Biomechanical Assessment of a Novel Sharp- Tipped Screw for 1- Step Minimally Invasive Pedicle Screw Placement Under Navigation

International journal of spine surgery(2023)

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摘要
Background: The objective of this study was to assess the pullout force of a novel sharp-tipped screw developed for single -step, minimally invasive pedicle screw placement guided by neuronavigation compared with the pullout force for traditional screws.Methods: A total of 60 human cadaveric lumbar pedicles were studied. Three different screw insertion techniques were compared: (A) Jamshidi needle and Kirschner wire without tapping; (B) Jamshidi needle and Kirschner wire with tapping; and (C) sharp-tipped screw insertion. Pullout tests were performed at a displacement rate of 10 mm/min recorded at 20 Hz. Mean values of these parameters were compared using paired t tests (left vs right in the same specimen): A vs B, A vs C, and B vs C. Additionally, 3 L1 -L5 spine models were used for timing each screw insertion technique for a total of 10 screw insertions for each technique. Insertion times were compared using 1 -way analysis of variance.Results: The mean pullout force for insertion technique A was 1462.3 (597.5) N; for technique B, it was 1693.5 (805.0) N; and for technique C, it was 1319.0 (735.7) N. There was no statistically significant difference in pullout force between techniques (P > 0.08). The average insertion time for condition C was significantly less than that for conditions A and B (P < 0.001).Conclusions: The pullout force of the novel sharp-tipped screw placement technique is equivalent to that of traditional techniques. The sharp-tipped screw placement technique appears biomechanically viable and has the advantage of saving time during insertion.Clinical Relevance: Single -step screw placement using high resolution 3-dimensional navigation has the potential to streamline workflow and reduce operative time.Level of Evidence: 5.
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关键词
Biomechanics,insertion time,MIS,navigation,pullout,sharp-tipped screw
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