Literature DB >> 31151893

A Road Map for Translational Research on Artificial Intelligence in Medical Imaging: From the 2018 National Institutes of Health/RSNA/ACR/The Academy Workshop.

Bibb Allen1, Steven E Seltzer2, Curtis P Langlotz3, Keith P Dreyer4, Ronald M Summers5, Nicholas Petrick6, Danica Marinac-Dabic7, Marisa Cruz8, Tarik K Alkasab4, Robert J Hanisch9, Wendy J Nilsen10, Judy Burleson11, Kevin Lyman12, Krishna Kandarpa13.   

Abstract

Advances in machine learning in medical imaging are occurring at a rapid pace in research laboratories both at academic institutions and in industry. Important artificial intelligence (AI) tools for diagnostic imaging include algorithms for disease detection and classification, image optimization, radiation reduction, and workflow enhancement. Although advances in foundational research are occurring rapidly, translation to routine clinical practice has been slower. In August 2018, the National Institutes of Health assembled multiple relevant stakeholders at a public meeting to discuss the current state of knowledge, infrastructure gaps, and challenges to wider implementation. The conclusions of that meeting are summarized in two publications that identify and prioritize initiatives to accelerate foundational and translational research in AI for medical imaging. This publication summarizes key priorities for translational research developed at the workshop including: (1) creating structured AI use cases, defining and highlighting clinical challenges potentially solvable by AI; (2) establishing methods to encourage data sharing for training and testing AI algorithms to promote generalizability to widespread clinical practice and mitigate unintended bias; (3) establishing tools for validation and performance monitoring of AI algorithms to facilitate regulatory approval; and (4) developing standards and common data elements for seamless integration of AI tools into existing clinical workflows. An important goal of the resulting road map is to grow an ecosystem, facilitated by professional societies, industry, and government agencies, that will allow robust collaborations between practicing clinicians and AI researchers to advance foundational and translational research relevant to medical imaging.
Copyright © 2019 American College of Radiology. All rights reserved.

Entities:  

Year:  2019        PMID: 31151893     DOI: 10.1016/j.jacr.2019.04.014

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


  16 in total

Review 1.  Artificial intelligence in radiation oncology.

Authors:  Elizabeth Huynh; Ahmed Hosny; Christian Guthier; Danielle S Bitterman; Steven F Petit; Daphne A Haas-Kogan; Benjamin Kann; Hugo J W L Aerts; Raymond H Mak
Journal:  Nat Rev Clin Oncol       Date:  2020-08-25       Impact factor: 66.675

2.  Using DICOM Metadata for Radiological Image Series Categorization: a Feasibility Study on Large Clinical Brain MRI Datasets.

Authors:  Romane Gauriau; Christopher Bridge; Lina Chen; Felipe Kitamura; Neil A Tenenholtz; John E Kirsch; Katherine P Andriole; Mark H Michalski; Bernardo C Bizzo
Journal:  J Digit Imaging       Date:  2020-06       Impact factor: 4.056

3.  MRI Manufacturer Shift and Adaptation: Increasing the Generalizability of Deep Learning Segmentation for MR Images Acquired with Different Scanners.

Authors:  Wenjun Yan; Lu Huang; Liming Xia; Shengjia Gu; Fuhua Yan; Yuanyuan Wang; Qian Tao
Journal:  Radiol Artif Intell       Date:  2020-07-01

4.  Spherical coordinates transformation pre-processing in Deep Convolution Neural Networks for brain tumor segmentation in MRI.

Authors:  Carlo Russo; Sidong Liu; Antonio Di Ieva
Journal:  Med Biol Eng Comput       Date:  2021-11-02       Impact factor: 2.602

5.  Tissue-specific and interpretable sub-segmentation of whole tumour burden on CT images by unsupervised fuzzy clustering.

Authors:  Leonardo Rundo; Lucian Beer; Stephan Ursprung; Paula Martin-Gonzalez; Florian Markowetz; James D Brenton; Mireia Crispin-Ortuzar; Evis Sala; Ramona Woitek
Journal:  Comput Biol Med       Date:  2020-04-10       Impact factor: 4.589

6.  Promises of artificial intelligence in neuroradiology: a systematic technographic review.

Authors:  Allard W Olthof; Peter M A van Ooijen; Mohammad H Rezazade Mehrizi
Journal:  Neuroradiology       Date:  2020-04-22       Impact factor: 2.804

7.  Deep Learning for Pediatric Posterior Fossa Tumor Detection and Classification: A Multi-Institutional Study.

Authors:  J L Quon; W Bala; L C Chen; J Wright; L H Kim; M Han; K Shpanskaya; E H Lee; E Tong; M Iv; J Seekins; M P Lungren; K R M Braun; T Y Poussaint; S Laughlin; M D Taylor; R M Lober; H Vogel; P G Fisher; G A Grant; V Ramaswamy; N A Vitanza; C Y Ho; M S B Edwards; S H Cheshier; K W Yeom
Journal:  AJNR Am J Neuroradiol       Date:  2020-08-13       Impact factor: 4.966

8.  Pathways to breast cancer screening artificial intelligence algorithm validation.

Authors:  Christoph I Lee; Nehmat Houssami; Joann G Elmore; Diana S M Buist
Journal:  Breast       Date:  2019-09-09       Impact factor: 4.380

9.  Deployment of artificial intelligence for radiographic diagnosis of COVID-19 pneumonia in the emergency department.

Authors:  Morgan Carlile; Brian Hurt; Albert Hsiao; Michael Hogarth; Christopher A Longhurst; Christian Dameff
Journal:  J Am Coll Emerg Physicians Open       Date:  2020-11-05

10.  Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency.

Authors:  Jonghyon Yi; Ho Kyung Kang; Jae-Hyun Kwon; Kang-Sik Kim; Moon Ho Park; Yeong Kyeong Seong; Dong Woo Kim; Byungeun Ahn; Kilsu Ha; Jinyong Lee; Zaegyoo Hah; Won-Chul Bang
Journal:  Ultrasonography       Date:  2020-09-14
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