Literature DB >> 29398494

Machine Learning in Medical Imaging.

Maryellen L Giger1.   

Abstract

Advances in both imaging and computers have synergistically led to a rapid rise in the potential use of artificial intelligence in various radiological imaging tasks, such as risk assessment, detection, diagnosis, prognosis, and therapy response, as well as in multi-omics disease discovery. A brief overview of the field is given here, allowing the reader to recognize the terminology, the various subfields, and components of machine learning, as well as the clinical potential. Radiomics, an expansion of computer-aided diagnosis, has been defined as the conversion of images to minable data. The ultimate benefit of quantitative radiomics is to (1) yield predictive image-based phenotypes of disease for precision medicine or (2) yield quantitative image-based phenotypes for data mining with other -omics for discovery (ie, imaging genomics). For deep learning in radiology to succeed, note that well-annotated large data sets are needed since deep networks are complex, computer software and hardware are evolving constantly, and subtle differences in disease states are more difficult to perceive than differences in everyday objects. In the future, machine learning in radiology is expected to have a substantial clinical impact with imaging examinations being routinely obtained in clinical practice, providing an opportunity to improve decision support in medical image interpretation. The term of note is decision support, indicating that computers will augment human decision making, making it more effective and efficient. The clinical impact of having computers in the routine clinical practice may allow radiologists to further integrate their knowledge with their clinical colleagues in other medical specialties and allow for precision medicine.
Copyright © 2018. Published by Elsevier Inc.

Entities:  

Keywords:  Machine learning; computer-aided diagnosis; computer-assisted decision support; deep learning; radiomics

Mesh:

Year:  2018        PMID: 29398494     DOI: 10.1016/j.jacr.2017.12.028

Source DB:  PubMed          Journal:  J Am Coll Radiol        ISSN: 1546-1440            Impact factor:   5.532


  82 in total

1.  Predicting in-hospital mortality of patients with febrile neutropenia using machine learning models.

Authors:  Xinsong Du; Jae Min; Chintan P Shah; Rohit Bishnoi; William R Hogan; Dominick J Lemas
Journal:  Int J Med Inform       Date:  2020-04-15       Impact factor: 4.046

2.  Application of Machine Learning in Intensive Care Unit (ICU) Settings Using MIMIC Dataset: Systematic Review.

Authors:  Mahanazuddin Syed; Shorabuddin Syed; Kevin Sexton; Hafsa Bareen Syeda; Maryam Garza; Meredith Zozus; Farhanuddin Syed; Salma Begum; Abdullah Usama Syed; Joseph Sanford; Fred Prior
Journal:  Informatics (MDPI)       Date:  2021-03-03

Review 3.  Improvement of image quality at CT and MRI using deep learning.

Authors:  Toru Higaki; Yuko Nakamura; Fuminari Tatsugami; Takeshi Nakaura; Kazuo Awai
Journal:  Jpn J Radiol       Date:  2018-11-29       Impact factor: 2.374

4.  Machine Learning for the Prediction of Cervical Spondylotic Myelopathy: A Post Hoc Pilot Study of 28 Participants.

Authors:  Benjamin S Hopkins; Kenneth A Weber; Kartik Kesavabhotla; Monica Paliwal; Donald R Cantrell; Zachary A Smith
Journal:  World Neurosurg       Date:  2019-03-25       Impact factor: 2.104

5.  Deep convolutional neural networks in the classification of dual-energy thoracic radiographic views for efficient workflow: analysis on over 6500 clinical radiographs.

Authors:  Jennie Crosby; Thomas Rhines; Feng Li; Heber MacMahon; Maryellen Giger
Journal:  J Med Imaging (Bellingham)       Date:  2020-02-03

Review 6.  Artificial Intelligence: reshaping the practice of radiological sciences in the 21st century.

Authors:  Issam El Naqa; Masoom A Haider; Maryellen L Giger; Randall K Ten Haken
Journal:  Br J Radiol       Date:  2020-02-01       Impact factor: 3.039

7.  CT-based radiomics for prediction of histologic subtype and metastatic disease in primary malignant lung neoplasms.

Authors:  José Raniery Ferreira-Junior; Marcel Koenigkam-Santos; Ariane Priscilla Magalhães Tenório; Matheus Calil Faleiros; Federico Enrique Garcia Cipriano; Alexandre Todorovic Fabro; Janne Näppi; Hiroyuki Yoshida; Paulo Mazzoncini de Azevedo-Marques
Journal:  Int J Comput Assist Radiol Surg       Date:  2019-11-13       Impact factor: 2.924

Review 8.  Machine learning in quantitative PET: A review of attenuation correction and low-count image reconstruction methods.

Authors:  Tonghe Wang; Yang Lei; Yabo Fu; Walter J Curran; Tian Liu; Jonathon A Nye; Xiaofeng Yang
Journal:  Phys Med       Date:  2020-07-29       Impact factor: 2.685

9.  Identification of High-Risk Left Ventricular Hypertrophy on Calcium Scoring Cardiac Computed Tomography Scans: Validation in the DHS.

Authors:  Fernando U Kay; Suhny Abbara; Parag H Joshi; Sonia Garg; Amit Khera; Ronald M Peshock
Journal:  Circ Cardiovasc Imaging       Date:  2020-02-18       Impact factor: 7.792

Review 10.  Artificial Intelligence for Mammography and Digital Breast Tomosynthesis: Current Concepts and Future Perspectives.

Authors:  Krzysztof J Geras; Ritse M Mann; Linda Moy
Journal:  Radiology       Date:  2019-09-24       Impact factor: 11.105

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