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Pulling back the curtain: Exploring norms and practices among a sample of anatomy-related departments in U.S. medical schools.

MacKenzie GriffithChristopher FerrignoAdam B Wilson
Published in: Anatomical sciences education (2023)
Anatomy-related departments have access to comparative research productivity data (e.g., Blue Ridge Institute for Medical Research), yet no datasets exist for comparing departments' general practices pertinent to education-focused faculty. Practice trends in anatomy-related departments across U.S. medical schools were explored by surveying departmental leaders. The survey inquired about: (i) faculty time allocations, (ii) anatomy teaching services, (iii) faculty labor distribution models, and (iv) faculty compensation practices. A nationally representative sample of 35 departments (of 194) responded to the survey. On average, anatomy educators are allotted 24% (median = 15%) protected time for research, irrespective of funding, 62% for teaching and course administration (median = 68%), 12% for service, and 2% for administration. Forty-four percent (15 of 34) of departments taught at least five different student populations, often across multiple colleges. Many departments (65%; 11 of 17) applied formulaic methods for determining faculty workloads, often as a function of course credits or contact hours. Average base salaries for assistant and associate professors reported by this survey were consistent (p ≥ 0.056) with national means (i.e., Association of American Medical Colleges Annual Faculty Salary Report). Merit-based increases and bonuses averaged 5% and 10% of faculty's salaries, respectively, when awarded. Cost-of-living increases averaged 3%. Overall, departments' workload and compensation practices vary widely, likely a consequence of different institutional cultures, locations, needs, and financial priorities. This sample dataset allows anatomy-related departments to compare and reflect upon their practices and competitiveness in recruiting and retaining faculty.
Keyphrases
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