Literature DB >> 32418339

Introduction to machine and deep learning for medical physicists.

Sunan Cui1,2, Huan-Hsin Tseng1, Julia Pakela1,2, Randall K Ten Haken1, Issam El Naqa1.   

Abstract

Recent years have witnessed tremendous growth in the application of machine learning (ML) and deep learning (DL) techniques in medical physics. Embracing the current big data era, medical physicists equipped with these state-of-the-art tools should be able to solve pressing problems in modern radiation oncology. Here, a review of the basic aspects involved in ML/DL model building, including data processing, model training, and validation for medical physics applications is presented and discussed. Machine learning can be categorized based on the underlying task into supervised learning, unsupervised learning, or reinforcement learning; each of these categories has its own input/output dataset characteristics and aims to solve different classes of problems in medical physics ranging from automation of processes to predictive analytics. It is recognized that data size requirements may vary depending on the specific medical physics application and the nature of the algorithms applied. Data processing, which is a crucial step for model stability and precision, should be performed before training the model. Deep learning as a subset of ML is able to learn multilevel representations from raw input data, eliminating the necessity for hand crafted features in classical ML. It can be thought of as an extension of the classical linear models but with multilayer (deep) structures and nonlinear activation functions. The logic of going "deeper" is related to learning complex data structures and its realization has been aided by recent advancements in parallel computing architectures and the development of more robust optimization methods for efficient training of these algorithms. Model validation is an essential part of ML/DL model building. Without it, the model being developed cannot be easily trusted to generalize to unseen data. Whenever applying ML/DL, one should keep in mind, according to Amara's law, that humans may tend to overestimate the ability of a technology in the short term and underestimate its capability in the long term. To establish ML/DL role into standard clinical workflow, models considering balance between accuracy and interpretability should be developed. Machine learning/DL algorithms have potential in numerous radiation oncology applications, including automatizing mundane procedures, improving efficiency and safety of auto-contouring, treatment planning, quality assurance, motion management, and outcome predictions. Medical physicists have been at the frontiers of technology translation into medicine and they ought to be prepared to embrace the inevitable role of ML/DL in the practice of radiation oncology and lead its clinical implementation.
© 2020 American Association of Physicists in Medicine.

Entities:  

Keywords:  deep learning; machine learning; medical physics

Mesh:

Year:  2020        PMID: 32418339      PMCID: PMC7331753          DOI: 10.1002/mp.14140

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  42 in total

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6.  Deep reinforcement learning for automated radiation adaptation in lung cancer.

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Review 7.  Radiogenomics and radiotherapy response modeling.

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Review 9.  Artificial intelligence in cancer imaging: Clinical challenges and applications.

Authors:  Wenya Linda Bi; Ahmed Hosny; Matthew B Schabath; Maryellen L Giger; Nicolai J Birkbak; Alireza Mehrtash; Tavis Allison; Omar Arnaout; Christopher Abbosh; Ian F Dunn; Raymond H Mak; Rulla M Tamimi; Clare M Tempany; Charles Swanton; Udo Hoffmann; Lawrence H Schwartz; Robert J Gillies; Raymond Y Huang; Hugo J W L Aerts
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2.  Dynamic stochastic deep learning approaches for predicting geometric changes in head and neck cancer.

Authors:  Julia M Pakela; Martha M Matuszak; Randall K Ten Haken; Daniel L McShan; Issam El Naqa
Journal:  Phys Med Biol       Date:  2021-11-09       Impact factor: 3.609

Review 3.  Artificial intelligence and machine learning for medical imaging: A technology review.

Authors:  Ana Barragán-Montero; Umair Javaid; Gilmer Valdés; Dan Nguyen; Paul Desbordes; Benoit Macq; Siri Willems; Liesbeth Vandewinckele; Mats Holmström; Fredrik Löfman; Steven Michiels; Kevin Souris; Edmond Sterpin; John A Lee
Journal:  Phys Med       Date:  2021-05-09       Impact factor: 2.685

4.  Integrating Multiomics Information in Deep Learning Architectures for Joint Actuarial Outcome Prediction in Non-Small Cell Lung Cancer Patients After Radiation Therapy.

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Review 5.  Radiomic and radiogenomic modeling for radiotherapy: strategies, pitfalls, and challenges.

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6.  Feasibility of Continual Deep Learning-Based Segmentation for Personalized Adaptive Radiation Therapy in Head and Neck Area.

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Review 7.  Management of Motion and Anatomical Variations in Charged Particle Therapy: Past, Present, and Into the Future.

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8.  Early Prediction of Planning Adaptation Requirement Indication Due to Volumetric Alterations in Head and Neck Cancer Radiotherapy: A Machine Learning Approach.

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9.  Scalable radiotherapy data curation infrastructure for deep-learning based autosegmentation of organs-at-risk: A case study in head and neck cancer.

Authors:  E Tryggestad; A Anand; C Beltran; J Brooks; J Cimmiyotti; N Grimaldi; T Hodge; A Hunzeker; J J Lucido; N N Laack; R Momoh; D J Moseley; S H Patel; A Ridgway; S Seetamsetty; S Shiraishi; L Undahl; R L Foote
Journal:  Front Oncol       Date:  2022-08-29       Impact factor: 5.738

  9 in total

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