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Published in: Canadian Journal of Anesthesia/Journal canadien d'anesthésie 6/2017

01-06-2017 | Reports of Original Investigations

Measurement of faculty anesthesiologists’ quality of clinical supervision has greater reliability when controlling for the leniency of the rating anesthesia resident: a retrospective cohort study

Authors: Franklin Dexter, MD, PhD, Johannes Ledolter, PhD, Bradley J. Hindman, MD

Published in: Canadian Journal of Anesthesia/Journal canadien d'anesthésie | Issue 6/2017

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Abstract

Background

Our department monitors the quality of anesthesiologists’ clinical supervision and provides each anesthesiologist with periodic feedback. We hypothesized that greater differentiation among anesthesiologists’ supervision scores could be obtained by adjusting for leniency of the rating resident.

Methods

From July 1, 2013 to December 31, 2015, our department has utilized the de Oliveira Filho unidimensional nine-item supervision scale to assess the quality of clinical supervision provided by faculty as rated by residents. We examined all 13,664 ratings of the 97 anesthesiologists (ratees) by the 65 residents (raters). Testing for internal consistency among answers to questions (large Cronbach’s alpha > 0.90) was performed to rule out that one or two questions accounted for leniency. Mixed-effects logistic regression was used to compare ratees while controlling for rater leniency vs using Student t tests without rater leniency.

Results

The mean supervision scale score was calculated for each combination of the 65 raters and nine questions. The Cronbach’s alpha was very large (0.977). The mean score was calculated for each of the 3,421 observed combinations of resident and anesthesiologist. The logits of the percentage of scores equal to the maximum value of 4.00 were normally distributed (residents, P = 0.24; anesthesiologists, P = 0.50). There were 20/97 anesthesiologists identified as significant outliers (13 with below average supervision scores and seven with better than average) using the mixed-effects logistic regression with rater leniency entered as a fixed effect but not by Student’s t test. In contrast, there were three of 97 anesthesiologists identified as outliers (all three above average) using Student’s t tests but not by logistic regression with leniency. The 20 vs 3 was significant (P < 0.001).

Conclusions

Use of logistic regression with leniency results in greater detection of anesthesiologists with significantly better (or worse) clinical supervision scores than use of Student’s t tests (i.e., without adjustment for rater leniency).
Appendix
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Footnotes
1
Leniency is the scientific term. We searched Google Scholar on December 8, 2016. There were 962 results from “rater leniency” OR “raters’ leniency” OR “rating leniency” OR “leniency of the rater” OR “leniency of the raters”. There were 93.4% fewer results for “rater heterogeneity” OR “raters’ heterogeneity” OR “heterogeneity of the rater” OR “heterogeneity of the raters”.
 
2
See http://​FDshort.​com/​CronbachSplitHal​f, accessed February 2017. For each respondent, select four of the nine questions, calculate the mean score, and calculate the mean score of the other five questions. Calculate among all raters the correlation coefficient between the pairwise split-half mean scores. Repeat the process using all possible split halves of the nine questions. The mean of the correlation coefficients is Cronbach’s alpha. This measure of internal consistency provides quantification for the reliability of the use of the score alone.
 
3
The sample sizes are too small to estimate the variance within pairs, and the variances are generally unequal among pairs.7,8 See the Anesthesia & Analgesia companion papers for mathematical details.7,8 Even when there are many ratings per rater, using each rating’s score minimally influences final assessments clinically.19
 
4
Residents provided a response for 99.1% (n = 14,585) of the 14,722 requests.10 For 6.3% (n = 921) of requests, residents responded that they worked with the faculty for insufficient time to evaluate supervision, leaving n = 13,664 ratings.10 The mean (SD) intraoperative patient care time together was 4.87 (2.53) h day−1.10
 
5
High-stakes Testing. Wikipedia. Available from URL: https://​en.​wikipedia.​org/​wiki/​High-stakes_​testing (accessed February 2017).
 
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Metadata
Title
Measurement of faculty anesthesiologists’ quality of clinical supervision has greater reliability when controlling for the leniency of the rating anesthesia resident: a retrospective cohort study
Authors
Franklin Dexter, MD, PhD
Johannes Ledolter, PhD
Bradley J. Hindman, MD
Publication date
01-06-2017
Publisher
Springer US
Published in
Canadian Journal of Anesthesia/Journal canadien d'anesthésie / Issue 6/2017
Print ISSN: 0832-610X
Electronic ISSN: 1496-8975
DOI
https://doi.org/10.1007/s12630-017-0866-4

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