Effectiveness of traditional, artificial intelligence-assisted, and virtual reality training modalities for focused cardiac ultrasound skill acquisition: a randomised controlled study

Effectiveness of traditional, artificial intelligence-assisted, and virtual reality training modalities for focused cardiac ultrasound skill acquisition: a randomised controlled study

Authors

  • Yie Hui Lau Anaesthesiology, Intensive Care and Pain Medicine, Tan Tock Seng Hospital, Singapore, Singapore
  • Sanchalika Acharyya Clinical Research & Innovation Office , Tan Tock Seng Hospital, Singapore, Singapore
  • Cadence Wei Lin Wee Anaesthesiology, Intensive Care and Pain Medicine, Tan Tock Seng Hospital, Singapore, Singapore
  • Huiying Xu Respiratory and Critical Care Medicine, Tan Tock Seng Hospital, Singapore, Singapore
  • Rafael Pulido Saclolo Emergency Medicine, Tan Tock Seng Hospital, Singapore, Singapore
  • Kelly Cao Clinical Research & Innovation Office , Tan Tock Seng Hospital, Singapore, Singapore
  • Wee Kim Fong Anaesthesiology, Intensive Care and Pain Medicine, Tan Tock Seng Hospital, Singapore, Singapore

Keywords:

Artificial intelligence, Virtual reality, Ultrasound

Abstract

Background: Focused cardiac ultrasound (FCU) is increasingly used as an extension of physical examination to aid diagnosis and clinical decision-making. Emerging educational technologies such as artificial intelligence (AI)-enabled ultrasound devices and virtual reality (VR) simulators offer novel, cost-effective and self-directed approaches for FCU skill acquisition training. Prior studies suggest that VR-based training may be non-inferior to traditional teaching, while AI offers real-time feedback to enhance learning.

Objective: This study aimed to evaluate the effectiveness and non-inferiority of AI and VR-assisted training compared to Traditional in-person instruction in achieving competency in FCU image acquisition. Secondary outcomes included time to acquire an optimal apical 4 chamber (A4C) view and self-reported confidence in image acquisition, assessed immediately post-training and at 3-month follow up.

Methods: In this single-blind, randomized controlled pilot trial, 66 local medical students with no prior FCU experience were randomised into 3 arms: (1) AI-enabled ultrasound training using the Kosmos system, (2) VR-based stimulator (Vimedix), and (3) Traditional instructor-led teaching. All sessions were 60 min long. Image acquisition of 5 standard FCU views was assessed by blinded evaluators using the Rapid Assessment of Competency in Echocardiography (RACE) score at both time points.

Results: Two participants were lost to follow-up (one each from the AI and VR groups). In the first assessment, the Traditional group achieved the highest mean RACE score (15.77), followed by AI (13.39) and VR (13.23). Non-inferiority testing confirmed that both AI (95% CI −∞ to 3.60; p < 0.001) and VR (95% CI −∞ to 3.58; p < 0.001) methods were non-inferior to Traditional instruction. The AI group achieved the shortest mean time to acquire an optimal A4C view (158 ± 99.1 s), followed by the VR (189 ± 94.7 s), and traditional (199 ± 115.1 s), though differences were not statistically significant (p = 0.591). Confidence levels were initially highest in the Traditional group, while the VR group showed higher confidence at 3-month follow-up, particularly in parasternal long-axis view acquisition.

Conclusions: AI and VR-based training methods were non-inferior to traditional instruction for FCU skill acquisition. Both modalities show promise as scalable, technology-enabled alternatives in ultrasound education.

Trial registration This trial was registered on Clinicaltrials.gov (NCT06355557).

References

1. Spencer KT, Flachskampf FA (2019) Focused cardiac ultrasonography. JACC Cardiovasc Imaging 12(7 Pt 1):1243–1253

2. Huang W, Koh T, Tromp J, Chandramouli C, Ewe SH, Ng CT et al (2024) Point-of-care AI-enhanced novice echocardiography for screening heart failure (PANES-HF). Sci Rep 14(1):13503

3. Khoo C, Sharma S, Jefree RA, Chee D, Koh ZN, Lee EXY et al. Self-directed virtual reality-based training versus traditional physician-led teaching for point-of-care cardiac ultrasound: a randomized controlled study. J Cardiothorac Vasc Anesth. 2024;39:95–103.

4. Gat T, Galante O, Sadeh R, Kobal SL, Fuchs L (2024) Self-learning of cardiac ultrasound by medical students: can augmented online training improve and maintain manual POCUS skills over time? J Ultrasound 27(1):73–80

5. Millington SJ, Arntfield RT, Hewak M, Hamstra SJ, Beaulieu Y, Hibbert B et al (2016) The rapid assessment of competency in echocardiography scale: validation of a tool for Point-of-Care ultrasound. J Ultrasound Med 35(7):1457–1463

6. Prenner SB, Ambrose M, Gopal DJ et al (2022) Pragmatic assessment of resident performed cardiac point of care ultrasound using a validated scoring metric. Int J Cardiol Heart Vasc 39:100993 Published 2022. https://doi.org/10.1016/j.ijcha.2022.100993

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Published

2025-11-21

How to Cite

1.
Lau YH, Acharyya S, Wee CWL, et al. Effectiveness of traditional, artificial intelligence-assisted, and virtual reality training modalities for focused cardiac ultrasound skill acquisition: a randomised controlled study. Ultrasound J. 2025;17(1):61. Accessed January 30, 2026. https://www.mattioli1885journals.com/index.php/theultrasoundjournal/article/view/18287