Xiaoyu Ma, Qiuchen Zhang, Lvqi He, Xinyang Liu, Yang Xiao, Jingwen Hu, Shengjie Cai, Hongzhou Cai, Bin Yu
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引用次数: 0
摘要
膀胱癌(BC)是一种严重而常见的泌尿系统恶性肿瘤。准确、便捷地诊断和治疗膀胱癌是医学界面临的一大挑战。由于医疗资源有限,在没有人工智能(AI)辅助的情况下,现有的膀胱癌诊断和治疗方案仍存在一定缺陷。近年来,随着深度学习和机器学习等人工智能技术的发展,人工智能的成熟使其越来越多地应用于医疗领域,包括提高 BC 诊断的速度和准确性,提供更强大的治疗方案和预后相关建议。医学影像技术和分子水平研究的进步也促进了此类人工智能应用的进一步发展。然而,由于训练信息来源的差异和算法设计问题,人工智能在临床实践中的广泛应用在准确性和透明度方面仍有改进空间。随着临床信息数字化的普及和新算法的提出,人工智能有望更有效地学习,更准确可靠地分析相似病例,促进精准医学的发展,减少资源消耗,加快诊断和治疗。本综述重点关注人工智能在诊断和治疗 BC 中的应用,指出其面临的一些挑战,并展望其未来发展。
Artificial intelligence application in the diagnosis and treatment of bladder cancer: advance, challenges, and opportunities.
Bladder cancer (BC) is a serious and common malignant tumor of the urinary system. Accurate and convenient diagnosis and treatment of BC is a major challenge for the medical community. Due to the limited medical resources, the existing diagnosis and treatment protocols for BC without the assistance of artificial intelligence (AI) still have certain shortcomings. In recent years, with the development of AI technologies such as deep learning and machine learning, the maturity of AI has made it more and more applied to the medical field, including improving the speed and accuracy of BC diagnosis and providing more powerful treatment options and recommendations related to prognosis. Advances in medical imaging technology and molecular-level research have also contributed to the further development of such AI applications. However, due to differences in the sources of training information and algorithm design issues, there is still room for improvement in terms of accuracy and transparency for the broader use of AI in clinical practice. With the popularization of digitization of clinical information and the proposal of new algorithms, artificial intelligence is expected to learn more effectively and analyze similar cases more accurately and reliably, promoting the development of precision medicine, reducing resource consumption, and speeding up diagnosis and treatment. This review focuses on the application of artificial intelligence in the diagnosis and treatment of BC, points out some of the challenges it faces, and looks forward to its future development.
期刊介绍:
Cancer Imaging and Diagnosis is dedicated to the publication of results from clinical and research studies applied to cancer diagnosis and treatment. The section aims to publish studies from the entire field of cancer imaging: results from routine use of clinical imaging in both radiology and nuclear medicine, results from clinical trials, experimental molecular imaging in humans and small animals, research on new contrast agents in CT, MRI, ultrasound, publication of new technical applications and processing algorithms to improve the standardization of quantitative imaging and image guided interventions for the diagnosis and treatment of cancer.