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The Application and Development of Deep Learning in Radiotherapy: A Systematic Review

Danju Huang, Han Bai, Li Wang, Yu Hou, Lan Li, Yaoxiong Xia, Zhirui Yan, Wenrui Chen, Chang Li, Wenhui Li

2021Technology in Cancer Research & Treatment31 citationsDOIOpen Access PDF

Abstract

With the massive use of computers, the growth and explosion of data has greatly promoted the development of artificial intelligence (AI). The rise of deep learning (DL) algorithms, such as convolutional neural networks (CNN), has provided radiation oncologists with many promising tools that can simplify the complex radiotherapy process in the clinical work of radiation oncology, improve the accuracy and objectivity of diagnosis, and reduce the workload, thus enabling clinicians to spend more time on advanced decision-making tasks. As the development of DL gets closer to clinical practice, radiation oncologists will need to be more familiar with its principles to properly evaluate and use this powerful tool. In this paper, we explain the development and basic concepts of AI and discuss its application in radiation oncology based on different task categories of DL algorithms. This work clarifies the possibility of further development of DL in radiation oncology.

Topics & Concepts

Radiation oncologyComputer scienceWorkloadConvolutional neural networkDeep learningArtificial intelligenceRadiation therapyProcess (computing)Medical physicsTask (project management)Clinical PracticeObjectivity (philosophy)Machine learningData scienceMedicineRadiologySystems engineeringEngineeringEpistemologyPhilosophyOperating systemFamily medicineRadiomics and Machine Learning in Medical ImagingMedical Imaging and AnalysisAI in cancer detection
The Application and Development of Deep Learning in Radiotherapy: A Systematic Review | Litcius