人工智能:心脏病肿瘤学的应用及对种族差异的潜在影响

IF 1.3 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Gift Echefu , Rushabh Shah , Zanele Sanchez , John Rickards , Sherry-Ann Brown
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引用次数: 0

摘要

许多癌症疗法都会对癌症幸存者的心血管产生不利影响。心血管毒性可贯穿整个癌症治疗过程,并受多种因素影响。为了降低这些风险,心血管肿瘤学得到了发展,重点是预防和治疗因癌症和癌症治疗而引起的心血管并发症。人工智能(AI)在提高心血管肿瘤治疗效果方面具有多方面的潜力。目前,人工智能算法正在利用临床数据输入来识别有心脏并发症风险的患者。人工智能在心脏肿瘤学中的其他应用机会还包括多模态心血管成像,算法还可以利用成像输入为癌症患者生成预测性风险档案。人工智能的影响延伸到数字健康工具,在数字平台和可穿戴技术的开发中发挥着关键作用。多学科团队已经成立,以实施和评估这些技术的功效,评估人工智能驱动的临床决策支持工具。其他途径也同样支持人工智能在临床实践中的实际应用,例如将其纳入电子健康记录(EHR)以检测心血管疾病高危患者。虽然这些人工智能应用可能有助于改善预防措施并促进为患者提供量身定制的治疗,但如果在有限的同质数据集上进行训练,它们也有可能延续和加剧医疗差距。不过,如果训练和操作得当,人工智能有望对心脏病肿瘤学的临床实践产生积极影响。在这篇综述中,我们将探讨人工智能对肿瘤心脏病学治疗的影响,尤其是在预测癌症治疗的心脏毒性方面,同时解决算法实施过程中的种族和民族偏见。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence: Applications in cardio-oncology and potential impact on racial disparities
Numerous cancer therapies have detrimental cardiovascular effects on cancer survivors. Cardiovascular toxicity can span the course of cancer treatment and is influenced by several factors. To mitigate these risks, cardio-oncology has evolved, with an emphasis on prevention and treatment of cardiovascular complications resulting from the presence of cancer and cancer therapy. Artificial intelligence (AI) holds multifaceted potential to enhance cardio-oncologic outcomes. AI algorithms are currently utilizing clinical data input to identify patients at risk for cardiac complications. Additional application opportunities for AI in cardio-oncology involve multimodal cardiovascular imaging, where algorithms can also utilize imaging input to generate predictive risk profiles for cancer patients. The impact of AI extends to digital health tools, playing a pivotal role in the development of digital platforms and wearable technologies. Multidisciplinary teams have been formed to implement and evaluate the efficacy of these technologies, assessing AI-driven clinical decision support tools. Other avenues similarly support practical application of AI in clinical practice, such as incorporation into electronic health records (EHRs) to detect patients at risk for cardiovascular diseases. While these AI applications may help improve preventive measures and facilitate tailored treatment to patients, they are also capable of perpetuating and exacerbating healthcare disparities, if trained on limited, homogenous datasets. However, if trained and operated appropriately, AI holds substantial promise in positively influencing clinical practice in cardio-oncology. In this review, we explore the impact of AI on cardio-oncology care, particularly regarding predicting cardiotoxicity from cancer treatments, while addressing racial and ethnic biases in algorithmic implementation.
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来源期刊
CiteScore
1.60
自引率
0.00%
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