Identifying complexity in infectious diseases inpatient settings: An observation study

J Biomed Inform. 2017 Jul:71S:S13-S21. doi: 10.1016/j.jbi.2016.10.018. Epub 2016 Nov 3.

Abstract

Background: Understanding complexity in healthcare has the potential to reduce decision and treatment uncertainty. Therefore, identifying both patient and task complexity may offer better task allocation and design recommendation for next-generation health information technology system design.

Objective: To identify specific complexity-contributing factors in the infectious disease domain and the relationship with the complexity perceived by clinicians.

Method: We observed and audio recorded clinical rounds of three infectious disease teams. Thirty cases were observed for a period of four consecutive days. Transcripts were coded based on clinical complexity-contributing factors from the clinical complexity model. Ratings of complexity on day 1 for each case were collected. We then used statistical methods to identify complexity-contributing factors in relationship to perceived complexity of clinicians.

Results: A factor analysis (principal component extraction with varimax rotation) of specific items revealed three factors (eigenvalues>2.0) explaining 47% of total variance, namely task interaction and goals (10 items, 26%, Cronbach's Alpha=0.87), urgency and acuity (6 items, 11%, Cronbach's Alpha=0.67), and psychosocial behavior (4 items, 10%, Cronbach's alpha=0.55). A linear regression analysis showed no statistically significant association between complexity perceived by the physicians and objective complexity, which was measured from coded transcripts by three clinicians (Multiple R-squared=0.13, p=0.61). There were no physician effects on the rating of perceived complexity.

Conclusion: Task complexity contributes significantly to overall complexity in the infectious diseases domain. The different complexity-contributing factors found in this study can guide health information technology system designers and researchers for intuitive design. Thus, decision support tools can help reduce the specific complexity-contributing factors. Future studies aimed at understanding clinical domain-specific complexity-contributing factors can ultimately improve task allocation and design for intuitive clinical reasoning.

Keywords: Clinical complexity; Clinical decision support design; Health information technology; Infectious disease; Medical informatics; Uncertainty.

MeSH terms

  • Communicable Diseases*
  • Decision Support Systems, Clinical
  • Humans
  • Inpatients*
  • Medical Informatics
  • Physicians*
  • Regression Analysis