Literature DB >> 33426151

Quick guide on radiology image pre-processing for deep learning applications in prostate cancer research.

Samira Masoudi1, Stephanie A Harmon1, Sherif Mehralivand1, Stephanie M Walker1, Harish Raviprakash2, Ulas Bagci3, Peter L Choyke1, Baris Turkbey1.   

Abstract

Purpose: Deep learning has achieved major breakthroughs during the past decade in almost every field. There are plenty of publicly available algorithms, each designed to address a different task of computer vision in general. However, most of these algorithms cannot be directly applied to images in the medical domain. Herein, we are focused on the required preprocessing steps that should be applied to medical images prior to deep neural networks. Approach: To be able to employ the publicly available algorithms for clinical purposes, we must make a meaningful pixel/voxel representation from medical images which facilitates the learning process. Based on the ultimate goal expected from an algorithm (classification, detection, or segmentation), one may infer the required pre-processing steps that can ideally improve the performance of that algorithm. Required pre-processing steps for computed tomography (CT) and magnetic resonance (MR) images in their correct order are discussed in detail. We further supported our discussion by relevant experiments to investigate the efficiency of the listed preprocessing steps.
Results: Our experiments confirmed how using appropriate image pre-processing in the right order can improve the performance of deep neural networks in terms of better classification and segmentation. Conclusions: This work investigates the appropriate pre-processing steps for CT and MR images of prostate cancer patients, supported by several experiments that can be useful for educating those new to the field (https://github.com/NIH-MIP/Radiology_Image_Preprocessing_for_Deep_Learning).
© 2021 The Authors.

Entities:  

Keywords:  deep learning; image pre-processing; medical images; prostate cancer research

Year:  2021        PMID: 33426151      PMCID: PMC7790158          DOI: 10.1117/1.JMI.8.1.010901

Source DB:  PubMed          Journal:  J Med Imaging (Bellingham)        ISSN: 2329-4302


  28 in total

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Journal:  IEEE Trans Med Imaging       Date:  1999-10       Impact factor: 10.048

Review 2.  Error in radiology.

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Authors:  Aleksandra Pizurica; Wilfried Philips; Ignace Lemahieu; Marc Acheroy
Journal:  IEEE Trans Med Imaging       Date:  2003-03       Impact factor: 10.048

4.  Further analysis of interpolation effects in mutual information-based image registration.

Authors:  Jim Xiuquan Ji; Hao Pan; Zhi-Pei Liang
Journal:  IEEE Trans Med Imaging       Date:  2003-09       Impact factor: 10.048

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Authors:  R D Nowak
Journal:  IEEE Trans Image Process       Date:  1999       Impact factor: 10.856

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Authors:  J Parker; R V Kenyon; D E Troxel
Journal:  IEEE Trans Med Imaging       Date:  1983       Impact factor: 10.048

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Authors:  R Guillemaud; M Brady
Journal:  IEEE Trans Med Imaging       Date:  1997-06       Impact factor: 10.048

8.  Nonlocal maximum likelihood estimation method for denoising multiple-coil magnetic resonance images.

Authors:  Jeny Rajan; Jelle Veraart; Johan Van Audekerke; Marleen Verhoye; Jan Sijbers
Journal:  Magn Reson Imaging       Date:  2012-07-21       Impact factor: 2.546

9.  N4ITK: improved N3 bias correction.

Authors:  Nicholas J Tustison; Brian B Avants; Philip A Cook; Yuanjie Zheng; Alexander Egan; Paul A Yushkevich; James C Gee
Journal:  IEEE Trans Med Imaging       Date:  2010-04-08       Impact factor: 10.048

10.  Motion Artifact Reduction Using a Convolutional Neural Network for Dynamic Contrast Enhanced MR Imaging of the Liver.

Authors:  Daiki Tamada; Marie-Luise Kromrey; Shintaro Ichikawa; Hiroshi Onishi; Utaroh Motosugi
Journal:  Magn Reson Med Sci       Date:  2019-04-26       Impact factor: 2.471

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  4 in total

Review 1.  Deep learning-based artificial intelligence applications in prostate MRI: brief summary.

Authors:  Baris Turkbey; Masoom A Haider
Journal:  Br J Radiol       Date:  2021-12-03       Impact factor: 3.039

2.  Mitigating Bias in Radiology Machine Learning: 1. Data Handling.

Authors:  Pouria Rouzrokh; Bardia Khosravi; Shahriar Faghani; Mana Moassefi; Diana V Vera Garcia; Yashbir Singh; Kuan Zhang; Gian Marco Conte; Bradley J Erickson
Journal:  Radiol Artif Intell       Date:  2022-08-24

3.  Methods to address metal artifacts in post-processed CT images - A do-it-yourself guide for orthopedic surgeons.

Authors:  Siddhartha Sharma; Aditya Kaushal; Sandeep Patel; Vishal Kumar; Mahesh Prakash; Dhillon Mandeep
Journal:  J Clin Orthop Trauma       Date:  2021-07-01

4.  Predicting Adverse Radiation Effects in Brain Tumors After Stereotactic Radiotherapy With Deep Learning and Handcrafted Radiomics.

Authors:  Simon A Keek; Manon Beuque; Sergey Primakov; Henry C Woodruff; Avishek Chatterjee; Janita E van Timmeren; Martin Vallières; Lizza E L Hendriks; Johannes Kraft; Nicolaus Andratschke; Steve E Braunstein; Olivier Morin; Philippe Lambin
Journal:  Front Oncol       Date:  2022-07-13       Impact factor: 5.738

  4 in total

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