Artificial Intelligence in Breast Cancer Diagnosis and Treatment: Advances in Imaging, Pathology, and Personalized Care

被引:2
作者
Uchikov, Petar [1 ]
Khalid, Usman [2 ]
Dedaj-Salad, Granit Harris [2 ]
Ghale, Dibya [2 ]
Rajadurai, Harney [2 ]
Kraeva, Maria [3 ]
Kraev, Krasimir [4 ]
Hristov, Bozhidar [5 ]
Doykov, Mladen [6 ]
Mitova, Vanya [7 ]
Bozhkova, Maria [8 ]
Markov, Stoyan [3 ]
Stanchev, Pavel [9 ]
机构
[1] Med Univ Plovdiv, Fac Med, Dept Special Surg, Plovdiv 4002, Bulgaria
[2] Med Univ Plovdiv, Fac Med, Plovdiv 4000, Bulgaria
[3] Med Univ Plovdiv, Med Fac, Dept Otorhinolaryngol, Plovdiv 4002, Bulgaria
[4] Med Univ Plovdiv, Med Fac, Dept Propedeut Internal Dis, Plovdiv 4002, Bulgaria
[5] Med Univ Plovdiv, Med Fac, Dept Internal Dis 2, Sect Gastroenterol, Plovdiv 4002, Bulgaria
[6] Med Univ Plovdiv, Med Fac, Dept Urol & Gen Med, Plovdiv 4001, Bulgaria
[7] Univ Specialized Hosp Act Oncol Treatment Prof Iva, Sofia 1756, Bulgaria
[8] Med Univ Plovdiv, Med Coll, Plovdiv 4000, Bulgaria
[9] Med Univ Plovdiv, St George Univ Hosp, Clin Endocrinol & Metab Dis, Plovdiv 4002, Bulgaria
来源
LIFE-BASEL | 2024年 / 14卷 / 11期
关键词
breast cancer; artificial intelligence; pathology; imaging; MUTATIONS; BRCA1; RISK; AGE; AI;
D O I
10.3390/life14111451
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Breast cancer is the most prevalent cancer worldwide, affecting both low- and middle-income countries, with a growing number of cases. In 2024, about 310,720 women in the U.S. are projected to receive an invasive breast cancer diagnosis, alongside 56,500 cases of ductal carcinoma in situ (DCIS). Breast cancer occurs in every country of the world in women at any age after puberty but with increasing rates in later life. About 65% of women with the BRCA1 and 45% with the BRCA2 gene variants develop breast cancer by age 70. While these genes account for 5% of breast cancers, their prevalence is higher in certain populations. Advances in early detection, personalised medicine, and AI-driven diagnostics are improving outcomes by enabling a more precise analysis, reducing recurrence, and minimising treatment side effects. Our paper aims to explore the vast applications of artificial intelligence within the diagnosis and treatment of breast cancer and how these advancements can contribute to elevating patient care as well as discussing the potential drawbacks of such integrations into modern medicine. We structured our paper as a non-systematic review and utilised Google Scholar and PubMed databases to review literature regarding the incorporation of AI in the diagnosis and treatment of non-palpable breast masses. AI is revolutionising breast cancer management by enhancing imaging, pathology, and personalised treatment. In imaging, AI can improve the detection of cancer in mammography, MRIs, and ultrasounds, rivalling expert radiologists in accuracy. In pathology, AI enhances biomarker detection, improving HER2 and Ki67 assessments. Personalised medicine benefits from AI's predictive power, aiding risk stratification and treatment response. AI also shows promise in triple-negative breast cancer management, offering better prognosis and subtype classification. However, challenges include data variability, ethical concerns, and real-world validation. Despite limitations, AI integration offers significant potential in improving breast cancer diagnosis, prognosis, and treatment outcomes.
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页数:17
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