# AI-Supported Digital Microscopy Diagnostics in Primary Health Care Laboratories: Scoping Review

**Authors:** Joar von Bahr, Antti Suutala, Vinod Diwan, Andreas Mårtensson, Johan Lundin, Nina Linder

PMC · DOI: 10.2196/78500 · Journal of Medical Internet Research · 2026-01-05

## TL;DR

AI-supported digital microscopy can match traditional diagnostic methods in primary health care labs and may improve access to diagnostics in resource-limited areas.

## Contribution

First scoping review examining AI-supported digital microscopy in primary health care laboratories and its diagnostic accuracy.

## Key findings

- AI-supported digital microscopy achieved comparable diagnostic accuracy to reference standards for blood counts, malaria, parasites, and cellular atypia.
- AI methods showed higher sensitivity than manual microscopy in 85.7% of studies where comparisons were possible.
- The review identified challenges such as scalability and cost-effectiveness that need further research.

## Abstract

Digital microscopy combined with artificial intelligence (AI) is increasingly being implemented in health care, predominantly in advanced laboratory settings. However, AI-supported digital microscopy could be especially advantageous in primary health care settings, since such methods could improve access to diagnostics via automation and a decreased need for experts on-site. To our knowledge, no scoping or systematic review has previously examined the use of AI-supported digital microscopy in primary health care laboratories, and a scoping review could guide future research by providing insights into the challenges of implementing these novel methods.

This scoping review aimed to map published peer-reviewed studies on AI-supported digital microscopy in primary health care laboratories to generate an overview of the subject.

A systematic search of the databases PubMed, Web of Science, Embase, and IEEE was conducted on October 2, 2024. The inclusion criteria in the scoping review were based on 3 concepts: using digital microscopy, AI, and comparison of the results with a standard diagnostic system, and 1 context, being performed in primary health care laboratories. Additional inclusion criteria were peer-reviewed diagnostic accuracy studies published in English, performed on humans and achieving a sample-level diagnosis. The study selection and data extraction were performed by 2 independent researchers (JVB and AS), and cases of disagreement were resolved through discussion with a third researcher (NL). The methodology is in accordance with the Joanna Briggs Institute methodology for scoping reviews.

A total of 3403 papers were screened during the paper identification process, of which 22 (0.6%) were included in the scoping review. The samples analyzed were as follows: blood (n=12) for blood cell and malaria detection, urine (n=4) for urinalysis and parasite detection, cytology of atypical oral (n=1) and cervical cells (n=2), stool (n=2) for parasite detection, and sputum (n=1) for ferning patterns indicating inflammation. Both conventional (n=15) and specifically developed methods (n=7) were used in sample preparation. The AI-supported digital microscopy achieved comparable diagnostic accuracy to the reference standard for complete blood counts, malaria detection, identification of stool and genitourinary parasites, screening for oral and cervical cellular atypia, detection of pulmonary inflammation, and urinalysis. Furthermore, AI-supported digital microscopy achieved higher sensitivity than manual microscopy in 6/7 (85.7%) studies that used a reference standard that allowed for this comparison.

AI-supported digital microscopy achieved comparable diagnostic accuracy to the reference standard for diagnosing multiple targets in primary health care laboratories and may be particularly advantageous for improving diagnostic sensitivity. With further research addressing challenges such as scalability and cost-effectiveness, AI-supported digital microscopy could improve access to diagnostics, especially in expert-scarce and resource-limited settings.

## Linked entities

- **Diseases:** malaria (MONDO:0005136)

## Full-text entities

- **Diseases:** malaria (MESH:D008288), parasite (MESH:D010272), inflammation (MESH:D007249), pulmonary inflammation (MESH:D011014)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/PMC12768395/full.md

## Figures

3 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12768395/full.md

## References

70 references — full list in the complete paper: https://tomesphere.com/paper/PMC12768395/full.md

---
Source: https://tomesphere.com/paper/PMC12768395