AI Article Synopsis

  • The success of vascular interventional surgery depends largely on a surgeon’s skills in manipulating catheters and guidewires, necessitating accurate assessment methods.
  • Current evaluation methods often rely on sensors attached to surgeons or devices, which can interfere with natural movements.
  • A new image-based assessment approach is introduced, analyzing video sequences of catheterization tasks without physical constraints, achieving a high accuracy rate of 97.02% in distinguishing between expert and novice skill levels.

Article Abstract

The clinical success of vascular interventional surgery relies heavily on a surgeon's catheter/guidewire manipulation skills and strategies. An objective and accurate assessment method plays a critical role in evaluating the surgeon's technical manipulation skill level. Most of the existing evaluation methods incorporate the use of information technology to find more objective assessment models based on various metrics. However, in these models, sensors are often attached to the surgeon's hands or to interventional devices for data collection, which constrains the surgeon's operational movements or exerts an influence on the motion trajectory of interventional devices. In this paper, an image information-based assessment method is proposed for the evaluation of the surgeon's manipulation skills without the requirement of attaching sensors to the surgeon or catheters/guidewires. Surgeons are allowed to use their natural bedside manipulation skills during the data collection process. Their manipulation features during different catheterization tasks are derived from the motion analysis of the catheter/guidewire in video sequences. Notably, data relating to the number of speed peaks, slope variations, and the number of collisions are included in the assessment. Furthermore, the contact forces, resulting from interactions between the catheter/guidewire and the vascular model, are sensed by a 6-DoF F/T sensor. A support vector machine (SVM) classification framework is developed to discriminate the surgeon's catheterization skill levels. The experimental results demonstrate that the proposed SVM-based assessment method can obtain an accuracy of 97.02% to distinguish between the expert and novice manipulations, which is higher than that of other existing research achievements. The proposed method has great potential to facilitate skill assessment and training of novice surgeons in vascular interventional surgery.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10144356PMC
http://dx.doi.org/10.3390/s23084031DOI Listing

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