# Visual classification of allergenic pollen in iteratively reconstructed lens-less DIHM images

**Authors:** Blaž Cugmas, Eva Štruc, Mindaugas Tamosiunas, Zbigņevs Marcinkevičs, Miran Bürmen, Peter Naglič

PMC · DOI: 10.1038/s41598-026-36618-8 · 2026-01-22

## TL;DR

This study shows that lens-less holographic microscopy can accurately identify allergenic pollen when used with iterative reconstruction, matching traditional microscopy in accuracy.

## Contribution

The study demonstrates that iteratively reconstructed lens-less DIHM images can be effectively used for visual allergenic pollen classification by experts.

## Key findings

- Lens-less DIHM achieved 95.8% classification accuracy, comparable to conventional optical microscopy (96.9%).
- Inter-observer agreement was high (Cohen’s κ = 0.91), indicating consistent pollen identification across experts.
- Silver birch pollen was most frequently misclassified due to its morphological variability and similarity to other pollen types.

## Abstract

Lens-less digital in-line holographic microscopy (DIHM) is a low-cost, wide-field imaging technique that relies on computational reconstruction to form focused images that should ideally be free of twin-image artifacts. While current DIHM-based pollen classification systems are typically automated and rely on large datasets and deep learning, our study explored whether iteratively reconstructed DIHM images using the Gerchberg–Saxton (GS) algorithm are suitable for visual classification by human experts. Two veterinary cytopathologists evaluated images of six clinically relevant pollen types, namely timothy grass, common ragweed, silver birch, common alder, olive tree, and hazel, using both lens-less DIHM and conventional optical microscopy. Classification accuracy was comparable across modalities, with DIHM achieving 95.8% and optical microscopy 96.9%. Inter-observer agreement was high (Cohen’s κ = 0.91), indicating near-perfect consistency between evaluators. Most misclassifications involved silver birch pollen, likely due to its morphological variability and overlap with common alder and hazel. These findings demonstrate that lens-less DIHM combined with iterative reconstruction enables accurate visual identification of allergenic pollen, offering a promising alternative to conventional microscopy in veterinary and other resource-limited settings.

## Full-text entities

- **Diseases:** CAD (MESH:D003876), skin infections (MESH:D007239), itching (MESH:D011537), allergic skin disease (MESH:D012871), inflammation (MESH:D007249), atopic (MESH:C566404), DIHM (MESH:C000721267)
- **Chemicals:** silver (MESH:D012834), silicone (MESH:D012828)
- **Species:** Alnus glutinosa (species) [taxon 3517], Corylus avellana (European hazelnut, species) [taxon 13451], Homo sapiens (human, species) [taxon 9606], Ambrosia artemisiifolia (annual ragweed, species) [taxon 4212], Phleum pratense (timothy, species) [taxon 15957], Canis lupus familiaris (dog, subspecies) [taxon 9615], Betula pendula (European white birch, species) [taxon 3505], Olea europaea (common olive, species) [taxon 4146]

## Figures

6 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12902043/full.md

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Source: https://tomesphere.com/paper/PMC12902043