tumour subtyping [6,7]. These solutions require domain-specific knowledge relating to the deep learning methodology, as well as the awareness of hardware acceleration [8]

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