The role of artificial intelligence in cardio-oncology: present and future: A review

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Abstract

Cardiooncology has been developed as a relatively new branch of medicine that focuses on the prevention and treatment of adverse cardiovascular events associated with cancer therapy. Newer, more efficient data acquisition methods, such as the use of artificial intelligence, are desirable to help assess CVR in cancer patients. By extracting hidden patterns and evidence from large volumes of medical data, artificial intelligence can create new predictors and parameters to predict risks in patients with cardio-oncological diseases.

About the authors

Yuri I. Buziashvili

Bakulev National Medical Research Center of Cardiovascular Surgery

Email: firdavs96_tths@mail.ru
ORCID iD: 0000-0001-7016-7541

D. Sci. (Med.), Prof., Acad. RAS

Russian Federation, Moscow

Elmira U. Asymbekova

Bakulev National Medical Research Center of Cardiovascular Surgery

Email: firdavs96_tths@mail.ru
ORCID iD: 0000-0002-5422-2069

D. Sci. (Med.)

Russian Federation, Moscow

Elvina F. Tugeeva

Bakulev National Medical Research Center of Cardiovascular Surgery

Email: firdavs96_tths@mail.ru
ORCID iD: 0000-0003-1751-4924

D. Sci. (Med.)

Russian Federation, Moscow

Firdavsdzhon R. Akildzhonov

Bakulev National Medical Research Center of Cardiovascular Surgery

Author for correspondence.
Email: firdavs96_tths@mail.ru
ORCID iD: 0000-0002-1675-4216

Graduate Student

Russian Federation, Moscow

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