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Artificial intelligence in breast cancer: clinical applications in diagnosis, prognosis, and therapeutics.

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Future oncology (London, England) 📖 저널 OA 90.9% 2021: 0/1 OA 2022: 1/2 OA 2023: 0/2 OA 2024: 3/4 OA 2025: 67/67 OA 2026: 79/88 OA 2021~2026 2026 Vol.22(2) p. 249-269
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Singh J, Alsaidan OA, Aodah A, Alrobaian M, Almalki WH, Almujri SS, Sahoo A, Alam K, Lal JA, Barkat MA, Rahman M

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Breast cancer (BC) presents a considerable global health challenge and is characterized by increasing mortality and morbidity rates.

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APA Singh J, Alsaidan OA, et al. (2026). Artificial intelligence in breast cancer: clinical applications in diagnosis, prognosis, and therapeutics.. Future oncology (London, England), 22(2), 249-269. https://doi.org/10.1080/14796694.2025.2606642
MLA Singh J, et al.. "Artificial intelligence in breast cancer: clinical applications in diagnosis, prognosis, and therapeutics.." Future oncology (London, England), vol. 22, no. 2, 2026, pp. 249-269.
PMID 41437780 ↗

Abstract

Breast cancer (BC) presents a considerable global health challenge and is characterized by increasing mortality and morbidity rates. Prompt screening and accurate diagnosis are crucial for improving patient outcomes. For the assessment of BC, radiographic imaging modalities such as digital breast tomosynthesis (DBT), ultrasound, digital mammography (DM), magnetic resonance imaging (MRI), and nuclear medicine procedures are commonly used. The gold standard for confirming cancer is histopathology. To effectively support the segmentation, diagnosis, and prognosis of BC. Artificial intelligence (AI) technologies show great promise for the quantitative depiction of medical images.This review explores recent strides in AI applications for BC. The literature search from 2018 to 2025 was performed with the PubMed database. It includes rapid breast lesion detection, segmentation, cancer diagnosis and enhanced imaging quality through data augmentation. It also discusses the biological characterization of BC via AI-based classification tools, including subtyping and staging. Furthermore, this review also explores the use of multiomics data to predict clinical outcomes such as survival, treatment response, and metastasis in BC. Additionally, we recognized the challenges faced by AI in BC in real-world applications, including organizing data, model interpretability, and regulatory compliance.

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