• Spine · Nov 2023

    Surgeon Experience Influences Robotics Learning Curve for Minimally Invasive Lumbar Fusion: A Cumulative Sum Analysis.

    • Pratyush Shahi, Tejas Subramanian, Omri Maayan, Maximilian Korsun, Sumedha Singh, Kasra Araghi, Nishtha Singh, Tomoyuki Asada, Olivia Tuma, Avani Vaishnav, Evan Sheha, James Dowdell, Sheeraz Qureshi, and Sravisht Iyer.
    • Hospital for Special Surgery, New York, NY.
    • Spine. 2023 Nov 1; 48 (21): 151715251517-1525.

    Study DesignRetrospective review of prospectively collected data.ObjectiveTo analyze the learning curves of three spine surgeons for robotic minimally invasive transforaminal lumbar interbody fusion (MI-TLIF).Summary Of Background DataAlthough the learning curve for robotic MI-TLIF has been described, the current evidence is of low quality with most studies being single-surgeon series.Materials And MethodsPatients who underwent single-level MI-TLIF with three spine surgeons (years in practice: surgeon 1: 4, surgeon 2: 16, and surgeon 3: two) using a floor-mounted robot were included. Outcome measures were operative time, fluoroscopy time, intraoperative complications, screw revision, and patient-reported outcome measures. Each surgeon's cases were divided into successive groups of 10 patients and compared for differences. Linear regression and cumulative sum (CuSum) analyses were performed to analyze the trend and learning curve, respectively.ResultsA total of 187 patients were included (surgeon 1: 45, surgeon 2: 122, and surgeon 3: 20). For surgeon 1, CuSum analysis showed a learning curve of 21 cases with the attainment of mastery at case 31. Linear regression plots showed negative slopes for operative and fluoroscopy time. Both learning phase and postlearning phase groups showed significant improvement in patient-reported outcome measures. For surgeon 2, CuSum analysis demonstrated no discernible learning curve. There was no significant difference between successive patient groups in either operative time or fluoroscopy time. For surgeon 3, CuSum analysis demonstrated no discernible learning curve. Even though the difference between successive patient groups was not significant, cases 11 to 20 had an average operative time of 26 minutes less than cases 1-10), suggesting an ongoing learning curve.ConclusionsSurgeons who are well-experienced can be expected to have no or minimal learning curve for robotic MI-TLIF. Early attendings are likely to have a learning curve of around 21 cases with the attainment of mastery at case 31. Learning curve does not seem to impact clinical outcomes after surgery.Level Of EvidenceLevel 3.Copyright © 2023 Wolters Kluwer Health, Inc. All rights reserved.

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