Diagnostic Accuracy of Artificial Intelligence for Breast Cancer Detection: A Systematic Review

Abhishek Hanumanpratap Singh Kshatri

Emergency Medicine, Apollo Hospitals, Visakhapatnam, Andhra Pradesh, India.

Srushti Parmar

Department of Obstetrics and Gynaecology, Sal Institute of Medical Sciences, Ahmedabad, Gujarat, India.

Jnapika Devarapalli

Internal Medicine, Gayatri Vidya Parishad Institute of Healthcare and Medical Technology, Andhra Pradesh, India.

Krutik Nayak

Department of Pharmacology, SMIMER Medical College, Surat, Gujarat, India.

V. Soumya.

Department of Medical Laboratory Technology, KMCT College of Allied Health Sciences, Kerala, India.

K. B. Riyas Basheer

Department of Physiotherapy, Tejasvini Physiotherapy College, Mangalore, Karnataka, India.

V. P. Akshay *

Biomedical Research, BioDesk INDIA Labs, Madhya Pradesh, India.

N. S. Delna

Department of Medical Laboratory, Al-Azhar College of Allied Health Sciences, Kerala, India.

Sonali Rath

Centre for Biotchology, Siksha O Anusandhan (deemed to be) University, Odisha, India.

Shubhrith Shrivastava

Biomedical Research, BioDesk INDIA Labs, Madhya Pradesh, India.

K. N. Jyothilakshmi

Department of Computing Science, Vels Institute of Science, Technology and Advanced Studies (VISTAS), Chennai, India.

Seerat Kular

Internal Medicine, All India Institute of Medical Sciences, Bathinda, India.

*Author to whom correspondence should be addressed.


Abstract

Background: Breast cancer remains a leading cause of cancer-related morbidity and mortality worldwide, necessitating accurate and early detection strategies. Conventional imaging and pathological assessment are limited by interobserver variability, reduced sensitivity in dense breast tissue, and increasing workload pressures. Artificial intelligence (AI) and machine learning (ML) have emerged as potential tools to enhance diagnostic performance and clinical decision-making.

Objective: To systematically evaluate the diagnostic accuracy and clinical applicability of Artificial Intelligence & Machine Learning models in breast cancer detection across imaging modalities and clinical settings.

Methods: A systematic search of PubMed, Scopus, and Web of Science was conducted for studies published between January 2014 and May 2025, following PRISMA 2020 guidelines. Original studies assessing AI/ML-based diagnostic models and reporting performance metrics were included. Two reviewers independently performed study selection, data extraction, and risk-of-bias assessment using the Prediction Model Risk of Bias Assessment Tool (PROBAST). Due to substantial methodological heterogeneity, results were synthesized descriptively.

Results: Of 1,892 identified records, 29 studies met inclusion criteria. Most evaluated imaging-based models using mammography, ultrasound, MRI, CT, thermography, or digital histopathology. Deep learning approaches, particularly convolutional neural networks, predominated. Reported AUC values ranged from 84 to 99%, with sensitivity and specificity frequently exceeding 85% in retrospective cohorts. Large screening studies demonstrated that AI-assisted mammography was non-inferior to double reading while reducing radiologist workload. However, most studies relied on retrospective datasets with limited external validation.

Conclusion: Artificial Intelligence & Machine Learning models show high diagnostic potential across breast imaging modalities and may enhance screening efficiency and diagnostic support. Nevertheless, the predominance of retrospective designs and limited prospective multicentre validation restricts assessment of real-world generalizability. Rigorous external validation, standardized reporting, and implementation-focused research are essential before widespread clinical integration.

Keywords: Artificial intelligence, machine learning, breast cancer, diagnostic accuracy, deep learning


How to Cite

Kshatri, Abhishek Hanumanpratap Singh, Srushti Parmar, Jnapika Devarapalli, Krutik Nayak, V. Soumya., K. B. Riyas Basheer, V. P. Akshay, et al. 2026. “Diagnostic Accuracy of Artificial Intelligence for Breast Cancer Detection: A Systematic Review”. Asian Journal of Medicine and Health 24 (5):21-38. https://doi.org/10.9734/ajmah/2026/v24i51387.

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