Abstract

Radiation therapy is a first-line treatment option for localized prostate cancer and radiation-induced normal tissue damage are often the main limiting factor for modern radiotherapy regimens. Conversely, under-dosing of target volumes in an attempt to spare adjacent healthy tissues limits the likelihood of achieving local, long-term control. Thus, the ability to generate personalized data-driven risk profiles for radiotherapy outcomes would provide valuable prognostic information to help guide both clinicians and patients alike. Big data applied to radiation oncology promises to deliver better understanding of outcomes by harvesting and integrating heterogeneous data types, including patient-specific clinical parameters, treatment-related dose–volume metrics, and biological risk factors. When taken together, such variables make up the basis for a multi-dimensional space (the “RadoncSpace”) in which the presented modeling techniques search in order to identify significant predictors. Herein, we review outcome modeling and big data-mining techniques for both tumor control and radiotherapy-induced normal tissue effects. We apply many of the presented modeling approaches onto a cohort of hypofractionated prostate cancer patients taking into account different data types and a large heterogeneous mix of physical and biological parameters. Cross-validation techniques are also reviewed for the refinement of the proposed framework architecture and checking individual model performance. We conclude by considering advanced modeling techniques that borrow concepts from big data analytics, such as machine learning and artificial intelligence, before discussing the potential future impact of systems radiobiology approaches.

Highlights

  • Prostate cancer is the second most common cancer among men and is the fourth most common cancer overall [1]

  • We focus our attention exclusively on outcomes associated with external beam radiation therapy (EBRT); the presented modeling techniques are generalizable to any dose distribution

  • Toxicity outcomes in radiotherapy can be segregated into two categories: acute and late

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Summary

Big Data Analytics for Prostate Radiotherapy

Reviewed by: Yaacov Lawrence, Sheba Medical Center, Israel Matthew T. Big data applied to radiation oncology promises to deliver better understanding of outcomes by harvesting and integrating heterogeneous data types, including patient-specific clinical parameters, treatment-related dose–volume metrics, and biological risk factors. When taken together, such variables make up the basis for a multi-dimensional space (the “RadoncSpace”) in which the presented modeling techniques search in order to identify significant predictors. We review outcome modeling and big data-mining techniques for both tumor control and radiotherapyinduced normal tissue effects. We apply many of the presented modeling approaches onto a cohort of hypofractionated prostate cancer patients taking into account different data types and a large heterogeneous mix of physical and biological parameters.

INTRODUCTION
Prostate Radiotherapy Analytics
PROSTATE CANCER
Basic Radiobiology
TYPES OF OUTCOMES
Late Normal Tissue Endpoints
Local Control Endpoints
DATA TYPES
Clinical Parameters
Spatial Parameters
Biological Variables
Risk Quantification
Analytical Modeling
Resampling Techniques
Information Theory Approaches
Validation Coefficients and Metrics
Octile Plots
Vector Biplots
SOFTWARE TOOLS
Computational Environment for Radiotherapy Research
Dose Response Explorer System
Implications of Charged Particle Therapy
Advanced Methods in Machine Learning
CONCLUSION
Findings
AUTHOR CONTRIBUTIONS
Full Text
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