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Machine Learning Applications in Head and Neck Radiation Oncology: Lessons From Open-Source Radiomics Challenges

Authors :
Hesham Elhalawani
Timothy A. Lin
Stefania Volpe
Abdallah S. R. Mohamed
Aubrey L. White
James Zafereo
Andrew J. Wong
Joel E. Berends
Shady AboHashem
Bowman Williams
Jeremy M. Aymard
Aasheesh Kanwar
Subha Perni
Crosby D. Rock
Luke Cooksey
Shauna Campbell
Pei Yang
Khahn Nguyen
Rachel B. Ger
Carlos E. Cardenas
Xenia J. Fave
Carlo Sansone
Gabriele Piantadosi
Stefano Marrone
Rongjie Liu
Chao Huang
Kaixian Yu
Tengfei Li
Yang Yu
Youyi Zhang
Hongtu Zhu
Jeffrey S. Morris
Veerabhadran Baladandayuthapani
John W. Shumway
Alakonanda Ghosh
Andrei Pöhlmann
Hady A. Phoulady
Vibhas Goyal
Guadalupe Canahuate
G. Elisabeta Marai
David Vock
Stephen Y. Lai
Dennis S. Mackin
Laurence E. Court
John Freymann
Keyvan Farahani
Jayashree Kaplathy-Cramer
Clifton D. Fuller
Source :
Frontiers in Oncology, Vol 8 (2018)
Publication Year :
2018
Publisher :
Frontiers Media S.A., 2018.

Abstract

Radiomics leverages existing image datasets to provide non-visible data extraction via image post-processing, with the aim of identifying prognostic, and predictive imaging features at a sub-region of interest level. However, the application of radiomics is hampered by several challenges such as lack of image acquisition/analysis method standardization, impeding generalizability. As of yet, radiomics remains intriguing, but not clinically validated. We aimed to test the feasibility of a non-custom-constructed platform for disseminating existing large, standardized databases across institutions for promoting radiomics studies. Hence, University of Texas MD Anderson Cancer Center organized two public radiomics challenges in head and neck radiation oncology domain. This was done in conjunction with MICCAI 2016 satellite symposium using Kaggle-in-Class, a machine-learning and predictive analytics platform. We drew on clinical data matched to radiomics data derived from diagnostic contrast-enhanced computed tomography (CECT) images in a dataset of 315 patients with oropharyngeal cancer. Contestants were tasked to develop models for (i) classifying patients according to their human papillomavirus status, or (ii) predicting local tumor recurrence, following radiotherapy. Data were split into training, and test sets. Seventeen teams from various professional domains participated in one or both of the challenges. This review paper was based on the contestants' feedback; provided by 8 contestants only (47%). Six contestants (75%) incorporated extracted radiomics features into their predictive model building, either alone (n = 5; 62.5%), as was the case with the winner of the “HPV” challenge, or in conjunction with matched clinical attributes (n = 2; 25%). Only 23% of contestants, notably, including the winner of the “local recurrence” challenge, built their model relying solely on clinical data. In addition to the value of the integration of machine learning into clinical decision-making, our experience sheds light on challenges in sharing and directing existing datasets toward clinical applications of radiomics, including hyper-dimensionality of the clinical/imaging data attributes. Our experience may help guide researchers to create a framework for sharing and reuse of already published data that we believe will ultimately accelerate the pace of clinical applications of radiomics; both in challenge or clinical settings.

Details

Language :
English
ISSN :
2234943X
Volume :
8
Database :
Directory of Open Access Journals
Journal :
Frontiers in Oncology
Publication Type :
Academic Journal
Accession number :
edsdoj.0470a3fe0ec44bbd97b0008f84f49829
Document Type :
article
Full Text :
https://doi.org/10.3389/fonc.2018.00294