Affiliation:
1. Department of Pharmaceutical Sciences, Dr. Harisingh Gour Vishwavidyalaya (A Central University of M.P.), Sagar,
Madhya Pradesh, 470003, India
Abstract
Abstract:
Cancer poses a significant challenge in terms of treatment due to its aggressive nature and
low median survival rates, making accurate early diagnosis and prognosis prediction crucial for improving
patient outcomes. Advances in statistics and computer engineering have led to the application
of computational methods, including multivariate statistical analysis, to analyze cancer prognosis.
Artificial intelligence (AI) has emerged as a transformative force in the healthcare industry, leveraging
intricate pattern recognition in medical data to enhance the precision, efficacy, quality, and accuracy
of radiation treatment for cancer patients. AI finds application across various critical areas in
healthcare, including neurology, cardiology, and oncology, utilizing both structured and unstructured
healthcare data. Its roles extend to early detection, diagnosis, treatment, outcome prediction, and
prognosis evaluation, particularly in the context of cancer. Despite the potential benefits, integrating
AI into clinical practice in radiation oncology faces obstacles that must be overcome. The incorporation
of AI, particularly machine learning and deep learning, into clinical cancer research has significantly
improved predictive performance. This review explores the literature on the application of AI
in cancer diagnosis and prognosis, emphasizing the inherent advantages it offers. While recognizing
the importance of rigorous validation, the studies highlight ongoing efforts to integrate AI technology
into clinical settings, shaping the future of cancer care. Moreover, the review delves into future directions
for AI in cancer therapy, providing insights into upcoming trends, potential developments, and
emerging technologies within the AI landscape. By acknowledging the necessity for continued research
and validation, the article underscores the momentum toward leveraging AI in clinical oncology
and its potential to redefine the landscape of cancer diagnosis and treatment.
Publisher
Bentham Science Publishers Ltd.