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Accepted for/Published in: JMIR Formative Research

Date Submitted: Jan 15, 2024
Open Peer Review Period: Jan 17, 2024 - Mar 13, 2024
Date Accepted: Apr 8, 2025
Date Submitted to PubMed: Apr 10, 2025
(closed for review but you can still tweet)

The final, peer-reviewed published version of this preprint can be found here:

Differential Diagnosis Assessment in Ambulatory Care With a Digital Health History Device: Pseudorandomized Study

Healey B, Schwitzguebel A, Spechbach H

Differential Diagnosis Assessment in Ambulatory Care With a Digital Health History Device: Pseudorandomized Study

JMIR Form Res 2025;9:e56384

DOI: 10.2196/56384

PMID: 40205939

PMCID: 12530150

Differential Diagnosis Assessment in Ambulatory Care With a Digital Health History Device: Pseudorandomized Study

  • Beth Healey; 
  • Adrien Schwitzguebel; 
  • Herve Spechbach

Background:

Digital health history devices represent a promising wave of digital tools with the potential to enhance the quality and efficiency of medical consultations. They achieve this by providing physicians with standardized, high-quality patient history summaries and facilitating the development of differential diagnoses (DDs) before consultation, while also engaging patients in the diagnostic process.

Objective:

This study evaluates the efficacy of one such digital health history device, diagnosis and anamnesis (DIANNA), in assisting with the formulation of appropriate DDs in an outpatient setting.

Methods:

A pseudorandomized controlled trial was conducted with 101 patients seeking care at the University Hospital Geneva emergency outpatient department. Participants presented with various conditions affecting the limbs, back, and chest. The first 51 patients were assigned to the control group, while the subsequent 50 formed the intervention group. In the control group, physicians developed DD lists based on traditional history-taking and clinical examination. In the intervention group, physicians reviewed DIANNA-generated DD reports before interacting with the patient. In both groups, a senior physician independently formulated a DD list, serving as the gold standard for comparison.

Results:

The study findings indicate that DIANNA use was associated with a notable improvement in DD accuracy (mean 79.3%, SD 24%) compared with the control group (mean 70.5%, SD 33%; P=.01). Subgroup analysis revealed variations in effectiveness based on case complexity: low-complexity cases (1-2 possible DDs) showed 8% improvement in the intervention group (P=.08), intermediate-complexity cases (3 possible DDs) showed 17% improvement (P=.03), and high-complexity cases (4-5 possible DDs) showed 15% improvement (P=.92). The intervention was not superior to the control in low-complexity cases (P=.08) or high-complexity cases (P=.92). Overall, DIANNA successfully determined appropriate DDs in 81.6% of cases, and physicians reported that it helped establish the correct DD in 26% of cases.

Conclusions:

The study suggests that DIANNA has the potential to support physicians in formulating more precise DDs, particularly in intermediate-complexity cases. However, its effectiveness varied by case complexity and further validation is needed to assess its full clinical impact. These findings highlight the potential role of digital health history devices such as DIANNA in improving clinical decision-making and diagnostic accuracy in medical practice.

ClinicalTrial:

ClinicalTrials.gov NCT03901495; https://clinicaltrials.gov/study/NCT03901495


 Citation

Please cite as:

Healey B, Schwitzguebel A, Spechbach H

Differential Diagnosis Assessment in Ambulatory Care With a Digital Health History Device: Pseudorandomized Study

JMIR Form Res 2025;9:e56384

DOI: 10.2196/56384

PMID: 40205939

PMCID: 12530150

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