# Strategies for Class-Imbalanced Learning in Multi-Sensor Medical Imaging

**Authors:** Da Zhou, Song Gao, Xinrui Huang

PMC · DOI: 10.3390/s26061998 · Sensors (Basel, Switzerland) · 2026-03-23

## TL;DR

This paper reviews strategies to handle class imbalance in medical imaging AI systems using multi-sensor data to improve diagnostic accuracy for rare conditions.

## Contribution

The paper introduces a structured analysis of data-centric and model-centric strategies for class-imbalance learning in multi-sensor medical imaging.

## Key findings

- Data-centric strategies improve minority class recall by 12–35% in highly imbalanced datasets.
- Model-centric strategies achieve an average AUC improvement of 0.08–0.21 in multi-sensor medical imaging tasks.
- Multi-sensor fusion enhances minority class representation beyond single-modality learning.

## Abstract

This narrative critical review addresses class imbalance in medical imaging, particularly within the context of multi-sensor and multi-modal environments, poses a critical challenge to developing reliable AI diagnostic systems. The integration of heterogeneous data from sources like CT, MRI, and PET presents a unique opportunity to address data scarcity for rare conditions through fusion techniques. This review provides a structured analysis of strategies to tackle class imbalance, categorizing them into data-centric (e.g., advanced resampling like SMOTE-ENC for mixed data types, GAN-based synthesis) and model-centric (e.g., loss function engineering, transfer learning, and ensemble methods) approaches. Crucially, we highlight how multi-sensor feature fusion and decision-level fusion paradigms can inherently enrich representations for minority classes, offering a powerful frontier beyond single-modality learning. We evaluate each method’s merits, clinical viability, and compliance considerations (e.g., FDA). Finally, we identify emerging trends where imbalance-aware learning synergizes with multi-sensor fusion frameworks, federated learning, and explainable AI, charting a roadmap toward robust, equitable, and clinically deployable diagnostic tools. Our quantitative synthesis shows that data-centric strategies can improve minority class recall by 12–35% in datasets with imbalance ratios (majority:minority) ≥10:1, while model-centric strategies achieve an average AUC improvement of 0.08–0.21 in multi-sensor medical imaging tasks with sample sizes ranging from 50 to 50,000.

## Full text

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## Figures

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## References

57 references — full list in the complete paper: https://tomesphere.com/paper/PMC13029843/full.md

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Source: https://tomesphere.com/paper/PMC13029843