Literature DB >> 31680181

Attitudes toward artificial intelligence in radiology with learner needs assessment within radiology residency programmes: a national multi-programme survey.

Su Kai Gideon Ooi1, Andrew Makmur2, Alvin Yong Quan Soon3, Stephanie Fook-Chong4, Charlene Liew5, Soon Yiew Sia2, Yong Han Ting3, Chee Yeong Lim6.   

Abstract

INTRODUCTION: We aimed to assess the attitudes and learner needs of radiology residents and faculty radiologists regarding artificial intelligence (AI) and machine learning (ML) in radiology.
METHODS: A web-based questionnaire, designed using SurveyMonkey, was sent out to residents and faculty radiologists in all three radiology residency programmes in Singapore. The questionnaire comprised four sections and aimed to evaluate respondents' current experience, attempts at self-learning, perceptions of career prospects and expectations of an AI/ML curriculum in their residency programme. Respondents' anonymity was ensured.
RESULTS: A total of 125 respondents (86 male, 39 female; 70 residents, 55 faculty radiologists) completed the questionnaire. The majority agreed that AI/ML will drastically change radiology practice (88.8%) and makes radiology more exciting (76.0%), and most would still choose to specialise in radiology if given a choice (80.0%). 64.8% viewed themselves as novices in their understanding of AI/ML, 76.0% planned to further advance their AI/ML knowledge and 67.2% were keen to get involved in an AI/ML research project. An overwhelming majority (84.8%) believed that AI/ML knowledge should be taught during residency, and most opined that this was as important as imaging physics and clinical skills/knowledge curricula (80.0% and 72.8%, respectively). More than half thought that their residency programme had not adequately implemented AI/ML teaching (59.2%). In subgroup analyses, male and tech-savvy respondents were more involved in AI/ML activities, leading to better technical understanding.
CONCLUSION: A growing optimism towards radiology undergoing technological transformation and AI/ML implementation has led to a strong demand for an AI/ML curriculum in residency education. Copyright: © Singapore Medical Association.

Keywords:  artificial intelligence; education; machine learning; radiology; residency

Year:  2019        PMID: 31680181      PMCID: PMC8027147          DOI: 10.11622/smedj.2019141

Source DB:  PubMed          Journal:  Singapore Med J        ISSN: 0037-5675            Impact factor:   1.858


  9 in total

1.  Artificial intelligence in intensive care medicine.

Authors:  Muhammad Mamdani; Arthur S Slutsky
Journal:  Intensive Care Med       Date:  2020-08-07       Impact factor: 17.440

2.  Artificial intelligence: radiologists' expectations and opinions gleaned from a nationwide online survey.

Authors:  Francesca Coppola; Lorenzo Faggioni; Daniele Regge; Andrea Giovagnoni; Rita Golfieri; Corrado Bibbolino; Vittorio Miele; Emanuele Neri; Roberto Grassi
Journal:  Radiol Med       Date:  2020-04-29       Impact factor: 3.469

3.  Opportunities and challenges of artificial intelligence in the medical field: current application, emerging problems, and problem-solving strategies.

Authors:  Lushun Jiang; Zhe Wu; Xiaolan Xu; Yaqiong Zhan; Xuehang Jin; Li Wang; Yunqing Qiu
Journal:  J Int Med Res       Date:  2021-03       Impact factor: 1.671

4.  Artificial intelligence and medical education: A global mixed-methods study of medical students' perspectives.

Authors:  Hamza Ejaz; Hari McGrath; Brian Lh Wong; Andrew Guise; Tom Vercauteren; Jonathan Shapey
Journal:  Digit Health       Date:  2022-05-02

5.  AI-RADS: An Artificial Intelligence Curriculum for Residents.

Authors:  Alexander L Lindqwister; Saeed Hassanpour; Petra J Lewis; Jessica M Sin
Journal:  Acad Radiol       Date:  2020-10-15       Impact factor: 3.173

6.  The current state of knowledge on imaging informatics: a survey among Spanish radiologists.

Authors:  Daniel Eiroa; Andreu Antolín; Mónica Fernández Del Castillo Ascanio; Violeta Pantoja Ortiz; Manuel Escobar; Nuria Roson
Journal:  Insights Imaging       Date:  2022-03-02

7.  Knowledge, attitude, and practice of artificial intelligence among doctors and medical students in Pakistan: A cross-sectional online survey.

Authors:  Zaboor Ahmed; Khurram Khaliq Bhinder; Amna Tariq; Muhammad Junaid Tahir; Qasim Mehmood; Muhammad Saad Tabassum; Muna Malik; Sana Aslam; Muhammad Sohaib Asghar; Zohaib Yousaf
Journal:  Ann Med Surg (Lond)       Date:  2022-03-14

8.  Endoscopists' Acceptance on the Implementation of Artificial Intelligence in Gastrointestinal Endoscopy: Development and Case Analysis of a Scale.

Authors:  Li Tian; Zinan Zhang; Yu Long; Anliu Tang; Minzi Deng; Xiuyan Long; Ning Fang; Xiaoyu Yu; Xixian Ruan; Jianing Qiu; Xiaoyan Wang; Haijun Deng
Journal:  Front Med (Lausanne)       Date:  2022-04-12

9.  A qualitative study to explore opinions of Saudi Arabian radiologists concerning AI-based applications and their impact on the future of the radiology.

Authors:  Walaa Alsharif; Abdulaziz Qurashi; Fadi Toonsi; Ali Alanazi; Fahad Alhazmi; Osamah Abdulaal; Shrooq Aldahery; Khalid Alshamrani
Journal:  BJR Open       Date:  2022-03-21
  9 in total

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