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Review
. 2025 Apr 11;29(6):293.
doi: 10.3892/ol.2025.15039. eCollection 2025 Jun.

Future prospects of deep learning in esophageal cancer diagnosis and clinical decision support (Review)

Affiliations
Review

Future prospects of deep learning in esophageal cancer diagnosis and clinical decision support (Review)

Aiting Lin et al. Oncol Lett. .

Abstract

Esophageal cancer (EC) is one of the leading causes of cancer-related mortality worldwide, still faces significant challenges in early diagnosis and prognosis. Early EC lesions often present subtle symptoms and current diagnostic methods are limited in accuracy due to tumor heterogeneity, lesion morphology and variable image quality. These limitations are particularly prominent in the early detection of precancerous lesions such as Barrett's esophagus. Traditional diagnostic approaches, such as endoscopic examination, pathological analysis and computed tomography, require improvements in diagnostic precision and staging accuracy. Deep learning (DL), a key branch of artificial intelligence, shows great promise in improving the detection of early EC lesions, distinguishing benign from malignant lesions and aiding cancer staging and prognosis. However, challenges remain, including image quality variability, insufficient data annotation and limited generalization. The present review summarized recent advances in the application of DL to medical images obtained through various imaging techniques for the diagnosis of EC at different stages. It assesses the role of DL in tumor pathology, prognosis prediction and clinical decision support, highlighting its advantages in EC diagnosis and prognosis evaluation. Finally, it provided an objective analysis of the challenges currently facing the field and prospects for future applications.

Keywords: deep learning; early diagnosis; esophageal cancer; personalized treatment; precision medicine.

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Conflict of interest statement

The authors declare that they have no competing interests.

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