# Adaptive Normalization Enhances the Generalization of Deep Learning Model in Chest X-Ray Classification

**Authors:** Jatsada Singthongchai, Tanachapong Wangkhamhan

PMC · DOI: 10.3390/jimaging12010014 · Journal of Imaging · 2025-12-28

## TL;DR

This paper shows that adaptive preprocessing improves deep learning model performance for chest X-ray classification by enhancing generalization across datasets.

## Contribution

The study introduces an adaptive preprocessing pipeline combining ROI cropping and histogram standardization for improved model generalization.

## Key findings

- The adaptive pipeline improved accuracy and F1-score on datasets with stable contrast characteristics.
- Histogram standardization was the main contributor to performance gains, with ROI cropping providing additional benefits.
- The method had minimal computational overhead and showed statistically significant improvements.

## Abstract

This study presents a controlled benchmarking analysis of min–max scaling, Z-score normalization, and an adaptive preprocessing pipeline that combines percentile-based ROI cropping with histogram standardization. The evaluation was conducted across four public chest X-ray (CXR) datasets and three convolutional neural network architectures under controlled experimental settings. The adaptive pipeline generally improved accuracy, F1-score, and training stability on datasets with relatively stable contrast characteristics while yielding limited gains on MIMIC-CXR due to strong acquisition heterogeneity. Ablation experiments showed that histogram standardization provided the primary performance contribution, with ROI cropping offering complementary benefits, and the full pipeline achieving the best overall performance. The computational overhead of the adaptive preprocessing was minimal (+6.3% training-time cost; 5.2 ms per batch). Friedman–Nemenyi and Wilcoxon signed-rank tests confirmed that the observed improvements were statistically significant across most dataset–model configurations. Overall, adaptive normalization is positioned not as a novel algorithmic contribution, but as a practical preprocessing design choice that can enhance cross-dataset robustness and reliability in chest X-ray classification workflows.

## Full-text entities

- **Diseases:** X (MESH:D000326)

## Full text

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## Figures

9 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12842669/full.md

## References

61 references — full list in the complete paper: https://tomesphere.com/paper/PMC12842669/full.md

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Source: https://tomesphere.com/paper/PMC12842669