Machine learning and modeling: Data, validation, communication challenges

Issam El Naqa(University of Michigan), Dan Ruan(University of California, Los Angeles), Gilmer Valdés(University of California, San Francisco), André Dekker(Maastricht University), Todd McNutt(Johns Hopkins University), Yaorong Ge(University of North Carolina at Charlotte), Qiuwen Wu(Duke Medical Center), Jung Hun Oh(Memorial Sloan Kettering Cancer Center), Maria Thor(Memorial Sloan Kettering Cancer Center), W. P. Smith(University of Washington), Arvind Rao(The University of Texas MD Anderson Cancer Center), Clifton D. Fuller(The University of Texas MD Anderson Cancer Center), Ying Xiao(University of Pennsylvania), Frank J. Manion(University of Michigan), Matthew J. Schipper(University of Michigan), Charles S. Mayo(University of Michigan), Jean M. Moran(University of Michigan), R. Ten Haken(University of Michigan)
Medical Physics
August 24, 2018
Cited by 102Open Access
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Abstract

With the era of big data, the utilization of machine learning algorithms in radiation oncology is rapidly growing with applications including: treatment response modeling, treatment planning, contouring, organ segmentation, image-guidance, motion tracking, quality assurance, and more. Despite this interest, practical clinical implementation of machine learning as part of the day-to-day clinical operations is still lagging. The aim of this white paper is to further promote progress in this new field of machine learning in radiation oncology by highlighting its untapped advantages and potentials for clinical advancement, while also presenting current challenges and open questions for future research. The targeted audience of this paper includes newcomers as well as practitioners in the field of medical physics/radiation oncology. The paper also provides general recommendations to avoid common pitfalls when applying these powerful data analytic tools to medical physics and radiation oncology problems and suggests some guidelines for transparent and informative reporting of machine learning results.


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