Combining multivariate statistics and the think-aloud protocol to assess Human-Computer Interaction barriers in symptom checkers

J Biomed Inform. 2017 Oct:74:104-122. doi: 10.1016/j.jbi.2017.09.002. Epub 2017 Sep 9.

Abstract

Symptom checkers are software tools that allow users to submit a set of symptoms and receive advice related to them in the form of a diagnosis list, health information or triage. The heterogeneity of their potential users and the number of different components in their user interfaces can make testing with end-users unaffordable. We designed and executed a two-phase method to test the respiratory diseases module of the symptom checker Erdusyk. Phase I consisted of an online test with a large sample of users (n=53). In Phase I, users evaluated the system remotely and completed a questionnaire based on the Technology Acceptance Model. Principal Component Analysis was used to correlate each section of the interface with the questionnaire responses, thus identifying which areas of the user interface presented significant contributions to the technology acceptance. In the second phase, the think-aloud procedure was executed with a small number of samples (n=15), focusing on the areas with significant contributions to analyze the reasons for such contributions. Our method was used effectively to optimize the testing of symptom checker user interfaces. The method allowed kept the cost of testing at reasonable levels by restricting the use of the think-aloud procedure while still assuring a high amount of coverage. The main barriers detected in Erdusyk were related to problems understanding time repetition patterns, the selection of levels in scales to record intensities, navigation, the quantification of some symptom attributes, and the characteristics of the symptoms.

Keywords: Clinical Decision Support Systems; Human Computer Interaction; Symptom checkers; Usability testing.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Decision Support Systems, Clinical
  • Humans
  • Man-Machine Systems*
  • Multivariate Analysis
  • Principal Component Analysis