Literature DB >> 33501040

The Right Direction Needed to Develop White-Box Deep Learning in Radiology, Pathology, and Ophthalmology: A Short Review.

Yoichi Hayashi1.   

Abstract

The popularity of deep learning (DL) in the machine learning community has been dramatically increasing since 2012. The theoretical foundations of DL are well-rooted in the classical neural network (NN). Rule extraction is not a new concept, but was originally devised for a shallow NN. For about the past 30 years, extensive efforts have been made by many researchers to resolve the "black box" problem of trained shallow NNs using rule extraction technology. A rule extraction technology that is well-balanced between accuracy and interpretability has recently been proposed for shallow NNs as a promising means to address this black box problem. Recently, we have been confronting a "new black box" problem caused by highly complex deep NNs (DNNs) generated by DL. In this paper, we first review four rule extraction approaches to resolve the black box problem of DNNs trained by DL in computer vision. Next, we discuss the fundamental limitations and criticisms of current DL approaches in radiology, pathology, and ophthalmology from the black box point of view. We also review the conversion methods from DNNs to decision trees and point out their limitations. Furthermore, we describe a transparent approach for resolving the black box problem of DNNs trained by a deep belief network. Finally, we provide a brief description to realize the transparency of DNNs generated by a convolutional NN and discuss a practical way to realize the transparency of DL in radiology, pathology, and ophthalmology.
Copyright © 2019 Hayashi.

Entities:  

Keywords:  black box; deep learning; interpretability; pathology; radiology; rule extraction; transparency; white box

Year:  2019        PMID: 33501040      PMCID: PMC7806076          DOI: 10.3389/frobt.2019.00024

Source DB:  PubMed          Journal:  Front Robot AI        ISSN: 2296-9144


  27 in total

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Journal:  Int J Neural Syst       Date:  2001-06       Impact factor: 5.866

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Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2015-01-23       Impact factor: 10.451

Review 6.  How reliable is modern breast imaging in differentiating benign from malignant breast lesions in the symptomatic population?

Authors:  H A Moss; P D Britton; C D Flower; A H Freeman; D J Lomas; R M Warren
Journal:  Clin Radiol       Date:  1999-10       Impact factor: 2.350

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Review 8.  Deep EHR: A Survey of Recent Advances in Deep Learning Techniques for Electronic Health Record (EHR) Analysis.

Authors:  Benjamin Shickel; Patrick James Tighe; Azra Bihorac; Parisa Rashidi
Journal:  IEEE J Biomed Health Inform       Date:  2017-10-27       Impact factor: 5.772

9.  Deep Learning for Classification of Colorectal Polyps on Whole-slide Images.

Authors:  Bruno Korbar; Andrea M Olofson; Allen P Miraflor; Catherine M Nicka; Matthew A Suriawinata; Lorenzo Torresani; Arief A Suriawinata; Saeed Hassanpour
Journal:  J Pathol Inform       Date:  2017-07-25

10.  Detecting and classifying lesions in mammograms with Deep Learning.

Authors:  Dezső Ribli; Anna Horváth; Zsuzsa Unger; Péter Pollner; István Csabai
Journal:  Sci Rep       Date:  2018-03-15       Impact factor: 4.379

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