TY - JOUR
T1 - Machine Learning in Cardio-Oncology
T2 - New Insights from an Emerging Discipline
AU - Zheng, Yi
AU - Chen, Ziliang
AU - Huang, Shan
AU - Zhang, Nan
AU - Wang, Yueying
AU - Hong, Shenda
AU - Kai Chan, Jeffrey Shi
AU - Chen, Kang Yin
AU - Xia, Yunlong
AU - Zhang, Yuhui
AU - Lip, Gregory Y.H.
AU - Qin, Juan
AU - Tse, Gary
AU - Liu, Tong
N1 - Publisher Copyright:
Copyright: © 2023 The Author(s).
PY - 2023
Y1 - 2023
N2 - A growing body of evidence on a wide spectrum of adverse cardiac events following oncologic therapies has led to the emergence of cardio-oncology as an increasingly relevant interdisciplinary specialty. This also calls for better risk-stratification for patients undergoing cancer treatment. Machine learning (ML), a popular branch discipline of artificial intelligence that tackles complex big data problems by identifying interaction patterns among variables, has seen increasing usage in cardio-oncology studies for risk stratification. The objective of this comprehensive review is to outline the application of ML approaches in cardio-oncology, including deep learning, artificial neural networks, random forest and summarize the cardiotoxicity identified by ML. The current literature shows that ML has been applied for the prediction, diagnosis and treatment of cardiotoxicity in cancer patients. In addition, role of ML in gender and racial disparities for cardiac outcomes and potential future directions of cardio-oncology are discussed. It is essential to establish dedicated multidisciplinary teams in the hospital and educate medical professionals to become familiar and proficient in ML in the future.
AB - A growing body of evidence on a wide spectrum of adverse cardiac events following oncologic therapies has led to the emergence of cardio-oncology as an increasingly relevant interdisciplinary specialty. This also calls for better risk-stratification for patients undergoing cancer treatment. Machine learning (ML), a popular branch discipline of artificial intelligence that tackles complex big data problems by identifying interaction patterns among variables, has seen increasing usage in cardio-oncology studies for risk stratification. The objective of this comprehensive review is to outline the application of ML approaches in cardio-oncology, including deep learning, artificial neural networks, random forest and summarize the cardiotoxicity identified by ML. The current literature shows that ML has been applied for the prediction, diagnosis and treatment of cardiotoxicity in cancer patients. In addition, role of ML in gender and racial disparities for cardiac outcomes and potential future directions of cardio-oncology are discussed. It is essential to establish dedicated multidisciplinary teams in the hospital and educate medical professionals to become familiar and proficient in ML in the future.
KW - cardio-oncology
KW - cardiotoxicity
KW - inequity
KW - machine learning
KW - multidisciplinary team
UR - http://www.scopus.com/inward/record.url?scp=85177988441&partnerID=8YFLogxK
U2 - 10.31083/j.rcm2410296
DO - 10.31083/j.rcm2410296
M3 - Article
AN - SCOPUS:85177988441
SN - 1530-6550
VL - 24
JO - Reviews in Cardiovascular Medicine
JF - Reviews in Cardiovascular Medicine
IS - 10
ER -