Perspectives on Complex Care Training in a Large Academic Pediatric Training Program.

Academic pediatrics(2022)

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摘要
OBJECTIVE:To identify gaps and opportunities in complex care training for pediatric residents. METHODS:Residents in an academic pediatric residency program were surveyed about: training experiences in complex care; self-entrustment in key clinical activities in complex care; educational strategies that would increase preparedness; and recommendations for curriculum development. We used descriptive statistics for quantitative data and content analysis for free-text responses. RESULTS:Of the 160 residents surveyed, 110 (69%) participated. Most participants reported prior clinical exposure to children with medical complexity (CMC; 106, 96%) during both inpatient (82, 75%) and outpatient (88, 80%) clinical rotations. Mean self-entrustment was at or below "somewhat confident" for all clinical activities in complex care, for residents in all postgraduate years. Clinical activities with highest reported self-entrustment included evaluating aspiration into the airway, nutritional issues, care coordination, and evaluating pain. Lowest self-entrustment was reported for facilitating transition to adult care, managing medical technologies, and safety/emergency planning. In terms of educational strategies, participants recommended inpatient encounters with an expert preceptor teaching about evaluating aspiration, pain/irritability and dysmotility (>50%); discussions with patients/families for advocacy, difficult discussions, and transition to adult care (>40%); and hands-on practice for medical technology care (>40%). CONCLUSIONS:Pediatric residents report limited self-entrustment in performing key clinical activities in complex care, including for residents at the end of their last postgraduate year. Future curriculum development should prioritize direct observation of clinical encounters with CMC by expert preceptors, partnership with patients and families of CMC, and hands-on simulation.
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