人工智能和机器学习在骨和软组织肿瘤成像中的应用。

Frontiers in radiology Pub Date : 2024-09-05 eCollection Date: 2024-01-01 DOI:10.3389/fradi.2024.1332535
Paniz Sabeghi, Ketki K Kinkar, Gloria Del Rosario Castaneda, Liesl S Eibschutz, Brandon K K Fields, Bino A Varghese, Dakshesh B Patel, Ali Gholamrezanezhad
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引用次数: 0

摘要

人工智能(AI)和机器学习的最新进展为肌肉骨骼放射学提供了大量机会,有可能提高诊断准确性、工作流程效率和预测建模能力。人工智能工具有能力协助放射医师完成图像分割、病变检测等多项任务。在骨和软组织肿瘤成像方面,放射组学和深度学习在恶性肿瘤分层、分级、预后和治疗计划方面大有可为。然而,在临床转化之前,还需要解决标准化、数据整合和患者数据伦理问题等挑战。在肌肉骨骼肿瘤学领域,由于疾病发病率有限,人工智能在开发强大算法方面也面临障碍。虽然许多计划旨在开发多任务人工智能系统,但多学科合作对于人工智能成功融入临床实践至关重要。要充分发挥人工智能在提高诊断准确性和促进患者护理方面的潜力,就必须采取强有力的方法应对挑战并体现道德实践。
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Artificial intelligence and machine learning applications for the imaging of bone and soft tissue tumors.

Recent advancements in artificial intelligence (AI) and machine learning offer numerous opportunities in musculoskeletal radiology to potentially bolster diagnostic accuracy, workflow efficiency, and predictive modeling. AI tools have the capability to assist radiologists in many tasks ranging from image segmentation, lesion detection, and more. In bone and soft tissue tumor imaging, radiomics and deep learning show promise for malignancy stratification, grading, prognostication, and treatment planning. However, challenges such as standardization, data integration, and ethical concerns regarding patient data need to be addressed ahead of clinical translation. In the realm of musculoskeletal oncology, AI also faces obstacles in robust algorithm development due to limited disease incidence. While many initiatives aim to develop multitasking AI systems, multidisciplinary collaboration is crucial for successful AI integration into clinical practice. Robust approaches addressing challenges and embodying ethical practices are warranted to fully realize AI's potential for enhancing diagnostic accuracy and advancing patient care.

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