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CUSUM Learning Curves: What They Can and Can't Tell Us

Overview
Journal Surg Endosc
Publisher Springer
Date 2023 Jul 17
PMID 37460815
Authors
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Abstract

Introduction: There has been increased interest in assessing the surgeon learning curve for new skill acquisition. While there is no consensus around the best methodology, one of the most frequently used learning curve assessments in the surgical literature is the cumulative sum curve (CUSUM) of operative time. To demonstrate the limitations of this methodology, we assessed the CUSUM of console time across cohorts of surgeons with differing case acquisition rates while varying the total number of cases used to calculate the CUSUM.

Methods: We compared the CUSUM curves of the average console times of surgeons who completed their first 20 robotic-assisted (RAS) cases in 13, 26, 39, and 52 weeks, respectively, for their first 50 and 100 cases, respectively. This analysis was performed for prostatectomy (1094 surgeons), malignant hysterectomy (737 surgeons), and inguinal hernia (1486 surgeons).

Results: In all procedures, the CUSUM curve of the cohort of surgeons who completed their first 20 procedures in 13 weeks demonstrated a lower slope than cohorts of surgeons with slower case acquisition rates. The case number at which the peak of the CUSUM curve occurs uniformly increases when the total number of cases used in generation of the CUSUM chart changes from 50 to 100 cases.

Conclusion: The CUSUM analyses of these three procedures suggests that surgeons with fast initial case acquisition rates have less variability in their operative times over the course of their learning curve. The peak of the CUSUM curve, which is often used in surgical learning curve literature to denote "proficiency" is predictably influenced by the total number of procedures evaluated, suggesting that defining the peak as the point at which a surgeon has overcome the learning curve is subject to routine bias. The CUSUM peak, by itself, is an insufficient measure of "conquering the learning curve."

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References
1.
Luft H, Bunker J, Enthoven A . Should operations be regionalized? The empirical relation between surgical volume and mortality. N Engl J Med. 1979; 301(25):1364-9. DOI: 10.1056/NEJM197912203012503. View

2.
Khan N, Abboudi H, Khan M, Dasgupta P, Ahmed K . Measuring the surgical 'learning curve': methods, variables and competency. BJU Int. 2013; 113(3):504-8. DOI: 10.1111/bju.12197. View

3.
Hopper A, Jamison M, Lewis W . Learning curves in surgical practice. Postgrad Med J. 2007; 83(986):777-9. PMC: 2750931. DOI: 10.1136/pgmj.2007.057190. View

4.
Valsamis E, Chouari T, ODowd-Booth C, Rogers B, Ricketts D . Learning curves in surgery: variables, analysis and applications. Postgrad Med J. 2018; 94(1115):525-530. DOI: 10.1136/postgradmedj-2018-135880. View

5.
Ramsay C, Grant A, Wallace S, Garthwaite P, Monk A, Russell I . Assessment of the learning curve in health technologies. A systematic review. Int J Technol Assess Health Care. 2001; 16(4):1095-108. DOI: 10.1017/s0266462300103149. View