# Imaging-based deep learning in kidney diseases: recent progress and future prospects

**Authors:** Meng Zhang, Zheng Ye, Enyu Yuan, Xinyang Lv, Yiteng Zhang, Yuqi Tan, Chunchao Xia, Jing Tang, Jin Huang, Zhenlin Li

PMC · DOI: 10.1186/s13244-024-01636-5 · Insights into Imaging · 2024-02-16

## TL;DR

This review explores how deep learning using medical imaging is being applied to kidney diseases, highlighting its potential and challenges in clinical practice.

## Contribution

The paper provides a comprehensive overview of recent advances and challenges in imaging-based deep learning for kidney disease management.

## Key findings

- Deep learning is used for kidney disease diagnosis, segmentation, and prognosis prediction.
- Challenges include data imbalance, heterogeneity, and limited dataset sizes.
- Ethical risks and algorithm interpretability remain important issues for future development.

## Abstract

Kidney diseases result from various causes, which can generally be divided into neoplastic and non-neoplastic diseases. Deep learning based on medical imaging is an established methodology for further data mining and an evolving field of expertise, which provides the possibility for precise management of kidney diseases. Recently, imaging-based deep learning has been widely applied to many clinical scenarios of kidney diseases including organ segmentation, lesion detection, differential diagnosis, surgical planning, and prognosis prediction, which can provide support for disease diagnosis and management. In this review, we will introduce the basic methodology of imaging-based deep learning and its recent clinical applications in neoplastic and non-neoplastic kidney diseases. Additionally, we further discuss its current challenges and future prospects and conclude that achieving data balance, addressing heterogeneity, and managing data size remain challenges for imaging-based deep learning. Meanwhile, the interpretability of algorithms, ethical risks, and barriers of bias assessment are also issues that require consideration in future development. We hope to provide urologists, nephrologists, and radiologists with clear ideas about imaging-based deep learning and reveal its great potential in clinical practice.

Critical relevance statement The wide clinical applications of imaging-based deep learning in kidney diseases can help doctors to diagnose, treat, and manage patients with neoplastic or non-neoplastic renal diseases.

Key points

• Imaging-based deep learning is widely applied to neoplastic and non-neoplastic renal diseases.

• Imaging-based deep learning improves the accuracy of the delineation, diagnosis, and evaluation of kidney diseases.

• The small dataset, various lesion sizes, and so on are still challenges for deep learning.

## Full-text entities

- **Diseases:** lesion (MESH:D009059), Kidney diseases (MESH:D007674)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

6 figures with captions in the complete paper: https://tomesphere.com/paper/PMC10869329/full.md

## References

70 references — full list in the complete paper: https://tomesphere.com/paper/PMC10869329/full.md

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Source: https://tomesphere.com/paper/PMC10869329