TY - JOUR
T1 - A literature review of radio-genomics in breast cancer
T2 - Lessons and insights for low and middle-income countries
AU - Mooghal, Mehwish
AU - Shaikh, Kulsoom
AU - Shaikh, Hafsa
AU - Khan, Wajiha
AU - Siddiqui, Muhammad Shiraz
AU - Jamil, Sara
AU - Vohra, Lubna M.
N1 - Publisher Copyright:
© Fondazione IRCCS Istituto Nazionale dei Tumori 2025
PY - 2025/8
Y1 - 2025/8
N2 - To improve precision medicine in breast cancer (BC) decision-making, radio-genomics is an emerging branch of artificial intelligence (AI) that links cancer characteristics assessed radiologically with the histopathology and genomic properties of the tumour. By employing MRIs, mammograms, and ultrasounds to uncover distinctive radiomics traits that potentially predict genomic abnormalities, this review attempts to find literature that links AI-based models with the genetic mutations discovered in BC patients. The review’s findings can be used to create AI-based population models for low and middle-income countries (LMIC) and evaluate how well they predict outcomes for our cohort.Magnetic resonance imaging (MRI) appears to be the modality employed most frequently to research radio-genomics in BC patients in our systemic analysis. According to the papers we analysed, genetic markers and mutations linked to imaging traits, such as tumour size, shape, enhancing patterns, as well as clinical outcomes of treatment response, disease progression, and survival, can be identified by employing AI. The use of radio-genomics can help LMICs get through some of the barriers that keep the general population from having access to high-quality cancer care, thereby improving the health outcomes for BC patients in these regions. It is imperative to ensure that emerging technologies are used responsibly, in a way that is accessible to and affordable for all patients, regardless of their socio-economic condition.
AB - To improve precision medicine in breast cancer (BC) decision-making, radio-genomics is an emerging branch of artificial intelligence (AI) that links cancer characteristics assessed radiologically with the histopathology and genomic properties of the tumour. By employing MRIs, mammograms, and ultrasounds to uncover distinctive radiomics traits that potentially predict genomic abnormalities, this review attempts to find literature that links AI-based models with the genetic mutations discovered in BC patients. The review’s findings can be used to create AI-based population models for low and middle-income countries (LMIC) and evaluate how well they predict outcomes for our cohort.Magnetic resonance imaging (MRI) appears to be the modality employed most frequently to research radio-genomics in BC patients in our systemic analysis. According to the papers we analysed, genetic markers and mutations linked to imaging traits, such as tumour size, shape, enhancing patterns, as well as clinical outcomes of treatment response, disease progression, and survival, can be identified by employing AI. The use of radio-genomics can help LMICs get through some of the barriers that keep the general population from having access to high-quality cancer care, thereby improving the health outcomes for BC patients in these regions. It is imperative to ensure that emerging technologies are used responsibly, in a way that is accessible to and affordable for all patients, regardless of their socio-economic condition.
KW - Artificial intelligence
KW - breast cancer
KW - chromosomal alterations
KW - copy number alterations
KW - genetics
KW - low and middle-income countries
KW - radio-genomics
UR - https://www.scopus.com/pages/publications/105012526709
U2 - 10.1177/03008916251356446
DO - 10.1177/03008916251356446
M3 - Review article
C2 - 40665657
AN - SCOPUS:105012526709
SN - 0300-8916
VL - 111
SP - 274
EP - 283
JO - Tumori
JF - Tumori
IS - 4
ER -