Viviana Cortlana Ms, Kennedy Itodo Bs, Yan Leyfman Md, Jenna Ghazal BSc, Vraj JigarKumar Rangrej Mbbs, Adhith Theyver, Chandler H Park Md Facp
{"title":"癌症护理中的人工智能:应对挑战和健康公平。","authors":"Viviana Cortlana Ms, Kennedy Itodo Bs, Yan Leyfman Md, Jenna Ghazal BSc, Vraj JigarKumar Rangrej Mbbs, Adhith Theyver, Chandler H Park Md Facp","doi":"10.46883/2025.25921037","DOIUrl":null,"url":null,"abstract":"<p><p>Overdiagnosis in cancer care remains a significant concern, often resulting in unnecessary physical, emotional, and financial burdens on patients. Artificial intelligence (AI) has the potential to address this challenge by enabling more accurate, personalized cancer diagnoses and facilitating tailored treatment plans. Integrating AI with precision medicine can minimize unnecessary treatments and associated adverse effects by optimizing care strategies based on individual patient data. However, the integration of AI in oncology requires rigorous research and validation to ensure its effectiveness across diverse populations and clinical settings. Challenges such as algorithmic bias, data representation, and limited access to technology in resource-constrained settings highlight the need for equitable AI applications in health care. Addressing health equity disparities is critical, as diverse and representative training data sets significantly affects the fairness and efficacy of AI systems. AI also holds promise for advancing cancer care in resource-limited settings by providing cost-effective diagnostic tools, democratizing access to advanced health care technologies, and improving outcomes in low- and middle-income nations. Interdisciplinary and international collaborations between researchers, clinicians, and technologists are crucial to maximizing AI's potential in cancer care. By fostering these partnerships and focusing on the development of accessible, ethical, and patient-centered AI applications, the health care community can revolutionize cancer diagnosis and treatment. 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Artificial Intelligence in Cancer Care: Addressing Challenges and Health Equity.
Overdiagnosis in cancer care remains a significant concern, often resulting in unnecessary physical, emotional, and financial burdens on patients. Artificial intelligence (AI) has the potential to address this challenge by enabling more accurate, personalized cancer diagnoses and facilitating tailored treatment plans. Integrating AI with precision medicine can minimize unnecessary treatments and associated adverse effects by optimizing care strategies based on individual patient data. However, the integration of AI in oncology requires rigorous research and validation to ensure its effectiveness across diverse populations and clinical settings. Challenges such as algorithmic bias, data representation, and limited access to technology in resource-constrained settings highlight the need for equitable AI applications in health care. Addressing health equity disparities is critical, as diverse and representative training data sets significantly affects the fairness and efficacy of AI systems. AI also holds promise for advancing cancer care in resource-limited settings by providing cost-effective diagnostic tools, democratizing access to advanced health care technologies, and improving outcomes in low- and middle-income nations. Interdisciplinary and international collaborations between researchers, clinicians, and technologists are crucial to maximizing AI's potential in cancer care. By fostering these partnerships and focusing on the development of accessible, ethical, and patient-centered AI applications, the health care community can revolutionize cancer diagnosis and treatment. The growing role of AI in precision medicine brings hope for equitable, cost-effective, and improved patient outcomes worldwide.
期刊介绍:
Although laboratory and clinical cancer research need to be closely linked, observations at the basic level often remain removed from medical applications. This journal works to accelerate the translation of experimental results into the clinic, and back again into the laboratory for further investigation. The fundamental purpose of this effort is to advance clinically-relevant knowledge of cancer, and improve the outcome of prevention, diagnosis and treatment of malignant disease. The journal publishes significant clinical studies from cancer programs around the world, along with important translational laboratory findings, mini-reviews (invited and submitted) and in-depth discussions of evolving and controversial topics in the oncology arena. A unique feature of the journal is a new section which focuses on rapid peer-review and subsequent publication of short reports of phase 1 and phase 2 clinical cancer trials, with a goal of insuring that high-quality clinical cancer research quickly enters the public domain, regardless of the trial’s ultimate conclusions regarding efficacy or toxicity.