Literature DB >> 31943495

Top 10 Reviewer Critiques of Radiology Artificial Intelligence (AI) Articles: Qualitative Thematic Analysis of Reviewer Critiques of Machine Learning/Deep Learning Manuscripts Submitted to JMRI.

Jules Gregory1, Sara Welliver2, Jaron Chong3.   

Abstract

BACKGROUND: Classical machine learning (ML) and deep learning (DL) articles have rapidly captured the attention of the radiology research community and comprise an increasing proportion of articles submitted to JMRI, of variable reporting and methodological quality.
PURPOSE: To identify the most frequent reviewer critiques of classical ML and DL articles submitted to JMRI. STUDY TYPE: Qualitative thematic analysis. POPULATION: In all, 1396 manuscript journal articles submitted to JMRI for consideration in 2018, with thematic analysis performed of reviewer critiques of 38 artificial intelligence (AI) articles, comprised of 24 ML and 14 DL articles, from January 9, 2018 to June 2, 2018. FIELD STRENGTH/SEQUENCE: N/A. ASSESSMENT: After identifying and sampling ML and DL articles, and collecting all reviews, qualitative thematic analysis was performed to identify major and minor themes of reviewer critiques. STATISTICAL TESTS: Descriptive statistics provided of article characteristics, and thematic review of major and minor themes.
RESULTS: Thirty-eight articles were sampled for thematic review: 24 (63.2%) focused on classical ML and 14 (36.8%) on DL. The overall acceptance rate of classical ML/DL articles was 28.9%, similar to the overall 2017-2019 acceptance rate of 23.1-28.1%. These articles resulted in 72 reviews analyzed, yielding a total 713 critiques that underwent formal thematic analysis consensus encoding. Ten major themes of critiques were identified, with 1-Lack of Information as the most frequent, comprising 268 (37.6%) of all critiques. Frequent minor themes of critiques concerning ML/DL-specific recommendations included performing basic clinical statistics such as to ensure similarity of training and test groups (N = 26), emphasizing strong clinical Gold Standards for the basis of training labels (N = 19), and ensuring strong radiological relevance of the topic and task performed (N = 16). DATA
CONCLUSION: Standardized reporting of ML and DL methods could help address nearly one-third of all reviewer critiques made. LEVEL OF EVIDENCE: 4 Technical Efficacy Stage: 1 J. Magn. Reson. Imaging 2020;52:248-254.
© 2020 International Society for Magnetic Resonance in Medicine.

Entities:  

Keywords:  artificial intelligence; machine learning; thematic analysis

Mesh:

Year:  2020        PMID: 31943495     DOI: 10.1002/jmri.27035

Source DB:  PubMed          Journal:  J Magn Reson Imaging        ISSN: 1053-1807            Impact factor:   4.813


  12 in total

Review 1.  Diagnostic accuracy and potential covariates of artificial intelligence for diagnosing orthopedic fractures: a systematic literature review and meta-analysis.

Authors:  Xiang Zhang; Yi Yang; Yi-Wei Shen; Ke-Rui Zhang; Ze-Kun Jiang; Li-Tai Ma; Chen Ding; Bei-Yu Wang; Yang Meng; Hao Liu
Journal:  Eur Radiol       Date:  2022-06-27       Impact factor: 7.034

2.  Deep learning in veterinary medicine, an approach based on CNN to detect pulmonary abnormalities from lateral thoracic radiographs in cats.

Authors:  Caroline Boulocher; Thomas Grenier; Léo Dumortier; Florent Guépin; Marie-Laure Delignette-Muller
Journal:  Sci Rep       Date:  2022-07-06       Impact factor: 4.996

Review 3.  Reporting guidelines for clinical trial reports for interventions involving artificial intelligence: the CONSORT-AI extension.

Authors:  Xiaoxuan Liu; Samantha Cruz Rivera; David Moher; Melanie J Calvert; Alastair K Denniston
Journal:  Lancet Digit Health       Date:  2020-09-09

4.  Guidelines for clinical trial protocols for interventions involving artificial intelligence: the SPIRIT-AI Extension.

Authors:  Samantha Cruz Rivera; Xiaoxuan Liu; An-Wen Chan; Alastair K Denniston; Melanie J Calvert
Journal:  BMJ       Date:  2020-09-09

5.  Reporting guidelines for clinical trial reports for interventions involving artificial intelligence: the CONSORT-AI Extension.

Authors:  Xiaoxuan Liu; Samantha Cruz Rivera; David Moher; Melanie J Calvert; Alastair K Denniston
Journal:  BMJ       Date:  2020-09-09

Review 6.  Guidelines for clinical trial protocols for interventions involving artificial intelligence: the SPIRIT-AI extension.

Authors:  Samantha Cruz Rivera; Xiaoxuan Liu; An-Wen Chan; Alastair K Denniston; Melanie J Calvert
Journal:  Nat Med       Date:  2020-09-09       Impact factor: 53.440

7.  Brain metastasis detection using machine learning: a systematic review and meta-analysis.

Authors:  Se Jin Cho; Leonard Sunwoo; Sung Hyun Baik; Yun Jung Bae; Byung Se Choi; Jae Hyoung Kim
Journal:  Neuro Oncol       Date:  2021-02-25       Impact factor: 12.300

8.  Artificial intelligence for older people receiving long-term care: a systematic review of acceptability and effectiveness studies.

Authors:  Kate Loveys; Matthew Prina; Chloe Axford; Òscar Ristol Domènec; William Weng; Elizabeth Broadbent; Sameer Pujari; Hyobum Jang; Zee A Han; Jotheeswaran Amuthavalli Thiyagarajan
Journal:  Lancet Healthy Longev       Date:  2022-04

Review 9.  Guidelines for clinical trial protocols for interventions involving artificial intelligence: the SPIRIT-AI extension.

Authors:  Samantha Cruz Rivera; Xiaoxuan Liu; An-Wen Chan; Alastair K Denniston; Melanie J Calvert
Journal:  Lancet Digit Health       Date:  2020-09-09

Review 10.  Reporting guidelines for clinical trial reports for interventions involving artificial intelligence: the CONSORT-AI extension.

Authors:  Xiaoxuan Liu; Samantha Cruz Rivera; David Moher; Melanie J Calvert; Alastair K Denniston
Journal:  Nat Med       Date:  2020-09-09       Impact factor: 87.241

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