1.Development of the modified Safety Attitude Questionnaire for the medical imaging department.
Ravi Chanthriga ETURAJULU ; Maw Pin TAN ; Mohd Idzwan ZAKARIA ; Karuthan CHINNA ; Kwan Hoong NG
Singapore medical journal 2025;66(1):33-40
INTRODUCTION:
Medical errors commonly occur in medical imaging departments. These errors are frequently influenced by patient safety culture. This study aimed to develop a suitable patient safety culture assessment tool for medical imaging departments.
METHODS:
Staff members of a teaching hospital medical imaging department were invited to complete the generic short version of the Safety Attitude Questionnaire (SAQ). Internal consistency and reliability were evaluated using Cronbach's α. Confirmatory factor analysis (CFA) was conducted to examine model fit. A cut-off of 60% was used to define the percentage positive responses (PPR). PPR values were compared between occupational groups.
RESULTS:
A total of 300 complete responses were received and the response rate was 75.4%. In reliability analysis, the Cronbach's α for the original 32-item SAQ was 0.941. Six subscales did not demonstrate good fit with CFA. A modified five-subscale, 22-item model (SAQ-MI) showed better fit (goodness-to-fit index ≥0.9, comparative fit index ≥ 0.9, Tucker-Lewis index ≥0.9 and root mean square error of approximation ≤0.08). The Cronbach's α for the 22 items was 0.921. The final five subscales were safety and teamwork climate, job satisfaction, stress recognition, perception of management and working condition, with PPR of 62%, 68%, 57%, 61% and 60%, respectively. Statistically significant differences in PPR were observed between radiographers, doctors and others occupational groups.
CONCLUSION
The modified five-factor, 22-item SAQ-MI is a suitable tool for the evaluation of patient safety culture in a medical imaging department. Differences in patient safety culture exist between occupation groups, which will inform future intervention studies.
Humans
;
Surveys and Questionnaires
;
Patient Safety
;
Attitude of Health Personnel
;
Diagnostic Imaging
;
Reproducibility of Results
;
Male
;
Female
;
Adult
;
Job Satisfaction
;
Factor Analysis, Statistical
;
Middle Aged
;
Hospitals, Teaching
;
Safety Management
;
Organizational Culture
;
Medical Errors/prevention & control*
2.Response to “The Value of Non-Clinical Applications of Artificial Intelligence in Radiology Should Be Noted”
Nicole Kessa WEE ; Kim-Ann GIT ; Wen-Jeng LEE ; Gaurang RAVAL ; Aziz PATTOKHOV ; Evelyn Lai Ming HO ; Chamaree CHUAPETCHARASOPON ; Chuapetcharasopon TOMIYAMA ; Kwan Hoong NG ; Cher Heng TAN
Korean Journal of Radiology 2024;25(12):1102-1103
3.Response to “The Value of Non-Clinical Applications of Artificial Intelligence in Radiology Should Be Noted”
Nicole Kessa WEE ; Kim-Ann GIT ; Wen-Jeng LEE ; Gaurang RAVAL ; Aziz PATTOKHOV ; Evelyn Lai Ming HO ; Chamaree CHUAPETCHARASOPON ; Chuapetcharasopon TOMIYAMA ; Kwan Hoong NG ; Cher Heng TAN
Korean Journal of Radiology 2024;25(12):1102-1103
4.Response to “The Value of Non-Clinical Applications of Artificial Intelligence in Radiology Should Be Noted”
Nicole Kessa WEE ; Kim-Ann GIT ; Wen-Jeng LEE ; Gaurang RAVAL ; Aziz PATTOKHOV ; Evelyn Lai Ming HO ; Chamaree CHUAPETCHARASOPON ; Chuapetcharasopon TOMIYAMA ; Kwan Hoong NG ; Cher Heng TAN
Korean Journal of Radiology 2024;25(12):1102-1103
5.Response to “The Value of Non-Clinical Applications of Artificial Intelligence in Radiology Should Be Noted”
Nicole Kessa WEE ; Kim-Ann GIT ; Wen-Jeng LEE ; Gaurang RAVAL ; Aziz PATTOKHOV ; Evelyn Lai Ming HO ; Chamaree CHUAPETCHARASOPON ; Chuapetcharasopon TOMIYAMA ; Kwan Hoong NG ; Cher Heng TAN
Korean Journal of Radiology 2024;25(12):1102-1103
6.Response to “The Value of Non-Clinical Applications of Artificial Intelligence in Radiology Should Be Noted”
Nicole Kessa WEE ; Kim-Ann GIT ; Wen-Jeng LEE ; Gaurang RAVAL ; Aziz PATTOKHOV ; Evelyn Lai Ming HO ; Chamaree CHUAPETCHARASOPON ; Chuapetcharasopon TOMIYAMA ; Kwan Hoong NG ; Cher Heng TAN
Korean Journal of Radiology 2024;25(12):1102-1103
8.Position Statements of the Emerging Trends Committee of the Asian Oceanian Society of Radiology on the Adoption and Implementation of Artificial Intelligence for Radiology
Nicole Kessa WEE ; Kim-Ann GIT ; Wen-Jeng LEE ; Gaurang RAVAL ; Aziz PATTOKHOV ; Evelyn Lai Ming HO ; Chamaree CHUAPETCHARASOPON ; Noriyuki TOMIYAMA ; Kwan Hoong NG ; Cher Heng TAN
Korean Journal of Radiology 2024;25(7):603-612
Artificial intelligence (AI) is rapidly gaining recognition in the radiology domain as a greater number of radiologists are becoming AI-literate. However, the adoption and implementation of AI solutions in clinical settings have been slow, with points of contention. A group of AI users comprising mainly clinical radiologists across various Asian countries, including India, Japan, Malaysia, Singapore, Taiwan, Thailand, and Uzbekistan, formed the working group. This study aimed to draft position statements regarding the application and clinical deployment of AI in radiology. The primary aim is to raise awareness among the general public, promote professional interest and discussion, clarify ethical considerations when implementing AI technology, and engage the radiology profession in the ever-changing clinical practice. These position statements highlight pertinent issues that need to be addressed between care providers and care recipients. More importantly, this will help legalize the use of non-human instruments in clinical deployment without compromising ethical considerations, decision-making precision, and clinical professional standards. We base our study on four main principles of medical care—respect for patient autonomy, beneficence, non-maleficence, and justice.
9.It is Time to Incorporate Artificial Intelligence in Radiology Residency Programs
Korean Journal of Radiology 2023;24(3):177-179
With the surge of interest in the development and application of artificial intelligence (AI) in radiology, we propose that know-how on the development and clinical evaluation of AI models needs to be incorporated in radiologist training curricula to prepare our specialty to lead in the new era of radiology practice augmented by AI.
10.Understanding and reducing the fear of COVID-19.
Journal of Zhejiang University. Science. B 2020;21(9):752-754
The world is now plagued by a pandemic of unprecedented nature caused by a novel, emerging, and still poorly understood infectious disease, coronavirus disease 2019 (COVID-19) (Wu and McGoogan, 2020). In addition to the rapidly growing body of scientific and medical literature that is being published, extensive public reports and stories in both the traditional media and social media have served to generate fear, panic, stigmatization, and instances of xenophobia (Zarocostas, 2020).
Betacoronavirus
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COVID-19
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Coronavirus Infections/psychology*
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Fear
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Health Education
;
Humans
;
Pandemics
;
Panic
;
Pneumonia, Viral/psychology*
;
SARS-CoV-2
;
Social Media
;
Trust

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