Literature DB >> 31683260

Automatic classification of dental artifact status for efficient image veracity checks: effects of image resolution and convolutional neural network depth.

Mattea L Welch1, Chris McIntosh, Tom G Purdie, Leonard Wee, Alberto Traverso, Andre Dekker, Benjamin Haibe-Kains, David A Jaffray.   

Abstract

Enabling automated pipelines, image analysis and big data methodology in cancer clinics requires thorough understanding of the data. Automated quality assurance steps could improve the efficiency and robustness of these methods by verifying possible data biases. In particular, in head and neck (H&N) computed-tomography (CT) images, dental artifacts (DA) obscure visualization of structures and the accuracy of Hounsfield units; a challenge for image analysis tasks, including radiomics, where poor image quality can lead to systemic biases. In this work we analyze the performance of three-dimensional convolutional neural networks (CNN) trained to classify DA statuses. 1538 patient images were scored by a single observer as DA positive or negative. Stratified five-fold cross validation was performed to train and test CNNs using various isotropic resampling grids (643, 1283 and 2563), with CNN depths designed to produce 323, 163, and 83 machine generated features. These parameters were selected to determine if more computationally efficient CNNs could be utilized to achieve the same performance. The area under the precision recall curve (PR-AUC) was used to assess CNN performance. The highest PR-AUC (0.92  ±  0.03) was achieved with a CNN depth  =  5, resampling grid  =  256. The CNN performance with 2563 resampling grid size is not significantly better than 643 and 1283 after 20 epochs, which had PR-AUC  =  0.89  ±  0.03 (p -value  =  0.28) and 0.91  ±  0.02 (p -value  =  0.93) at depths of 3 and 4, respectively. Our experiments demonstrate the potential to automate specific quality assurance tasks required for unbiased and robust automated pipeline and image analysis research. Additionally, we determined that there is an opportunity to simplify CNNs with smaller resampling grids to make the process more amenable to very large datasets that will be available in the future.

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Year:  2020        PMID: 31683260     DOI: 10.1088/1361-6560/ab5427

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  3 in total

1.  A novel kernel Wasserstein distance on Gaussian measures: An application of identifying dental artifacts in head and neck computed tomography.

Authors:  Jung Hun Oh; Maryam Pouryahya; Aditi Iyer; Aditya P Apte; Joseph O Deasy; Allen Tannenbaum
Journal:  Comput Biol Med       Date:  2020-03-26       Impact factor: 4.589

Review 2.  Scope and challenges of machine learning-based diagnosis and prognosis in clinical dentistry: A literature review.

Authors:  Lilian Toledo Reyes; Jessica Klöckner Knorst; Fernanda Ruffo Ortiz; Thiago Machado Ardenghi
Journal:  J Clin Transl Res       Date:  2021-07-30

3.  Automated detection of dental artifacts for large-scale radiomic analysis in radiation oncology.

Authors:  Colin Arrowsmith; Reza Reiazi; Mattea L Welch; Michal Kazmierski; Tirth Patel; Aria Rezaie; Tony Tadic; Scott Bratman; Benjamin Haibe-Kains
Journal:  Phys Imaging Radiat Oncol       Date:  2021-04-21
  3 in total

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