人工智能在妇科恶性肿瘤中的应用研究进展
Research Progress on Application of Artificial Intelligence in Gynecological Malignant Tumor
DOI: 10.12677/ACM.2023.1361474, PDF,    科研立项经费支持
作者: 陈紫均, 沈宇杰, 廖文静:西安医学院妇产科,陕西 西安;吕小慧, 杨 红*:西京医院妇产科,陕西 西安
关键词: 人工智能妇科肿瘤深度学习Artificial Intelligence (AI) Gynecological Tumors Deep Learning
摘要: 近年来,人工智能(AI)在医学领域的应用中迅速增加,已成为现代科学技术的热点。人工智能也将在妇科恶性肿瘤学领域发挥不可替代的作用,促进医学的发展,进一步促进传统医学向精准医学和预防医学的转变。然而,随着人工智能的不断发展,人工智能在妇科恶性肿瘤中的应用也存在一些问题,尤其是集成分类器与深度学习将对医学技术的未来产生深远的影响,是未来医学创新和改革的有力动力。本文综述了人工智能在妇科恶性肿瘤的诊断及预测方面的应用和研究进展。
Abstract: In recent years, the application of artificial intelligence (AI) in the medical field has increased rap-idly and has become a hot spot of modern science and technology. Artificial intelligence will also play an irreplaceable role in the field of gynecological malignant tumor to promote the development of medicine and further promote the transformation of traditional medicine into precision medicine and preventive medicine. However, with the continuous development of artificial intelligence, there are still some problems in the application of artificial intelligence in gynecological malignant tu-mors. In particular, the integrated classifier and deep learning will have a profound impact on the future of medical technology and will be a powerful force for future medical innovation and reform. This paper reviews the application and research progress of artificial intelligence in the diagnosis and prediction of gynecological malignant tumors.
文章引用:陈紫均, 吕小慧, 沈宇杰, 廖文静, 杨红. 人工智能在妇科恶性肿瘤中的应用研究进展[J]. 临床医学进展, 2023, 13(6): 10542-10548. https://doi.org/10.12677/ACM.2023.1361474

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